Sequential Decision Making on Unmatched Data using Bayesian Kernel Embeddings

10/25/2022
by   Diego Martinez-Taboada, et al.
0

The problem of sequentially maximizing the expectation of a function seeks to maximize the expected value of a function of interest without having direct control on its features. Instead, the distribution of such features depends on a given context and an action taken by an agent. In contrast to Bayesian optimization, the arguments of the function are not under agent's control, but are indirectly determined by the agent's action based on a given context. If the information of the features is to be included in the maximization problem, the full conditional distribution of such features, rather than its expectation only, needs to be accounted for. Furthermore, the function is itself unknown, only counting with noisy observations of such function, and potentially requiring the use of unmatched data sets. We propose a novel algorithm for the aforementioned problem which takes into consideration the uncertainty derived from the estimation of both the conditional distribution of the features and the unknown function, by modeling the former as a Bayesian conditional mean embedding and the latter as a Gaussian process. Our algorithm empirically outperforms the current state-of-the-art algorithm in the experiments conducted.

READ FULL TEXT

page 7

page 8

research
04/17/2023

Promises and Pitfalls of the Linearized Laplace in Bayesian Optimization

The linearized-Laplace approximation (LLA) has been shown to be effectiv...
research
08/12/2020

Deceptive Kernel Function on Observations of Discrete POMDP

This paper studies the deception applied on agent in a partially observa...
research
02/25/2012

Hybrid Batch Bayesian Optimization

Bayesian Optimization aims at optimizing an unknown non-convex/concave f...
research
07/13/2017

Distributionally Ambiguous Optimization Techniques in Batch Bayesian Optimization

We propose a novel, theoretically-grounded, acquisition function for bat...
research
03/31/2017

Exploiting gradients and Hessians in Bayesian optimization and Bayesian quadrature

An exciting branch of machine learning research focuses on methods for l...
research
04/24/2020

Decentralized linear quadratic systems with major and minor agents and non-Gaussian noise

We consider a decentralized linear quadratic system with a major agent a...
research
01/25/2019

Evaluation Function Approximation for Scrabble

The current state-of-the-art Scrabble agents are not learning-based but ...

Please sign up or login with your details

Forgot password? Click here to reset