User intention which often changes dynamically is considered to be an important factor for modeling users in the design of recommendation systems. Recent studies are starting to focus on predicting user intention (what users want) beyond user preference (what users like). In this work, a user intention model is proposed based on deep sequential topic analysis. The model predicts a user's intention in terms of the topic of interest. The Hybrid Topic Model (HTM) comprising Latent Dirichlet Allocation (LDA) and Word2Vec is proposed to derive the topic of interest of users and the history of preferences. HTM finds the true topics of papers estimating word-topic distribution which includes syntactic and semantic correlations among words. Next, to model user intention, a Long Short Term Memory (LSTM) based sequential deep learning model is proposed. This model takes into account temporal context, namely the time difference between clicks of two consecutive papers seen by a user. Extensive experiments with the real-world research paper dataset indicate that the proposed approach significantly outperforms the state-of-the-art methods. Further, the proposed approach introduces a new road map to model a user activity suitable for the design of a research paper recommendation system.
翻译:在设计建议系统时,经常动态变化的用户意图被视为一个重要因素。最近的研究开始侧重于预测用户意图(用户想要的)而不是用户偏好(用户喜欢的)的用户意图(用户想要的)。在这项工作中,根据深层次顺序专题分析提出了用户意图模型。模型根据感兴趣的专题预测了用户的意图。由低端分散分配(LDA)和Word2Vec组成的混合专题模型(HTM)建议得出用户兴趣和偏好历史的主题。HTM发现估计单题分布的文件的真正主题,其中包括词的合成和语义相关性。接下来,为模拟用户意图,提议了一个基于长期短期内存(LSTM)的顺序深层次学习模型。这一模型考虑到时间背景,即点击用户所看到的两个连续文件之间的时间差。与现实世界研究文件数据集进行的广泛实验表明,拟议的方法大大超出了最新方法的特征。此外,拟议的方法还引入了一个新的路线图,用于为设计文件系统设计一个适合的模型用户活动设计设计文件系统提出新的研究活动。