Efficient Implicit Unsupervised Text Hashing using Adversarial Autoencoder

Khoa D Doan, C. Reddy
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引用次数: 8

Abstract

Searching for documents with semantically similar content is a fundamental problem in the information retrieval domain with various challenges, primarily, in terms of efficiency and effectiveness. Despite the promise of modeling structured dependencies in documents, several existing text hashing methods lack an efficient mechanism to incorporate such vital information. Additionally, the desired characteristics of an ideal hash function, such as robustness to noise, low quantization error and bit balance/uncorrelation, are not effectively learned with existing methods. This is because of the requirement to either tune additional hyper-parameters or optimize these heuristically and explicitly constructed cost functions. In this paper, we propose a Denoising Adversarial Binary Autoencoder (DABA) model which presents a novel representation learning framework that captures structured representation of text documents in the learned hash function. Also, adversarial training provides an alternative direction to implicitly learn a hash function that captures all the desired characteristics of an ideal hash function. Essentially, DABA adopts a novel single-optimization adversarial training procedure that minimizes the Wasserstein distance in its primal domain to regularize the encoder’s output of either a recurrent neural network or a convolutional autoencoder. We empirically demonstrate the effectiveness of our proposed method in capturing the intrinsic semantic manifold of the related documents. The proposed method outperforms the current state-of-the-art shallow and deep unsupervised hashing methods for the document retrieval task on several prominent document collections.
使用对抗性自动编码器的高效隐式无监督文本哈希
搜索具有语义相似内容的文档是信息检索领域的一个基本问题,面临着各种挑战,主要是效率和有效性方面的挑战。尽管有希望对文档中的结构化依赖关系进行建模,但现有的几种文本散列方法缺乏有效的机制来合并此类重要信息。此外,理想哈希函数的理想特性,如对噪声的鲁棒性、低量化误差和比特平衡/不相关,不能通过现有方法有效地学习。这是因为需要调整额外的超参数或优化这些启发式和显式构造的成本函数。在本文中,我们提出了一种去噪对抗性二进制自编码器(DABA)模型,该模型提出了一种新的表示学习框架,可以在学习的哈希函数中捕获文本文档的结构化表示。此外,对抗性训练提供了一种替代方向,可以隐式学习捕获理想哈希函数的所有所需特征的哈希函数。从本质上讲,DABA采用了一种新颖的单优化对抗训练过程,该过程在其原始域内最小化Wasserstein距离,以正则化循环神经网络或卷积自编码器的编码器输出。我们通过实证证明了我们所提出的方法在捕获相关文档的内在语义歧义方面的有效性。本文提出的方法优于当前最先进的浅层和深层无监督散列方法,用于几个突出的文档集合的文档检索任务。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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