Myers-briggs Personality Prediction and Sentiment Analysis of Twitter using Machine Learning Classifiers and BERT

Prajwal Kaushal, Nithin Bharadwaj B P, Pranav M S, K. S., Dr. Anjan K Koundinya
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引用次数: 4

Abstract

Twitter being one of the most sophisticated social networking platforms whose users base is growing exponentially, terabytes of data is being generated every day. Technology Giants invest billions of dollars in drawing insights from these tweets. The huge amount of data is still going underutilized. The main of this paper is to solve two tasks. Firstly, to build a sentiment analysis model using BERT (Bidirectional Encoder Representations from Transformers) which analyses the tweets and predicts the sentiments of the users. Secondly to build a personality prediction model using various machine learning classifiers under the umbrella of Myers-Briggs Personality Type Indicator. MBTI is one of the most widely used psychological instruments in the world. Using this we intend to predict the traits and qualities of people based on their posts and interactions in Twitter. The model succeeds to predict the personality traits and qualities on twitter users. We intend to use the analyzed results in various applications like market research, recruitment, psychological tests, consulting, etc, in future.
使用机器学习分类器和BERT的Twitter Myers-briggs人格预测和情感分析
Twitter是最复杂的社交网络平台之一,其用户基础呈指数级增长,每天都有tb级的数据生成。科技巨头投入数十亿美元从这些推文中获取见解。大量的数据仍未得到充分利用。本文主要解决两个任务。首先,利用BERT (Bidirectional Encoder Representations from Transformers)构建情感分析模型,对推文进行分析并预测用户的情感。其次,在Myers-Briggs人格类型指标的框架下,利用各种机器学习分类器构建人格预测模型。MBTI是世界上使用最广泛的心理测试工具之一。利用这个,我们打算根据人们在Twitter上的帖子和互动来预测他们的特征和品质。该模型成功地预测了twitter用户的个性特征和品质。我们打算将分析结果用于未来的各种应用,如市场研究、招聘、心理测试、咨询等。
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