Representation Learning of Compositional Data
–Neural Information Processing Systems
We consider the problem of learning a low dimensional representation for compositional data. Compositional data consists of a collection of nonnegative data that sum to a constant value. Since the parts of the collection are statistically dependent, many standard tools cannot be directly applied. Instead, compositional data must be first transformed before analysis. Focusing on principal component analysis (PCA), we propose an approach that allows low dimensional representation learning directly from the original data.
Neural Information Processing Systems
Mar-16-2026, 21:28:57 GMT
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