A Novel Approach for Mining Big Data Using Multi-Model Fusion Mechanism (MMFM)

Main Article Content

R. Ramprasad
C. Jayakumari

Abstract

Big data processing and analytics require sophisticated systems and cutting-edge methodologies to extract useful data from the available data. Extracted data visualization is challenging because of the processing models' dependence on semantics and classification. To categorize and improve information-based semantics that have accumulated over time, this paper introduces the Multi-model fusion mechanism for data mining (MMFM) approach. Information dependencies are organized based on the links between the data model based on attribute values. This method divides the attributes under consideration based on processing time to handle complicated data in controlled amount of time. The proposed MMFM’s performance is assessed with real-time weather prediction dataset where the data is acquired from sensor (observed) and image data. MMFM is used to conduct semantic analytics and similarity-based classification on this collection. The processing time based on records and samples are investigated for the various data sizes, instances, and entries. It is found that the proposed MMFM gets 70 seconds of processing time for 2GB data and 0.99 seconds while handling 5000 records for various classification instances.

Article Details

How to Cite
Ramprasad, R., & Jayakumari, C. (2023). A Novel Approach for Mining Big Data Using Multi-Model Fusion Mechanism (MMFM). International Journal on Recent and Innovation Trends in Computing and Communication, 11(5s), 484–493. https://doi.org/10.17762/ijritcc.v11i5s.7110
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Articles

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