TSHD: Topic Segmentation Based on Headings Detection (Case Study: Resumes)

Majd E. Tannous, Wassim Ramadan, Mohanad A. Rajab
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Abstract

Many unstructured documents contain segments with specific topics. Extracting these segments and identifying their topics helps to access the required information directly. This can improve the quality of many NLP applications such as information extraction, information retrieval, summarization, and question answering. Resumes (CVs) are unstructured documents that have diverse formats. They contain various segments such as personal information, experience, and education. Manually processing resumes to find the most suitable candidates for a particular job is a difficult task. Due to the increased amount of data, it has become very necessary to manipulate resumes by computer to save time and effort. This research presents a new algorithm named TSHD for topic segmentation based on headings detection. We apply the algorithm to extract resume segments and identify their topics. The proposed TSHD algorithm is accurate and addresses many weaknesses in previous studies. Evaluation results show a very high F1 score (about 96%) and a very low segmentation error (about 2%). The algorithm can be easily adapted to deal with other textual domains that contain headings in their segments.
TSHD:基于标题检测的话题分割(以简历为例)
许多非结构化文档包含具有特定主题的片段。提取这些片段并确定它们的主题有助于直接访问所需的信息。这可以提高许多NLP应用程序的质量,如信息提取、信息检索、摘要和问题回答。简历是一种格式多样的非结构化文档。它们包含个人信息、经历和教育等各个部分。手动处理简历以找到最适合特定职位的候选人是一项艰巨的任务。由于数据量的增加,为了节省时间和精力,用电脑处理简历变得非常必要。本文提出了一种新的基于标题检测的主题分割算法TSHD。我们应用该算法提取简历片段并识别其主题。提出的TSHD算法精度高,解决了以往研究中的许多不足。评价结果表明,该方法的F1分数很高(约96%),分割误差很低(约2%)。该算法可以很容易地适应于处理在其分段中包含标题的其他文本域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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