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Kilian Q. Weinberger

Researcher at Cornell University

Publications -  241
Citations -  71535

Kilian Q. Weinberger is an academic researcher from Cornell University. The author has contributed to research in topics: Computer science & Deep learning. The author has an hindex of 76, co-authored 222 publications receiving 49707 citations. Previous affiliations of Kilian Q. Weinberger include University of Washington & Washington University in St. Louis.

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GPyTorch: Blackbox Matrix-Matrix Gaussian Process Inference with GPU Acceleration.

TL;DR: This work presents an efficient and general approach to GP inference based on Blackbox Matrix-Matrix multiplication (BBMM), a modified batched version of the conjugate gradients algorithm to derive all terms for training and inference in a single call.
Proceedings Article

Co-Training for Domain Adaptation

TL;DR: An algorithm that bridges the gap between source and target domains by slowly adding to the training set both the target features and instances in which the current algorithm is the most confident, and is named CODA (Co-training for domain adaptation).
Proceedings Article

Understanding Batch Normalization

TL;DR: It is shown that BN primarily enables training with larger learning rates, which is the cause for faster convergence and better generalization, and contrasts the results against recent findings in random matrix theory, shedding new light on classical initialization schemes and their consequences.
Proceedings Article

Multi-Scale Dense Networks for Resource Efficient Image Classification

TL;DR: Experiments demonstrate that the proposed framework substantially improves the existing state-of-the-art in both image classification with computational resource limits at test time and budgeted batch classification.
Proceedings Article

On Fairness and Calibration

TL;DR: It is shown that calibration is compatible only with a single error constraint, and that any algorithm that satisfies this relaxation is no better than randomizing a percentage of predictions for an existing classifier.