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Classification Technique of Interviewer-Bot Result using Na?ve Bayes and Phrase Reinforcement Algorithms

机译:基于朴素贝叶斯和短语增强算法的面试结果分类技术

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Students with hectic college schedules tend not to have enough time repeating the course material. Meanwhile, after they graduated, to be accepted in a foreign company with a higher salary, they must be ready for the English-based interview. To meet these needs, they try to practice conversing with someone who is proficient in English. On the other hand, it is not easy to have someone who is not only proficient in English, but also understand about a job interview related topics. This paper presents the development of a machine which is able to provide practice on English-based interviews, specifically on job interviews. Interviewer machine (interviewer bot) is expected to help students practice on speaking English in particular issue of finding suitable job. The interviewer machine design uses words from a chat bot database named ALICE to mimic human intelligence that can be applied to a search engine using AIML. Na?ve Bayes algorithm is used to classify the interview results into three categories: POTENTIAL, TALENT and INTEREST students. Furthermore, based on the classification result, the summary is made at the end of the interview session by using phrase reinforcement algorithms. By using this bot, students are expected to practice their listening and speaking skills, also to be familiar with the questions often asked in job interviews so that they can prepare the proper answers. In addition, the bot’ users could know their potential, talent and interest in finding a job, so they could apply to the appropriate companies. Based on the validation results of 50 respondents, the accuracy degree of interviewer chat-bot (interviewer engine) response obtained 86.93%.
机译:时间表紧张的学生往往没有足够的时间重复课程内容。同时,他们毕业后要被一家薪资更高的外国公司录取,他们必须准备好进行英语面试。为了满足这些需求,他们尝试与精通英语的人进行对话。另一方面,要拥有一个不仅精通英语,而且还了解与工作面试相关主题的人并不容易。本文介绍了一种机器的开发,该机器能够提供基于英语的面试,特别是针对工作面试的练习。 Interviewer机器(interviewer bot)有望帮助学生练习说英语,特别是在找到合适工作的问题上。采访者机器设计使用来自聊天机器人数据库ALICE的单词来模仿人类智能,该智能可以使用AIML应用于搜索引擎。朴素贝叶斯算法用于将访谈结果分为三类:潜在学生,才能学生和兴趣学生。此外,基于分类结果,在访谈会话结束时使用短语增强算法进行摘要。通过使用该机器人,学生可以练习听力和口语技能,并熟悉工作面试中经常提出的问题,以便他们准备适当的答案。此外,漫游器的用户可以了解自己的潜力,才华和对找到工作的兴趣,因此可以向适当的公司提出申请。根据50名受访者的验证结果,访问者聊天机器人(访问者引擎)响应的准确度达到86.93%。

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