This paper presents AutoHint, a novel framework for automatic prompt
eng...
Named entity recognition (NER) is a crucial task for online advertisemen...
Transformer models have achieved superior performance in various natural...
In this paper, we propose TEDL, a two-stage learning approach to quantif...
Today, many web advertising data flows involve passive cross-site tracki...
It is often critical for prediction models to be robust to distributiona...
In classical causal inference, inferring cause-effect relations from dat...
Contextual bandits are a common problem faced by machine learning
practi...
Self-supervision is key to extending use of deep learning for label scar...
We present a unified framework for Batch Online Learning (OL) for Click
...
In real world systems, the predictions of deployed Machine Learned model...
Quick interaction between a human teacher and a learning machine present...