Learning When to Reject an Importance Sample
نویسندگان
چکیده
When observations are incomplete or data are missing, approximate inference methods based on importance sampling are often used. Unfortunately, when the target and proposal distributions are dissimilar, the sampling procedure leads to biased estimates or requires a prohibitive number of samples. Our method approximates a multivariate target distribution by sampling from an existing, sequential importance sampler and accepting or rejecting the proposals. We develop the rejection-sampler framework and show we can learn the acceptance probabilities from local samples. In a continuoustime domain, we show our method improves upon previous importance samplers by transforming a sequential importance sampling problem into a machine learning one.
منابع مشابه
To reject or not to reject: that is the question-an answer in case of neural classifiers
In this paper a method defining a reject option applicable to a given 0-reject classifier is proposed. The reject option is based on an estimate of the classification reliability, measured by a reliability evaluator . Trivially, once a reject threshold has been fixed, a sample is rejected if the corresponding value of is below . Obviously, as represents the least tolerable classification reliab...
متن کاملA New Acceptance Sampling Design Using Bayesian Modeling and Backwards Induction
In acceptance sampling plans, the decisions on either accepting or rejecting a specific batch is still a challenging problem. In order to provide a desired level of protection for customers as well as manufacturers, in this paper, a new acceptance sampling design is proposed to accept or reject a batch based on Bayesian modeling to update the distribution function of the percentage of nonconfor...
متن کاملReconstruction vs. Interaction-based Output Practice: (in relation to EFL learner’s speaking skill and learning styles)
The belief that output practice is crucial in L2 learning affects foreign language teaching methodology. And researchers have endeavored to find the best ways to encourage learners to produce and practice whatever they hear as an input in the process of learning. Moreover, learning styles and the importance of matching learners’ styles with those of teachers inspired the researchers to inves...
متن کاملFactors Affecting Learning of Pharmaceutical Care in Clinical Education: Arak Nursing Students’ Perspectives
Introduction: Having appropriate knowledge of Pharmacology is very important in giving good nursing care. However, little attention is paid to its teaching and learning. This study aimed to determine factors affecting pharmaceutical care learning in clinical education. Methods: This descriptive study was conducted at Arak University of Medical Sciences during 2010-11. The sample selection was ...
متن کاملLearning to Reject Sequential Importance Steps for Continuous-Time Bayesian Networks
Applications of graphical models often require the use of approximate inference, such as sequential importance sampling (SIS), for estimation of the model distribution given partial evidence, i.e., the target distribution. However, when SIS proposal and target distributions are dissimilar, such procedures lead to biased estimates or require a prohibitive number of samples. We introduce ReBaSIS,...
متن کامل