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Combining Query Ambiguity and Query-URL Strength for Log-Based Query Suggestion

机译:结合查询歧义和查询URL强度以基于日志的查询建议

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The ambiguity of query may have potential impact on the performance of Query Suggestion. For getting better candidates adapting to query's ambiguity, we propose an efficient log-based Query Suggestion method. Firstly we construct a Query-URL graph from logs and calculate the bidirectional transition probabilities between queries and URLs. Then, by taking URL's rank and order into consideration, we make a strength metric of the Query-URL edge. Besides, we conduct random walk with the edge strength and transition probability to measure the closeness among queries. To reflect the influence of query ambiguity, we exploit an entropy-based method to calculate the entropy of each query as a quantitative indicator for ambiguity, making a notion of ambiguity similarity as an available factor in relevance estimation. Finally we incorporate ambiguity similarity with closeness to derive a comprehensive relevance measurement. Experimental results show that our approach can achieve a good effect.
机译:查询的歧义可能会对查询建议的性能产生潜在影响。为了获得更好的候选人以适应查询的歧义,我们提出了一种有效的基于日志的查询建议方法。首先,我们从日志中构建一个Query-URL图,并计算查询和URL之间的双向转换概率。然后,通过考虑URL的等级和顺序,我们确定Query-URL边缘的强度指标。此外,我们利用边缘强度和过渡概率进行随机游走,以测量查询之间的紧密度。为了反映查询歧义的影响,我们利用一种基于熵的方法来计算每个查询的熵,以此作为歧义的定量指标,从而使歧义相似度的概念成为相关性估计中的一个可用因素。最后,我们将模糊度相似度与紧密度结合在一起,以得出全面的相关性度量。实验结果表明,我们的方法可以取得很好的效果。

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