坚固和抗噪声封装感应

Tim Furche, Jinsong Guo, S. Maneth, C. Schallhart
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引用次数: 10

摘要

包装器归纳是从同一模板的带注释的网页中自动推断查询的问题。该查询不仅应该准确地选择带注释的内容,还应该选择遵循相同模板的其他内容。除了准确匹配模板之外,我们还考虑了两个额外的要求:(1)包装器应该对网页的大量更改具有鲁棒性,(2)诱导过程应该具有抗噪声性,即容忍轻微错误(例如,机器生成)样本。我们方法的关键是一种查询语言,它足够强大,可以进行准确的选择,但也足够有限,可以强制将有噪声的样本推广到选择可能的预期项目的包装器中。我们将这种语言作为XPATH的子集引入,并说明即使对于这样一种受限制的语言,根据合适的评分诱导最优查询也是不可行的。然而,我们的包装器归纳框架推断出高度健壮和抗噪声的查询。我们评估了由Internet Archive提供的随时间变化的网页快照上的查询,并表明诱导查询与人为查询一样健壮。由于所选节点的相对位置发生了许多变化(包括模板级别的变化),查询通常会存活数百天,有时甚至数千天。这是由于生成查询的锚节点很少且具有区别性(中间选择)。查询对正噪声(高达50%)和负噪声(高达20%)具有很强的抵抗力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust and Noise Resistant Wrapper Induction
Wrapper induction is the problem of automatically inferring a query from annotated web pages of the same template. This query should not only select the annotated content accurately but also other content following the same template. Beyond accurately matching the template, we consider two additional requirements: (1) wrappers should be robust against a large class of changes to the web pages, and (2) the induction process should be noise resistant, i.e., tolerate slightly erroneous (e.g., machine generated) samples. Key to our approach is a query language that is powerful enough to permit accurate selection, but limited enough to force noisy samples to be generalized into wrappers that select the likely intended items. We introduce such a language as subset of XPATH and show that even for such a restricted language, inducing optimal queries according to a suitable scoring is infeasible. Nevertheless, our wrapper induction framework infers highly robust and noise resistant queries. We evaluate the queries on snapshots from web pages that change over time as provided by the Internet Archive, and show that the induced queries are as robust as the human-made queries. The queries often survive hundreds sometimes thousands of days, with many changes to the relative position of the selected nodes (including changes on template level). This is due to the few and discriminative anchor (intermediately selected) nodes of the generated queries. The queries are highly resistant against positive noise (up to 50%) and negative noise (up to 20%).
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