Representative Publications
2020
·
K. Kuang, L. Li, Z. Geng, Lei. Xu, K. Zhang, B. Liao, H. Huang, P. Ding, W.
Miao, Z.Jiang, (2020), Causal Inference, Engineering, 2020 20(1):1-5.
2019
·
Lei Xu (2019), Deep
IA-BI and five actions in circling, In: Cui, Z., Pan, J., Zhang, S., Xiao, L., Yang, J.
(Eds.), Lecture Notes in Computer
Science, Vol 11935,
pp1-15. Springer.
·
Lei Xu (2019), “An overview and perspectives on bidirectional
intelligence: Lmser duality, double IA harmony, and
causal computation,” IEEE/CAA J. Automatic Sinica,
vol. 6, no. 4, pp. 865–893, Jul. 2019.
·
Xie, Q., Tu, S.,
Wang, G., Lian, Y., & Xu, L. (2019). Feature enrichment based convolutional neural network for heartbeat
classification from electrocardiogram. IEEE Access, 7, 153751-153760.
·
Li, P., Tu, S., & Lei Xu (2019), GAN flexible Lmser for super-resolution, Proc. the 27th ACM
International Conference on Multimedia (pp. 756-764).
ACM.
·
Jin-Xiong Lv, Shikui
Tu, &
Lei Xu (2019), A two-variate phenotype-targeted test for detection of
phenotypic biomarkers on breast cancer’.
In Bioinformatics and Biomedicine (BIBM), 2019 IEEE International Conference on (pp.
840-845), Nov.18-21, 019, San
Diego, CA
·
Z. Qiang, X. Gao, S.
Tu, and L. Xu (2019), “A k-Dense-UNet for Biomedical
Image Segmentation”, In: Cui, Z., Pan, J., Zhang, S.,
Xiao, L., Yang, J. (Eds.), Lecture Notes
in Computer Science, Vol 11935, pp. 552-562, Springer.
·
Li, M., Tu, S., & Xu, L. (2019).
“Computational Decomposition of Style for Controllable and Enhanced Style
Transfer”, In: Cui, Z., Pan, J., Zhang, S., Xiao, L., Yang, J.
(Eds.), Lecture Notes in Computer Science, Vol 11936, pp. 15-39 Springer.
·
W. Huang, S. Tu, and L. Xu, “Revisit Lmser from a deep learning perspective”, In:
Cui, Z., Pan, J., Zhang, S., Xiao, L., Yang, J. (Eds.), Lecture Notes in Computer Science, Vol 11936, pp. 197-208, Springer.
·
Huang, H. C., Wen, X. Z., Xue,
H., Chen, R. S., Ji,J. F., & Xu, L. (2019).
Phosphoglucose isomerase gene expression as a
prognostic biomarker of gastric cancer. Chinese Journal of Cancer Research, 31(5), 771-+.
· 徐雷、吴飞、孙凌云、涂仕奎、卢策吾,节2.2.3 综合推理与创意人工智能,《中国人工智能2.0发展战略研究》, 浙江大学出版社, 2019年出版。
2018
·
Lei Xu (2018), Machine learning and causal analyses for modelling
financial and economic data, Springer Nature OA Journal, Applied Informatics,
2018, 5:11, 42 pages, https://doi.org/10.1186/s40535-018-0058-5
·
Lei Xu (2018), “Deep bidirectional intelligence: AlphaZero,
deep IA-search, deep IA-infer, and TPC causal learning”, Springer Nature Open
Journal, Applied Informatics, 2018, 5:5, 38pages, https://doi.org/10.1186/s40535-018-0052-y
·
Huang, H. C., Wen, X. Z., Tu, S. K., Ji, J. F., Chen, R. S., & Xu,
L. An enviro-geno-pheno
state analysis framework for biomarker study. IScIDE
2018, LNCS 11266 (pp 663-671), Springer, 2018. https://link.springer.com/chapter/10.1007/978-3-030-02698-1_58
2017
·
Long, W., Tu, S.,
& Xu L. (2017). A Comparative Study
on Lagrange Ying-Yang Alternation Method in Gaussian Mixture-Based Clustering.
Lecture Notes in Computer Science, IScIDE 2017, Vol 10585,pp.
489-499. Springer, Cham.
·
Chen Y., Tu S., Xu L.
(2017) Survival-Expression Map and Essential Forms of Survival-Expression
Relations for Genes. In: Sun Y., Lu H., Zhang L., Yang J., Huang H. (eds)
Intelligence Science and Big Data Engineering. IScIDE
2017. Lecture Notes in Computer Science, Vol 10559, pp. 641-649. Springer, Cham
·
Chen Y., Tu S., Xu L.
(2017) The Prognostic Role of Genes with Skewed Expression Distribution in Lung
Adenocarcinoma. In: Sun Y., Lu H., Zhang L., Yang J., Huang H. (eds)
Intelligence Science and Big Data Engineering. IScIDE
2017. Lecture Notes in Computer Science, Vol 10559,
pp 631-640. Springer, Cham
·
Lv J., Tu S., Xu L.
(2017) A Comparative Study of Joint-SNVs Analysis Methods and Detection of
Susceptibility Genes for Gastric Cancer in Korean Population. In: Sun Y., Lu
H., Zhang L., Yang J., Huang H. (eds) Intelligence Science and Big Data
Engineering. IScIDE 2017. Lecture Notes in Computer
Science, Vol.10559, pp. 619-630. Springer, Cham
·
Lv, J. X., Huang, H. C., Chen, R. S.,
& Xu,
L. (2017). Comparative studies on multivariate tests for joint-SNVs
analysis and detection for bipolar disorder susceptibility genes. International Journal of Data Mining and
Bioinformatics, 17(4), 2017, pp341-358.
·
Jiang, K. M., Chen, Y.
J., Lv, J. X., Lu, B. L., & Xu,
L. (2017). Bootstrapping Integrative Hypothesis Test for Identifying
Biomarkers that Differentiates Lung Cancer and Chronic Obstructive Pulmonary
Disease. Neurocomputing, Elsevier B.V. , Volume 269, 2017, Pages 40-46.
·
徐雷.
人工智能第三次浪潮以及若干认知. 《科学》, 上海科学技术出版社, 2017年 第3期1-5页。
·
H. C., Chen, Xu, L, “Covariate-time Survival Profiling: A New Perspective for Survival
Analysis”, Proc. of BIT’s 2nd International Congress of Genetics-2017, April 25-27, 2017, Xi'an, China, p116.
