CN115049442A - Data analysis method and application system - Google Patents

Data analysis method and application system Download PDF

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CN115049442A
CN115049442A CN202210964496.9A CN202210964496A CN115049442A CN 115049442 A CN115049442 A CN 115049442A CN 202210964496 A CN202210964496 A CN 202210964496A CN 115049442 A CN115049442 A CN 115049442A
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basic
consumer
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data
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CN115049442B (en
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滕东昇
汪涵
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Nanjing Zhongsheng Zhijian Network Technology Co ltd
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Nanjing Zhongsheng Zhijian Network Technology Co ltd
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    • G06QINFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES; SYSTEMS OR METHODS SPECIALLY ADAPTED FOR ADMINISTRATIVE, COMMERCIAL, FINANCIAL, MANAGERIAL OR SUPERVISORY PURPOSES, NOT OTHERWISE PROVIDED FOR
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Abstract

The invention provides a data analysis method and an application system, and relates to the technical field of data analysis, wherein the application system is applied to the field of supermarket data analysis; the application system comprises a data classification module, an effectiveness assignment module, an association analysis module and a combined classification module; the data classification module is used for carrying out basic qualitative and quantitative classification on the data; the effectiveness assignment module is used for carrying out comprehensive analysis based on qualitative classification and quantitative results of data and obtaining effectiveness assignment results; the association analysis module is used for performing association analysis on the assigned heterogeneous data to obtain the association analysis results of the heterogeneous data.

Description

Data analysis method and application system
Technical Field
The invention relates to the technical field of data analysis, in particular to a data analysis method and an application system.
Background
The data analysis means that a large amount of collected data is analyzed by using a proper statistical analysis method, and the collected data is summarized, understood and digested so as to maximally develop the function of the data and play the role of the data. Data analysis is the process of studying and summarizing data in detail in order to extract useful information and to form conclusions.
In the operation process of the existing supermarket, due to the fact that the positions of the supermarket are different, the types of consumer groups in the peripheral area of each supermarket are different, the selling directions and the types of commodities are different, however, in the existing analysis method applied to supermarket data, the data combinability analysis is insufficient, the combinability of the data is difficult to find through the existing analysis method, and therefore deviation is easy to occur in the combination analysis judgment of the final commodities and consumers, effective data support cannot be provided for the overall marketing analysis of the supermarket, and the final marketing effect of the supermarket is influenced.
Disclosure of Invention
Aiming at the defects in the prior art, the invention aims to provide a data analysis method and an application system, which can improve the comprehensiveness of comprehensive association analysis of data by carrying out detailed combinative analysis on data of consumers and commodities, thereby providing effective data analysis support for marketing analysis of supermarkets and solving the problems that the existing data analysis mode is single and effective analysis results are difficult to provide.
In order to achieve the purpose, the invention is realized by the following technical scheme: the invention provides a data application system, which is applied to the field of supermarket data analysis; the application system comprises a data classification module, an effectiveness assignment module, an association analysis module and a combined classification module;
the data classification module is used for carrying out basic qualitative and quantitative classification on the data;
the effectiveness assignment module is used for carrying out comprehensive analysis based on qualitative classification and quantitative results of data and obtaining effectiveness assignment results;
the correlation analysis module is used for performing correlation analysis on the assigned different types of data to obtain correlation analysis results of the different types of data;
and the combined classification module is used for obtaining a combined classification result based on the correlation analysis result.
Further, the data classification module is configured with a data classification policy, the data classification policy comprising: dividing data into consumer data, consumer behavior data and commodity data;
dividing the consumer data into young men, young women, children and teenagers, middle men, middle women, old men and old women;
dividing the behavior data of the consumers into purchase duration, purchase quantity, purchase average total price and purchase frequency;
the commodity data is divided into commodity selection duration, commodity purchase times and commodity price.
