Application of convolution neural network in web query session mining for personalised web search

S. Chawla
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引用次数: 3

Abstract

In this paper, a deep learning convolution neural network (CNN) is applied in web query session mining for effective personalised web search. The CNN extracts high-level continuous clicked document/query concept vector for semantic clustering of documents. The CNN model is trained to generate document/query concept vector based on clickthrough web query session data. Training of CNN is done using backpropagation based on stochastic gradient descent maximising the likelihood of relevant document given a user search query. During web search, search query concept vector is generated and compared with semantic clusters means to select the most similar cluster for web document recommendations. The experimental results were analysed based on average precision of search results and loss function computed during training of CNN. The improvement in precision of search results as well as decrease in loss value proves CNN to be effective in capturing semantics of web user query sessions for effective information retrieval.
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卷积神经网络在个性化网页搜索查询会话挖掘中的应用
本文将深度学习卷积神经网络(CNN)应用于web查询会话挖掘,以实现有效的个性化web搜索。CNN提取高级连续点击文档/查询概念向量,用于文档的语义聚类。训练CNN模型生成基于点击率web查询会话数据的文档/查询概念向量。CNN的训练使用基于随机梯度下降的反向传播,在给定用户搜索查询的情况下最大化相关文档的可能性。在web搜索过程中,生成搜索查询概念向量,并与语义聚类方法进行比较,选择最相似的聚类进行web文档推荐。根据CNN训练过程中计算的损失函数和搜索结果的平均精度对实验结果进行分析。搜索结果精度的提高和损失值的降低证明了CNN可以有效地捕获web用户查询会话的语义,从而实现有效的信息检索。
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