·
徐雷, 信息科学 “金三角” 的故事——纪念常迥先生和程民德先生百年诞辰. 《科学》, 上海科学技术出版社,
2017年 第1期,55-56页。
2016
·
Lv, J. X., Huang, H. C., Chen, R. S., & Xu, L. A
comparison study on multivariate methods for joint-SNVs association analysis.
In Bioinformatics and Biomedicine (BIBM), 2016 IEEE
International Conference on (pp.
1771-1776), 15-18 Dec. 2016,
Shenzhen, China
·
L Xu, “A New Multiple
Testing Method for Discovering Cancer
Biomarkers”, Proc. of BIT's 9th International Symposium of Cancer Immunotherapy, Nov.16-18,
2016, Nanjing, China, p170.
·
L
Xu,“Enviro-geno-pheno state approach and state based biomarkers for
differentiation, prognosis, subtypes, and staging”,
SpringerOpen Journal, Applied
Informatics 2016, 3:4 DOI: 10.1186/s40535-016-0020-3.
- Lei Xu (2016), “A
new multivariate test formulation: theory, implementation, and
applications to genome-scale sequencing and expression”, SpringerOpen Journal, Applied
Informatics 2016, 3:1 DOI:
10.1186/s40535-015-0016-4.
2015
- Kai-Ming Jiang,
Bao-Liang Lu, and Lei Xu (2015), “Bootstrapped Integrative Hypothesis
Test, COPD-Lung Cancer Differentiation, and Joint miRNAs Biomarkers”,
Lecture Notes in Computer Science: Intelligent Science and Big Data
Engineering, Vol .9243, pp. 538–547, Oct. 27, 2015, Springer
International Publishing.
- Lei Xu (2015), “Further advances on Bayesian Ying-Yang harmony
learning”, SpringerOpen Journal, Applied Informatics 2015,
2:5 doi:10.1186/s40535-015-0008-4.
- James T. Kwok, Zhi-Hua
Zhou, Lei Xu (2015),
“Machine learning”, Springer Handbook
of Computational Intelligence, J Kacprzyk & W Pedrycz (eds),
Springer-Verlag, Dordrecht Heidelberg, 2015.
- Lei Xu (2015), “Bi-linear matrix-variate analyses, integrative
hypothesis tests, and case-control studies”, SpringerOpen Journal,
Applied Informatics 2015, 2:4 doi:10.1186/s40535-015-0007-5.
- Guangyong Chen, Fengyuan Zhu, Pheng Ann Heng, Lei Xu (2015), “Image denoising, local factor
analysis, Bayesian Ying-Yang harmony learning”, in Advances in Independent Component Analysis and Learning
Machines, (Bingham, Kaski, Lampinen and Laaksonen, Eds), Elsevier,
Amsterdam, 2015.
2014
- Guangyong Chen, Pheng Ann Heng,
Lei Xu (2014), “Projection-embedded BYY learning algorithm
for Gaussian mixture-based clustering”, SpringerOpen Journal, Applied Informatics 2015,
2:4 doi:10.1186/s40535-015-0007-5.
- Lei Shi, Zhi-Yong
Liu, Shikui Tu, Lei Xu (2014),
“Learning Local Factor Analysis versus
Mixture of Factor Analyzers with Automatic Model Selection”, Neurocomputing
139 (2014) 3–14.
- Sheng Yujun, Jin Xin, XU
Jinhua, …, , Lei Xu *, Liangdan Sun*, and
Xuejun Zhang*, "Sequencing-based approach identified three new
susceptibility loci for psoriasis". Nature Communications vol.5
no.4331, Nature Publishing Group, 2014.07.09. (*three corresponding
authors).
- Zhi-Yong Liu, Hong Qiao, Li-Hao Jia, and Lei Xu (2014), “A graph matching algorithm based on concavely regularized convex
relaxation”, Neurocomputing 134 (2014) 140–148.
- Zaihu Pang, Shikui Tu, Xihong
Wu, Lei Xu (2014),
“A comparative study of RPCL and MCE based
discriminative training methods for LVCSR”, Neurocomputing 134 (2014) 53–59.
- Shikui Tu, Lei Xu (2014),
“Learning Binary Factor Analysis with
Automatic Model Selection”, Neurocomputing 134 (2014) 149–158.
2013
- Lei Xu (2013) “Integrative Hypothesis Test and A5 Formulation:
Sample Pairing Delta, Case Control Study, and Boundary Based Statistics”, Lecture Notes in Computer Science:
Intelligence Science and Big Data Engineering (IScDE 2013), Vol.8261, pp887-902, 2013.
- Zaihu Pang, Shikui Tu, Xihong
Wu, Lei Xu
(2013), “Discriminative GMM-HMM Acoustic Model
Selection Using Two-Level Bayesian Ying-Yang Harmony Learning”, Lecture
Notes in Computer Science: Intelligent Science and Intelligent Data
Engineering, Vol .7751, pp. 719–726, 2013.
- Lei Xu (2013), “Matrix-Variate discriminative analysis,
integrative hypothesis testing, and geno-pheno a5 analyzer”, Lecture Notes
in Computer Science: Intelligent Science and Intelligent Data
Engineering, Vol .7751, pp. 866-875, 2013.
2012
- Lei Xu (2012), “Semi-Blind Bilinear Matrix System, BYY Harmony Learning, and
Gene Analysis Applications,” Proc.
of 6th International Conf. on New Trends in Information Science, Service
Science and Data Mining, pp. 661-666, Oct. 23 - 25, 2012, Taipei.
- Shikui Tu, Dingsheng Luo,
Runsheng Chen and Lei Xu (2012), “A Non-Gaussian Factor Analysis Approachto Transcription Network
Component Analysis,” IEEE Symposium on Computational Intelligence in
Bioinformatics and Computational Biology (CIBCB 2012), pp. 404-411, May
9-12, San Diego, California.
- Shikui Tu, Runsheng Chen and Lei Xu (2012), “Transcription Network Analysis by A Sparse Binary Factor Analysis
Algorithm,” Journal of Integrative
Bioinformatics, vol.9 no.2, pp.198, 2012
- Zhi-Yong Liu, Hong Qiao, and Lei Xu (2012),"A Weight
Regularized Relaxation Based Graph Matching Algorithm,” Lecture Notes in Computer Science:
Intelligent Science and Intelligent Data Engineering ed. by Yanning Zhang,
Zhi-Hua Zhou, Changshui Zhang, Ying Li. pp.9-16. Germany: Springer Berlin
/ Heidelberg, 2012.03.31.