Further, the validity assignment module includes a validity assignment policy, and the validity assignment policy includes:
substituting the purchase duration, the purchase quantity, the average purchase total price and the purchase frequency of each consumer into a consumer quantitative assignment formula to obtain a basic consumer coefficient assigned value;
according to the obtained basic consumer coefficient assigned values of different consumers, basic young male, young female, children and adolescents, middle-aged male, middle-aged female, old male and old female in the consumer data are respectively assigned with a basic young male coefficient, a basic young female coefficient, a basic child and adolescent coefficient, a basic middle-aged male coefficient, a basic middle-aged female coefficient, a basic old male coefficient and a basic old female coefficient; the assignment method of the basic coefficient of each type of consumer comprises the following steps: selecting basic consumer coefficient assigned values of the consumers of the type with the first type number to calculate an average value, and taking the average value calculated by each type as the basic coefficient of the type;
dividing commodity data into commodity selection duration, commodity purchase times and commodity price, and substituting the commodity selection duration, the commodity purchase times and the commodity price into a commodity quantitative assignment formula to obtain a basic commodity coefficient assigned value;
the consumer quantitative valuation formula is configured to:
Figure 589680DEST_PATH_IMAGE002
(ii) a Wherein Pjy is assigned a value for the base consumer coefficient and Jz is Purchase levelAverage total price, Sgm is purchase quantity, Lgm is purchase frequency, and Tgm is purchase duration;
the commodity quantitative assignment formula is configured as follows:
Figure 389008DEST_PATH_IMAGE004
(ii) a Wherein Psp is a basic commodity coefficient assigned value, Tsp is commodity selection duration, Ssp is commodity purchase frequency, and Jsp is commodity price.
Further, the correlation analysis module comprises a consumer correlation analysis unit, a commodity correlation analysis unit and a comprehensive analysis unit;
the consumer association analysis unit is used for analyzing data of a plurality of consumers during shopping at the same time; the commodity association analysis unit is used for analyzing the data of combined purchase of different commodities; the comprehensive analysis unit is used for analyzing the comprehensive relevance between the consumers and the commodities.
Further, the consumer association analysis unit is configured with a consumer association analysis policy, which includes: setting a first correlation analysis duration, and acquiring the type of the appearing consumer combination in the first correlation analysis duration; then obtaining the times, the total price of multiple purchases and the total duration of multiple purchases when different combination types are combined and matched for shopping;
substituting the times of combining and matching shopping of different combination types, the total price of multiple times of purchasing and the total duration of multiple times of shopping into a consumer combination coefficient solving formula to solve the consumer combination coefficient;
substituting the consumer combination coefficient and the basic consumer coefficient assigned value of a single consumer in the consumer combination into a consumer combination calibration formula to obtain a consumer combination calibration coefficient;
sorting different consumer combinations from high to low according to the consumer combination calibration coefficient, and setting the consumer combination with the first consumer proportion as a basic consumer combination;
the consumer combination coefficient solving formula is configured as follows:
Figure 20716DEST_PATH_IMAGE006
(ii) a Xyz is a consumer combination coefficient, and Cyz, Jyd and Tyz are times, total prices of multiple purchases and total duration of multiple purchases when combined and collocated purchases are carried out for different combination types respectively; the consumer combination calibration formula is configured to:
Figure 512877DEST_PATH_IMAGE008
(ii) a Wherein Xyj is the consumer combination calibration coefficient, and Pjy1 to Pjyi respectively assign values to the base consumer coefficient of different consumers in the consumer combination.
Further, the commodity association analysis unit is configured with a commodity association analysis policy, where the commodity association analysis policy includes: acquiring the type of each two commodity combinations appearing in the first correlation analysis duration; acquiring the times and the total price of the matched purchase of different types of commodity combinations;
substituting the times and total prices of different commodity combination types which are collocated and purchased into a commodity combination coefficient solving formula to solve a commodity combination coefficient;
substituting the commodity combination coefficient and the basic commodity coefficient assigned value of a single commodity into a commodity combination calibration formula to obtain a commodity combination calibration coefficient;
sorting the commodity combinations from high to low according to the commodity combination calibration coefficient, and setting the commodity combinations with the first commodity proportion in the front sorting as basic commodity combinations;
the commodity combination coefficient solving formula is configured as follows:
Figure 567552DEST_PATH_IMAGE010
(ii) a Xsz is a commodity combination coefficient, Cdz and Jspz are respectively the times and total price of matched purchase of different types of commodity combinations; the commodity combination calibration formula is configured to:
Figure 904992DEST_PATH_IMAGE012
(ii) a Wherein Xjsz is a commodity combination calibration coefficient, and Psp1 and Psp2 are assigned to base commodity coefficients of two commodities in a commodity combinationA predetermined value.
