A HYBRID SERENDIPITY SOCIAL RECOMMENDER MODEL

Ahmad Subhi Zolkafly, R. Ahmad
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Abstract

Social support is essential, especially in a working environment, because it can reduce psychological strain. The psychological strain associated with mental health in daily lives could have been gained from mismatched staffing and indirect control of the staffs. In order to meditate the problem, in this study, a hybrid serendipity social recommender model is proposed. This model is a combination of several proposed models encountered during the development process. Firstly, Rough Set Theory (RST) has been used in the early development stage to compute an automated attribute selection. RST is a mathematical tool that is widely used for knowledge discovery and feature selection. At the same time, it, minimizes redundancies among variables in classifying objects and extracts rules from the database. In the next stage, the classification model is used to classify the data into subclasses by using a deep learning algorithm. This algorithm aims to define the higher matching suggested attributes and used for processing massive data. Lastly, a reasoning approach is applied by using case-based reasoning from the result produced. The reasoning approach is used to finding the reasons why the attributes are selected. This approach searches the history of the selected attributes or compute a reason by digging back in the database.
混合意外社交推荐模型
社会支持是必不可少的,尤其是在工作环境中,因为它可以减少心理压力。日常生活中与心理健康相关的心理紧张可能是由于人员配置不匹配和对员工的间接控制造成的。为了解决这一问题,本研究提出了一种混合偶然性社会推荐模型。该模型是开发过程中遇到的几个建议模型的组合。首先,粗糙集理论(RST)在早期开发阶段被用于计算自动属性选择。RST是一种广泛用于知识发现和特征选择的数学工具。同时,最大限度地减少对象分类过程中变量之间的冗余,并从数据库中提取规则。在下一阶段,使用分类模型通过深度学习算法将数据分类为子类。该算法旨在定义匹配度较高的建议属性,用于处理海量数据。最后,从生成的结果中使用基于案例的推理方法来应用推理方法。推理方法用于查找选择属性的原因。这种方法搜索所选属性的历史记录,或者通过深入数据库来计算原因。
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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