Confidence-aware graph regularization with heterogeneous pairwise features
Conventional classification methods tend to focus on features of individual objects, while missing out on potentially valuable pairwise features that capture the relationships between objects. Although recent developments on graph regularization exploit this aspect, existing works generally assume o...
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sg-smu-ink.sis_research-50642018-07-20T05:03:39Z Confidence-aware graph regularization with heterogeneous pairwise features FANG, Yuan HSU, Bo-June Paul CHANG, Kevin Chen-Chuan Conventional classification methods tend to focus on features of individual objects, while missing out on potentially valuable pairwise features that capture the relationships between objects. Although recent developments on graph regularization exploit this aspect, existing works generally assume only a single kind of pairwise feature, which is often insufficient. We observe that multiple, heterogeneous pairwise features can often complement each other and are generally more robust in modeling the relationships between objects. Furthermore, as some objects are easier to classify than others, objects with higher initial classification confidence should be weighed more towards classifying related but more ambiguous objects, an observation missing from previous graph regularization techniques. In this paper, we propose a Dirichlet-based regularization framework that supports the combination of heterogeneous pairwise features with confidence-aware prediction using limited labeled training data. Next, we showcase a few applications of our framework in information retrieval, focusing on the problem of query intent classification. Finally, we demonstrate through a series of experiments the advantages of our framework on a large-scale real-world dataset. 2012-08-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4061 info:doi/10.1145/2348283.2348410 https://ink.library.smu.edu.sg/context/sis_research/article/5064/viewcontent/ConfGraphReg2012.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University confidence applications in information retrieval pairwise features graph regularization query intent classification Databases and Information Systems |
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confidence applications in information retrieval pairwise features graph regularization query intent classification Databases and Information Systems FANG, Yuan HSU, Bo-June Paul CHANG, Kevin Chen-Chuan Confidence-aware graph regularization with heterogeneous pairwise features |
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Conventional classification methods tend to focus on features of individual objects, while missing out on potentially valuable pairwise features that capture the relationships between objects. Although recent developments on graph regularization exploit this aspect, existing works generally assume only a single kind of pairwise feature, which is often insufficient. We observe that multiple, heterogeneous pairwise features can often complement each other and are generally more robust in modeling the relationships between objects. Furthermore, as some objects are easier to classify than others, objects with higher initial classification confidence should be weighed more towards classifying related but more ambiguous objects, an observation missing from previous graph regularization techniques. In this paper, we propose a Dirichlet-based regularization framework that supports the combination of heterogeneous pairwise features with confidence-aware prediction using limited labeled training data. Next, we showcase a few applications of our framework in information retrieval, focusing on the problem of query intent classification. Finally, we demonstrate through a series of experiments the advantages of our framework on a large-scale real-world dataset. |
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FANG, Yuan HSU, Bo-June Paul CHANG, Kevin Chen-Chuan |
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FANG, Yuan HSU, Bo-June Paul CHANG, Kevin Chen-Chuan |
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FANG, Yuan |
title |
Confidence-aware graph regularization with heterogeneous pairwise features |
title_short |
Confidence-aware graph regularization with heterogeneous pairwise features |
title_full |
Confidence-aware graph regularization with heterogeneous pairwise features |
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Confidence-aware graph regularization with heterogeneous pairwise features |
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Confidence-aware graph regularization with heterogeneous pairwise features |
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confidence-aware graph regularization with heterogeneous pairwise features |
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Institutional Knowledge at Singapore Management University |
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2012 |
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https://ink.library.smu.edu.sg/sis_research/4061 https://ink.library.smu.edu.sg/context/sis_research/article/5064/viewcontent/ConfGraphReg2012.pdf |
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