Further, the comprehensive analysis unit is configured with a comprehensive analysis strategy, and the comprehensive analysis strategy comprises: acquiring the times of purchasing the basic commodity combination of the basic consumer combination, setting the times as the basic consumer commodity combination, and substituting the times of purchasing the basic consumer commodity combination into a comprehensive processing formula to obtain a comprehensive processing coefficient;
sorting the basic consumer commodity combinations from high to low according to the comprehensive processing coefficient, and setting the combination with the first comprehensive proportion in the front as the basic comprehensive combination;
the integrated processing formula is configured as:
Figure 594468DEST_PATH_IMAGE014
(ii) a Wherein Xzh is the comprehensive processing coefficient, a is the comprehensive conversion base number, Czh is the number of times of commodity combination of basic consumers.
Further, the combined classification module is configured with a combined classification policy, the combined classification policy comprising: and setting a basic consumer combination classification unit, a basic commodity combination classification unit and a basic comprehensive combination classification unit for the basic consumer combination, the basic commodity combination and the basic comprehensive combination respectively, and setting a basic consumer memory, a basic commodity memory and a basic comprehensive memory in the basic consumer combination classification unit, the basic commodity combination classification unit and the basic comprehensive combination classification unit to store data of the basic consumer combination, the basic commodity combination and the basic comprehensive combination.
An analysis method of a data application system, the analysis method comprising the steps of:
step S10, firstly, performing basic qualitative and quantitative classification on the data;
step S20, carrying out comprehensive analysis based on qualitative classification and quantitative results of the data, and obtaining an effectiveness assignment result;
step S30, performing correlation analysis on the assigned different types of data to obtain correlation analysis results of the different types of data;
in step S40, a combined classification result is obtained based on the result of the relevance analysis.
Further, the specific implementation method of step S10 includes the following steps:
step S101, dividing data into consumer data, consumer behavior data and commodity data;
step S102, dividing the consumer data into young men, young women, children and adolescents, middle men, middle women, old men and old women;
step S103, dividing the behavior data of the consumers into purchase duration, purchase quantity, average purchase total price and purchase frequency;
step S104, the commodity data is divided into commodity selection duration, commodity purchase times and commodity price.
Further, the specific implementation method of step S20 includes the following steps:
step S201, substituting the purchase duration, the purchase quantity, the purchase average total price and the purchase frequency of each consumer into a consumer quantitative assignment formula to obtain a basic consumer coefficient assigned value;
step S202, according to the obtained basic consumer coefficient assigned values of different consumers, a basic young male coefficient, a basic young female coefficient, a basic child and adolescent coefficient, a basic middle-aged male coefficient, a basic middle-aged female coefficient, a basic old male coefficient and a basic old female coefficient are respectively assigned to young males, females, children and adolescents, middle-aged males, middle-aged females, elderly males and elderly females in the consumer data;
and step S203, substituting the commodity data into a commodity quantitative assignment formula to obtain a basic commodity coefficient assignment value, wherein the commodity data are divided into commodity selection duration, commodity purchase times and commodity price.
Further, the specific implementation method of step S30 includes the following steps:
step S3011, setting a first correlation analysis duration, and acquiring types of the appearing consumer combinations in the first correlation analysis duration; then obtaining the times, the total price of multiple purchases and the total duration of multiple purchases when different combination types are combined and matched for shopping;
step S3012, substituting the times of shopping combined and matched with different combination types, the total price of multiple purchases and the total duration of multiple purchases into a consumer combination coefficient solving formula to solve a consumer combination coefficient;
step S3013, substituting the consumer combination coefficient and the basic consumer coefficient assigned value of a single consumer in the consumer combination into a consumer combination calibration formula to obtain a consumer combination calibration coefficient;
step S3014, according to the consumer combination calibration coefficient, different consumer combinations are ranked from high to low, and the consumer combination ranked in the first consumer proportion is set as a basic consumer combination;
step S3021, acquiring the type of each two commodity combinations appearing in the first correlation analysis duration; acquiring the times and the total price of the matched purchase of different types of commodity combinations;
step S3022, substituting the times and total prices of the collocated purchases of different commodity combinations into a commodity combination coefficient solving formula to solve a commodity combination coefficient;
step S3023, substituting the commodity combination coefficient and the basic commodity coefficient assigned value of a single commodity into a commodity combination calibration formula to obtain a commodity combination calibration coefficient;
step S3024, sorting the commodity combinations from high to low according to the commodity combination calibration coefficients, and setting the commodity combinations with the first commodity proportion in the front sorting as basic commodity combinations;
step S3031, acquiring the times of purchasing the basic commodity combination of the basic consumer combination, setting the times as the basic consumer commodity combination, and substituting the times of purchasing the basic commodity combination of the basic consumer into a comprehensive processing formula to obtain a comprehensive processing coefficient;
step S3032, the basic consumer commodity combinations are sorted from high to low according to the comprehensive processing coefficient, and the combination with the first comprehensive proportion in the front sorting is set as the basic comprehensive combination.