- Zaihu
Pang, Xihong
Wu and Lei Xu (2012),
“A Comparative Study of RPCL and MCE
Based Discriminative Training Methods for LVCSR,” Lecture Notes in
Computer Science: Intelligent Science and Intelligent Data
Engineering, Vol 7202/2012, pp27-34.
- Zhi-Yong Liu, Hong Qiao, and Lei Xu (2012),
“An Extended Path Following Algorithm for
Graph-Matching Problem,” IEEE Transactions on Pattern Analysis and Machine
Intelligence, Vol.34(7):pp1451-1456, 2012.
- Shikui TU and Lei Xu (2012),
“A theoretical investigation of several
model selection criteria for dimensionality reduction,” Pattern
Recognition Letters , Vol.33:pp1117-1126, 2012.
- Lei Xu (2012), " On essential
topics of BYY harmony learning: Current status, challenging issues, and
gene analysis applications", A special issue on
Machine learning and intelligence science: IScIDE (C), Journal of
Frontiers of Electrical and Electronic Engineering 7(1) (2012) 147–196.
2011
- Lei Xu (2011), "Another perspective of BYY
harmony learning: representation in multiple layers, co-decomposition of
data covariance matrices, and applications to network biology. A special
issue on Machine learning and intelligence science: IScIDE2010 (A),
Journal of Frontiers of Electrical and Electronic Engineering in China
6(1) (2011) 86–119.
- Shi L, Wang P., Liu H., Lei
Xu , and Bao Z(2011), Radar HRRP Statistical Recognition
With Local Factor Analysis by Automatic Bayesian Ying-Yang Harmony
Learning, IEEE Trans. Signal Process., 2011, 59(2):610–617.
- Lei Xu (徐雷)(2011), 机器学习之模型选择, <<10000个科学难题--信息科学卷>>, 科学出版社, pp106-110.
- Shikui TU, Lei
Xu (2011), "An investigation of several typical
model selection criteria for detecting the number of signals",
A special issue on Machine learning and intelligence science:
IScIDE2010 (B), Journal of Frontiers of Electrical and Electronic
Engineering in China 6(2) (2011) 245–255.
- Shikui TU, Lei
Xu (2011), "Parameterizations make different model
selections: Empirical findings from factor analysis", A special
issue on Machine learning and intelligence science: IScIDE2010 (B),
Journal of Frontiers of Electrical and Electronic Engineering in China
6(2) (2011) 256–274.
- Shikui Tu, Runsheng Chen and Lei Xu ,
“A binary matrix factorization
algorithm for protein complex prediction“,Proteome Science
9 (Suppl 1), S18, 2011.
- Lei SHI, Shikui TU, Lei
Xu (2011), " Learning Gaussian mixture with
automatic model selection:A comparative study on three Bayesian related
approaches", A special issue on Machine learning and intelligence
science: IScIDE2010 (B), Journal of Frontiers of Electrical and Electronic
Engineering in China 6(2) (2011) 215–244.
- Penghui WANG, Lei SHI, Lan DU,
Hongwei LIU, Lei
Xu , Zheng BAO, (2011), "Radar HRRP statistical
recognition with temporal factor analysis by automatic Bayesian Ying-Yang
harmony learning ", A special issue on Machine learning and
intelligence science: IScIDE2010 (B), Journal of Frontiers of Electrical and
Electronic Engineering in China 6(2) (2011) 300–317.
- Zaihu PANG, Shikui TU, Dan SU,
Xihong WU, Lei
Xu , (2011), " Discriminative training of GMM-HMM
acoustic model by RPCL learning", A special issue on Machine
learning and intelligence science: IScIDE2010 (B), Journal of Frontiers of
Electrical and Electronic Engineering in China 6(2) (2011) 283–290.
2010
- Lei Xu (2010), "Bayesian Ying-Yang system,
best harmony learning, and five action circling", A special issue on
Emerging Themes on Information Theory and Bayesian Approach, Journal of
Frontiers of Electrical and Electronic Engineering in China, 5(3):281–328, 2010.
- Lei Xu (2010), "Machine learning problems
from optimization perspective", A special issue for CDGO 07, Journal
of Global Optimization, 47, 2010, 369–401.
- Shi, L, Tu S, Lei
Xu, Gene clustering by structural prior based local
factor analysis model under Bayesian Ying-Yang harmony learning. In:
Proceedings of the BIBM 2010 International on Bioinformatics and
Biomedicine, Hong Kong, December 18–21, 2010, pp 696-699.
- Tu S, Chen R, Lei
Xu,. A binary matrix factorization algorithm for protein
complex prediction. In: Proceedings of the BIBM 2010 International
Workshop on Computational Proteomics, Hong Kong, December 18–21, 2010, pp 113-118.
- Shi, L., Wang, P., Liu, H., Lei
Xu, & Bao, Z. (2010), Radar HRRP statistical
recognition with local factor analysis by automatic Bayesian Ying Yang
harmony learning, Proc. of 2010 IEEE Intl Conf. on ICASSP, Dallas, TX,
USA, March 14 – 19,
2010, 1878-1881.
- Tu, S., & Lei
Xu (2010), A study of several model selection
criteria for determining the number of signals, Proc. of 2010 IEEE Intl
Conf. on ICASSP, Dallas, TX, USA, March 14 – 19, 2010, 1966-1969.
- Su, D, Wu, XH, & Lei
Xu (2010), GMM-HMM acoustic model training by a two
level procedure with Gaussian components determined by automatic model
selection, Proc. of 2010 IEEE Intl Conf. on ICASSP, Dallas, TX, USA, March 14
– 19, 2010, 4890-4893.
2009
- Lei Xu (2009), "Learning Algorithms for RBF
Functions and Subspace Based Functions", Ch.3 in "Handbook of
Research on Machine Learning Applications and Trends: Algorithms, Methods
and Techniques", eds. by Olivas, Guerrero, Sober, Benedito, &
Lopez, IGI Global publication, pp60-94.
- SUN Ke and Lei
Xu (2009). "Bayesian Ying-Yang
learning on orthogonal binary factor analysis". Neural
Network World vol.19 no.5, pp.611-624.
- SUN Ke; TU Shikui; DAVID Yang Gao and Lei
Xu (2009). "Canonical Dual Approach to
Binary Factor Analysis". Lecture Notes in Computer Science
5441 ed. by Adali, T.; Jutten, C.; Romano, J.M.T.; Barros, A.K.
. pp.346-353. /Heidelberg, Springer .March, 2003.
