WO2023105791A1 - 情報処理方法 - Google Patents

情報処理方法 Download PDF

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Publication number
WO2023105791A1
WO2023105791A1 PCT/JP2021/045654 JP2021045654W WO2023105791A1 WO 2023105791 A1 WO2023105791 A1 WO 2023105791A1 JP 2021045654 W JP2021045654 W JP 2021045654W WO 2023105791 A1 WO2023105791 A1 WO 2023105791A1
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Prior art keywords
data
information processing
feature amount
person
physical condition
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English (en)
French (fr)
Japanese (ja)
Inventor
祐 北出
剛範 辻川
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NEC Corp
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NEC Corp
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Priority to US18/714,165 priority Critical patent/US20250037863A1/en
Priority to JP2023566062A priority patent/JP7647931B2/ja
Priority to PCT/JP2021/045654 priority patent/WO2023105791A1/ja
Publication of WO2023105791A1 publication Critical patent/WO2023105791A1/ja
Anticipated expiration legal-status Critical
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    • GPHYSICS
    • G16INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR SPECIFIC APPLICATION FIELDS
    • G16HHEALTHCARE INFORMATICS, i.e. INFORMATION AND COMMUNICATION TECHNOLOGY [ICT] SPECIALLY ADAPTED FOR THE HANDLING OR PROCESSING OF MEDICAL OR HEALTHCARE DATA
    • G16H50/00ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics
    • G16H50/20ICT specially adapted for medical diagnosis, medical simulation or medical data mining; ICT specially adapted for detecting, monitoring or modelling epidemics or pandemics for computer-aided diagnosis, e.g. based on medical expert systems
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • AHUMAN NECESSITIES
    • A61MEDICAL OR VETERINARY SCIENCE; HYGIENE
    • A61BDIAGNOSIS; SURGERY; IDENTIFICATION
    • A61B5/00Measuring for diagnostic purposes; Identification of persons
    • A61B5/16Devices for psychotechnics; Testing reaction times ; Devices for evaluating the psychological state

Definitions

  • the present invention relates to an information processing method, information processing apparatus, and program for estimating the physical condition of a person.
  • a model for calculating a stress value is learned and generated in advance, and data that causes stress such as biometric data from a person is input to the model.
  • data that causes stress such as biometric data from a person is input to the model.
  • the model is generated by learning using the feature amount of the person's biometric data as an explanatory variable and the person's stress value obtained from a questionnaire or the like as an objective variable.
  • Patent Literature 1 describes a stress estimation method using a model.
  • an object of the present invention is to provide an information processing method that can solve the above-described problem of difficulty in estimating a physical condition with higher accuracy.
  • An information processing method which is one embodiment of the present invention, comprises: mapping the correct data out of learning data including state data representing the state of a predetermined person and correct data representing the physical condition of the predetermined person when the state data was obtained, onto a nonlinear space; generating an estimation model used for estimating the physical condition of a target person by learning the state data as an explanatory variable and the mapped correct data as an objective variable; take the configuration.
  • an information processing device includes: a conversion unit that maps the correct data out of learning data including state data representing the state of a predetermined person and correct data representing the physical condition of the predetermined person when the state data was acquired to a nonlinear space; , a generation unit that generates an estimation model used for estimating the physical condition of a target person by learning the state data as an explanatory variable and the mapped correct data as an objective variable; with take the configuration.
  • a program that is one embodiment of the present invention is information processing equipment, mapping the correct data out of learning data including state data representing the state of a predetermined person and correct data representing the physical condition of the predetermined person when the state data was obtained, onto a nonlinear space; generating an estimation model used for estimating the physical condition of a target person by learning the state data as an explanatory variable and the mapped correct data as an objective variable; to carry out the process, take the configuration.
  • the present invention can estimate the physical condition with higher accuracy.
  • FIG. 1 is a block diagram showing the configuration of a stress estimation device according to Embodiment 1 of the present invention
  • FIG. FIG. 2 is a diagram showing an example of a test for acquiring subjective data on a person's stress that is input to the stress estimating device disclosed in FIG. 1
  • 2 is a diagram showing an example of a function used when generating a model in the stress estimation device disclosed in FIG. 1
  • FIG. 2 is a flow chart showing the operation of the stress estimating device disclosed in FIG. 1
  • 2 is a flow chart showing the operation of the stress estimating device disclosed in FIG. 1
  • FIG. 5 is a block diagram showing the hardware configuration of an information processing apparatus according to Embodiment 2 of the present invention
  • FIG. 4 is a block diagram showing the configuration of an information processing device according to Embodiment 2 of the present invention
  • 9 is a flow chart showing the operation of the information processing device according to Embodiment 2 of the present invention
  • FIG. 1 to 3 are diagrams for explaining the configuration of the stress estimation device
  • FIGS. 4 to 5 are diagrams for explaining the processing operation of the stress estimation device.
