- The Manhattan distance is the same as the Minkowski distance with p=1; hence, we expect to observe a longer distance.
- No; the convergence speed is primarily influenced by the initial position of the centroids.
- Yes; k-means is designed to work with convex clusters, and its performances are poor with concave ones.
- It means that all clusters (except for a negligible percentage of samples), respectively, only contain samples belonging to the same class (that is, with the same true labels).
- It indicates a moderate/strong negative discrepancy between the true label distribution and the assignments. Such a value is a clear negative condition that cannot be accepted, because the vast majority of the samples have been assigned to the wrong clusters.
- No, because the adjusted Rand score is based on the ground truth (that is, the expected number of clusters is fixed).
- If all of...
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