Text sentiment analysis for preliminary depression status estimation of users on social media is a widely exercised and feasible method, However, the immense variety of users accessing the social media websites and their ample mix of vocabularies makes it difficult for commonly applied deep learning-based classifiers to perform. To add to the situation, the lack of adaptability of traditional supervised machine learning could hurt at many levels. We propose a cloud-based smartphone application, with a deep learning-based backend to primarily perform depression detection on Twitter social media. The backend model consists of a RoBERTa based siamese sentence classifier that compares a given tweet (Query) with a labeled set of tweets with known sentiment ( Standard Corpus ). The standard corpus is varied over time with expert opinion so as to improve the model's reliability. A psychologist ( with the patient's permission ) could leverage the application to assess the patient's depression status prior to counseling, which provides better insight into the mental health status of a patient. In addition, to the same, the psychologist could be referred to cases of similar characteristics, which could in turn help in more effective treatment. We evaluate our backend model after fine-tuning it on a publicly available dataset. The find tuned model is made to predict depression on a large set of tweet samples with random noise factors. The model achieved pinnacle results, with a testing accuracy of 87.23% and an AUC of 0.8621.
翻译:在社交媒体上对用户进行初步抑郁症状态估计的文字感知分析是一个广泛和可行的方法,然而,使用社交媒体网站的用户种类繁多,而且他们拥有丰富的词汇组合,因此很难让通常应用的深层次学习分类系统发挥作用。此外,传统受监督的机器学习缺乏适应性会在许多层面造成伤害。我们提议使用基于云的智能手机应用程序,其基于深层次学习的后端主要在推特社交媒体上进行抑郁症检测。后端模型包括一个基于学习的Siamese的Siamese判决分类器,该分类器将给定的推文(Query)与一套贴有名的推文(标准Corpus )作比较。标准程序随着专家意见的不断变化,以便提高模型的可靠性。一位心理学家(经病人同意)可以在咨询前利用应用程序来评估病人的抑郁症状况,从而更深入地了解病人的心理健康状况。此外,心理学家也可以参考类似特征的案例,这反过来帮助进行更有效的处理。我们用专家意见来改变标准,以便提高模型的可靠性。我们用一个经过大量的精确度标定的推算结果。