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Assessment of conversation co-mentions as a resource for software module recommendation

机译:评估对话协调为软件模块推荐的资源

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Conversation double pivots recommend target items related to a source item, based on co-mentions of source and target items in online forums. We deployed several variants on the drupal.org site that supports the Drupal open source community, and assessed them through clickthrough rates. A similarity metric based on correlation of mentions rather than mere co-occurrence reduced the problem of over-recommending the most popular modules, but additional corrections for recency and uniqueness of mentions were not helpful. Detection of more module mentions in conversations dramatically improved the quality of recommendations, even though the detection algorithm then had more false positives. Recommendations based on conversation co-mention were more effective than those based on co-installation, because co-installation data only led to recommendations of complementary modules and not substitutes. Recommendations based on co-mention were more effective than those based on text similarity matching fornavigating from the most popular modules, but less effective than text matching for less popular modules.
机译:对话双重枢轴推荐与源项目相关的目标项目,基于在线论坛中的源和目标项目的共同提示。我们在Drupal.org网站上部署了多个Variants,支持Drupal开源社区,并通过Clenthrough率评估它们。基于提到的相关性而不是仅仅共发生的相似度量减少了推荐最流行的模块的问题,但是对提升的新兴和唯一性的额外校正并不有用。检测在对话中提到的更多模块提高显着提高了建议的质量,即使检测算法然后具有更大的误报。基于对话同样的建议比基于共同安装的人更有效,因为共同安装数据仅导致互补模块的建议而不是替代品。基于合作的建议比基于文本相似性匹配从最流行的模块匹配的那些更有效,但比对于不那么流行的模块的文本匹配效果较低。

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