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Censoring weighted separate-and-conquer rule induction from survival data.

作者信息

Wróbel Ł, Sikora M

机构信息

Łukasz Wróbel, Institute of Computer Science, Silesian University of Technology, Akademicka 16, 44-100 Gliwice, Poland, E-mail:

出版信息

Methods Inf Med. 2014;53(2):137-48. doi: 10.3414/ME13-01-0046. Epub 2014 Feb 27.

DOI:10.3414/ME13-01-0046
PMID:24573170
Abstract

OBJECTIVES

Rule induction is one of the major methods of machine learning. Rule-based models can be easily read and interpreted by humans, that makes them particularly useful in survival studies as they can help clinicians to better understand analysed data and make informed decisions about patient treatment. Although of such usefulness, there is still a little research on rule learning in survival analysis. In this paper we take a step towards rule-based analysis of survival data.

METHODS

We investigate so-called covering or separate-and-conquer method of rule induction in combination with a weighting scheme for handling censored observations. We also focus on rule quality measures being one of the key elements differentiating particular implementations of separate-and-conquer rule induction algorithms. We examine 15 rule quality measures guiding rule induction process and reflecting a wide range of different rule learning heuristics.

RESULTS

The algorithm is extensively tested on a collection of 20 real survival datasets and compared with the state-of-the-art survival trees and random survival forests algorithms. Most of the rule quality measures outperform Kaplan-Meier estimate and perform at least equally well as tree-based algorithms.

CONCLUSIONS

Separate-and-conquer rule induction in combination with weighting scheme is an effective technique for building rule-based models of survival data which, according to predictive accuracy, are competitive with tree-based representations.

摘要

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引用本文的文献

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Learning rule sets from survival data.从生存数据中学习规则集。
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