2019
DOI: 10.11591/ijece.v9i1.pp409-416
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Granularity analysis of classification and estimation for complex datasets with MOA

Abstract: <span>Dispersed and unstructured datasets are substantial parameters to realize an exact amount of the required space. Depending upon the size and the data distribution, especially, if the classes are significantly associating, the level of granularity to agree a precise classification of the datasets exceeds. The data complexity is one of the major attributes to govern the proper value of the granularity, as it has a direct impact on the performance. Dataset classification exhibits the vital step in com… Show more

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