Which statement accurately describes the relationship between k-means clustering, binning, and one-hot encoding in data preprocessing?单项选择题
K-means clustering is applied to transform categorical data into numerical representations, while one-hot encoding is used for binning continuous data.
K-means clustering is utilized to partition continuous data into discrete intervals for binning, while one-hot encoding converts categorical data into numerical representations suitable for machine learning algorithms.
K-means clustering divides continuous data into clusters based on similarity, facilitating binning, while one-hot encoding is employed to handle missing values in categorical data.
K-means clustering is used to identify centroids in continuous data, aiding in binning, while one-hot encoding transforms categorical data into a binary format suitable for machine learning algorithms.
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