  • the stress estimation device 10 (information processing device) in the present invention is used to estimate the stress of a person.
  • the stress estimating device 10 is used to calculate a stress value under a predetermined situation in which a person is performing work at the workplace to which the person belongs.
  • the stress estimating device 10 in the present invention may calculate stress under any circumstances of a person.
  • the present invention is not limited to estimating stress, but can also be applied to estimating the physical condition of a person, such as physical and mental fatigue and inner condition.
  • the stress value mentioned in the present embodiment is an example of the value of the physical condition of the person to be estimated. It can be any value, such as some index value to represent.
  • the stress estimation device 10 is composed of one or a plurality of information processing devices each having an arithmetic device and a storage device.
  • the stress estimation device 10 includes a data acquisition unit 11, a preprocessing unit 12, a learning unit 13, a calculation unit 14, and an output unit 15, as shown in FIG.
  • Each function of the data acquisition unit 11, the preprocessing unit 12, the learning unit 13, the calculation unit 14, and the output unit 15 is realized by executing a program for realizing each function stored in the storage device by the arithmetic unit. be able to.
  • the stress estimation device 10 also includes a person information storage unit 16 and a model storage unit 17 .
  • the person information storage unit 16 and the model storage unit 17 are configured by storage devices. Each configuration will be described in detail below.
  • the data acquisition unit 11 acquires data used for estimating a person's stress. First, the data acquisition unit 11 acquires learning data for generating a stress estimation model used for calculating a stress value by machine learning.
  • the learning data is data of a large number of arbitrary persons (predetermined persons), and is stored in the person information storage unit 16 as described later.
  • the data acquisition unit 11 acquires, as learning data, state data representing the state of a person under a predetermined situation, such as a situation in which the person is working in an office or the like.
  • the state data is, for example, biometric data that is various information emitted from the body of the person.
  • the biometric data is, for example, heart rate, degree of eye opening, and the like.
  • the data acquisition unit 11 acquires the heart rate of the person U through a measuring device such as a wearable terminal W worn by the person U, or the heart rate of the person U captured by a camera (not shown).
  • Biological data such as the degree of eye opening extracted from the face image is obtained as state data.
  • the data acquisition unit 11 measures biometric data by distinguishing between persons and periods, and acquires them as state data.
  • the data acquisition unit 11 may acquire any biological data as the person's condition data using any measuring device, and may acquire other data representing the condition of the person in addition to the biological data.
  • the data acquisition unit 11 acquires, as learning data, correct data representing the stress situation of a predetermined person when biometric data is acquired from the person as described above.
  • the correct data is data based on subjective data regarding stress of a person.
  • the data acquisition unit 11 poses a preset question to the person via the input device 20 during work, at the end of work, or after a certain period of time has passed, and receives an answer from the person U.
  • the data acquisition unit 11 acquires correct data by distinguishing persons and periods.
  • the data acquisition unit 11 acquires a "PSS score" obtained by aggregating a "perceived stress scale (PSS)" as correct data that is data based on subjective data regarding a person's stress.
  • PSS perceived stress scale
  • the PSS consists of 14 preset questions asking how the user feels about what is happening, and 5 levels of answers are prepared. It is what is done. A score of 0 to 4 points is assigned to the answers on a scale of 5, and the total score of the answers to the 10 questions to be calculated among the 14 questions is calculated as the PSS score. Therefore, the PSS score ranges from 0 to 40 points.
  • the data acquisition unit 11 displays PSS questions as shown in FIG.
  • the data acquisition unit 11 is not limited to acquiring data based on subjective data regarding the stress of a person as the correct data, and may acquire data representing the state of stress acquired by other methods as the correct data. .
  • the data acquisition unit 11 associates the state data and the correct answer data acquired from the predetermined person as described above with each person and each period, and stores them in the person information storage unit 16 as learning data. For example, when acquiring status data and correct answer data from a person on a monthly basis, the data acquisition unit 11 associates and stores the monthly status data and correct answer data for each person.
