重复问题管理和答案验证系统

Somak Mukherjee, N. S. Kumar
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引用次数: 2

摘要

管理试卷的大型数据集可能很麻烦,特别是在处理潜在的重复或错误问题时。添加一个自动处理这些问题的自然语言系统将大大加快对这些数据集的验证。这是一个用于识别纯文本英语句子之间语义相似性的工具。采用word2vec方法,使用多个距离度量的词嵌入特征和简单结构特征进行精挑细选。该模型是在弱硬件上训练的,允许在低端机器上有足够高的精度。结果证明了boost在提高简单学习模型性能方面的有效性,允许在没有高端硬件的情况下进行复杂的学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Duplicate Question Management and Answer Verification System
Management of large data sets of question papers can be cumbersome, especially when dealing with potential duplicate or erroneous questions. The addition of a natural language system that automatically handles these issues would greatly speed up the verification of such data sets. This is a tool for identifying semantic similarity between sentences in plain-text English. Handpicked features were selected which included simple structural features and word embedding features using word2vec with multiple distance metrics between the resulting sentence vectors. The model is trained on weak hardware allowing for sufficiently high accuracy on low end machines. Results demonstrate the effectiveness of boosting for improving the performance of simple learning models, allowing for complex learning in the absence of high end hardware.
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