Machine Learning
Machine Learning is core to our products. Our researchers and engineers develop and deploy large scale ML and deep learning algorithms on one of the largest grid computing platforms in the world. We process over 100 billion daily user activities and over 200 billion daily ad requests over our global media and advertising networks.
Publications
Paper
|
June 6, 2024
Mathematical Programming Computation Journal
Efficient Algorithms for Incremental Proximal Point Methods
Paper
|
April 8, 2024
CVPR 2024 - Generative Models for Computer Vision
Salient Object-Aware Background Generation Using Text-Guided Diffusion Models
Paper
|
March 5, 2024
ICLR 2024
Consistent Algorithms for Multi-Label Classification with Macro-at-K Metrics
Paper
|
February 21, 2024
AISTATS 2024
Imposing Fairness Constraints in Synthetic Data Generation
Paper
|
October 12, 2023
NeurIPS 2023
On Transfer of Adversarial Robustness from Pretraining to Downstream Tasks
Paper
|
May 16, 2023
KDD 2023 (Applied Data Science track)
Extreme Multi-Label Classification for Ad Targeting Using Factorization Machines
Paper
|
April 26, 2023
ICML 2023
Gradient Descent Converges Linearly for Logistic Regression on Separable Data
Oral presentation + poster
|
February 13, 2023
AAAI 2023
Symbolic Metamodels for Interpreting Black-Boxes Using Primitive Functions
Paper
|
November 8, 2022
Neurips
Order-Invariant Cardinality Estimators Are Differentially Private
Paper
|
June 8, 2022
EC 2022
Incentive Mechanisms for Strategic Classification and Regression Problems
Paper
|
June 8, 2022
ICML 2022
Fairness Interventions as (Dis)Incentives for Strategic Manipulation
Paper
|
June 8, 2022
KDD 2022
On Missing Labels, Long-Tails, and Propensities in Extreme Multi-Label Classification
Paper
|
June 8, 2022
UAI 2022
Set-Valued Prediction in Hierarchical Classification with Constrained Representation Complexity
Paper
|
June 8, 2022
ICML 2022
Iterative Hard Thresholding with Adaptive Regularization: Sparser Solutions Without Sacrificing Runtime
Paper
|
December 13, 2021
CDC 2021
Scalable Multi-Objective Optimization in Programmatic Advertising via Feedback Control
Paper
|
November 15, 2021
IEEE Big Data 2021 (Poster)
Hadoop-MTA: A System for Multi Data-Center Trillion Concepts Auto-ML Atop Hadoop
Paper
|
November 9, 2021
Engineering Applications of Artificial Intelligence
Transfer-Based Taxonomy Induction Over Concept Labels
Paper
|
April 15, 2021
SIGIR 2021 (short paper)
Propensity-Scored Probabilistic Label Trees
Paper
|
March 12, 2021
Data Mining and Knowledge Discovery
Efficient Set-Valued Prediction in Multi-Class Classification
Paper
|
January 12, 2021
ICLR 2021
Local Search Algorithms for Rank-Constrained Convex Optimization
Paper
|
December 8, 2020
COLING 2020
Effective Few Shot Classification with Transfer Learning
Paper
|
November 12, 2020
ASONAM 2020
Locally Constructing Product Taxonomies from Scratch Using Representation Learning
Paper
|
July 3, 2020
Nature Machine Intelligence
Elucidation of DNA Methylation on N6-Adenine with Deep Learning
Paper
|
May 31, 2020
ICML 2020
Sparse Convex Optimization via Adaptively Regularized Hard Thresholding
Paper
|
May 25, 2020
EDGE 2020
Edge Architecture for Dynamic Data Stream Analysis and Manipulation
Paper
|
May 15, 2020
KDD 2020 Research Track
Unsupervised Differentiable Multi-Aspect Network Embedding
1 / 2
Next