Sparse Network Inversion for Key Instance Detection in Multiple Instance Learning
Beomjo Shin, Junsu Cho, Hwanjo Yu, Seungjin Choi

TL;DR
This paper introduces a sparse network inversion technique to enhance key instance detection in multiple instance learning, effectively identifying influential instances while preserving bag-level classification accuracy.
Contribution
It proposes a novel neural network inversion method with sparsity constraints to improve key instance detection in deep MIL models.
Findings
Significant improvement in key instance detection accuracy.
Maintains high bag-level classification performance.
Validated on MNIST and histopathology datasets.
Abstract
Multiple Instance Learning (MIL) involves predicting a single label for a bag of instances, given positive or negative labels at bag-level, without accessing to label for each instance in the training phase. Since a positive bag contains both positive and negative instances, it is often required to detect positive instances (key instances) when a set of instances is categorized as a positive bag. The attention-based deep MIL model is a recent advance in both bag-level classification and key instance detection (KID). However, if the positive and negative instances in a positive bag are not clearly distinguishable, the attention-based deep MIL model has limited KID performance as the attention scores are skewed to few positive instances. In this paper, we present a method to improve the attention-based deep MIL model in the task of KID. The main idea is to use the neural network inversion…
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Taxonomy
TopicsAI in cancer detection · Digital Imaging for Blood Diseases · Image Processing Techniques and Applications