- TU Shikui and Lei
Xu (2009) "Theoretical
Analysis and Comparison of Several Criteria on Linear Model Dimension
Reduction". Lecture Notes in Computer Science 5441 ed.
by Adali, T.; Jutten, C.; Romano, J.M.T.; Barros, A.K. . pp.
154-162. /Heidelberg, Springer .March, 2003.
2008
- Lei Xu (2008), “Independent Subspaces” in Encyclopedia of
Artificial Intelligence, Edited By: Juan Ramón, Rabuñal Dopico;
Julian Dorado; Alejandro Pazos, IGI Global (IGI) publishing
company, pp903-912.
- Lei Xu and E..Oja (2008), “Randomized Hough Transform” in
Encyclopedia of Artificial Intelligence, Edited By: Juan
Ramón, Rabuñal Dopico; Julian Dorado; Alejandro Pazos, IGI
Global (IGI) publishing company, pp1354-1361.
- Lei Xu and Shun-ichi Amari (2008),
“Combining Classifiers and Learning
Mixture-of-Experts” in Encyclopedia of Artificial
Intelligence, Edited By: Juan Ramón, Rabuñal Dopico; Julian Dorado; Alejandro Pazos, IGI
Global (IGI) publishing company, pp318-326.
- Lei Xu (2008), `` Bayesian Ying Yang System, Best
Harmony Learning, and Gaussian Manifold Based Family", In J.M. Zurada
et al. (Eds.) Computational Intelligence: Research Frontiers, WCCI2008
Plenary/Invited Lectures, LNCS5050, 48–78, 2008.
- TU Shikui; SHI LEI and XU Lei. "A Comparative Study
on Data Smoothing Regularization for Local Factor
Analysis,". Lecture Notes on Computer Science
5163 ed. by V. Kurkov´a et
al. . pp.265–274. Heidelberg, Springer-Verlag Berlin
Heidelberg: http://www.springerlink.com/content/uq0x23071164227j/, 2008.09.
2007
- Lei Xu (2007), Bayesian Ying Yang Learning, In Scholarpedia,
no.18395, http://scholarpedia.org,
2007
- Lei Xu (2007), A unified perspective on
advances of independent subspaces: basic, temporal, and local structures,
Proc.6th.Intel.Conf.Machine Learning and
Cybernetics, Hong Kong, 19-22 Aug.2007, 767-776.
- Lei Xu (2007), Rival Penalized Competitive Learning, In
Scholarpedia, no. 19850, http://scholarpedia.org,
2007.
- Lei Xu (2007), ``A unified perspective and
new results on RHT computing, mixture based learning, and multi-learner
based problem solving ", Pattern Recognition, (40) 2129–2153.
- Lei Xu (2007), `` One-Bit-Matching Theorem for
ICA, Convex-Concave Programming on Polyhedral Set, and Distribution
Approximation for Combinatorics, Neural Computation, 19:
546-569. 2007 .
2006
• An, Y.J., Hu, X.L., and Lei
Xu (2006), ``A Comparative Investigation on Model Selection
in Independent Factor Analysis" Journal of Mathematical Modeling and
Algorithms 5, pp.447–473.
• Zhi-Yong Liu, Hong Qiao, and Lei
Xu, (2006), `` Multisets mixture learning-based ellipse
detection ", Pattern Recognition 39, pp731-735, 2006.
2005
- Lei Xu (2005), ``Fundamentals, Challenges, and
Advances of Statistical Learning for Knowledge Discovery and Problem
Solving: A BYY Harmony Perspective", Proceedings of International
Conference on Neural Networks and Brain, Keynote talk, Vol. 1, pp. 24-55,
Oct. 13-15, Beijing, China, 2005.
- J. Ma and Lei
Xu (2005), ``Asymptotic convergence properties of the EM
algorithm with respect to the overlap in the mixture",
Neurocomputing, Vol 68, pp105 - 129, 2005.
- Jinwen Ma , Zhi Yong Liu, and Lei
Xu, (2005), `` A Further Result on the ICA
One-Bit-Matching Conjecture", Neural Computation, Vol. 17, No. 2,
2005, pp331-334.
2004
- Lei Xu (2004), ``Temporal BYY Encoding, Markovian
State Spaces, and Space Dimension Determination", IEEE Trans on
Neural Networks, Vol. 15, No. 5, pp1276-1295, 2004.
- Lei Xu (2004), ``Advances on BYY Harmony
Learning: Information Theoretic Perspective, Generalized Projection
Geometry, and Independent Factor Auto-determination", IEEE Trans on
Neural Networks, Vol. 15, No. 4, pp885-902, 2004.
- Lei Xu (2004), ``Bayesian Ying Yang Learning (I):
A Unified Perspective for Statistical Modeling", Intelligent
Technologies for Information Analysis, N. Zhong and J. Liu (eds),
Springer, pp615-659, 2004.
- Lei Xu (2004), ``Bayesian Ying Yang Learning
(II): A New Mechanism for Model Selection and Regularization",
Intelligent Technologies for Information Analysis, N. Zhong and J. Liu
(eds), Springer, pp661-706, 2004.
- Kai-Chun Chiu, and Lei
Xu (2004), ``Arbitrage Pricing Theory Based Gaussian
Temporal Factor Analysis for Adaptive Portfolio Management", Special
Issue on Data Mining for Financial Decision Making, The Journal of
Decision Support Systems, pp 485- 500, 2004..
- Kai-Chun Chiu, and Lei
Xu (2004), ``NFA for Factor Number Determination in
APT", International Journal of Theoretical and Applied Finance, pp
253-267, 2004..
- X. Hu and Lei
Xu (2004), ``A comparative investigation on subspace
dimension determination", Neural Networks , Vol. 17, pp1051¨C1059, 2004,
- X. Hu and Lei
Xu (2004), ``Investigation on Several Model Selection
Criteria for Determining the Number of Cluster", Neural Information
Processing - Letters and Reviews, Vol. 4, No. 1, pp1-10, July 2004,
- Zhi Yong Liu, Kai Chun Chiu, and Lei
Xu, (2004) ``Investigation on Non-Gaussian Factor
Analysis", IEEE Signal Processing Letters, Vol. 11, No.7, pp597-600,
2004.
- Zhi Yong Liu, Kai Chun Chiu, and Lei
Xu, (2004) ``One-Bit-Matching Conjecture for Independent
Component Analysis", Neural Computation, Vol. 16, No. 2, pp. 383-399.
