IBHYS:学习用户习惯的新方法

Jean-David Ruvini, C. Fagot
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引用次数: 11

摘要

学习界面代理在用户行为中搜索规律,并利用它们来预测用户的行为。我们提出了一种新的归纳概念学习方法,称为IBHYS,来学习这种规律。这种方法通过让每个训练样本建立全局目标函数的局部近似值,将假设搜索限制在假设空间的一小部分。它允许同时搜索多个假设空间,并同时处理用不同语言描述的假设。这种方法特别适合于学习接口代理,因为它提供了一种增量算法,具有较低的训练时间和决策时间,不需要接口代理的设计者事先非常仔细地描述所搜索的重复模式。我们用两个自主软件代理来说明我们的方法,学徒和助手,致力于帮助交互式编程环境的用户,并在Objectworks Smalltalk-80中实现。学徒使用IBHYS算法学习用户的工作习惯,而助手则根据已经学习的内容,向程序员提出用户可能想要重做的动作序列。通过实际数据的实验结果表明,IBHYS在计算时间和预测精度方面都优于ID3。
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IBHYS: a new approach to learn users habits
Learning interface agents search regularities in the user behavior and use them to predict user's actions. We propose a new inductive concept learning approach, called IBHYS, to learn such regularities. This approach limits the hypothesis search to a small portion of the hypothesis space by letting each training example build a local approximation of the global target function. It allows to simultaneously search several hypothesis spaces and to simultaneously handle hypotheses described in different languages. This approach is particularly suited for learning interface agents because it provides an incremental algorithm with low training time and decision time, which does not require the designer of the interface agent to describe in advance and quite carefully the repetitive patterns searched. We illustrate our approach with two autonomous software agents, the Apprentice and the Assistant, devoted to assist users of interactive programming environments and implemented in Objectworks Smalltalk-80. The Apprentice learns user's work habits using an IBHYS algorithm and the Assistant, based on what has been learnt, proposes to the programmer sequences of actions the user might want to redo. We show, with experimental results on real data, that IBHYS outperforms ID3 both in computing time and predictive accuracy.
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