How to Approximate Inference with Subtractive Mixture Models

April 17, 2026 Β· Grace Period Β· πŸ› AISTATS 2026

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Authors Lena Zellinger, Nicola Branchini, Lennert De Smet, VΓ­ctor Elvira, Nikolay Malkin, Antonio Vergari arXiv ID 2604.16714 Category cs.LG: Machine Learning Cross-listed stat.CO, stat.ML Citations 0 Venue AISTATS 2026
Abstract
Classical mixture models (MMs) are widely used tractable proposals for approximate inference settings such as variational inference (VI) and importance sampling (IS). Recently, mixture models with negative coefficients, called subtractive mixture models (SMMs), have been proposed as a potentially more expressive alternative. However, how to effectively use SMMs for VI and IS is still an open question as they do not provide latent variable semantics and therefore cannot use sampling schemes for classical MMs. In this work, we study how to circumvent this issue by designing several expectation estimators for IS and learning schemes for VI with SMMs, and we empirically evaluate them for distribution approximation. Finally, we discuss the additional challenges in estimation stability and learning efficiency that they carry and propose ways to overcome them. Code is available at: https://github.com/april-tools/delta-vi.
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