  • the preprocessing unit 12 (converting unit) performs machine learning using the learning data including the state data and the correct answer data acquired as described above and stored in the person information storage unit 16, and converts the learning data into pretreatment.
  • the preprocessing unit 12 maps the correct data to the nonlinear space for the data set consisting of the state data and the correct data.
  • the preprocessing unit 12 maps the correct data to the nonlinear space using a function that can define an inverse function so that the stress value calculated using the model can be inversely mapped to the linear space as described later. It is desirable to do so. For this reason, in the present embodiment, any one of the cubic functions indicated by symbols M1 and M2 in FIG. 3, the exponential function indicated by symbol M3, and the quadratic function indicated by symbol M4 is used to Let us map the data to a nonlinear space.
  • the preprocessing unit 12 extracts a plurality of types of feature amounts from the biometric data, which is state data, among the learning data for each person and for each period, and generates feature amount data. For example, the preprocessing unit 12 extracts the mean value, variance/standard deviation, maximum value, minimum value, quartile, histogram mean, variance, and quartile in the time domain from the biological data acquired along the time series. Extract multiple types of feature quantity data such as quantiles and power spectrum peaks. Then, the preprocessing unit 12 associates the mapped correct data with each type of feature amount data, and generates a data set of the feature amount data and the mapped correct data.
  • the preprocessing unit 12 associates the mapped correct data with each type of feature amount data, and generates a data set of the feature amount data and the mapped correct data.
  • the preprocessing unit 12 generates a data set of each feature amount data and the mapped correct data for each person for each period.
  • a data set of each feature amount data and the mapped correct data for each person for each period.
  • learning data consisting of three months of state data and mapped correct data is acquired for one person, and five types of feature amount data are extracted from the state data, 1 Five data sets are generated for each month, and 15 data sets are generated for three months. Then, such data sets are generated for each person.
  • the preprocessing unit 12 may generate a plurality of types of feature amount data from the state data before mapping the correct data onto the nonlinear space as described above.
  • the preprocessing unit 12 associates correct data with each type of feature amount data, generates a data set of the feature amount data and the correct data, and then maps the correct data in each data set to the nonlinear space. Then, a data set of the feature amount data and the mapped correct data is generated.
  • the preprocessing unit 12 selects the type of feature amount data to be used for machine learning as learning data from among the feature amount data extracted from the state data as described above.
  • the preprocessing unit 12 calculates a correlation value representing the degree of correlation between the feature amount data and the mapped correct data for each type of feature amount data, and selects the type of feature amount data based on the correlation value. do.
  • the preprocessing unit 12 sets the data distribution of the mapped correct data and the data distribution of the feature amount data for the mapped correct data and the feature amount data forming all the data sets belonging to the type in advance.
  • a correlation value representing the degree of mutual approximation or the degree of correlation is calculated according to the reference.
  • the correlation value is calculated for each type, that is, if there are five types of feature amount data described above, the correlation value for each of the five types is calculated, and the top N types of feature amount data with the highest correlation value are calculated.
  • a type of feature amount data whose correlation value exceeds a preset threshold is selected.
  • the preprocessing unit 12 may select the type of feature amount data based on any criteria. For example, when the preprocessing unit 12 extracts feature amount data from the state data before mapping the correct data and generates a data set of the feature amount data and the correct data, the preprocessing unit 12 extracts the correct data before mapping and the feature data. Feature amount data may be selected from the distribution with the amount data, and then the correct data may be mapped to the nonlinear space in the same manner as described above.
  • the learning unit 13 (generating unit) performs machine learning using the data set of the feature amount data selected as described above and the correct data mapped to the nonlinear space as learning data, and generates a stress estimation model (estimation model). to generate Specifically, the learning unit 13 performs machine learning using all data sets including feature amount data of the selected type as learning data, using the feature amount data as explanatory variables, and using the mapped correct data as objective variables. .
  • the generated stress estimation model can be a model that is configured to use the biometric data of the person U as an input and calculate values from 0 to 40 as values mapped to a nonlinear space, similar to the above-described PSS score. Then, the learning unit 13 stores the stress estimation model generated by machine learning in the model storage unit 17 .
  • the function of each part when estimating the stress of the target person (target person) using the stress estimation model will be described.
