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A Large-Scale, Hybrid Approach for Recommending Pages Based on Previous User Click Pattern and Content

机译:一种基于先前用户点击模式和内容的大型混合式页面推荐方法

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In a large-scale recommendation setting, item-based collaborative filtering is preferable due to the availability of huge number of users' preference information and relative stability in item-item similarity. Item-based collaborative filtering only uses users' items preference information to predict recommendation for targeted users. This process may not always be effective, if the amount of preference information available is very small. For this kind of problem, item-content based similarity plays important role in addition to item co-occurrence-based similarity. In this paper we propose and evaluate a Map-Reduce based, large-scale, hybrid collaborative algorithm to incorporate both the content similarity and co-occurrence similarity. To generate recommendation for users having more or less preference information the relative weights of the item-item content-based and co-occurrence-based similarities are user-dependently tuned. Our experimental results on Yahoo! Front Page "Today Module User Click Log" dataset shows that we are able to get significant average precision improvement using the proposed method for user-dependent parametric incorporation of the two similarity metrics compared to other recent cited work.
机译:在大规模推荐设置中,基于项目的协作过滤是可取的,因为可获得大量用户的偏好信息,并且项目-项目相似性相对稳定。基于项目的协作筛选仅使用用户的项目偏好信息来预测针对目标用户的推荐。如果可用的首选项信息量很小,则此过程可能并不总是有效的。对于此类问题,除了基于项目共现的相似度之外,基于项目内容的相似度也起着重要的作用。在本文中,我们提出并评估了一种基于Map-Reduce的大规模混合协作算法,该算法融合了内容相似度和共现相似度。为了为具有或多或少的偏好信息的用户生成推荐,基于用户的内容调整了基于项内容的相似度和基于共现的相似度的相对权重。我们在Yahoo!上的实验结果头版“今日模块用户点击日志”数据集显示,与最近引用的其他工作相比,使用所提出的方法将两个相似性度量的用户依赖性参数合并,可以显着提高平均精度。

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