Machine learning-driven automatic storage space recommendation for object-based cloud storage system

An object-based cloud storage system is a storage platform where big data is managed through the internet and data is considered as an object. A smart storage system should be able to handle the big data variety property by recommending the storage space for each data type automatically. Machine lea...

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Veröffentlicht in:Complex & Intelligent Systems 2022-02, Vol.8 (1), p.489-505
Hauptverfasser: Mondal, Anindita Sarkar, Mukhopadhyay, Anirban, Chattopadhyay, Samiran
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Sprache:eng
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Zusammenfassung:An object-based cloud storage system is a storage platform where big data is managed through the internet and data is considered as an object. A smart storage system should be able to handle the big data variety property by recommending the storage space for each data type automatically. Machine learning can help make a storage system automatic. This article proposes a classification engine framework for this purpose by utilizing a machine learning strategy. A feature selection approach wrapped with a classifier is proposed to automatically predict the proper storage space for the incoming big data. It helps build an automatic storage space recommendation system for an object-based cloud storage platform. To find out a suitable combination of feature selection algorithms and classifiers for the proposed classification engine, a comparative study of different supervised feature selection algorithms (i.e., Fisher score, F-score, Lll21) from three categories (similarity, statistical, sparse learning) associated with various classifiers (i.e., SVM, K -NN, Neural Network) is performed. We illustrate our study using RSoS system as it provides a cloud storage platform for the healthcare data as experimental big data by considering its variety property. The experiments confirm that Lll21 feature selection combined with K -NN classifier provides better performance than the others.
ISSN:2199-4536
2198-6053
DOI:10.1007/s40747-021-00517-4