What are the most effective ways to visualize K-means clustering algorithm results?

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K-means clustering is a popular and simple algorithm for finding groups of similar data points in a dataset. It assigns each data point to one of k predefined clusters based on its distance to the cluster center. But how can you visualize the results of this algorithm and understand the patterns and insights it reveals? In this article, you will learn about some of the most effective ways to visualize k-means clustering algorithm results, such as scatter plots, heat maps, silhouette plots, and cluster profiles.

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