工作流管理系统的电子邮件分类模型

Q3 Multidisciplinary
Takorn Prexawanprasut, Piyanuch Chaipornkaew
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引用次数: 5

摘要

研究者观察研究了3家进出口领域的创业公司的商业运作。调查发现,员工和他们的客户主要通过电子邮件进行沟通。因此,重要的商业数据在邮件内容中传递。每当员工需要查找信息时,他们首先查找的是电子邮件。企业的业主很关心这个问题,所以他们建议购买一个新的工作流管理系统来帮助管理他们的业务事务。实现新的工作流管理系统的难点在于将现有的电子邮件迁移到系统中。一个新的工作流程管理系统也应该能够将任何收到的电子邮件分类。研究人员注意到,在同一类别的电子邮件内容中,有一些关键词经常出现。因此,研究人员实施了一个程序,根据电子邮件信息中的单词对电子邮件进行分类。有2个参数会影响程序的精度。第一个参数是数据库中与示例电子邮件相比较的单词数。第二个参数是可接受的百分比,用于对电子邮件进行分类。本研究的结果表明,与样本电子邮件相比,数据库中的单词数应该是9,可接受的电子邮件分类百分比应该是30%。当应用此规则对8,751封邮件进行分类时,该实验的准确率约为73.6%。下一阶段是根据电子邮件的特点对其进行分类。最后,该程序从结构化电子邮件中提取必要的数据,并为新的工作流管理系统做好准备。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Email Classification Model for Workflow Management Systems
The researchers observed and studied the business operations of 3 startup businesses in the export/import field. It was found that employees and their clients mostly communicate via email. Therefore, crucial business data are conveyed in email contents. Whenever employees need to find information, the first place they look for such data is email. The owners of businesses are concerned about this issue, so they proposed to buy a new workflow management system to help in managing their business transactions. The difficulty of implementing the new workflow management system is in migrating existing emails into the system. A new workflow management system should also be able to classify any incoming emails into categories. The researchers noticed that there were some keywords that frequently occurred in email contents in the same categories. Therefore, the researchers implemented a program to categorize the emails based on the words found in email messages. There are 2 parameters which affect the accuracy of the program. The first parameter is the number of words in a database compared to the sample emails. The second parameter is an acceptable percentage to classify emails. The results of this research demonstrated that the number of words in a database compared to the sample emails should be 9, and the acceptable percentage to categorize emails should be 30 %. When this rule was applied to categorize 8,751 emails, the accuracy of this experiment was approximately 73.6 %. The next phase is to order emails in each category based on their characteristics. Finally, the program extracts essential data from structured emails and prepares them for the new workflow management system.
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来源期刊
Walailak Journal of Science and Technology
Walailak Journal of Science and Technology Multidisciplinary-Multidisciplinary
CiteScore
0.80
自引率
0.00%
发文量
0
审稿时长
24 weeks
期刊介绍: The Walailak Journal of Science and Technology (Walailak J. Sci. & Tech. or WJST), is a peer-reviewed journal covering all areas of science and technology, launched in 2004. It is published 12 Issues (Monthly) by the Institute of Research and Innovation of Walailak University. The scope of the journal includes the following areas of research : - Natural Sciences: Biochemistry, Chemical Engineering, Chemistry, Materials Science, Mathematics, Molecular Biology, Physics and Astronomy. -Life Sciences: Allied Health Sciences, Biomedical Sciences, Dentistry, Genetics, Immunology and Microbiology, Medicine, Neuroscience, Nursing, Pharmaceutics, Psychology, Public Health, Tropical Medicine, Veterinary. -Applied Sciences: Agricultural, Aquaculture, Biotechnology, Computer Science, Cybernetics, Earth and Planetary, Energy, Engineering, Environmental, Food Science, Information Technology, Meat Science, Nanotechnology, Plant Sciences, Systemics
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