Further, the specific implementation method of step S40 includes the following steps:
step S401, a basic consumer combination classification unit, a basic commodity combination classification unit and a basic comprehensive combination classification unit are respectively set for the basic consumer combination, the basic commodity combination and the basic comprehensive combination, and a basic consumer memory, a basic commodity memory and a basic comprehensive memory are arranged in the basic consumer combination classification unit, the basic commodity combination classification unit and the basic comprehensive combination classification unit to store the data of the basic consumer combination, the basic commodity combination and the basic comprehensive combination
The invention has the beneficial effects that: according to the method, firstly, basic qualitative and quantitative classification is carried out on data, then comprehensive analysis is carried out on the qualitative classification and quantitative results based on the data, an effectiveness assignment result is obtained, association analysis is carried out on the different types of data after assignment, association analysis results of the different types of data are obtained, and finally a combined classification result is obtained based on the association analysis results, so that the association of data analysis of the supermarket can be improved, the effectiveness of the data analysis is improved, and a more real, comprehensive and effective data base can be provided for marketing and management of the supermarket;
according to the invention, the comprehensive analysis unit can process the obtained comprehensive processing coefficient, the commodity combinations of the basic consumers are sorted from high to low according to the comprehensive processing coefficient, the combination with the first comprehensive proportion in the front of the sorting is set as the basic comprehensive combination, and the association between the consumers with relatively high frequency and high total consumption and the commodities frequently purchased by the consumers can be obtained through the comprehensive processing coefficient, so that the accuracy of the analysis of commodity sales association is further improved.
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Other features, objects and advantages of the invention will become more apparent upon reading of the detailed description of non-limiting embodiments with reference to the following drawings:
FIG. 1 is a functional block diagram of a control system of the present invention;
FIG. 2 is a functional block diagram of the association analysis module of the present invention;
FIG. 3 is a flow chart of an analysis method of the present invention.
Detailed Description
In order to make the technical means, the creation characteristics, the achievement purposes and the effects of the invention easy to understand, the invention is further described with the specific embodiments.
Example one
Referring to fig. 1, the present invention provides a data application system, which is mainly applied to the data analysis field of a supermarket, but the method of the present invention can also be used for reference in other similar fields, and therefore, the present invention is not limited to the application in the supermarket field, the present invention provides a specific embodiment, which is applied to the supermarket field, and the application system includes a data classification module, an effectiveness assignment module, an association analysis module, and a combination classification module; the comprehensive association analysis comprehensiveness of the data can be improved by carrying out careful combinative analysis on the data of the consumers and the commodities, so that more effective data analysis support is provided for supermarket marketing, and the problems that the existing data analysis mode is single and effective analysis results are difficult to provide are solved.
The data classification module is used for carrying out basic qualitative and quantitative classification on the data; the data classification module is configured with a data classification policy, which includes: dividing data into consumer data, consumer behavior data and commodity data; then dividing the consumer data into young men, young women, children and adolescents, middle-aged men, middle-aged women, old men and old women; dividing the behavior data of the consumers into purchase duration, purchase quantity, purchase average total price and purchase frequency; the commodity data is divided into commodity selection duration, commodity purchase times and commodity price.
The effectiveness assignment module is used for carrying out comprehensive analysis based on qualitative classification and quantitative results of data and obtaining effectiveness assignment results; the effectiveness assignment module comprises effectiveness assignment strategies, and the effectiveness assignment strategies comprise:
substituting the purchase duration, the purchase quantity, the average purchase total price and the purchase frequency of each consumer into a consumer quantitative assignment formula to obtain a basic consumer coefficient assigned value; the consumer quantitative valuation formula is configured as:
Figure 991952DEST_PATH_IMAGE016
(ii) a Wherein Pjy gives a value for the base consumer coefficient, Jz is the average total price for purchase, Sgm is the number of purchases, Lgm is the frequency of purchases, and Tgm is the duration of purchases; the shorter the purchase duration, the higher the average total price and the purchase frequency, and the smaller the purchase quantity, the higher the purchasing power representing the consumer, and the main type of the consumer group faced by the supermarket can be obtained by solving the value given to the basic consumer coefficient.
