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Comparative Question Answering System based on Natural Language Processing and Machine Learning

机译:基于自然语言处理和机器学习的比较问题应答系统

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It is very tedious for anyone to go through the whole document to get answers for their queries since there is a need of Question Answering system to make life easier. In this research, we used machine learning architectures in Question Answering field, based on the Stanford Question Answering dataset (SQuAD). In our work, build two models in which first model used unsupervised learning algorithm GloVe to get vector representation of word and trained using bidirectional-LSTM in which the training accuracy is 64.93% and testing accuracy is 60.33% scored with the model. In Second model used InferSent which is a sentence embedding method to get vector representation of data. This vector representation data is used to train model. The machine learning algorithms used are XG Boost and Multinomial Logistic Regression in which scored 70.02 percent in training and 66.03 percent in testing. The aim of this research is to build the best accuracy model using Glove and InferSent to use vector of various dimensionality to represent it numerically so that machine can interpret it.
机译:这是非常乏味的人要经过整个文档以获取他们的查询答案,因为有应答系统需要问题,使生活更轻松。在这项研究中,我们用机器学习问答领域架构的基础上,斯坦福问答集(班)。在我们的工作中,构建两个模型中,第一个模型使用监督学习算法手套拿到字的矢量表示,培训采用双向LSTM在训练精度为64.93%和测试精度与模型取得了60.33%。在第二模型中使用InferSent这是一个句嵌入方法来获得数据的矢量表示。这个矢量表示的数据被用来训练模式。所使用的机器学习算法是XG升压和多项Logistic回归中打进训练70.02%和66.03测试百分之。这项研究的目的是建立使用手套和InferSent使用各种维度的向量来表示它数值,使机器可以解释它的最佳精度的模型。

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