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Study on the Development and Implementation of Different Big Data Clustering Methods
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作者 Jean Pierre Ntayagabiri Jérémie Ndikumagenge +1 位作者 longin ndayisaba Boribo Kikunda Philippe 《Open Journal of Applied Sciences》 2023年第7期1163-1177,共15页
Clustering is an unsupervised learning method used to organize raw data in such a way that those with the same (similar) characteristics are found in the same class and those that are dissimilar are found in different... Clustering is an unsupervised learning method used to organize raw data in such a way that those with the same (similar) characteristics are found in the same class and those that are dissimilar are found in different classes. In this day and age, the very rapid increase in the amount of data being produced brings new challenges in the analysis and storage of this data. Recently, there is a growing interest in key areas such as real-time data mining, which reveal an urgent need to process very large data under strict performance constraints. The objective of this paper is to survey four algorithms including K-Means algorithm, FCM algorithm, EM algorithm and BIRCH, used for data clustering and then show their strengths and weaknesses. Another task is to compare the results obtained by applying each of these algorithms to the same data and to give a conclusion based on these results. 展开更多
关键词 CLUSTERING K-MEANS Fuzzy c-Means Expectation Maximization BIRCH
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Decision-Making Information System for Academic Careers in Congolese Universities: From Analysis to Design of a Data Warehouse
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作者 Boribo Kikunda Philippe Thierry Nsabimana +3 位作者 longin ndayisaba Jules Raymond Kala Jérémie Ndikumagenge Elie Zihindula Mushengezi 《Open Journal of Applied Sciences》 2023年第12期2395-2407,共13页
Universities collect and generate a considerable amount of data on students throughout their academic career. Currently in South Kivu, most universities have an information system in the form of a database made up of ... Universities collect and generate a considerable amount of data on students throughout their academic career. Currently in South Kivu, most universities have an information system in the form of a database made up of several disparate files. This makes it difficult to use this data efficiently and profitably. The aim of this study is to develop this transactional database-based information system into a data warehouse-oriented system. This tool will be able to collect, organize and archive data on the student’s career path, year after year, and transform it for analysis purposes. In the age of Big Data, a number of artificial intelligence techniques have been developed, making it possible to extract useful information from large databases. This extracted information is of paramount importance in decision-making. By way of example, the information extracted by these techniques can be used to predict which stream a student should choose when applying to university. In order to develop our contribution, we analyzed the IT information systems used in the various universities and applied the bottom-up method to design our data warehouse model. We used the relational model to design the data warehouse. 展开更多
关键词 Data Warehouse University Courses Universities of South Kivu
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