Abstract

Depression is a prevalent sickness, spreading worldwide with potentially serious implications. Timely recognition of emotional responses plays a pivotal function at present, with the profound expansion of social media and users of the internet. Mental illnesses are highly hazardous, stirring more than three hundred million people. Moreover, that is why research is focused on this subject. With the advancements of machine learning and the availability of sample data relevant to depression, there is the possibility of developing an early depression diagnostic system, which is key to lessening the number of afflicted individuals. This paper proposes a productive model by implementing the Long-Short Term Memory (LSTM) model, consisting of two hidden layers and large bias with Recurrent Neural Network (RNN) with two dense layers, to predict depression from text, which can be beneficial in protecting individuals from mental disorders and suicidal affairs. We train RNN on textual data to identify depression from text, semantics, and written content. The proposed framework achieves 99.0% accuracy, higher than its counterpart, frequency-based deep learning models, whereas the false positive rate is reduced. We also compare the proposed model with other models regarding its mean accuracy. The proposed approach indicates the feasibility of RNN and LSTM by achieving exceptional results for early recognition of depression in the emotions of numerous social media subscribers.

Highlights

  • Depression is a risk indicator of Dementia

  • The main contributions of this work are as follows: 1. We provide a detailed discussion of depression, depressive symptoms, and its types

  • We propose a deep learning model using Long-Short Term Memory (LSTM), with 60 LSTM units with two hidden states and bias factors, and an Recurrent Neural Network (RNN) with two hidden layers for the early detection of depression by training the model with depressive and non-depressive sample data

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Summary

Introduction

Depression is a risk indicator of Dementia. People suffering from Dementia tend to notice a decline in their cognitive abilities such as thinking and remembering [1,2,3]. Communication, and posts describe the user’s sentimental condition [6] Their sentimental status will be vigorous and can lead to uncertain detection of depression. The most prevalent procedures employed at present are clinical interviews and questionnaire surveys conducted by hospitals or agencies [7], where psychiatric assessment tables are used to establish mental disorder prognosis This method is primarily based on one-on-one surveys and can diagnose depression as a psychic condition. Recognizing depression symptoms from brief texts presents a significant challenge To help resolve these ultimatums, we want to create an algorithm that can automatically detect depressive signs from texts using a text-based sample for people who need advice about self-anticipated depressive indications.

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