2012
NIPS
NeurIPS 2012
On Multilabel Classification and Ranking with Partial Feedback
Abstract
We present a novel multilabel/ranking algorithm working in partial information settings. The algorithm is based on 2nd-order descent methods, and relies on upper-confidence bounds to trade-off exploration and exploitation. We analyze this algorithm in a partial adversarial setting, where covariates can be adversarial, but multilabel probabilities are ruled by (generalized) linear models. We show $O(T^{1/2}\log T)$ regret bounds, which improve in several ways on the existing results. We test the effectiveness of our upper-confidence scheme by contrasting against full-information baselines on real-world multilabel datasets, often obtaining comparable performance.
🌉
Interdisciplinary Bridge
— Machine Learning and Mathematics & Optimization
🧭
Keyword Pioneer
— upper confidence bounds
🐝
Cross-Pollinator
— Artificial Intelligence, Computer Science, Computer Vision, Data Science & Analytics, Deep Learning, Interdisciplinary, Knowledge & Reasoning, Machine Learning, Mathematics & Optimization, Natural Language Processing, Reinforcement Learning, Robotics, Security & Privacy, Speech & Audio
📈
Trend Setter
— Multi-Label Classification
🐣
Hot Topic Early Bird
— multi-label classification
Authors
Topics
Machine Learning > Learning Types > Active Learning
Machine Learning > Optimization & Theory > Learning Theory
Mathematics & Optimization > Optimization > Online Algorithms
Machine Learning > Learning Types > Online Learning
Machine Learning > Optimization & Theory > Online Algorithms
Machine Learning > Learning Types > Multi-Armed Bandits
Machine Learning > Learning Types > Multi-Label Classification
Machine Learning > Learning Types > Ranking