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Machine learning and training a computer-implemented neural network to retrieve semantically equivalent questions using hybrid in-memory representations

机译:机器学习和训练计算机实现的神经网络,以使用混合内存表示形式检索语义上相等的问题

摘要

Determining semantically equivalent text or questions using hybrid representations based on neural network learning. Weighted bag-of-words and convolutional neural networks (CNN) based distributed vector representations of questions or text may be generated to compute the semantic similarity between questions or text. Weighted bag-of-words and CNN based distributed vector representations may be jointly used to compute the semantic similarity. A pair-wise ranking loss function trains neural network. In one embodiment, the parameters of the system are trained by minimizing a pair-wise ranking loss function over a training set using stochastic gradient descent (SGD).
机译:使用基于神经网络学习的混合表示来确定语义上相等的文本或问题。可以生成基于加权词袋和卷积神经网络(CNN)的问题或文本的分布式矢量表示,以计算问题或文本之间的语义相似度。加权词袋和基于CNN的分布式矢量表示可以共同用于计算语义相似度。成对排名损失函数训练神经网络。在一个实施例中,通过使用随机梯度下降(SGD)在训练集上最小化成对排名损失函数来训练系统的参数。

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