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Ronny Luss
Ronny Luss
IBM Research
Verified email at us.ibm.com
Title
Cited by
Cited by
Year
Explanations based on the missing: Towards contrastive explanations with pertinent negatives
A Dhurandhar, PY Chen, R Luss, CC Tu, P Ting, K Shanmugam, P Das
Advances in neural information processing systems 31, 2018
4832018
One explanation does not fit all: A toolkit and taxonomy of ai explainability techniques
V Arya, RKE Bellamy, PY Chen, A Dhurandhar, M Hind, SC Hoffman, ...
arXiv preprint arXiv:1909.03012, 2019
3032019
Predicting abnormal returns from news using text classification
R Luss, A d’Aspremont
Quantitative Finance 15 (6), 999-1012, 2015
1792015
Support vector machine classification with indefinite kernels
R Luss, A d'Aspremont
Advances in neural information processing systems 20, 2007
1602007
Conditional gradient algorithmsfor rank-one matrix approximations with a sparsity constraint
R Luss, M Teboulle
siam REVIEW 55 (1), 65-98, 2013
1162013
Clustering and feature selection using sparse principal component analysis
R Luss, A d’Aspremont
Optimization and Engineering 11, 145-157, 2010
652010
AI Explainability 360 Toolkit
V Arya, RKE Bellamy, PY Chen, A Dhurandhar, M Hind, SC Hoffman, ...
Proceedings of the 3rd ACM India Joint International Conference on Data …, 2021
642021
Leveraging latent features for local explanations
R Luss, PY Chen, A Dhurandhar, P Sattigeri, Y Zhang, K Shanmugam, ...
Proceedings of the 27th ACM SIGKDD Conference on Knowledge Discovery & Data …, 2021
61*2021
Efficient regularized isotonic regression with application to gene–gene interaction search
R Luss, S Rosset, M Shahar
602012
Beyond backprop: Online alternating minimization with auxiliary variables
A Choromanska, B Cowen, S Kumaravel, R Luss, M Rigotti, I Rish, ...
International Conference on Machine Learning, 1193-1202, 2019
532019
One explanation does not fit all: A toolkit and taxonomy of ai explainability techniques. arXiv 2019
V Arya, RK Bellamy, PY Chen, A Dhurandhar, M Hind, SC Hoffman, ...
arXiv preprint arXiv:1909.03012, 2022
522022
Improving simple models with confidence profiles
A Dhurandhar, K Shanmugam, R Luss, PA Olsen
Advances in Neural Information Processing Systems 31, 2018
522018
Stochastic gradient descent with biased but consistent gradient estimators
J Chen, R Luss
arXiv preprint arXiv:1807.11880, 2018
432018
Tip: Typifying the interpretability of procedures
A Dhurandhar, V Iyengar, R Luss, K Shanmugam
arXiv preprint arXiv:1706.02952, 2017
392017
Generalized isotonic regression
R Luss, S Rosset
Journal of Computational and Graphical Statistics 23 (1), 192-210, 2014
292014
A formal framework to characterize interpretability of procedures
A Dhurandhar, V Iyengar, R Luss, K Shanmugam
arXiv preprint arXiv:1707.03886, 2017
282017
Orthogonal matching pursuit for sparse quantile regression
A Aravkin, A Lozano, R Luss, P Kambadur
2014 IEEE international conference on data mining, 11-19, 2014
202014
Social media and customer behavior analytics for personalized customer engagements
S Buckley, M Ettl, P Jain, R Luss, M Petrik, RK Ravi, C Venkatramani
IBM Journal of Research and Development 58 (5/6), 7: 1-7: 12, 2014
192014
Decomposing isotonic regression for efficiently solving large problems
R Luss, S Rosset, M Shahar
Advances in neural information processing systems 23, 2010
192010
Sparse quantile huber regression for efficient and robust estimation
AY Aravkin, A Kambadur, AC Lozano, R Luss
arXiv preprint arXiv:1402.4624, 2014
172014
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