- Ma, J, Wang, T, and Lei
Xu (2004), ``A gradient BYY harmony learning rule on
Gaussian mixture with automated model selection", Neurocomputing, Vol
56, 481 - 487, 2004.
2003
- Lei Xu, (2003), ``Data smoothing regularization,
multi-sets-learning, and problem solving strategies", Neural
Networks, Vol. 16, pp817-825, 2003..
- Lei Xu (2003), `` BYY learning, regularized
implementation, and model selection on modular networks with one hidden
layer of binary units ", Neurocomputing, Vol. 51, pp 277-301, 2003. Errata
to this paper is given here , which is published on
Neurocomputing, Vol. 55, pp 405-406, 2003.
- Lei Xu, (2003), ``Independent Component Analysis
and Extensions with Noise and Time: A Bayesian Ying-Yang Learning
Perspective ", Neural Information Processing - Letters and Reviews,
Vol.1, No.1, pp1-52, 2003.
- Lei Xu (2003), ``Distribution Approximation,
Combinatorial Optimization, and Lagrange-Barrier", Proceedings of
International Joint Conference on Neural Networks 2003 (IJCNN '03)}, July
20-24, 2003, Jantzen Beach, Portland, Oregon, pp2354-2359.
- Zhi-Yong Liu, Kai-Chun Chiu, and Lei
Xu, (2003), `` Strip Line Detection and Thinning by
RPCL-Based Local PCA", Pattern Recognition Letters 24, pp2335¨C2344, 2003.
- Zhi-Yong Liu, Kai-Chun Chiu, and Lei
Xu, (2003), " Improved system for object detection
and star/galaxy classification via local subspace analysis ", Neural
Networks, Vol. 16, pp437¨C451,
2003.
- Zhi-Yong Liu and Lei
Xu, (2003) ``Topological Local Principal Component
Analysis", Neurocomputing, Vol. 55, No. 3-4, pp. 739-745, 2003.
- Yiu-ming Cheung and Lei
Xu (2003), `` Further studies on temporal factor
analysis: comparison and Kalman Filter-based algorithm ",
Neurocomputing, Vol. 50, 2003, 87-103.
- Yiu-ming Cheung and Lei
Xu (2003), `` Dual Multivariate Auto-Regressive Modeling
in State Space for Temporal Signal Separation", IEEE Transactions on
Systems, Man, and Cybernetics-Part B: Cybernetics, Volume: 33, No. 3, June
2003, pp386- 398.
- Kei Keung Hung, Yiu-ming Cheung, and Lei
Xu (2003), `` An Extended ASLD Trading System to Enhance
Portfolio Management", IEEE Transactions on Neural Networks, Vol. 14,
No. 2, 2003, 413-425.
- Chiu KC and Lei
Xu (2003), ``White noise tests and synthesis of APT
economic factors using TFA", Computational Intelligence in Economics
and Finance,S-H Chen and P Wang (Ed.), Series on Advanced Information
Processing (series editor: L. Jain), Springer Verlag, 2003, pp. 405-419.
- Chiu KC and Lei
Xu (2003), ``Optimizing financial portfolios from the
perspective of mining temporal structures of stock returns", Lecture
Notes in AI, LNAI 2734, Proc. of 2003 Machine Learning and Data Mining in
Pattern Recognition, P. Perner and A. Rosenfeld, eds., Springer Verlag,
pp266-275.
- Chiu KC and Lei
Xu (2003), ``Stock forecasting by ARCH driven gaussian
TFA and alternative mixture experts models", Proc. of 3rd International
Workshop on Computational Intelligence in Economics and Finance
(CIEF'2003), North Carolina, USA, September 26-30, 2003, pp 1096 -1099.
- Chiu KC and Lei
Xu (2003), ``On generalized arbitrage pricing theory
analysis: empirical investigation of the macroeconomics modulated
independent state-space model", Proceedings of 2003 International
Conference on Computational Intelligence for Financial Engineering
(CIFEr2003), Hong Kong, March 20-23, 2003, pp 139-144.
- Tang, H, Chiu KC, and Lei
Xu (2003), ``Finite Mixture of ARMA-GARCH Model For
Stock Price Prediction", Proc. of 3rd International Workshop on
Computational Intelligence in Economics and Finance (CIEF'2003), North
Carolina, USA, September 26-30, 2003, pp.1112-1119.
- Tang, H and Lei
Xu (2003), ``MIXTURE-OF-EXPERT ARMA-GARCH MODELS FOR
STOCK PRICE PREDICTION", Proc. of 2003 International Conference on
Control, Automation, and Systems (ICCAS 2003), October 22-25, 2003
Gyeongju, KOREA, pp402-407.
2002
- Lei Xu (2002), `` Ying-Yang learning", The
Handbook of Brain Theory and Neural Networks, 2nd ed., Michael A. Arbib,
The MIT Press, pp1231-1237, 2002.
- Lei Xu (2002), ``BYY harmony learning, structural
RPCL, and topological self-organizing on mixture models", Neural
Networks, Vol. 15, pp1125-1151, 2002.
- Chiu KC and Lei
Xu (2002), ``A comparative study of Gaussian TFA
learning and statistical tests for determination of factor number in
APT", Proceedings of International Joint Conference on Neural
Networks 2002 (IJCNN '02), Honolulu, Hawaii, USA, May 12-17, 2002, pp
2243-2248.
- Chiu KC and Lei
Xu (2002), ``Stock price and index forecasting by
arbitrage pricing theory-based gaussian TFA learning", Lecture Notes
in Computer Sciences, Vol.2412, in H. Yin et al., eds., Springer Verlag,
2002, pp366-371.
- Chiu KC and Lei
Xu (2002), ``Financial APT-based gaussian TFA learning
for adaptive portfolio management", Lecture Notes in Computer
Sciences, Vol.2415, in J.R. Dorronsoro (Ed.), Springer Verlag, 2002, pp
1019-1024.
2001
- Lei Xu (2001), ``BYY Harmony Learning,
Independent State Space and Generalized APT Financial Analyses", IEEE
Trans. on Neural Networks, Vol. 12, No.4, pp822-849, July, 2001. An Errata
to this paper is given on IEEE Trans. on Neural
Networks, Vol. 13, No.4, 1023, July, 2002.
- Lei Xu (2001), ``Best Harmony, Unified RPCL and
Automated Model Selection for Unsupervised and Supervised Learning on
Gaussian Mixtures, ME-RBF Models and Three-Layer Nets ",
International Journal of Neural Systems, Vol.11, No.1, pp3-69, 2001.