And respectively assigning a basic young male coefficient, a basic young female coefficient, a basic child and adolescent coefficient, a basic middle-aged male coefficient, a basic middle-aged female coefficient, a basic old male coefficient and a basic old female coefficient to young men, young women, children and adolescents, middle-aged men, middle-aged women, old men and old women in the consumer data according to the obtained basic consumer coefficient assignment values of different consumers. The assignment method of the basic coefficient of each type of consumer comprises the following steps: and selecting basic consumer coefficient assigned values of the consumers of the type with the first type number to calculate an average value, and taking the average value calculated by each type as the basic coefficient of the type.
The commodity data is divided into commodity selection duration, commodity purchase times and commodity price, and the commodity selection duration, the commodity purchase times and the commodity price are substituted into a commodity quantitative assignment formula to obtain a basic commodity coefficient assigned value; the commodity quantitative assignment formula is configured as follows:
Figure 533922DEST_PATH_IMAGE018
(ii) a Wherein Psp is a basic commodity coefficient assigned value, Tsp is commodity selection duration, Ssp is commodity purchase frequency, and Jsp is commodity price. The commodity selection duration is obtained by monitoring the residence duration of a consumer in front of the commodity through a supermarket, and the residence duration is converted into the selection duration by default; the longer the selection of a good, the longer the length of time the consumer needs to stay in the supermarket, the higher the number of purchases of the good and the price of the good, the higher the ability of the good to create value.
Referring to fig. 2, the association analysis module is configured to perform association analysis on the assigned different types of data to obtain association analysis results of the different types of data; the correlation analysis module comprises a consumer correlation analysis unit, a commodity correlation analysis unit and a comprehensive analysis unit; the consumer association analysis unit is used for analyzing data of a plurality of consumers during shopping at the same time; the consumer association analysis unit is configured with a consumer association analysis policy, which includes: setting a first correlation analysis duration, and acquiring the type of the appearing consumer combination in the first correlation analysis duration; then obtaining the times, the total price of multiple purchases and the total duration of multiple purchases when different combination types are combined and matched for shopping;
substituting the times of combining and matching shopping of different combination types, the total price of multiple times of purchasing and the total duration of multiple times of shopping into a consumer combination coefficient solving formula to solve the consumer combination coefficient; the consumer combination coefficient solving formula is configured as follows:
Figure DEST_PATH_IMAGE020
(ii) a Xyz is a consumer combination coefficient, and Cyz, Jyd and Tyz are times, total prices of multiple purchases and total duration of multiple purchases when combined and collocated purchases are carried out for different combination types respectively;
substituting the consumer combination coefficient and the basic consumer coefficient assigned value of a single consumer in the consumer combination into a consumer combination calibration formula to obtain a consumer combination calibration coefficient; the consumer combination calibration formula is configured to:
Figure DEST_PATH_IMAGE022
(ii) a Wherein Xyj is the consumer combination calibration coefficient, and Pjy1 to Pjyi respectively assign values to the base consumer coefficient of different consumers in the consumer combination.
And sorting different consumer combinations from high to low according to the consumer combination calibration coefficient, and setting the consumer combination with the ranking in the proportion of the first consumer as the basic consumer combination. Wherein the first consumer proportion is typically set between 5% and 15%.
The commodity association analysis unit is used for analyzing data of combined purchase of different commodities; the commodity association analysis unit is configured with a commodity association analysis strategy, and the commodity association analysis strategy comprises: acquiring the type of each two commodity combinations appearing in the first correlation analysis duration; acquiring the times and the total price of the matched purchase of different types of commodity combinations;
substituting the times and total prices of different commodity combination types which are collocated and purchased into a commodity combination coefficient solving formula to solve a commodity combination coefficient; the commodity combination coefficient solving formula is configured as follows:
Figure DEST_PATH_IMAGE024
(ii) a Xsz is a commodity combination coefficient, Cdz and Jspz are respectively the times and total price of matched purchase of different types of commodity combinations;
substituting the commodity combination coefficient and the basic commodity coefficient assigned value of a single commodity into a commodity combination calibration formula to obtain a commodity combination calibration coefficient; the commodity combination calibration formula is configured to:
Figure DEST_PATH_IMAGE026
(ii) a Wherein Xjsz is a commodity combination calibration coefficient, and Psp1 and Psp2 assign values to the base commodity coefficients of two commodities in a commodity combination; and sorting the commodity combinations from high to low according to the commodity combination calibration coefficient, and setting the commodity combination with the first commodity proportion in the front sorting as the basic commodity combination. Wherein the first commercial proportion is typically set between 10% and 15%.
