Front Inner Page - Volume 4 No.4 August 2017

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  • Title

    :

    Cost Effective Disaster Finding Using Supervised Learning Methods On Hadoop.

    Authors

    :

    M.Sathya1,K.Sangeetha2

    Keywords

    :

    Data mining, Support Vector Machine, Hadoop, Map/reduce, clustering.

    Issue Date

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    August 2017

    Abstract

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    Streams of data is collected and the required information is separated from these data is known as data mining. Various data sources are combined for processing to provide further consistent, precise and important information is known as data fusion. The feature and stages of processing is utilized to evaluate the data fusion. The fused data is then classified by data fusion classifier. The accuracy is increased by eliminating undesirable features from the data fused. Extract, Transform and Load (ETL) on Hadoop is the proposed method which is executed to enhance the performance metrics such as scalability, reliability, maintenance cost, CPU utilization and throughput. Support Vector Machine is the learning method that analyzes the data for classification analysis. K-means algorithm is suitable method for classification in which the data set is organized into clusters. In Hadoop, Clustering is performed and Map/Reduce function is used to map the key/value pair and ignore the irrelevant features or redundant data. Data efficiency is improved by applying Map/reduce function. The classification accuracy is increased by implementing the proposed system. Map/reduce approach is in Apache Hadoop to reduce the cost barriers for analyzing and processing a large data. The evaluation outcomes shows that the proposed method is reliable and scalable and also throughput and CPU utilization is improved.

    Page(s)

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    1-6

    ISSN

    :

    2347- 4734

    Source

    :

    Vol. 4, No.4, August 2017

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