SeqVectorizer: Sequence Representation in Vector Space

Md. Kowsher, Avishek Das, Md. Murad Hossain Sarker, A. Tahabilder, Md. Zahidul Islam Sanjid
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引用次数: 0

Abstract

The latest strategies for learning vector space portrayals of words have prevailed with regard to catching fine-grained semantic and syntactic consistencies utilizing vector arithmetic. However, the sequence representation is not present in these methods. As a result, to consider the sequence, we are utilizing the sequence neural networks like RNN or statistical techniques like HMM. To represent the sequence through every state vector, we propose a new term or word representation technique called SeqVectorizer, which stands for sequence vectorizer. In SeqVectorizer every state represents a combined vector of two separate joined states, and these are the previous sequence state and the current state probability. Comparing with other representation systems, it shows a state-of-the-art performance on some testing data-sets.
SeqVectorizer:向量空间中的序列表示
在利用向量算法捕捉细粒度语义和句法一致性方面,学习词的向量空间描绘的最新策略已经盛行。但是,这些方法中不存在序列表示。因此,为了考虑序列,我们使用了像RNN这样的序列神经网络或像HMM这样的统计技术。为了通过每个状态向量表示序列,我们提出了一种新的术语或单词表示技术,称为SeqVectorizer,即序列矢量器。在SeqVectorizer中,每个状态都表示两个独立连接状态的组合向量,这些是前一个序列状态和当前状态概率。与其他表示系统相比,该系统在一些测试数据集上表现出了较好的性能。
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