T H E P U B G P R O J E C T.

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Presentation transcript:

T H E P U B G P R O J E C T

Data Science Process 204453 : Pattern Recognition

KDD Process 204453 : Pattern Recognition

Feature Selection 204453 : Pattern Recognition

Noise Detection 204453 : Pattern Recognition

Imputation 204453 : Pattern Recognition

Pictures Credit https://www.kdnuggets.com/2016/03/data-science-process- rediscovered.html/2?fbclid=IwAR0XMS9DCopMzSBIXw2WM4xqGlKya fsbM6LwvdwRjyu1oHrA1aVYlOtacvs http://www2.cs.uregina.ca/~dbd/cs831/notes/kdd/1_kdd.html https://medium.com/@mehulved1503/feature-selection-and- feature-extraction-in-machine-learning-an-overview-57891c595e96 https://iwringer.wordpress.com/2015/11/17/anomaly-detection- concepts-and-techniques/ http://analytics-magazine.org/missing-values/ 204453 : Pattern Recognition