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Kai Ming Ting
Kai Ming Ting
Verified email at nju.edu.cn - Homepage
Title
Cited by
Cited by
Year
Isolation forest
FT Liu, KM Ting, ZH Zhou
2008 eighth ieee international conference on data mining, 413-422, 2008
41722008
Isolation-based anomaly detection
FT Liu, KM Ting, ZH Zhou
ACM Transactions on Knowledge Discovery from Data (TKDD) 6 (1), 1-39, 2012
14422012
Issues in stacked generalization
KM Ting, IH Witten
Journal of artificial intelligence research 10, 271-289, 1999
8461999
An instance-weighting method to induce cost-sensitive trees
KM Ting
IEEE Transactions on Knowledge and Data Engineering 14 (3), 659-665, 2002
5862002
A survey of audio-based music classification and annotation
Z Fu, G Lu, KM Ting, D Zhang
IEEE transactions on multimedia 13 (2), 303-319, 2010
5512010
A comparative study of cost-sensitive boosting algorithms
KM Ting
Proc. of the 17th International Conference on Machine Learning (ICML), 2000, 2000
3702000
Stacking bagged and dagged models
KM Ting, IH Witten
3021997
Fast anomaly detection for streaming data
SC Tan, KM Ting, TF Liu
Twenty-second international joint conference on artificial intelligence, 2011
2882011
Precision and Recall.
KM Ting
Encyclopedia of machine learning 781, 2010
2572010
Stacked Generalization: when does it work?
KM Ting, IH Witten
Department of Computer Science, University of Waik, 1997
2391997
z-SVM: An SVM for improved classification of imbalanced data
T Imam, KM Ting, J Kamruzzaman
AI 2006: Advances in Artificial Intelligence: 19th Australian Joint …, 2006
1812006
On detecting clustered anomalies using SCiForest
FT Liu, KM Ting, ZH Zhou
Machine Learning and Knowledge Discovery in Databases: European Conference …, 2010
1452010
Inducing cost-sensitive trees via instance weighting
KM Ting
Principles of Data Mining and Knowledge Discovery: Second European Symposium …, 1998
1401998
Density-ratio based clustering for discovering clusters with varying densities
Y Zhu, KM Ting, MJ Carman
Pattern Recognition 60, 983-997, 2016
1262016
On the application of ROC analysis to predict classification performance under varying class distributions
GI Webb, KM Ting
Machine learning 58, 25-32, 2005
1182005
Learning by extrapolation from marginal to full-multivariate probability distributions: decreasingly naive Bayesian classification
GI Webb, JR Boughton, F Zheng, KM Ting, H Salem
Machine learning 86, 233-272, 2012
1172012
Classification under streaming emerging new classes: A solution using completely-random trees
X Mu, KM Ting, ZH Zhou
IEEE Transactions on Knowledge and Data Engineering 29 (8), 1605-1618, 2017
992017
Spectrum of variable-random trees
FT Liu, KM Ting, Y Yu, ZH Zhou
Journal of Artificial Intelligence Research 32, 355-384, 2008
982008
The problem of small disjuncts: its remedy in decision trees
KM Ting
PROCEEDINGS OF THE BIENNIAL CONFERENCE-CANADIAN SOCIETY FOR COMPUTATIONAL …, 1994
971994
Multi-label learning with emerging new labels
Y Zhu, KM Ting, ZH Zhou
IEEE Transactions on Knowledge and Data Engineering 30 (10), 1901-1914, 2018
892018
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Articles 1–20