We demonstrate that effortlessly accessible digital records of behavior such as Facebook Likes can be obtained and utilized to automatically distinguish a wide range of highly delicate personal traits including: life satisfaction, cultural ethnicity, political views, age, gender and personality traits. The analysis presented based on a dataset of over 738,000 users who conferred their Facebook Likes, social network activities, egocentric network, demographic characteristics, and the results of various psychometric tests for our extended personality analysis. The proposed model uses unique mapping technique between each Facebook Like object to the corresponding Facebook page category/sub-category object, which is then evaluated as features for a set of machine learning algorithms to predict individual psycho-demographic profiles from Likes. The model , distinguishes between a religious and non-religious individual in 83% of circumstances, Asian and European in 87% of situations, and between emotional stable and emotion unstable in 81% of situations. We provide exemplars of correlations between attributes and Likes and present suggestions for future directions.
翻译:我们证明,可以不费力获得诸如Facebook Likes等行为的数字记录,并用于自动区分各种非常微妙的个人特征,包括:生活满意度、文化族裔、政治观点、年龄、性别和个性特征;根据738 000多名用户的数据集提供的分析,这些用户授予了Facebook Likes、社交网络活动、自我中心网络、人口特征,以及各种心理测试的结果,用于我们扩大的个性分析;拟议的模型使用每个Facebook 类似对象对相应的脸书页面类别/亚类对象的独特绘图技术,然后将之评价为一套机器学习算法的特征,以预测来自同类的个人心理人口概况。模型区分了83%的情况下的宗教和非宗教个人,87%的情况是亚洲人,87%的情况是欧洲人,81%的情况是情绪稳定与情绪不稳定的。我们提供了属性和同类之间相互关系的示例,并为未来方向提出建议。