The changes in user preferences can originate from substantial reasons, like personality shift, or transient and circumstantial ones, like seasonal changes in item popularities. Disregarding these temporal drifts in modelling user preferences can result in unhelpful recommendations. Moreover, different temporal patterns can be associated with various preference domains, and preference components and their combinations. These components comprise preferences over features, preferences over feature values, conditional dependencies between features, socially-influenced preferences, and bias. For example, in the movies domain, the user can change his rating behaviour (bias shift), her preference for genre over language (feature preference shift), or start favouring drama over comedy (feature value preference shift). In this paper, we first propose a novel latent factor model to capture the domain-dependent component-specific temporal patterns in preferences. The component-based approach followed in modelling the aspects of preferences and their temporal effects enables us to arbitrarily switch components on and off. We evaluate the proposed method on three popular recommendation datasets and show that it significantly outperforms the most accurate state-of-the-art static models. The experiments also demonstrate the greater robustness and stability of the proposed dynamic model in comparison with the most successful models to date. We also analyse the temporal behaviour of different preference components and their combinations and show that the dynamic behaviour of preference components is highly dependent on the preference dataset and domain. Therefore, the results also highlight the importance of modelling temporal effects but also underline the advantages of a component-based architecture that is better suited to capture domain-specific balances in the contributions of the aspects.
翻译:用户偏好的变化可能源于实质性原因,如个性转变,或短暂和间接原因,如物品流行季节性变化。在模拟用户偏好中不考虑这些时间流,可能会导致无益的建议。此外,不同的时间模式可能与各种偏好领域和偏好组成部分及其组合相关。这些组成部分包括偏好特征、偏好特征、特征之间有条件依赖、社会影响偏好和偏向。例如,在电影领域,用户可以改变其评级行为(偏向性转变)、她偏爱语言而非语言(偏向性偏向性转变),或开始偏爱喜好喜剧而不是喜剧性贡献(偏向性价值偏好转变)等重大原因。在本文中,我们首先提出一个新的潜在要素模式,以捕捉不同领域特定要素的特定时间模式及其组合。我们在三个受欢迎的建议数据集上评价拟议方法,显示其偏向最精确的状态模式(偏向),但表明它明显优于最精确的固定模式,实验还表明其最稳健性和最稳的地域偏重度,同时,还显示其最稳健的模型和最稳健的地域偏重度结构。