Deep Learning of Human Information Foraging Behavior with a Search Engine

Xi Niu, Xiangyu Fan
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引用次数: 4

Abstract

In this paper, a two-level deep learning framework is presented to model human information foraging behavior with search engines. A recurrent neural network architecture is designed using LSTM as the base unit to explicitly consider the temporal and spatial dependencies of information scents, the key concept in Information Foraging Theory. The target is to predict several major search behaviors, such as query abandonment, query reformulation, number of clicks, and information gain. The memory capability and the sequence structure of LSTM allow to naturally mimic not only what users are perceiving and performing at the moment but also what they have seen and learned from the past during the search dynamics. The promising results indicate that our information scent models with different input variations were better, compared to the state-of-the art neural click models, at predicting some search behaviors. When incorporating the knowledge from a previous query in the same search session, the prediction of current query abandonment, pagination, and information gain has been improved. Compared to the well known neural click models that model search behaviors under a single search query thread, this study takes a broader view to consider an entire search session which may contain multiple queries. More importantly, our model takes the search result relevance pattern on the Search Engine Results Pages (SERP) as a whole as the information scent input to the deep learning model, instead of considering one search result at each step. The results have insights on the impact of information scents on how people forage for information, which has implications for designing or refining a set of design guidelines for search engines.
基于搜索引擎的人类信息觅食行为深度学习
本文提出了一个两级深度学习框架来模拟人类搜索引擎的信息觅食行为。设计了一种以LSTM为基本单元的递归神经网络架构,以明确考虑信息气味的时空依赖关系,这是信息觅食理论的关键概念。目标是预测几种主要的搜索行为,如放弃查询、查询重新表述、点击次数和信息获取。LSTM的记忆能力和序列结构不仅可以自然地模拟用户当前的感知和执行,还可以模拟他们在搜索动态过程中从过去看到和学到的东西。有希望的结果表明,与最先进的神经点击模型相比,我们的信息气味模型具有不同的输入变化,在预测某些搜索行为方面更好。在同一搜索会话中合并来自前一个查询的知识时,对当前查询放弃、分页和信息增益的预测得到了改进。与在单个搜索查询线程下模拟搜索行为的众所周知的神经点击模型相比,本研究采用了更广泛的视角来考虑可能包含多个查询的整个搜索会话。更重要的是,我们的模型将搜索引擎结果页面(SERP)上的搜索结果关联模式作为一个整体作为信息气味输入到深度学习模型中,而不是每一步只考虑一个搜索结果。研究结果揭示了信息气味对人们如何搜索信息的影响,这对设计或改进搜索引擎的一套设计准则具有启示意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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