  • the target person U belongs to a certain workplace, and assumes a scene of estimating stress under a predetermined situation such as working in the workplace.
  • the data acquisition unit 11 acquires state data (target person measurement data) used to estimate the stress of the target person U. Specifically, the data acquisition unit 11 obtains state data, which is biometric data, from the target person U when the target person U is in a situation such as working in a workplace where stress is actually estimated. Measure and get. For example, in the same manner as described above, the data acquisition unit 11 acquires the heart rate of the person U as biometric data via a measurement device such as a wearable terminal W worn by the person U, or captures the heart rate using a camera (not shown). The degree of eye opening extracted from the face image of person U is obtained as biometric data. At this time, the data acquisition unit 11 acquires biometric data from the person U who is in a situation such as working at a workplace at preset timings, for example, at regular time intervals.
  • state data which is biometric data
  • the calculation unit 14 calculates feature amount data of the biometric data each time it acquires biometric data from the person U as described above. At this time, the calculation unit 14 extracts feature amount data (target person feature amount data) of the same type as the type of feature amount data selected by the preprocessing unit 12 as described above from the biometric data. Note that the calculation unit 14 may calculate feature amount data of all preset types from the biometric data, and extract feature amount data of the same type as the selected type from among the feature amount data. good.
  • the calculation unit 14 reads the stress estimation model stored in the model storage unit 17, and inputs feature amount data of the same type as the feature amount data selected by the preprocessing unit 12 to the stress estimation model. By doing so, the stress value that is the output is calculated. That is, after the person U starts work, the calculation unit 14 calculates the stress value at each preset timing, such as a predetermined time interval for acquiring biometric data from the person U, as described above. The timing of calculating the stress value may be, for example, during work, or at any interval such as every month.
  • calculation unit 14 (inverse transformation unit) inversely maps the stress value calculated using the stress estimation model as described above to the linear space.
  • the calculation unit 14 converts the stress value calculated by the stress estimation model into the linear space using the inverse function of the function used when mapping the correct data to the nonlinear space before learning in the preprocessing unit 12. reverse map.
  • the output unit 15 outputs information based on the stress values calculated by the calculation unit 14 and inversely mapped to the linear space as described above. For example, every time the stress value is calculated, the output unit 15 determines whether the stress value exceeds a preset reference value for determining that the stress is high, and the management of the workplace managing the person U. An alert is output so as to be displayed on the display device 30 of the information processing device operated by the person. Alternatively, the output unit 15 may always output to display the stress value itself, that is, the chronological change in the stress value of the person U each time the stress value is calculated, and output any data based on the stress value. may In addition, the output unit 15 may output the data based on the stress value to any person, such as to the person U who is the target.
  • the stress estimation device 10 acquires learning data for generating a stress calculation model used for calculating stress values by machine learning. Specifically, the stress estimating apparatus 10 acquires, as learning data, state data representing the state of a person under a predetermined situation such as a situation where the person is working in an office or the like. For example, the stress estimation device 10 acquires biological data such as the heart rate of the person U as state data via a measurement device such as a wearable terminal W worn by the person U (step S1).
  • the stress estimation device 10 acquires, as learning data, correct data representing the stress situation of a predetermined person when biometric data is acquired from the person as described above (step S2).
  • the correct data is data based on subjective data on the stress of a person, and as an example, a "PSS score" obtained by aggregating a "perceived stress scale (PSS)" is acquired.
  • the stress estimation device 10 preprocesses the learning data before performing machine learning using the learning data composed of the state data and the correct answer data acquired as described above.
  • the stress estimation device 10 maps the correct data included in the data set consisting of the state data and the correct data to the nonlinear space (step S3).
  • the stress estimating apparatus 10 maps the correct data onto the nonlinear space using, for example, a monotonically increasing function with a rate of change of 1 or more and an inverse function that can be defined, as shown in FIG.
  • the stress estimation device 10 extracts a plurality of types of feature amounts from the biometric data, which is the state data, among the learning data to generate feature amount data. Then, the stress estimation apparatus 10 associates the mapped correct data with each feature amount data, and generates a data set of each feature amount data and the mapped correct data.
  • the stress estimation device 10 selects the type of feature data to be used for machine learning as learning data from among the feature data extracted from the state data (step S4). At this time, the stress estimation device 10 calculates a correlation value representing the degree of correlation between the feature amount data and the correct data for each type of feature amount data, and selects the type of feature amount data based on the correlation value.
