Modeling Trial-and-Error Navigation With a Sequential Decision Model of Information Scent
AI 摘要
论文提出一个考虑记忆限制的序贯决策模型,解释了用户在信息架构中试错导航的行为。
主要贡献
- 提出了一个考虑记忆限制的信息气味序贯决策模型
- 解释了用户在导航过程中的试错行为(如过早选择、走错路、回溯恢复)
- 通过实证数据验证了模型的有效性
方法论
将导航建模为序贯决策问题,考虑用户的局部和全局信息气味感知,以及记忆的限制,并通过模型与实证数据对比进行验证。
原文摘要
Users often struggle to locate an item within an information architecture, particularly when links are ambiguous or deeply nested in hierarchies. Information scent has been used to explain why users select incorrect links, but this concept assumes that users see all available links before deciding. In practice, users frequently select a link too quickly, overlook relevant cues, and then rely on backtracking when errors occur. We extend the concept of information scent by framing navigation as a sequential decision-making problem under memory constraints. Specifically, we assume that users do not scan entire pages but instead inspect strategically, looking "just enough" to find the target given their time budget. To choose which item to inspect next, they consider both local (this page) and global (site) scent; however, both are constrained by memory. Trying to avoid wasting time, they occasionally choose the wrong links without inspecting everything on a page. Comparisons with empirical data show that our model replicates key navigation behaviors: premature selections, wrong turns, and recovery from backtracking. We conclude that trial-and-error behavior is well explained by information scent when accounting for the sequential and bounded characteristics of the navigation problem.