自动质量评估文件与应用论文评分

Niraj Kumar, Lipika Dey
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引用次数: 6

摘要

在本文中,我们关注的是智能作文评分的自动质量评估。我们设计的系统对文章进行评分,而不依赖于训练数据中完全重叠的文章。这增加了设计系统的范围,因为列表依赖于高度关注主题的标记数据,用于自动作文评分。设计的系统不是依赖于直接的主题特定匹配w.r.t、训练数据,而是利用知识库文档和SentiWordNet等来判断文章的质量。为了实现这一目标,我们专注于五个不同的特征:(1)信息的相关性,(2)稀疏连接词的存在,(3)词的统计和语义作用,(4)健谈术语的存在和(5)文章的长度。我们利用文本的词图提取所有这些特征,并填充词之间的统计关系、语义关系和主题关系。接下来,我们使用图理论技术,如:加权全对最短路径,自我网络,加权图中节点有效性的基于熵的度量,以及统计和概率技术,如:总相关分数和点明智互信息(PMI)等。我们在标准数据集上的实验结果表明,我们设计的系统比该领域最先进的系统性能更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Quality Assessment of Documents with Application to Essay Grading
In this paper, we focus on automatic quality assessment for intelligent essay grading. Our devised system grades essays without depending upon completely overlapping essays in training data. This increases the scope of devised system due to list dependency on highly topic focused labeled data for automatic essay grading. Instead of depending upon direct topic specific matching w.r.t., training data, the devised system judge the quality of essay by exploiting knowledgebase documents and SentiWordNet, etc. To achieve this goal, we concentrate on five different features: (1) relevance of information, (2) presence of sparsely connected words, (3) statistical and semantic role of words, (4) presence of talkative terms and (5) length of essay. We extract all these features by using word graph of text, populated with statistical, semantic and topical relation between words. Next, we use graph theoretical techniques, like: weighted all pair shortest paths, Ego-Networks, entropy based measures for effectiveness of nodes in weighted graph and statistical and probabilistic techniques like: total correlation score and Point wise Mutual Information (PMI) etc. Our experimental result on standard dataset shows that our devised system performs better than state-of-the-Art systems of this area.
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