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235 results on '"Pechenizkiy, Mykola"'

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1. Everyone deserves their voice to be heard: Analyzing Predictive Gender Bias in ASR Models Applied to Dutch Speech Data

2. RuAG: Learned-rule-augmented Generation for Large Language Models

3. MedINST: Meta Dataset of Biomedical Instructions

4. Dynamic Sparse Training versus Dense Training: The Unexpected Winner in Image Corruption Robustness

5. Are Sparse Neural Networks Better Hard Sample Learners?

6. Rethinking Knowledge Transfer in Learning Using Privileged Information

7. A Probabilistic Framework for Adapting to Changing and Recurring Concepts in Data Streams

8. Robust Active Learning (RoAL): Countering Dynamic Adversaries in Active Learning with Elastic Weight Consolidation

9. Unveiling the Power of Sparse Neural Networks for Feature Selection

10. Nerva: a Truly Sparse Implementation of Neural Networks

11. (PASS) Visual Prompt Locates Good Structure Sparsity through a Recurrent HyperNetwork

12. Dynamic Data Pruning for Automatic Speech Recognition

13. Boosting Robustness in Preference-Based Reinforcement Learning with Dynamic Sparsity

14. One-Shot Federated Learning with Bayesian Pseudocoresets

15. Efficient Exploration in Average-Reward Constrained Reinforcement Learning: Achieving Near-Optimal Regret With Posterior Sampling

16. The Neutrality Fallacy: When Algorithmic Fairness Interventions are (Not) Positive Action

17. Learning Efficient and Fair Policies for Uncertainty-Aware Collaborative Human-Robot Order Picking

18. Investigating Gender Fairness in Machine Learning-driven Personalized Care for Chronic Pain

19. MaDi: Learning to Mask Distractions for Generalization in Visual Deep Reinforcement Learning

20. GPTBIAS: A Comprehensive Framework for Evaluating Bias in Large Language Models

21. E2ENet: Dynamic Sparse Feature Fusion for Accurate and Efficient 3D Medical Image Segmentation

22. A Structural-Clustering Based Active Learning for Graph Neural Networks

23. REST: Enhancing Group Robustness in DNNs through Reweighted Sparse Training

24. Visual Prompting Upgrades Neural Network Sparsification: A Data-Model Perspective

25. KeyGen2Vec: Learning Document Embedding via Multi-label Keyword Generation in Question-Answering

26. Heterophily-Based Graph Neural Network for Imbalanced Classification

27. Outlier Weighed Layerwise Sparsity (OWL): A Missing Secret Sauce for Pruning LLMs to High Sparsity

28. Provably Efficient Exploration in Constrained Reinforcement Learning:Posterior Sampling Is All You Need

29. Enhancing Adversarial Training via Reweighting Optimization Trajectory

30. Dynamic Sparsity Is Channel-Level Sparsity Learner

31. Are Large Kernels Better Teachers than Transformers for ConvNets?

32. Interpretable Reward Redistribution in Reinforcement Learning: A Causal Approach

33. Adaptive Sparsity Level during Training for Efficient Time Series Forecasting with Transformers

34. CHBias: Bias Evaluation and Mitigation of Chinese Conversational Language Models

35. NLG Evaluation Metrics Beyond Correlation Analysis: An Empirical Metric Preference Checklist

36. Algorithmic Unfairness through the Lens of EU Non-Discrimination Law: Or Why the Law is not a Decision Tree

37. Can Fairness be Automated? Guidelines and Opportunities for Fairness-aware AutoML

38. Supervised Feature Selection with Neuron Evolution in Sparse Neural Networks

39. Individual Fairness Evaluation for Automated Essay Scoring System

40. Automatic Noise Filtering with Dynamic Sparse Training in Deep Reinforcement Learning

41. Dynamic Sparse Network for Time Series Classification: Learning What to 'see'

42. Exceptional Subitizing Patterns: Exploring Mathematical Abilities of Finnish Primary School Children with Piecewise Linear Regression

43. Subgroup Harm Assessor: Identifying Potential Fairness-Related Harms and Predictive Bias

44. Adaptive Sparsity Level During Training for Efficient Time Series Forecasting with Transformers

45. A Structural-Clustering Based Active Learning for Graph Neural Networks

47. You Can Have Better Graph Neural Networks by Not Training Weights at All: Finding Untrained GNNs Tickets

48. Where to Pay Attention in Sparse Training for Feature Selection?

49. FAL-CUR: Fair Active Learning using Uncertainty and Representativeness on Fair Clustering

50. An Empirical Evaluation of Posterior Sampling for Constrained Reinforcement Learning

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