COLLECTION – (Faculty Publications 2025-2026)
| Title | Data Preprocessing Using Enhanced Principal Component Analysis (Epca) For Agricultural Datasets |
|---|---|
| Author(s) | Dr.M.Rathamani, N.Harshini |
| File | DataPrerocessing.pdf |
| Abstract | Data pre-processing is considered as the core stage in core and data mining. Standardization, discretization, and dimensionality decrease are notable strategies in data pre-processing. In this paper proposed Enhanced Principal component Analysis (EPCA) the effects of pre-processing strategies on the Agricultural for the accuracy of the dataset. Experiments were conducted utilizing the above-listed techniques and their singular outcomes were contrasted with one another. Enhanced PCA were tried for dimensionality decrease; besides, an existing methodology of PCA and KNN was attempted and the presentation showed superior characterization accuracy contrasted with the individual strategies. Keywords: Agricultural, Data Mining, Data pre-processing, principal component analysis; |

