Hybrid K Mean Clustering Algorithm for Crop Production Analysis in Agriculture

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Abstract

The proposed research work aims to perform the cluster analysis in the field of Precision Agriculture. The k-means technique is implemented to cluster the agriculture data. Selecting K value plays a major role in k-mean algorithm. Different techniques are used to identify the number of cluster value (k-value). Identification of suitable initial centroid has an important role in k-means algorithm. In general it will be selected randomly. In the proposed work to get the stability in the result Hybrid K-Mean clustering is used to identify the initial centroids. Since initial cluster centers are well defined Hybrid K-Means acts as a stable clustering technique.

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Hybrid K Mean Clustering Algorithm for Crop Production Analysis in Agriculture. (2019). International Journal of Innovative Technology and Exploring Engineering, 9(2S), 9–13. https://doi.org/10.35940/ijitee.b1002.1292s19

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