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Mapping Student Performance With Employment Using Fuzzy C-Means

机译:使用模糊C-means使用就业映射学生表现

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摘要

Technical organisations are ranked based on performance indicators like resources, students' intake, global reputation, and research activities. Student performance and placement are important factors in deciding the ranking of a university. Student performance analysis is a recent and widely researched domain aimed at reforming the education system. The analysis assists institutions to understand and improve their performance and educational outcomes. Admissions, academics, and placement are the three most significant processes during which the large amount of data is gathered within a university and there is a requirement of analysis. The data mining techniques are used for data analysis processes and it encompasses data understanding, pre-processing, modelling, and implementation. In this research work, fuzzy c-means clustering technique is used to understand fuzziness of student performance, classify and map the student performance to employability. To understand this objective, the dataset has been collected from universities, pre-processed, and analysed.
机译:技术组织根据资源,学生的摄入,全球声誉和研究活动等绩效指标进行排名。学生表现和安置是决定大学排名的重要因素。学生绩效分析是最近和广泛研究的域名,旨在改革教育系统。分析协助机构理解和改善其表现和教育结果。招生,学者和展示位置是三个最重要的流程,在大学内聚集了大量数据,并且有一个分析的要求。数据挖掘技术用于数据分析过程,它包括数据理解,预处理,建模和实现。在本研究工作中,模糊C-Means聚类技术用于了解学生表现的模糊性,对就业性进行分类和映射学生绩效。要了解此目标,已从大学,预处理和分析中收集数据集。

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