The comprehensive analysis unit is used for analyzing the comprehensive relevance between the consumer and the commodity; the comprehensive analysis unit is configured with a comprehensive analysis strategy, and the comprehensive analysis strategy comprises: acquiring the times of purchasing the basic commodity combination of the basic consumer combination, setting the times as the basic consumer commodity combination, and substituting the times of purchasing the basic consumer commodity combination into a comprehensive processing formula to obtain a comprehensive processing coefficient; the integrated processing formula is configured as:
Figure DEST_PATH_IMAGE028
(ii) a Wherein Xzh is the comprehensive processing coefficient, a is the comprehensive conversion base number, Czh is the number of times of commodity combination of the basic consumers; wherein the value of a is between 1 and 2.
The commodity combinations of the basic consumers are sorted from high to low according to the comprehensive processing coefficient, the combination with the first comprehensive proportion in the front of the sorting is set as the basic comprehensive combination, and the relation between the consumers with relatively high frequency and high total consumption and the commodities frequently bought by the consumers can be obtained through the comprehensive processing coefficient, so that the accuracy of analyzing the commodity sales relevance is further improved. The first overall ratio is usually set to between 10% and 20%.
The combined classification module is used for obtaining a combined classification result based on the relevance analysis result, and is configured with a combined classification strategy, wherein the combined classification strategy comprises: and setting a basic consumer combination classification unit, a basic commodity combination classification unit and a basic comprehensive combination classification unit for the basic consumer combination, the basic commodity combination and the basic comprehensive combination respectively, and setting a basic consumer memory, a basic commodity memory and a basic comprehensive memory in the basic consumer combination classification unit, the basic commodity combination classification unit and the basic comprehensive combination classification unit to store data of the basic consumer combination, the basic commodity combination and the basic comprehensive combination.
In the first embodiment, the units of the time length are uniformly set to be minutes, and the unit of the price is the unit of RMB.
Example two
Referring to fig. 3, the present invention further provides an analysis method of a data application system, where the analysis method includes the following steps:
step S10, firstly, performing basic qualitative and quantitative classification on the data;
step S20, carrying out comprehensive analysis based on qualitative classification and quantitative results of the data, and obtaining an effectiveness assignment result;
step S30, performing correlation analysis on the assigned different types of data to obtain correlation analysis results of the different types of data;
step S40, obtaining a combined classification result based on the relevance analysis result;
the specific implementation method of step S10 includes the following steps:
step S101, dividing data into consumer data, consumer behavior data and commodity data;
step S102, dividing the consumer data into young men, young women, children and adolescents, middle men, middle women, old men and old women;
step S103, dividing the behavior data of the consumers into purchase duration, purchase quantity, average purchase total price and purchase frequency;
step S104, the commodity data is divided into commodity selection duration, commodity purchase times and commodity price.
The specific implementation method of step S20 includes the following steps:
step S201, substituting the purchase duration, the purchase quantity, the average purchase total price and the purchase frequency of each consumer into a consumer quantitative assignment formula to obtain a basic consumer coefficient assigned value;
step S202, according to the obtained basic consumer coefficient assigned values of different consumers, a basic young male coefficient, a basic young female coefficient, a basic child and adolescent coefficient, a basic middle-aged male coefficient, a basic middle-aged female coefficient, a basic old male coefficient and a basic old female coefficient are respectively assigned to young males, females, children and adolescents, middle-aged males, middle-aged females, elderly males and elderly females in the consumer data;
and step S203, substituting the commodity data into a commodity quantitative assignment formula to obtain a basic commodity coefficient assignment value, wherein the commodity data are divided into commodity selection duration, commodity purchase times and commodity price.