- Lei Xu ,(2001) ``An Overview on Unsupervised
Learning from Data Mining Perspective", Advances in Self-Organizing
Maps, Nigel Allison, et al eds, Springer-Verlag, pp181-210, 2001.
- Lei Xu and Irwin King, (2001), ``A PCA approach
for fast retrieval of structural patterns in attributed graphs", IEEE
Transactions on Systems, Man and Cybernetics, Part B, Vol. 31, No. 5 ,
Oct. 2001, pp 812 -817.
- Chuangyin Dang and Lei
Xu (2001), ``A Lagrange Multiplier and Hopfield-Type
Barrier Function Method for the Traveling Salesman Problem", Neural
Computation, Vol. 14 , No. 2, pp303 - 324.
- Chuangyin Dang and Lei
Xu (2001), ``A globally convergent Lagrange and barrier
function iterative algorithm for the traveling salesman problem",
Neural Networks, Vol.14, No.2, pp217-230, 2001.
- Yiu-ming Cheung and Lei
Xu (2001), ``Independent Component Ordering in ICA Time
Series Analysis'', Neurocomputing, Vol. 41, No. 1-4, pp145-152, 2001.
- Chiu KC and Lei
Xu (2001), ``Tests of Gaussian Temporal Factor Loadings
in Financial APT", Proc. of 3rd International Conference on
Independent Component Analysis and Blind Signal Separation, December 9-12,
2001 - San Diego, California, USA, pp313-318.
2000
- Lei Xu (2000), `` Temporal BYY Learning for State
Space Approach, Hidden Markov Model and Blind Source Separation ",
IEEE Trans on Signal Processing, Vol. 48, No. 7, 2132-2144, July, 2000.
- Lei Xu (2000), `` BYY Learning System and Theory
for Parameter Estimation, Data Smoothing Based Regularization and Model
Selection ", Neural, Parallel and Scientific Computations, Vol. 8,
pp55-82, 2000.
- C.C.Cheung and Lei
Xu, (2000), `` Some Global and Local Convergence
Analysis on The Information-Theoretic Independent Component Analysis
Approach ", Neurocomputing, Vol.30, pp79-102, 2000.
- J. Ma, Lei
Xu and M.I.Jordan (2000), `` Asymptotic Convergence Rate
of the EM Algorithm for Gaussian Mixtures ", Neural Computation,
Vol.12, No.12, pp2881-2908, 2000.
- Yiu-ming Cheung and Lei
Xu (2000), ``A RPCL-based Approach for Markov Model
Identification with Unknown State Number'', IEEE Signal Processing
Letters, Vol. 7, No.10, 284-287 (2000).
- Yiu-ming Cheung and Lei
Xu (2000), ``Rival Penalized Competitive Learning Based
Approach for Discrete-valued Source Separation'', International Journal of
Neural Systems, Vol.10, No.6, pp483-490, 2000.
1999
- Ke Chen, Lei
Xu , and Huishen Chi (1999), ``Improved Learning
Algorithms for Mixture of Experts in Multiclass Classification",
Neural Networks, Vol. 12, pp1229-1252,1999.
- Ouyang Ning, Wing-kai Lam, K. Yamauchi and Lei
Xu (1999), ``Using An Improved Back Propagation Learning
Method to Diagnose The Sites of Cardiac Hypertrophy", MD Computing,
Vol. 16, No.1, pp79-81, 1999.
1998
- Lei Xu (1998), ``RBF Nets, Mixture Experts, and
Bayesian Ying-Yang Learning", Neurocomputing, Vol. 19, No.1-3,
pp223-257, 1998.
- Lei Xu(1998), ``Bayesian Kullback Ying-Yang
Dependence Reduction Theory ", Neurocomputing, Vol.22, No.1-3, a
special issue on Independence and artificial neural networks
, pp81-112, 1998.
- Lei Xu(1998), ``Bayesian Ying-Yang Dimension
Reduction and Determination", Journal of Computational Intelligence
in Finance, Vol.6, No.5, a special issue on Complexity and Dimensionality
Reduction in Finance . pp6-18, 1998.
- Lei Xu (1998) , ``Rival Penalized Competitive
Learning, Finite Mixture, and Multisets Clustering", Proc.
Intentional Joint Conference on Neural Networks, Vol., May 5-9, 1998, Anchorage,
Alaska.
- Lei Xu (1998), ``Adaptive RBF Net Algorithms for
Nonlinear Signal Learning with Applications to Financial Prediction and
Investment", Proc. of IEEE International Conference on Acoustics,
Speech and Signal Processing (ICASSP98), May 12-15, 1998, Seattle, WA,
Vol. 2, pp1153-1156.
- Lei Xu and W.M.Leung (1998) , ``Cointegration by MCA and modular
MCA", Proceedings of IEEE/IAFE 1998 International Conference on
Computational Intelligence for Financial Engineering (CIFEr), March 29-31,
New York City, pp157-160.
1997
- Lei Xu (1997), ``Bayesian Ying-Yang Machine,
Clustering and Number of Clusters", Pattern Recognition Letters,
Vol.18, No.11-13, pp1167-1178, 1997.
- Lei Xu (1997), ``Comparative Analysis on
Convergence Rate of The EM Algorithm and Its Two Modifications for
Gaussian Mixtures", Neural Processing Letters 6, pp69-76, 1997.
- Lei Xu (1997), ``New Advances on Bayesian
Ying-Yang Learning System With Kullback and Non-Kullback Separation
Functionals", Proceedings of 1997 IEEE-(INNS) Conference on Neural
Networks, Houston, TX, June. 9-12, Vol. 3, pp1942-1947, 1997
- Lei Xu (1997), `` Bayesian Ying-Yang System and
Theory as A Unified Statistical Learning Approach (III): Models and
Algorithms for Dependence Reduction, Data Dimension Reduction, ICA and
Supervised Learning", Invited paper, K.W.Wong, I. King and D.Y.Yeung
eds, Theoretical Aspects of Neural Computation: A Multidisciplinary
Perspective (TANC97), Springer-Verlag, pp43-60, 1997.
- Lei Xu (1997), ``Bayesian Ying-Yang System and
Theory as A Unified Statistical Learning Approach: (II) From Unsupervised
Learning to Supervised Learning and Temporal Modeling ", Invited
paper, K.W.Wong, I. King and D.Y.Yeung eds, Theoretical Aspects of Neural
Computation: A Multidisciplinary Perspective (TANC97), Springer-Verlag,
pp25-42, 1997.
