Abstract

Depression has become one of the most common mental illnesses, and the widespread use of social media provides new ideas for detecting various mental illnesses. The purpose of this study is to use machine learning technology to detect users of depressive patients based on user-shared content and posting behaviors in social media. At present, the existing research mostly uses a single detection method, and the unbalanced class distribution often leads to a low recognition rate. In addition, a large number of irrelevant or redundant features in high-dimensional data sets interfere with the accuracy of recognition. To solve this problem, this paper proposes a hybrid feature selection and stacking ensemble strategy for depression user detection. First, recursive elimination method and extremely randomized trees method are used to calculate feature importance and mutual information value, calculate feature weight vector, and select the optimal feature subset according to the feature weight. Second, naive bayes, k-nearest neighbor, regularized logistic regression and support vector machine are used as base learners, and a simple logistic regression algorithm is used as a combination strategy to build a stacking model. Experimental results show that compared with other machine learning algorithms, the proposed hybrid method, which integrates feature selection and ensemble, has a higher accuracy of 90.27% in identifying online patients. We believe this study will help develop new methods to identify depressed people in social networks, providing guidance for future research.

Highlights

  • Depression is a common mental disorder and is one of the main causes of disability and suicide worldwide

  • In the study of Cacheda et al (2019), according to different aspects of user writing applied to detect early depression patients, the dual model method based on random forest proposed in this experiment improves the performance of the best detection model by over 10%

  • We design a feature selection method that combines recursive elimination based on random forest, extremely randomized trees and mutual information

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Summary

Introduction

Depression is a common mental disorder and is one of the main causes of disability and suicide worldwide. According to the World Health Organization, more than 300 million people worldwide suffer from depression (WHO, 2017), and the number has been increasing rapidly in recent years. Treatment of depression can ameliorate the negative effects of the disease, but more than 70% of patients are reluctant to consult a doctor in the early stages of their illness (Shen et al, 2017). Stigma and discrimination cause them to be vigilant. Researchers have found that even if not every patient experiences such problems, stigma and discrimination are pervasive underlying problems (Whitley and Denise Campbell, 2014). The identification of depression is a challenging task

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