Test-Cost Sensitive Methods for Identifying Nearby Points
Machine Learning
2020-10-09 v1 Artificial Intelligence
Abstract
Real-world applications that involve missing values are often constrained by the cost to obtain data. Test-cost sensitive, or costly feature, methods additionally consider the cost of acquiring features. Such methods have been extensively studied in the problem of classification. In this paper, we study a related problem of test-cost sensitive methods to identify nearby points from a large set, given a new point with some unknown feature values. We present two models, one based on a tree and another based on Deep Reinforcement Learning. In our simulations, we show that the models outperform random agents on a set of five real-world data sets.
Cite
@article{arxiv.2010.03962,
title = {Test-Cost Sensitive Methods for Identifying Nearby Points},
author = {Seung Gyu Hyun and Christopher Leung},
journal= {arXiv preprint arXiv:2010.03962},
year = {2020}
}
Comments
8 pages, 5 Figure, Submitted to AAAI 2021