4.7 Article

Cost-Sensitive Boosting Pruning Trees for Depression Detection on Twitter

期刊

IEEE TRANSACTIONS ON AFFECTIVE COMPUTING
卷 14, 期 3, 页码 1898-1911

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TAFFC.2022.3145634

关键词

Depression; Social networking (online); Feature extraction; Blogs; Boosting; Prediction algorithms; Decision trees; Data mining; boosting ensemble learning; online depression detection; online behaviours

向作者/读者索取更多资源

Depression is a common mental health disorder, and many sufferers do not seek help due to shame or lack of awareness. This paper proposes a novel classifier, CBPT, which can accurately detect depression by mining online social behaviors. The results show that the framework has promising potential for identifying Twitter users with depression.
Depression is one of the most common mental health disorders, and a large number of depressed people commit suicide each year. Potential depression sufferers usually do not consult psychological doctors because they feel ashamed or are unaware of any depression, which may result in severe delay of diagnosis and treatment. In the meantime, evidence shows that social media data provides valuable clues about physical and mental health conditions. In this paper, we argue that it is feasible to identify depression at an early stage by mining online social behaviours. Our approach, which is innovative to the practice of depression detection, does not rely on the extraction of numerous or complicated features to achieve accurate depression detection. Instead, we propose a novel classifier, namely, Cost-sensitive Boosting Pruning Trees (CBPT), which demonstrates a strong classification ability on two publicly accessible Twitter depression detection datasets. To comprehensively evaluate the classification capability of CBPT, we use additional three datasets from the UCI machine learning repository and CBPT obtains appealing classification results against several state of the arts boosting algorithms. Finally, we comprehensively explore the influence factors for the model prediction, and the results manifest that our proposed framework is promising for identifying Twitter users with depression.

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