Sampling First Order Logical Particles

06/13/2012
by   Hannaneh Hajishirzi, et al.
0

Approximate inference in dynamic systems is the problem of estimating the state of the system given a sequence of actions and partial observations. High precision estimation is fundamental in many applications like diagnosis, natural language processing, tracking, planning, and robotics. In this paper we present an algorithm that samples possible deterministic executions of a probabilistic sequence. The algorithm takes advantage of a compact representation (using first order logic) for actions and world states to improve the precision of its estimation. Theoretical and empirical results show that the algorithm's expected error is smaller than propositional sampling and Sequential Monte Carlo (SMC) sampling techniques.

READ FULL TEXT
research
04/07/2016

An Adaptive Resample-Move Algorithm for Estimating Normalizing Constants

The estimation of normalizing constants is a fundamental step in probabi...
research
02/13/2013

Optimal Monte Carlo Estimation of Belief Network Inference

We present two Monte Carlo sampling algorithms for probabilistic inferen...
research
09/10/2023

Variance Reduction of Resampling for Sequential Monte Carlo

A resampling scheme provides a way to switch low-weight particles for se...
research
02/22/2021

A Relational Tsetlin Machine with Applications to Natural Language Understanding

TMs are a pattern recognition approach that uses finite state machines f...
research
01/08/2019

Graphical model inference: Sequential Monte Carlo meets deterministic approximations

Approximate inference in probabilistic graphical models (PGMs) can be gr...
research
02/14/2012

Compressed Inference for Probabilistic Sequential Models

Hidden Markov models (HMMs) and conditional random fields (CRFs) are two...
research
05/25/2018

Situated Mapping of Sequential Instructions to Actions with Single-step Reward Observation

We propose a learning approach for mapping context-dependent sequential ...

Please sign up or login with your details

Forgot password? Click here to reset