- Lei Xu (1997), ``Bayesian Ying-Yang System and
Theory: An Unified Approach for Statistical Learning: (I) Unsupervised and
Semi-Unsupervised Learning", Invited paper, S. Amari and N. Kassabov
eds., Brain-like Computing and Intelligent Information Systems, Springer-Verlag,
pp241-274, 1997.
- Lei Xu, C.C. Cheung, H.H. Yang and S.-I.
Amari(1997), `` Independent component analysis by the
information-theoretic approach with Mixture of Density ", Proc. of
1997 IEEE Intl. Conf on Neural Networks (IEEE-INNS IJCNN97)}, June 9-12,
Houston, TX, USA, Vol. III, pp1821-1826(1997).
- Lei Xu, C.C. Cheung, J. Ruan, and S.-I.
Amari(1997), ``Nonlinearity and Separation Capability: Further
Justification for the ICA Algorithm with A Learned Mixture of Parametric
Densities", Invited special session on Blind Signal Separation, Proc.
of 1997 European Symp. on Artificial Neural Networks, Bruges, April 16-18,
pp291-296(1997).
- John Sum, C. Leung, Lai-wan Chan and Lei
Xu (1997), ``Yet Another Algorithm Which Can Generate
Topography Map", IEEE Trans. on Neural Networks, Vol.5, No.5,
pp1204-1207, 1997.
- Leung,W.M, Y. M. Cheung and Lei Xu,(1997), `` Application of
mixture of experts models to nonlinear financial
forecasting", Nonlinear Financial Forecasting:
Proceedings of the First INFFC, R.B.Caldwell ed, Finance & Technology
Publishing, pp153-168, 1997.
- Lei Xu and Y.M. Cheung (1997), `` Adaptive
supervised learning decision networks for trading and portfolio
management", Journal of Computational Intelligence in Finance,
Nov/Dec issue, pp11-16, Finance \& Technology Publishing, 1997.
- Yiu-ming Cheung, W.M. Leung, and Lei
Xu (1997), ``Adaptive Rival Penalized Competitive
Learning and Combined Linear Predictor Model for Financial Forecast and
Investment'', International Journal of Neural Systems, Vol.8, No.5&6,
1997.
1996
- Lei Xu & M.I.Jordan (1996), ``On convergence
properties of the em algorithm for gaussian mixtures", Neural
Computation, No.1, Jan, 1996, pp129-151.
- Lei Xu (1996),``A Unified Learning Scheme: Bayesian-Kullback
YING-YANG Machine", Advances in Neural Information Processing Systems
8, eds., David S. Touretzky, Michael Mozer, Michael Hasselmo, MIT Press,
Cambridge MA, 1996, pp444-450.
- Lei Xu (1996), ``A Maximum Balanced Mapping
Certainty Principle for Pattern Recognition and Associative Mapping",
Proc. of 1996 World Congress on Neural Networks, Sept. 15-18, 1996,
SanDiego, CA, pp.946-949.
- Bailing Zhang, Lei
Xu and Minyue Fu (1996), ``Learning Multiple Causes by
Competition Enhanced Least Mean Square Error Reconstruction",
International Journal of Neural Systems, Vol.7, No.3, pp223-236.
- Yiu-ming Cheung, Zhihong Lai and Lei Xu (1996), ``Adaptive Rival
Penalized Competitive Learning and Combined Linear Regressions with
Application to Finacial Investment", Proceedings of IEEE/IAFE 1997
International Conference on Computational Intelligence for Financial
Engineering (CIFEr), march 24-26, New York City, pp141-147.
- Cheung, Y.M, Leung,W.M, and Lei Xu (1996),``Combination Of Buffered
Back-propagation And RPCL-CLP By Mixture-of-Experts Model For Foreign
Exchange Rate Forecasting", Neural Networks in Financial Engineering:
Proc. of 3rd Intl Conf. on Neural Networks in the Capital Markets,
Oct.11-13, London, UK, 1996, World Scientific Pub, pp554-563.
- Adam Krzyzak and Lei Xu (1996), `` Optimal Radial basis Function
Nets with application to Nonlinear Function Learning and
Classification", Progress in Neural Information Processing: Proc.
Intl Conf. on Neural Information Processing (ICONIP96), Sept. 24-27, 1996,
pp271-274, Springer-verlag.
1995
- Lei Xu (1995), `` Bayesian-Kullback Coupled
YING-YANG Machines: Unified Learnings and New Results on Vector
Quantization", Proceedings of International Conference on Neural
Information Processing, Keynote Speaker, Oct 30-Nov.3, Beijing, China,
1995, pp977-988.
- Lei Xu, M.I.Jordan & G. E. Hinton (1995), ``
An Alternative Model for Mixtures of Experts", Advances in Neural
Information Processing Systems 7, eds., Cowan, J.D., Tesauro, G., and
Alspector, J., MIT Press, Cambridge MA, 1995, pp633-640.
- Lei Xu & A.L. Yuille (1995), "Robust
Principal Component Analysis by Self-Organizing Rules Based on Statistical
Physics Approach", IEEE Trans. on Neural Networks, regular paper,
Vol.6, No.1, Jan, 1995, pp131-143.
- Its preliminary version
was partially given on Proc. of 1992 IEEE-INNS Intl.
Joint Conf. on Neural Networks (IJCNN92), June 7-11, 1992, Baltimore, MA, Vol. I,
pp.812-817.
- H.Kalviainen, P.Hirvonen, Lei
Xu, & E.Oja, (1995), ``Probabilistic and
Non-probabilistic Hough Transforms: Overview and Comparisons", Image
and Vision Computing, Vol.5, No. 4, May, 1995.
- M.I.Jordan & Lei
Xu (1995), `` Convergence results for the EM approach to
mixtures-of-experts architectures'', Neural Networks, Vol.8, No.9,
pp1409-1431, the Joint official Journal of International Neural Network
Society, European Neural Network Society and Japanese Neural Network
Society.
- Alan Yuille, Stelios Smirnakis & Lei
Xu (1995), ``Bayesian Self-Organization for visual
processing'', Neural Computation 7, pp580-593.
- Lei Xu (1995), `` Vector Quantization by Local
and Hierarchical LMSER", Proc. of 1995 Intl Conf. on Artificial
Neural Networks, Paris, France, Oct.9-13, 1995, Vol.II,
575-579.
- Lei Xu (1995), `` A Unified Learning Framework:
Multisets Modeling Learning", Proceedings of World Congress On Neural
Networks, Invited Paper, July 17-21, 1995, Washington, DC, Vol.I,
pp35-42.
