Active Information Acquisition

02/05/2016
by   He He, et al.
0

We propose a general framework for sequential and dynamic acquisition of useful information in order to solve a particular task. While our goal could in principle be tackled by general reinforcement learning, our particular setting is constrained enough to allow more efficient algorithms. In this paper, we work under the Learning to Search framework and show how to formulate the goal of finding a dynamic information acquisition policy in that framework. We apply our formulation on two tasks, sentiment analysis and image recognition, and show that the learned policies exhibit good statistical performance. As an emergent byproduct, the learned policies show a tendency to focus on the most prominent parts of each instance and give harder instances more attention without explicitly being trained to do so.

READ FULL TEXT
research
11/02/2020

Reinforcement Learning with Efficient Active Feature Acquisition

Solving real-life sequential decision making problems under partial obse...
research
11/30/2009

Acquisition d'informations lexicales à partir de corpus Cédric Messiant et Thierry Poibeau

This paper is about automatic acquisition of lexical information from co...
research
10/30/2021

Intrusion Prevention through Optimal Stopping

We study automated intrusion prevention using reinforcement learning. Fo...
research
10/23/2019

Learning Q-network for Active Information Acquisition

In this paper, we propose a novel Reinforcement Learning approach for so...
research
07/20/2020

Active MR k-space Sampling with Reinforcement Learning

Deep learning approaches have recently shown great promise in accelerati...
research
11/24/2017

Identifying Reusable Macros for Efficient Exploration via Policy Compression

Reinforcement Learning agents often need to solve not a single task, but...
research
02/07/2020

Provably efficient reconstruction of policy networks

Recent research has shown that learning poli-cies parametrized by large ...

Please sign up or login with your details

Forgot password? Click here to reset