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Review Recommendation with Graphical Model and EM Algorithm

机译:使用图形模型和EM算法审查建议

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Automatically assessing the quality and helpfulness of consumer reviews is more and more desirable with the evolutionary development of online review systems. Existing helpfulness assessment methodologies make use of the positive vote fraction as a benchmark and heuristically find a "best guess" to estimate the helpfulness of review documents. This benchmarking methodology ignores the voter population size and treats the the same positive vote fraction as the same helpfulness value. We propose a review recommendation approach that make use of the probability density of the review helpfulness as the benchmark and exploit graphical model and Expectation Maximization (EM) algorithm for the inference of review helpfulness. The experimental results demonstrate that the proposed approach is superior to existing approaches.
机译:随着在线评论系统的演进,越来越需要自动评估消费者评论的质量和帮助。现有的有用性评估方法将正面投票分数用作基准,并通过启发式的方式找到“最佳猜测”以评估审阅文件的有用性。这种基准测试方法忽略了选民人数,并且将相同的赞成票数视为相同的帮助值。我们提出了一种评论推荐方法,该方法以评论帮助的概率密度为基准,并利用图形模型和期望最大化(EM)算法来推论评论帮助。实验结果表明,所提出的方法优于现有方法。

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