- Lei Xu (1995)``On The Hybrid LT Combinatorial Optimization: New
U-Shape Barrier, Sigmoid Activation, Least Leaking Energy and Maximum Entropy",
Proc. 1995 Intl Conf. on Neural Information Processing (ICONIP95), Oct 30
- Nov. 3, Beijing, Vol. I, pp309-312.
- Lei Xu(1995), ``Channel Equalization by Finite Mixtures and The EM
Algorithm", Proc. of IEEE Neural Networks and Signal Processing 1995 Workshop,
Vol.5, pp603-612, August 31 - September 2, 1995, Cambridge, Massachusetts,
USA.
- S.M. Chan, K.M. Lau and Lei Xu (1995), ``Comparison on the Hopfield
scheme and the Hybrid Lagrange and Transformation Approaches for Solving
the Traveling Salesman Problem", Proc. of 1995 Intl IEEE Symposium on
Intelligence in Neural and Biological Systems, May 29-31,1995, Washington
DC, USA, IEEE Computer Society Press, pp209-218.
1994
- Lei Xu (1994), ``Multisets Modeling Learning: An
Unified Theory for Supervised and Unsupervised Learning", Proc. of
1994 IEEE International Conference on Neural Networks (ICNN94), Invited
Paper, June 26-July 2, 1994,, Orlando, Florida, Vol.I,
pp.315-320.
- Lei Xu, Adam Krzyzak & Ching Y. Suen,
(1994), `` Associative Switch for Combining Multiple Classifiers",
Journal of Artificial Neural Networks, Vol.1, No.1, pp77-100, 1994.
- Lei Xu, A. Krzyzak & A.L. Yuille, (1994),
"On Radial Basis Function Nets and Kernel Regression: Statistical
Consistency, Convergence Rates and Receptive Field Size", Neural
Networks, (the same as the above), Vol.7, No.4, pp609-628, 1994.
- See also the 2nd item in Bayesian Ying-Yang Learning System and
Theory.
- Lei Xu (1994)``Combinatorial Optimization Neural Nets Based on A
Hybrid of Lagrange and Transformation Approaches", 1994 Proc. of World
Congress on Neural Networks, June 4-9, 1994, SanDiego, CA, Vol.II,
399-404,
- Lei Xu (1994), `` Beyond PCA Learnings: From Linear
to Nonlinear and From Global Representation to Local Representation
", Proceedings of International Conference on Neural Information
Processing, Invited Paper, Oct 17-20, Seuol, Korea, 1994,
pp943-949.
- Lei Xu (1994), `` Theories for Unsupervised
Learning: PCA and Its Nonlinear Extensions", Proceedings of IEEE
International Conference on Neural Networks 1994, Invited Paper, June
26-July 2, Orlando, Florida, Vol.II, pp1252-1257.
- Lei Xu (1994), ``Signal Segmentation by Finite Mixture Model and EM
Algorithm", Proceedings of 1994 Intl. Symposium on Artificial Neural
Networks, Dec. 15-17, Tainan, Taiwan, pp453-458.
- Alan L. Yuille, Stelios M. Smirnakis, and Lei Xu, (1994), “Bayesian Self-Organization”, in Cowan, J.D.,
Tesauro, G., and Alspector, J., eds., Advances in Neural
Information Processing Systems 6, Morgan KaufmannPub: San Mateo, CA,
pp.1001-1008.
1993
- Lei Xu (1993), "Least MSE Reconstruction: A
Principle for Self-Organizing Nets", Neural Networks, the Joint
official Journal of International Neural Network Society, European Neural Network
Society and Japanese Neural Network Society, Vol. 6, pp. 627-648,
1993.
- Its preliminary version was partially given on "Least MSE
Reconstruction for Self-Organization: (I)&(II) ", Proc. of 1991
International Joint Conference on Neural Networks, Singapore, Nov., 1991,
pp2363-2373.
- Lei Xu, A. Krzyzak & E.Oja, (1993),
"Rival Penalized Competitive Learning for Clustering Analysis, RBF
net and Curve Detection", IEEE Trans. on Neural Networks, Vol.4,
No.4, pp636-649, 1993.
- Lei Xu & E.Oja, (1993), "Randomized
Hough Transform (RHT): Basic Mechanisms, Algorithms and
Complexities", Computer Vision, Graphics, and Image Processing :
Image Understanding, Vol.57, No.2, March, 1993, pp131-154.
1992
- Lei Xu, Adam Krzyzak and Ching Y. Suen, (1992),
`` Several Methods for Combining Multiple Classifiers and Their
Applications in Handwritten Character Recognition", IEEE Trans. on
System, Man and Cybernetics, Vol. SMC-22, No.3, pp418-435, 1992.
- Lei Xu, E.Oja & C.Y.Suen, (1992), ``
Modified Hebbian Learning for Curve and Surface Fitting ", Neural
Networks, the Joint official Journal of International Neural Network
Society, European Neural Network Society and Japanese Neural Network
Society, Vol.5, 1992, pp441-457.
- Lei Xu, S.Klasa & A.L. Yuille, (1992),
``Recent Advances on Techniques Static Feed-forward Networks with
Supervised Learning", International Journal of Neural Systems, Vol.3,
No.3, 1992, pp253-290.
1991
- Lei Xu, A. Krzyzak and E.Oja, (1991), `` A
Neural Net for Dual Subspace Pattern Recognition Methods",
International Journal of Neural Systems, Vol.2, No.3, 1991, pp169-184.
1990
- Lei Xu (1990), `` Adding Learned Expectation
into The Learning Procedure of Self-Organizing Maps", International
Journal of Neural Systems, Vol.1, No.3, 1990, pp269-283.
- Lei Xu, E.Oja, & P.Kultanen, (1990), `` A
New Curve Detection Method: Randomized Hough Transform (RHT)",
Pattern Recognition Letters, Vol.11, pp331-338, 1990.
1989
- Lei Xu & J.Pearl, (1989), `` Structuring
Casual Tree Models with Continuous Variables", in Uncertainty in
Artificial Intelligence 3, L.N.Kanal et al ed., Elsevier Science
Publishers B.V. (North-Holland), 1989 pp209-219.
- Lei Xu and E.Oja (1989), ``Improved Simulated
Annealing, Boltzmann Machine and Attributed Graph Matching", in
G.Goos and J.Hartmanis eds., Lecture Notes in Computer Sciences, Vol.412,
Springer-Verlag, pp.151-160.