  • the stress estimating apparatus 10 performs machine learning using the data set of the feature amount data selected as described above and the correct data mapped to the nonlinear space as learning data to generate a stress estimation model (step S5).
  • the stress estimation device 10 uses all data sets including the selected type of feature amount data as learning data, uses the feature amount data as explanatory variables, and uses the mapped correct data as objective variables to perform machine learning. conduct.
  • the stress estimating apparatus 10 uses the biometric data of the person U as an input and creates a stress estimating model that calculates the stress value consisting of values from 0 to 40 as a value mapped to a nonlinear space, similar to the PSS score described above. Generate.
  • the stress estimation device 10 acquires state data used for estimating the stress of the target person U.
  • the data acquisition unit 11 obtains state data, which is biometric data, from the target person U when the target person U is in a situation such as working in a workplace where stress is actually estimated. It is obtained by measuring (step S11).
  • the stress estimation device 10 extracts feature amount data from the biometric data (step S12). At this time, the stress estimating device 10 extracts the same type of feature amount data as the type of feature amount data selected in the learning data when generating the model as described above.
  • the stress estimating device 10 inputs the extracted feature amount data to the stress estimating model to calculate the stress value as the output (step S13). Furthermore, the stress estimation device 10 inversely maps the calculated stress value to the linear space (step S14). At this time, the stress estimation device 10 inversely maps the stress values calculated by the stress estimation model to the linear space using the inverse function of the function used to map the correct data to the nonlinear space before learning.
  • the stress estimation device 10 outputs information based on the stress values inversely mapped to the linear space (step S15). For example, the stress estimation device 10 outputs stress information of the target person U, such as the stress value itself or an alert based on the stress value.
  • the correct data which are the stress values in the learning data
  • the correct data are mapped onto the nonlinear space and then learned to generate a model.
  • the present invention is applicable not only to estimating a person's stress, but also to estimating a person's physical condition such as physical and mental fatigue and inner condition.
  • data representing physical condition as the above-mentioned correct data, for example, a score based on subjective data regarding fatigue and condition of the person, a value representing the physical condition of the person can be estimated in the same manner as described above.
  • FIG. 6 and 7 are block diagrams showing the configuration of the information processing apparatus according to the second embodiment
  • FIG. 8 is a flowchart showing the operation of the information processing apparatus.
  • an outline of the configuration of the stress estimation device and the stress estimation method described in the above-described embodiments is shown.
  • the information processing apparatus 100 is configured by a general information processing apparatus, and has, as an example, the following hardware configuration.
  • - CPU Central Processing Unit
  • ROM Read Only Memory
  • RAM Random Access Memory
  • Program group 104 loaded into RAM 103 - Storage device 105 for storing program group 104
  • a drive device 106 that reads and writes from/to a storage medium 110 external to the information processing device
  • Communication interface 107 connected to communication network 111 outside the information processing apparatus
  • Input/output interface 108 for inputting/outputting data
  • a bus 109 connecting each component
  • the information processing apparatus 100 can construct and equip the conversion unit 121 and the generation unit 122 shown in FIG. 7 by having the CPU 101 acquire and execute the program group 104 .
  • the program group 104 is stored in the storage device 105 or the ROM 102 in advance, for example, and is loaded into the RAM 103 and executed by the CPU 101 as necessary.
  • the program group 104 may be supplied to the CPU 101 via the communication network 111 or may be stored in the storage medium 110 in advance, and the drive device 106 may read the program and supply it to the CPU 101 .
  • the conversion unit 121 and the generation unit 122 described above may be configured by a dedicated electronic circuit for realizing such means.
  • FIG. 6 shows an example of the hardware configuration of the information processing device 100, and the hardware configuration of the information processing device is not limited to the case described above.
  • the information processing apparatus may be composed of part of the above-described configuration, such as not having the drive device 106 .
  • the information processing apparatus 100 executes the information processing method shown in the flowchart of FIG. 8 by the functions of the conversion unit 121 and the generation unit 122 constructed by the program as described above.
  • the information processing device 100 Of the learning data containing state data representing the state of a predetermined person and correct data representing the physical condition of the predetermined person when the state data was obtained, the correct data is mapped onto a nonlinear space (step S101). ), generating an estimation model used for estimating the physical condition of a target person by learning the state data as an explanatory variable and the mapped correct data as an objective variable (step S102); Execute the process.
