Kernel-Based Just-In-Time Learning for Passing Expectation Propagation Messages

March 09, 2015 Β· Declared Dead Β· πŸ› Conference on Uncertainty in Artificial Intelligence

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Authors Wittawat Jitkrittum, Arthur Gretton, Nicolas Heess, S. M. Ali Eslami, Balaji Lakshminarayanan, Dino Sejdinovic, ZoltΓ‘n SzabΓ³ arXiv ID 1503.02551 Category stat.ML: Machine Learning (Stat) Cross-listed cs.LG Citations 33 Venue Conference on Uncertainty in Artificial Intelligence Last Checked 3 months ago
Abstract
We propose an efficient nonparametric strategy for learning a message operator in expectation propagation (EP), which takes as input the set of incoming messages to a factor node, and produces an outgoing message as output. This learned operator replaces the multivariate integral required in classical EP, which may not have an analytic expression. We use kernel-based regression, which is trained on a set of probability distributions representing the incoming messages, and the associated outgoing messages. The kernel approach has two main advantages: first, it is fast, as it is implemented using a novel two-layer random feature representation of the input message distributions; second, it has principled uncertainty estimates, and can be cheaply updated online, meaning it can request and incorporate new training data when it encounters inputs on which it is uncertain. In experiments, our approach is able to solve learning problems where a single message operator is required for multiple, substantially different data sets (logistic regression for a variety of classification problems), where it is essential to accurately assess uncertainty and to efficiently and robustly update the message operator.
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