Extreme Multi-label Learning via Nearest Neighbor Graph Partitioning and Embedding

Subscribers:
344,000
Published on ● Video Link: https://www.youtube.com/watch?v=fTCiHBRUBAg



Duration: 22:42
3,599 views
25


Extreme classification is a rapidly growing research area focusing on multi-class and multi-label problems involving an extremely large number of labels. Many applications have been found in diverse areas ranging from language modeling to document tagging in NLP, face recognition to learning universal feature representations in computer vision, gene function prediction in bioinformatics, etc. Extreme classification has also opened up a new paradigm for ranking and recommendation by reformulating them as multi-label learning tasks where each item to be ranked or recommended is treated as a separate label. Such reformulations have led to significant gains over traditional collaborative filtering and content-based recommendation techniques. Consequently, extreme classifiers have been deployed in many real-world applications in industry. This workshop aims to bring together researchers interested in these areas to encourage discussion and improve upon the state-of-the-art in extreme classification. In particular, we aim to bring together researchers from the natural language processing, computer vision and core machine learning communities to foster interaction and collaboration.

Find more talks at https://www.youtube.com/playlist?list=PLD7HFcN7LXReN-0-YQeIeZf0jMG176HTa




Other Videos By Microsoft Research


2018-03-13Design and Evaluation of Effective, Interactive, and Interpretable Machine Learning
2018-03-13Avoiding the Pitfalls of Active Learning with Robust Predictors for Covariate Shift
2018-03-13The Future of Voice
2018-03-13A Unifying Theory of First-Order Methods and Applications
2018-03-13Bridging the Gap Between Theory and Practice in Machine Learning
2018-03-12Dreaming Contextual Memory
2018-03-12Extreme Classification in Healthcare
2018-03-12Deep Learning Approach for Extreme Multi-label Text Classification
2018-03-12A Parallel Primal-Dual Sparse Method for Extreme Classification
2018-03-12EZLearn: Exploiting Organic Supervision in Large-Scale Data Annotation
2018-03-12Extreme Multi-label Learning via Nearest Neighbor Graph Partitioning and Embedding
2018-03-12Microsoft Hands-Free Music
2018-03-12Deep Attention Mechanism for Multimodal Intelligence: Perception, Reasoning, & Expression
2018-03-09The Four Big Bets (Illustrated via a Journey in Program Synthesis)
2018-03-09Fast Algorithms via Convex Relaxation
2018-03-08CLAW: A Multifunctional Handheld Haptic Controller for Grasping, Touching, and Triggering in VR
2018-03-08Haptic Revolver: Touch, Shear, Texture, & Shape Rendering on a Reconfigurable VR Controller
2018-03-07Panel Discussion: Ai-Perception and Applications
2018-03-06Learning and Efficiency of Outcomes in Games
2018-03-06Extreme Classification - New Paradigm for Ranking and Recommendation
2018-03-06Automated Economic Reasoning with Quantifier Elimination



Tags:
microsoft research
classification
NIPS 2017
workshop