There are many contexts where dyadic data is present. Social networking is a well-known example, where transparency has grown on importance. In these contexts, pairs of items are linked building a network where interactions play a crucial role. Explaining why these relationships are established is core to address transparency. These explanations are often presented using text, thanks to the spread of the natural language understanding tasks. We have focused on the TripAdvisor platform, considering the applicability to other dyadic data contexts. The items are a subset of users and restaurants and the interactions the reviews posted by these users. Our aim is to represent and explain pairs (user, restaurant) established by agents (e.g., a recommender system or a paid promotion mechanism), so that personalisation is taken into account. We propose the PTER (Personalised TExt-based Reviews) model. We predict, from the available reviews for a given restaurant, those that fit to the specific user interactions. PTER leverages the BERT (Bidirectional Encoders Representations from Transformers) language model. We customised a deep neural network following the feature-based approach. The performance metrics show the validity of our labelling proposal. We defined an evaluation framework based on a clustering process to assess our personalised representation. PTER clearly outperforms the proposed adversary in 5 of the 6 datasets, with a minimum ratio improvement of 4%.
翻译:社交网络是一个广为人知的例子,其透明度已变得更加重要。在这些情况下,一对物品相互连接,建立一个互动发挥关键作用的网络。解释为什么建立这些关系是解决透明度问题的核心。由于自然语言理解任务的普及,这些解释往往使用文字来表述。我们侧重于TripAdvisor平台,考虑对其他dydic数据环境的适用性。这些项目是用户和餐馆的一个子集,以及这些用户公布的审查的相互作用。我们的目标是代表并解释由代理人(例如推荐者系统或付费促销机制)建立的一对(用户、餐厅),从而考虑到个性化问题。我们提议了PTER(以人名化的TExt-serview为基础的审查)模式。我们从特定餐厅的现有审查中预测了适合特定用户互动的情况。PTER利用了来自变换者的语言模型的BERT(Birectal Ecorders Inviductions)。我们按照基于地基格式的标定了6 Eneral 网络,我们用基于基于地基格式的标格式的标定了我们的数据格式,我们的个人标图表评估了我们的个人标5格式。