The specific implementation method of step S30 includes the following steps:
step S3011, setting a first correlation analysis duration, and acquiring types of the appearing consumer combinations in the first correlation analysis duration; then obtaining the times, the total price of multiple purchases and the total duration of multiple purchases when different combination types are combined and matched for shopping;
step S3012, substituting the times of shopping combined and matched with different combination types, the total price of multiple purchases and the total duration of multiple purchases into a consumer combination coefficient solving formula to solve a consumer combination coefficient;
step S3013, substituting the consumer combination coefficient and the basic consumer coefficient assigned value of a single consumer in the consumer combination into a consumer combination calibration formula to obtain a consumer combination calibration coefficient;
step S3014, according to the consumer combination calibration coefficient, different consumer combinations are ranked from high to low, and the consumer combination ranked in the first consumer proportion is set as a basic consumer combination;
step S3021, acquiring the type of each two commodity combinations appearing in the first correlation analysis duration; acquiring the times and the total price of the matched purchase of different types of commodity combinations;
step S3022, substituting the times and total prices of the collocated purchases of different commodity combinations into a commodity combination coefficient solving formula to solve a commodity combination coefficient;
step S3023, substituting the commodity combination coefficient and the basic commodity coefficient assigned value of a single commodity into a commodity combination calibration formula to obtain a commodity combination calibration coefficient;
step S3024, sorting the commodity combinations from high to low according to the commodity combination calibration coefficients, and setting the commodity combinations with the first commodity proportion in the front sorting as basic commodity combinations;
step S3031, acquiring the times of purchasing the basic commodity combination of the basic consumer combination, setting the times as the basic consumer commodity combination, and substituting the times of purchasing the basic commodity combination of the basic consumer into a comprehensive processing formula to obtain a comprehensive processing coefficient;
step S3032, the basic consumer commodity combinations are sorted from high to low according to the comprehensive processing coefficient, and the combination with the first comprehensive proportion in the front sorting is set as the basic comprehensive combination.
The specific implementation method of step S40 includes the following steps:
step S401, a basic consumer combination classification unit, a basic commodity combination classification unit and a basic comprehensive combination classification unit are respectively set for the basic consumer combination, the basic commodity combination and the basic comprehensive combination, and a basic consumer memory, a basic commodity memory and a basic comprehensive memory are arranged in the basic consumer combination classification unit, the basic commodity combination classification unit and the basic comprehensive combination classification unit to store data of the basic consumer combination, the basic commodity combination and the basic comprehensive combination.
In the second embodiment, the units of the time length are uniformly set to be minutes, and the unit of the price is the unit of RMB.
Finally, it should be noted that: the above-mentioned embodiments are only specific embodiments of the present invention, which are used for illustrating the technical solutions of the present invention and not for limiting the same, and the protection scope of the present invention is not limited thereto, although the present invention is described in detail with reference to the foregoing embodiments, those skilled in the art should understand that: any person skilled in the art can modify or easily conceive the technical solutions described in the foregoing embodiments or equivalent substitutes for some technical features within the technical scope of the present disclosure; such modifications, changes or substitutions do not depart from the spirit and scope of the embodiments of the present invention, and they should be construed as being included therein. Therefore, the protection scope of the present invention shall be subject to the protection scope of the appended claims.

Claims (9)

1. A data application system is characterized in that the application system is applied to the field of supermarket data analysis; the application system comprises a data classification module, an effectiveness assignment module, an association analysis module and a combined classification module;
the data classification module is used for carrying out basic qualitative and quantitative classification on the data;
the effectiveness assignment module is used for carrying out comprehensive analysis based on qualitative classification and quantitative results of data and obtaining effectiveness assignment results;
the correlation analysis module is used for performing correlation analysis on the assigned different types of data to obtain correlation analysis results of the different types of data;
and the combined classification module is used for obtaining a combined classification result based on the correlation analysis result.
2. The data application system of claim 1, wherein the data classification module is configured with a data classification policy, the data classification policy comprising: dividing data into consumer data, consumer behavior data and commodity data;
then dividing the consumer data into young men, young women, children and adolescents, middle-aged men, middle-aged women, old men and old women;
dividing the behavior data of the consumers into purchase duration, purchase quantity, purchase average total price and purchase frequency;
the commodity data is divided into commodity selection duration, commodity purchase times and commodity price.
