ProtoMIL: Multiple Instance Learning with Prototypical Parts for Fine-Grained Interpretability

08/24/2021
by   Dawid Rymarczyk, et al.
27

Multiple Instance Learning (MIL) gains popularity in many real-life machine learning applications due to its weakly supervised nature. However, the corresponding effort on explaining MIL lags behind, and it is usually limited to presenting instances of a bag that are crucial for a particular prediction. In this paper, we fill this gap by introducing ProtoMIL, a novel self-explainable MIL method inspired by the case-based reasoning process that operates on visual prototypes. Thanks to incorporating prototypical features into objects description, ProtoMIL unprecedentedly joins the model accuracy and fine-grained interpretability, which we present with the experiments on five recognized MIL datasets.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset