Title
Reliable And Efficient Anytime Skeleton Learning
Abstract
Skeleton Learning (SL) is the task for learning an undirected graph from the input data that captures their dependency relations. SL plays a pivotal role in causal learning and has attracted growing attention in the research community lately. Due to the high time complexity, anytime SL has emerged which learns a skeleton incrementally and improves it overtime. In this paper, we first propose and advocate the reliability requirement for anytime SL to be practically useful. Reliability requires the intermediately learned skeleton to have precision and persistency. We also present REAL, a novel Reliable and Efficient Anytime Learning algorithm of skeleton. Specifically, we point out that the commonly existing Functional Dependency (FD) among variables could make the learned skeleton violate faithfulness assumption, thus we propose a theory to resolve such incompatibility. Based on this, REAL conducts SL on a reduced set of variables with guaranteed correctness thus drastically improves efficiency. Furthermore, it employs a novel edge-insertion and best-first strategy in anytime fashion for skeleton growing to achieve high reliability and efficiency. We prove that the skeleton learned by REAL converges to the correct skeleton under standard assumptions. Thorough experiments were conducted on both benchmark and real-world datasets demonstrate that REAL significantly outperforms the other state-of-the-art algorithms.
Year
DOI
Venue
2020
10.1609/AAAI.V34I06.6569
national conference on artificial intelligence
DocType
Volume
Issue
Conference
34
06
ISSN
Citations 
PageRank 
2159-5399
0
0.34
References 
Authors
0
6
Name
Order
Citations
PageRank
Rui Ding129736.06
Yanzhi Liu200.34
Jingjing Tian300.34
Zhouyu Fu411.02
Shi Han529615.22
Dongmei Zhang61439132.94