Publication Date: 2022/11/04
Abstract: As a preprocessing step, dimensionality reduction from high-dimensional data helps reduce unnecessary data, enhance learning accuracy, and improve result comprehensibility. However, the recent growth in data dimensionality offers a serious challenge to the efficiency and efficacy of many existing feature selection and feature extraction approaches. Dimensionality reduction is an essential topic in machine learning and pattern recognition, and numerous algorithms have been presented. In this research, certain commonly used feature selection and feature extraction approaches are examined to see how well they may be utilized to improve the performance of learning algorithms and, as a result, the predicted accuracy of clas N Ssifiers. A brief examination of dimensionality reduction approaches is offered to determine the strengths and limitations of various commonly used dimensionality reduction methods
Keywords: No Keywords Available
DOI: https://doi.org/10.5281/zenodo.7278660
PDF: https://ijirst.demo4.arinfotech.co/assets/upload/files/IJISRT22OCT823_(1)_(1).pdf
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