3. The data application of claim 2, wherein the validity assignment module comprises a validity assignment policy, the validity assignment policy comprising:
substituting the purchase duration, the purchase quantity, the average purchase total price and the purchase frequency of each consumer into a consumer quantitative assignment formula to obtain a basic consumer coefficient assigned value;
according to the obtained basic consumer coefficient assigned values of different consumers, basic young male, young female, children and adolescents, middle-aged male, middle-aged female, old male and old female in the consumer data are respectively assigned with a basic young male coefficient, a basic young female coefficient, a basic child and adolescent coefficient, a basic middle-aged male coefficient, a basic middle-aged female coefficient, a basic old male coefficient and a basic old female coefficient; the assignment method of the basic coefficient of each type of consumer comprises the following steps: selecting basic consumer coefficient assigned values of the consumers of the type with the first type number to calculate an average value, and taking the average value calculated by each type as the basic coefficient of the type;
and substituting the commodity data into a commodity quantitative assignment formula to obtain a basic commodity coefficient assigned value, wherein the commodity data comprises commodity selection duration, commodity purchase times and commodity price.
4. The data application system of claim 3, wherein the correlation analysis module comprises a consumer correlation analysis unit, a commodity correlation analysis unit and a comprehensive analysis unit;
the consumer association analysis unit is used for analyzing data of a plurality of consumers during shopping at the same time; the commodity association analysis unit is used for analyzing the data of combined purchase of different commodities; the comprehensive analysis unit is used for analyzing the comprehensive relevance between the consumers and the commodities.
5. The data application system of claim 4, wherein the consumer association analysis unit is configured with a consumer association analysis policy, the consumer association analysis policy comprising: setting a first correlation analysis duration, and acquiring the type of the appearing consumer combination in the first correlation analysis duration; then obtaining the times, the total price of multiple purchases and the total duration of multiple purchases when different combination types are combined and matched for shopping;
substituting times, total prices of multiple purchases and total duration of multiple purchases of different combination types into a consumer combination coefficient solving formula to solve a consumer combination coefficient;
substituting the consumer combination coefficient and the basic consumer coefficient assigned value of a single consumer in the consumer combination into a consumer combination calibration formula to obtain a consumer combination calibration coefficient;
and sorting different consumer combinations from high to low according to the consumer combination calibration coefficient, and setting the consumer combination with the ranking in the proportion of the first consumer as the basic consumer combination.
6. The data application system of claim 5, wherein the commodity association analysis unit is configured with a commodity association analysis policy, and the commodity association analysis policy comprises: acquiring the type of each two commodity combinations appearing in the first correlation analysis duration; acquiring the times and the total price of the matched purchase of different types of commodity combinations;
substituting the times and total prices of different commodity combination types which are collocated and purchased into a commodity combination coefficient solving formula to solve a commodity combination coefficient;
substituting the commodity combination coefficient and the basic commodity coefficient assigned value of a single commodity into a commodity combination calibration formula to obtain a commodity combination calibration coefficient;
and sorting the commodity combinations from high to low according to the commodity combination calibration coefficient, and setting the commodity combination with the first commodity proportion in the front sorting as the basic commodity combination.
7. The data application system of claim 6, wherein the integrated analysis unit is configured with an integrated analysis policy, the integrated analysis policy comprising: acquiring the times of purchasing the basic commodity combination of the basic consumer combination, setting the times as the basic consumer commodity combination, and substituting the times of purchasing the basic consumer commodity combination into a comprehensive processing formula to obtain a comprehensive processing coefficient;
and sorting the basic consumer commodity combinations from high to low according to the comprehensive processing coefficient, and setting the combination with the first comprehensive proportion in the top sorting as the basic comprehensive combination.
8. The data application system of claim 7, wherein the combined classification module is configured with a combined classification policy, the combined classification policy comprising: and setting a basic consumer combination classification unit, a basic commodity combination classification unit and a basic comprehensive combination classification unit for the basic consumer combination, the basic commodity combination and the basic comprehensive combination respectively, and setting a basic consumer memory, a basic commodity memory and a basic comprehensive memory in the basic consumer combination classification unit, the basic commodity combination classification unit and the basic comprehensive combination classification unit to store data of the basic consumer combination, the basic commodity combination and the basic comprehensive combination.
9. The method for analyzing a data application system according to any one of claims 1 to 8, wherein the method for analyzing comprises the steps of:
step S10, firstly, performing basic qualitative and quantitative classification on the data;
step S20, carrying out comprehensive analysis based on qualitative classification and quantitative results of the data, and obtaining an effectiveness assignment result;
step S30, performing correlation analysis on the assigned different types of data to obtain correlation analysis results of the different types of data;
in step S40, a combined classification result is obtained based on the result of the relevance analysis.
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