A happiness degree predictor using the conceptual data structure for deep learning architectures

Comput Methods Programs Biomed. 2019 Jan:168:59-68. doi: 10.1016/j.cmpb.2017.11.004. Epub 2017 Nov 13.

Abstract

Background and objective: Happiness is a universal fundamental human goal. Since the emergence of Positive Psychology, a major focus in psychological research has been to study the role of certain factors in the prediction of happiness. The conventional methodologies are based on linear relationships, such as the commonly used Multivariate Linear Regression (MLR), which may suffer from the lack of representative capacity to the varied psychological features. Using Deep Neural Networks (DNN), we define a Happiness Degree Predictor (H-DP) based on the answers to five psychometric standardized questionnaires.

Methods: A Data-Structure driven architecture for DNNs (D-SDNN) is proposed for defining a HDP in which the network architecture enables the conceptual interpretation of psychological factors associated to happiness. Four different neural network configurations have been tested, varying the number of neurons and the presence or absence of bias in the hidden layers. Two metrics for evaluating the influence of conceptual dimensions have been defined and computed: one quantifies the influence weight of the conceptual dimension in absolute terms and the other one pinpoints the direction (positive or negative) of the influence.

Materials: A cross-sectional survey targeting non-institutionalized adult population residing in Spain was completed by 823 cases. The total of 111 elements of the survey are grouped by socio-demographic data and by five psychometric scales (Brief COPE Inventory, EPQR-A, GHQ-28, MOS-SSS and SDHS) measuring several psychological factors acting one as the outcome (SDHS) and the four others as predictors.

Results: Our D-SDNN approach provided a better outcome (MSE: 1.46·10-2) than MLR (MSE: 2.30·10-2), hence improving by 37% the predictive accuracy, and allowing to simulate the conceptual structure.

Conclusions: We observe a better performance of Deep Neural Networks (DNN) with respect to traditional methodologies. This demonstrates its capability to capture the conceptual structure for predicting happiness degree through psychological variables assessed by standardized questionnaires. It also permits to estimate the influence of each factor on the outcome without assuming a linear relationship.

Keywords: Data-structure driven deep neural network (D-SDNN); Deep learning; Happiness; Happiness-Degree Predictor (H-DP).

MeSH terms

  • Adaptation, Psychological
  • Algorithms
  • Cross-Sectional Studies
  • Deep Learning*
  • Emotions
  • Female
  • Happiness*
  • Humans
  • Male
  • Medical Informatics
  • Models, Psychological
  • Multivariate Analysis
  • Predictive Value of Tests
  • Psychometrics
  • Social Support
  • Software
  • Stress, Psychological
  • Surveys and Questionnaires