Balancing Bias and Variance for Active Weakly Supervised Learning
Hitesh Sapkota, Qi Yu

TL;DR
This paper introduces an active deep multiple instance learning framework that balances bias and variance to improve instance-level prediction, utilizing a robust bag likelihood and a novel sampling method, achieving state-of-the-art results.
Contribution
It proposes a novel variance regularized loss and a distributionally robust surrogate for improved instance-level MIL prediction, along with an effective active sampling strategy.
Findings
Achieves state-of-the-art instance-level prediction performance.
Effectively balances bias and variance in MIL.
Improves detection of positive instances for annotation.
Abstract
As a widely used weakly supervised learning scheme, modern multiple instance learning (MIL) models achieve competitive performance at the bag level. However, instance-level prediction, which is essential for many important applications, remains largely unsatisfactory. We propose to conduct novel active deep multiple instance learning that samples a small subset of informative instances for annotation, aiming to significantly boost the instance-level prediction. A variance regularized loss function is designed to properly balance the bias and variance of instance-level predictions, aiming to effectively accommodate the highly imbalanced instance distribution in MIL and other fundamental challenges. Instead of directly minimizing the variance regularized loss that is non-convex, we optimize a distributionally robust bag level likelihood as its convex surrogate. The robust bag likelihood…
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Taxonomy
TopicsImage Retrieval and Classification Techniques
