Motives or goals are recognized in psychology literature as the most fundamental drive that explains and predicts why people do what they do, including when they browse the web. Although providing enormous value, these higher-ordered goals are often unobserved, and little is known about how to leverage such goals to assist people's browsing activities. This paper proposes to take a new approach to address this problem, which is fulfilled through a novel neural framework, Goal-directed Web Browsing (GoWeB). We adopt a psychologically-sound taxonomy of higher-ordered goals and learn to build their representations in a structure-preserving manner. Then we incorporate the resulting representations for enhancing the experiences of common activities people perform on the web. Experiments on large-scale data from Microsoft Edge web browser show that GoWeB significantly outperforms competitive baselines for in-session web page recommendation, re-visitation classification, and goal-based web page grouping. A follow-up analysis further characterizes how the variety of human motives can affect the difference observed in human behavioral patterns.
翻译:在心理学文献中,动机或目标被公认为是解释和预测人们为何行事的最根本动力,包括浏览网络时。虽然提供了巨大的价值,但这些高层次的顺序目标往往得不到观察,对于如何利用这些目标来帮助人们浏览活动也知之甚少。本文件提议采取新的方法来解决这一问题,通过一个新的神经框架,即目标导向的网络浏览(GoWeB)来实现这一目标。我们采用了高层次目标的心理健全的分类方法,并学会以结构保留的方式建立自己的代表机构。我们随后纳入了由此产生的表述方法,以加强人们在网络上开展的共同活动的经验。微软Edge网络浏览器关于大规模数据的实验表明,GoWeB大大超越了会期网页建议、重新访问分类和基于目标的网页分组的竞争性基线。后续分析进一步说明了人类动机的多样性如何影响人类行为模式中观察到的差异。