Nowadays, a tremendous amount of human communications take place on the Internet-based communication infrastructures, like social networks, email, forums, organizational communication platforms, etc. Indeed, the automatic prediction or assessment of individuals' personalities through their written or exchanged text would be advantageous to ameliorate the relationships among them. To this end, this paper aims to propose KGrAt-Net which is a Knowledge Graph Attention Network text classifier. For the first time, it applies the knowledge graph attention network to perform Automatic Personality Prediction (APP), according to the Big Five personality traits. After performing some preprocessing activities, first, it tries to acquire a knowingful representation of the knowledge behind the concepts in the input text through building its equivalent knowledge graph. A knowledge graph is a graph-based data model that formally represents the semantics of the existing concepts in the input text and models the knowledge behind them. Then, applying the attention mechanism, it efforts to pay attention to the most relevant parts of the graph to predict the personality traits of the input text. The results demonstrated that KGrAt-Net considerably improved the personality prediction accuracies. Furthermore, KGrAt-Net also uses the knowledge graphs' embeddings to enrich the classification, which makes it even more accurate in APP.
翻译:目前,在互联网通信基础设施,如社交网络、电子邮件、论坛、组织通信平台等,大量人文通信都发生在社交网络、电子邮件、论坛、组织通信平台等互联网通信基础设施上。事实上,通过个人书面或交换文本自动预测或评估个人人格将有助于改善他们之间的关系。为此,本文件旨在提议KGrAt-Net,这是一个知识图表关注网络文本分类器。根据五大个性特征,首次将知识图关注网络用于进行自动个性预测(APP)。在开展一些预处理活动之后,首先,它试图通过建立等同的知识图表,在输入文本中以知情的方式反映概念背后的知识。知识图是一种基于图表的数据模型,正式代表输入文本中现有概念的语义和其背后的知识模型。随后,它运用关注机制,努力关注图表中最相关的部分,以预测输入文本的个性特征。结果显示,KGrAt-Net通过建立等等知识图图,甚至将更精确地用KGARANet来改进了个性预测。