基于Word2Vec的长短期记忆在社交媒体Twitter上的个性检测

Rachma Indira, W. Maharani
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引用次数: 2

摘要

个性是存在于每个人身上的东西之一。从这种个性中可以看出,人类是独特而多样的个体。其中一个原因是因为每个人都有自己的个性。这种人格将创造人类有一种思维方式和行为方式。个性也可以是一种基准或评价。例如,在员工招聘中,一些公司对招聘的候选工人有标准。其中一个工具就是心理测试。但这种心理测试方法的缺点是耗时较长。所以我们创建了一个系统,可以根据用户在推特上的推文数据来预测性格,因为它包含了用户的许多观点或想法,这些观点或想法可以描述用户的性格。我们使用Word2Vec进行词嵌入,LSTM(长短期记忆)进行预测。该系统的重点是观察一组推文如何预测用户的性格。第一种情况是将每两行推文组合起来,得分准确率为45%。第二种情况是将每10行推文组合起来,准确率最高为48%。这个系统使用了五种人格标签,我们称之为大五人格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Personality Detection on Social Media Twitter Using Long Short-Term Memory with Word2Vec
Personality is one of the things that exist in every human being. From this personality, it will be seen that humans are unique and diverse individuals. One of the causes is because each human being has a personality. This personality will create humans to have a way of thinking and behave. Personality can also be a benchmark or valuation. For example, in employee recruitment, some companies have standards for candidate workers to be recruited. One tool for doing this is a psychological test. But the drawback of this psychological test method is that it takes a long time. So we created a system that can predict personality based on the user’s tweet data on Twitter because it’s contain many opinions or thoughts from the user that can describe the user’s personality. The methods we use are Word2Vec for word embeddings and LSTM (Long Short-Term Memory) for predicting. The system created focuses on seeing how a collection of tweets can predict a user’s personality. The first scenario it’s to combine every two rows of tweet and have a scoring accuracy 45%. The second scenario it’s to combine every ten rows of a tweet and have the best accuracy of 48%. The system uses five labels of personality that we call the Big Five Personality.
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