کد مقاله کد نشریه سال انتشار مقاله انگلیسی نسخه تمام متن
382810 660791 2014 18 صفحه PDF دانلود رایگان
عنوان انگلیسی مقاله ISI
A hybrid algorithm for Bayesian network structure learning with application to multi-label learning
ترجمه فارسی عنوان
الگوریتم ترکیبی برای یادگیری ساختار شبکه بیزی با استفاده از یادگیری چند برچسب
کلمات کلیدی
موضوعات مرتبط
مهندسی و علوم پایه مهندسی کامپیوتر هوش مصنوعی
چکیده انگلیسی


• A novel hybrid algorithm to learn a local Bayesian network structure around a target variable is proposed.
• Well known benchmarks with various data sizes are first used to assess the quality of the learned structure.
• The ability of this algorithm to solve the multi-label learning problem is then investigated.
• The idea is to learn the independence map of the joint distribution of the label set conditioned on the input features.
• Experiments support the conclusions that local structural learning is well suited to multi-label learning.

We present a novel hybrid algorithm for Bayesian network structure learning, called H2PC. It first reconstructs the skeleton of a Bayesian network and then performs a Bayesian-scoring greedy hill-climbing search to orient the edges. The algorithm is based on divide-and-conquer constraint-based subroutines to learn the local structure around a target variable. We conduct two series of experimental comparisons of H2PC against Max–Min Hill-Climbing (MMHC), which is currently the most powerful state-of-the-art algorithm for Bayesian network structure learning. First, we use eight well-known Bayesian network benchmarks with various data sizes to assess the quality of the learned structure returned by the algorithms. Our extensive experiments show that H2PC outperforms MMHC in terms of goodness of fit to new data and quality of the network structure with respect to the true dependence structure of the data. Second, we investigate H2PC’s ability to solve the multi-label learning problem. We provide theoretical results to characterize and identify graphically the so-called minimal label powersets that appear as irreducible factors in the joint distribution under the faithfulness condition. The multi-label learning problem is then decomposed into a series of multi-class classification problems, where each multi-class variable encodes a label powerset. H2PC is shown to compare favorably to MMHC in terms of global classification accuracy over ten multi-label data sets covering different application domains. Overall, our experiments support the conclusions that local structural learning with H2PC in the form of local neighborhood induction is a theoretically well-motivated and empirically effective learning framework that is well suited to multi-label learning. The source code (in R) of H2PC as well as all data sets used for the empirical tests are publicly available.

ناشر
Database: Elsevier - ScienceDirect (ساینس دایرکت)
Journal: Expert Systems with Applications - Volume 41, Issue 15, 1 November 2014, Pages 6755–6772
نویسندگان
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