Plant Breeding Evaluation Based on Coupled Feature Representation

With the rapid development of improved breeding equipment and information technology, computer-aided decision-making in plant breeding evaluation can help solve the problems associated with high-throughput demand and insufficient experience of breeders in modern large-scale field breeding experiment...

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Main Authors: Xiangyu Zhao, Yanyun Han, Zhongqiang Liu, Shouhui Pan, Kaiyi Wang
Format: Article
Language:English
Published: IEEE 2020-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/9172054/
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spelling doaj-b5a1c5f2fcd54a428150fa2ef57d10b52021-03-30T01:52:50ZengIEEEIEEE Access2169-35362020-01-01815364115365010.1109/ACCESS.2020.30181989172054Plant Breeding Evaluation Based on Coupled Feature RepresentationXiangyu Zhao0https://orcid.org/0000-0001-7668-1509Yanyun Han1Zhongqiang Liu2Shouhui Pan3Kaiyi Wang4Beijing Research Center for Information Technology in Agriculture, Beijing, ChinaBeijing Research Center for Information Technology in Agriculture, Beijing, ChinaBeijing Research Center for Information Technology in Agriculture, Beijing, ChinaBeijing Research Center for Information Technology in Agriculture, Beijing, ChinaBeijing Research Center for Information Technology in Agriculture, Beijing, ChinaWith the rapid development of improved breeding equipment and information technology, computer-aided decision-making in plant breeding evaluation can help solve the problems associated with high-throughput demand and insufficient experience of breeders in modern large-scale field breeding experiments. Many linear models have made great contributions to the development of breeding evaluation although they are based on a wrong assumption of attribute independence. This paper proposes a unified coupled representation that integrates intra-coupled and inter-coupled relationships to capture the interdependence among quantitative traits by addressing coupling context and coupling weights. Moreover, a hybrid scheme of the linear correlation and ordinal relation is introduced to express the coupling relationship with a preset parameter that balances the contributions so as to capture both relative and absolute performance in cultivar selection and breeding evaluation. A framework that includes data preprocessing, coupled data representation, feature selection, prediction model construction, and assisted decision-making is our overall solution for the plant breeding evaluation task. Experiments on real plant breeding data sets demonstrated the effectiveness of coupled representation for elucidating the quantitative phenotypic traits and the advantages of the proposed plant breeding evaluation algorithm compared with benchmark algorithms.https://ieeexplore.ieee.org/document/9172054/Breeding evaluationcoupled representationquantitative phenotypic traitsfeature selectiondecision support systems
collection DOAJ
language English
format Article
sources DOAJ
author Xiangyu Zhao
Yanyun Han
Zhongqiang Liu
Shouhui Pan
Kaiyi Wang
spellingShingle Xiangyu Zhao
Yanyun Han
Zhongqiang Liu
Shouhui Pan
Kaiyi Wang
Plant Breeding Evaluation Based on Coupled Feature Representation
IEEE Access
Breeding evaluation
coupled representation
quantitative phenotypic traits
feature selection
decision support systems
author_facet Xiangyu Zhao
Yanyun Han
Zhongqiang Liu
Shouhui Pan
Kaiyi Wang
author_sort Xiangyu Zhao
title Plant Breeding Evaluation Based on Coupled Feature Representation
title_short Plant Breeding Evaluation Based on Coupled Feature Representation
title_full Plant Breeding Evaluation Based on Coupled Feature Representation
title_fullStr Plant Breeding Evaluation Based on Coupled Feature Representation
title_full_unstemmed Plant Breeding Evaluation Based on Coupled Feature Representation
title_sort plant breeding evaluation based on coupled feature representation
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2020-01-01
description With the rapid development of improved breeding equipment and information technology, computer-aided decision-making in plant breeding evaluation can help solve the problems associated with high-throughput demand and insufficient experience of breeders in modern large-scale field breeding experiments. Many linear models have made great contributions to the development of breeding evaluation although they are based on a wrong assumption of attribute independence. This paper proposes a unified coupled representation that integrates intra-coupled and inter-coupled relationships to capture the interdependence among quantitative traits by addressing coupling context and coupling weights. Moreover, a hybrid scheme of the linear correlation and ordinal relation is introduced to express the coupling relationship with a preset parameter that balances the contributions so as to capture both relative and absolute performance in cultivar selection and breeding evaluation. A framework that includes data preprocessing, coupled data representation, feature selection, prediction model construction, and assisted decision-making is our overall solution for the plant breeding evaluation task. Experiments on real plant breeding data sets demonstrated the effectiveness of coupled representation for elucidating the quantitative phenotypic traits and the advantages of the proposed plant breeding evaluation algorithm compared with benchmark algorithms.
topic Breeding evaluation
coupled representation
quantitative phenotypic traits
feature selection
decision support systems
url https://ieeexplore.ieee.org/document/9172054/
work_keys_str_mv AT xiangyuzhao plantbreedingevaluationbasedoncoupledfeaturerepresentation
AT yanyunhan plantbreedingevaluationbasedoncoupledfeaturerepresentation
AT zhongqiangliu plantbreedingevaluationbasedoncoupledfeaturerepresentation
AT shouhuipan plantbreedingevaluationbasedoncoupledfeaturerepresentation
AT kaiyiwang plantbreedingevaluationbasedoncoupledfeaturerepresentation
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