保持关键字的新鲜感:一个BM25变体的个性化关键字提取

Margarita Karkali, Vassilis Plachouras, Constantinos Stefanatos, M. Vazirgiannis
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引用次数: 8

摘要

从网页中提取关键字对于各种文本挖掘任务至关重要,包括上下文广告、推荐选择、用户分析和个性化。例如,上下文广告中提取的关键字用于将广告与用户当前浏览的网页进行匹配。大多数关键字提取方法主要依赖于单个网页的内容,忽略了用户的浏览历史,因此,可能导致相同的广告或推荐。在这项工作中,我们提出了一种新的网页术语提取特征评分算法,该算法假设每个用户最近的浏览历史,将当前页面中关键字的新鲜度作为转移用户兴趣的手段。我们提出了BM25H, BM25评分函数的一个变体,在客户端实现,它考虑到用户的浏览历史,并建议与当前浏览的页面相关的关键字,但也考虑到用户最近的浏览历史。这样,对于每个网页,我们都会得到一组关键字,这些关键字代表了用户随时间变化的兴趣。BM25H避免了关键词的重复,这些关键词可能只是域名特定的停用词,或者可能导致匹配相同的广告或类似的推荐。我们的实验结果表明,BM25H在20个提取关键字(基于人类盲评估)的精度达到70%以上,并且优于我们的基线(TF和BM25评分函数),同时与最近的用户历史相比,它成功地保持了提取的关键字的新鲜度。
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Keeping keywords fresh: a BM25 variation for personalized keyword extraction
Keyword extraction from web pages is essential to various text mining tasks including contextual advertising, recommendation selection, user profiling and personalization. For example, extracted keywords in contextual advertising are used to match advertisements with the web page currently browsed by a user. Most of the keyword extraction methods mainly rely on the content of a single web page, ignoring the browsing history of a user, and hence, potentially leading to the same advertisements or recommendations. In this work we propose a new feature scoring algorithm for web page terms extraction that, assuming a recent browsing history per user, takes into account the freshness of keywords in the current page as means of shifting users interests. We propose BM25H, a variant of BM25 scoring function, implemented on the client-side, that takes into account the user browsing history and suggests keywords relevant to the currently browsed page, but also fresh with respect to the user's recent browsing history. In this way, for each web page we obtain a set of keywords, representing the time shifting interests of the user. BM25H avoids repetitions of keywords which may be simply domain specific stop-words, or may result in matching the same ads or similar recommendations. Our experimental results show that BM25H achieves more than 70% in precision at 20 extracted keywords (based on human blind evaluation) and outperforms our baselines (TF and BM25 scoring functions), while it succeeds in keeping extracted keywords fresh compared to recent user history.
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