  • the present invention maps the correct data representing the physical condition among the learning data to the nonlinear space and then learns to generate an estimation model.
  • an estimation model As a result, even when data representing the physical condition is extremely skewed toward the median value is collected as learning data, it is possible to generate a model that suppresses the value representing the physical condition from being skewed toward the median value. It is possible to estimate the physical condition with higher accuracy.
  • Appendix 2 The information processing method according to Appendix 1, calculating a value representing physical condition by inputting target person state data representing the state of the target person acquired from the target person into the estimation model; Inverse mapping of the calculated physical condition value to the linear space, Information processing methods.
  • Appendix 3 The information processing method according to appendix 1 or 2, Mapping the correct data to a nonlinear space using a monotonically increasing function with a rate of change of 1 or more; Information processing methods.
  • Appendix 4 The information processing method according to any one of Appendices 1 to 3, mapping the correct data to a nonlinear space using a function that can define an inverse function; Information processing methods.
  • Appendix 5 The information processing method according to any one of Appendices 1 to 4, The state data is composed of a plurality of feature amount data extracted from measurement data measured from a predetermined person, generating the estimation model by learning, as an explanatory variable, the feature amount data selected based on the correct data from among the plurality of feature amount data; Information processing methods.
  • Appendix 6 The information processing method according to appendix 5, calculating the degree of correlation between the feature amount data and the correct data for each type of the feature amount data; to generate Information processing methods.
  • appendix 7 The information processing method according to appendix 5 or 6, calculating a value representing physical condition by inputting target person feature amount data extracted from target person measurement data measured from the target person, which is the same type as the selected feature amount data, into the estimation model; Inverse mapping of the calculated physical condition value to the linear space, Information processing methods.
  • (Appendix 8) a conversion unit that maps the correct data out of learning data including state data representing the state of a predetermined person and correct data representing the physical condition of the predetermined person when the state data was acquired to a nonlinear space; , a generation unit that generates an estimation model used for estimating the physical condition of a target person by learning the state data as an explanatory variable and the mapped correct data as an objective variable;
  • Information processing device with (Appendix 9) The information processing device according to appendix 8, a calculation unit that calculates a value representing physical condition by inputting target person state data representing the state of the target person acquired from the target person into the estimation model; an inverse transformation unit that inversely maps the calculated value representing the physical condition to a linear space;
  • Information processing device with (Appendix 10) The information processing device according to appendix 8 or 9, The conversion unit maps the correct data to a nonlinear space using a monotonically increasing function with a rate of change of 1 or more.
  • Information processing equipment (Appendix 11) The information processing device according to any one of Appendices 8 to 10, The transformation unit maps the correct data to a nonlinear space using a function capable of defining an inverse function. Information processing equipment. (Appendix 12) The information processing device according to any one of Appendices 8 to 11, The state data is composed of a plurality of feature amount data extracted from measurement data measured from a predetermined person, The generation unit generates the estimation model by learning, as an explanatory variable, the feature amount data selected based on the correct data from among the plurality of feature amount data, Information processing equipment.
  • Appendix 13 The information processing device according to Appendix 12, The generation unit calculates a degree of correlation between the feature amount data and the correct data for each type of the feature amount data, and learns the feature amount data selected based on the calculated degree of correlation as an explanatory variable. generating the estimated model by Information processing equipment.
  • Appendix 14 The information processing device according to appendix 12 or 13, Calculation for calculating a value representing a physical condition by inputting target person feature amount data extracted from target person measurement data measured from the target person, which is the same type as the selected feature amount data, into the estimation model.
  • Information processing device with (Appendix 15) information processing equipment mapping the correct data out of learning data including state data representing the state of a predetermined person and correct data representing the physical condition of the predetermined person when the state data was obtained, onto a nonlinear space; generating a physical condition estimation model used for estimating the physical condition of a target person by learning the state data as an explanatory variable and the mapped correct data as an objective variable;
  • a computer-readable storage medium storing a program for executing processing.
  • Appendix 16 A computer-readable storage medium storing the program according to Supplementary Note 15, calculating a value representing physical condition by inputting target person state data representing the state of the target person acquired from the target person into the estimation model; Inverse mapping of the calculated physical condition value to the linear space, A computer-readable storage medium storing a program for executing processing.

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PCT/JP2021/045654 2021-12-10 2021-12-10 情報処理方法 Ceased WO2023105791A1 (ja)

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