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An Initiative to Identify Depression using Sentiment Analysis: A Machine Learning Approach

机译:一种使用情感分析来识别抑郁的计划:一种机器学习方法

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Objective: Online social and news media has turned into an extremely mainstream for clients to impart their insights. The objective of this paper is to propose a methodology through which sentiments can be analyzed. Methods/Statistical analysis: The sentiments are helpful for the identification of the depression. In this paper we proposed an algorithm through which tweets are extracted from twitter using R studio and then their sentiments are analyzed i.e. the scores are given to each sentiment by which we identify whether the person is depressed or not. This gives imperative data to basic leadership in different spaces. Findings: Sentiment analysis over Twitter offers associations and people a quick and powerful approach to screen the general population’s sentiments towards them and their rivals. To evaluate the assumption examination over twitter we need a dataset that is been extracted from the twitter that would be publicly available for twitter sentiment analysis. We found that through twitter to extract tweets are scored based on their sentiments. The result is unique as we have proposed new algorithm through which twitter sentiments are scored. Applications: This sentiment analysis will be helpful to draw conclusion, whether the person is depressed or not. It can be helpful for prescreening test, diagnostic tool and automation monitoring system.
机译:目标:在线社交和新闻媒体已成为客户传递见解的极为主流的方式。本文的目的是提出一种可用来分析情绪的方法。方法/统计分析:这些情绪有助于识别抑郁症。在本文中,我们提出了一种算法,通过该算法,可以使用R studio从Twitter提取推文,然后对其情感进行分析,即为每个情感赋予分数,从而确定该人是否沮丧。这为不同领域的基本领导提供了必要的数据。调查结果:通过Twitter进行的情绪分析为协会和人们提供了一种快速而强大的方法,以筛选大众对他们及其竞争对手的看法。为了评估推特上的假设检验,我们需要从推特中提取的数据集可公开用于推特情感分析。我们发现,通过Twitter提取推文是根据其情感进行评分的。结果是独特的,因为我们提出了一种对推特情绪进行评分的新算法。应用:这种情绪分析将有助于得出结论,无论该人是否沮丧。它对预筛选测试,诊断工具和自动化监控系统很有帮助。

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