论文标题

使用K模式算法和海洋模型对申请人和员工的人格检测

Personality Detection of Applicants And Employees Using K-mode Algorithm And Ocean Model

论文作者

Mohan, Binisha, Joseph, Dinju Vattavayalil, Subhash, Bharat Plavelil

论文摘要

行为,情感,动机和思维的结合称为个性。为了更有效地入围候选人,许多组织依靠人格预测。该公司可以根据必要的个性偏好对申请人进行分组,以聘用或选择最佳候选人进行所需的职位描述。创建模型来确定申请人的性格类型,以便雇主可以通过检查人的面部表情,语音语调和简历来找到合格的候选人。此外,本文强调检测员工行为的变化。正在研究和分析员工对每组问题的态度和行为。在这里,K-Modes聚类方法用于预测员工福祉,包括工作压力,工作环境以及与同龄人的关系,利用海洋模型和AVI-AI行政系统中的CNN算法。调查结果表明,AVI可用于使用AI决策代理进行有效的候选筛查。对特定领域的研究超出了当前的探索,需要通过更深层次的模型和可以修补极其复杂操作的新配置进行扩展。

The combination of conduct, emotion, motivation, and thinking is referred to as personality. To shortlist candidates more effectively, many organizations rely on personality predictions. The firm can hire or pick the best candidate for the desired job description by grouping applicants based on the necessary personality preferences. A model is created to identify applicants' personality types so that employers may find qualified candidates by examining a person's facial expression, speech intonation, and resume. Additionally, the paper emphasises detecting the changes in employee behaviour. Employee attitudes and behaviour towards each set of questions are being examined and analysed. Here, the K-Modes clustering method is used to predict employee well-being, including job pressure, the working environment, and relationships with peers, utilizing the OCEAN Model and the CNN algorithm in the AVI-AI administrative system. Findings imply that AVIs can be used for efficient candidate screening with an AI decision agent. The study of the specific field is beyond the current explorations and needed to be expanded with deeper models and new configurations that can patch extremely complex operations.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源