Inverse Problems
Gaussian Mixture Models (GMMs) are probabilistic models that represent a distribution of data as a combination of multiple Gaussian distributions, each associated with its own mean and variance. This approach allows GMMs to capture complex data patterns and relationships, making them particularly useful for clustering and density estimation tasks in machine learning.
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