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A new dual wing harmonium model for document retrieval

机译:用于文档检索的新双翼谐音模型

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摘要

A new dual wing harmonium model that integrates term frequency features and term connection features into a low dimensional semantic space without increase of computation load is proposed for the application of document retrieval. Terms and vectorized graph connectionists are extracted from the graph representation of document by employing weighted feature extraction method. We then develop a new dual wing harmonium model projecting these multiple features into low dimensional latent topics with different probability distributions assumption. Contrastive divergence algorithm is used for efficient learning and inference. We perform extensive experimental verification, and the comparative results suggest that the proposed method is accurate and computationally efficient for document retrieval.
机译:提出了一种在不增加计算量的情况下将词频特征和词连接特征整合到一个低维语义空间的新的双翼和声模型。通过采用加权特征提取方法,从文档的图形表示中提取术语和矢量化的图形连接论者。然后,我们开发一个新的双翼和声模型,将这些多个特征投影到具有不同概率分布假设的低维潜在主题中。对比散度算法用于有效的学习和推理。我们进行了广泛的实验验证,比较结果表明,该方法准确,计算效率高,可用于文档检索。

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