Coding Exercise on Miscellaneous Methods

Complete this coding exercise on miscellaneous methods and finding model criticisms.

Problem statement: Criticisms

In addition to selecting prototypes P={P1,P2,...,Pm}P = \{P_1, P_2, ..., P_m \} for a data distribution D={X1,X2,..,Xn}D = \{ X_1, X_2, .., X_n \}, the MMD-critic algorithm can also be used to select data points not well explained by the prototypes, which we call the model criticism. The figure below shows prototypes and criticisms in a data distribution. The criticisms are points in a cluster without a prototype.

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