Prototypical methods have recently gained a lot of attention due to their intrinsic interpretable nature, which is obtained through the prototypes. With growing use cases of model reuse and distillation, there is a need to also study transfer of interpretability from one model to another. We present Proto2Proto, a novel method to transfer interpretability of one prototypical part network to another via knowledge distillation. Our approach aims to add interpretability to the "dark" knowledge transferred from the teacher to the shallower student model. We propose two novel losses: "Global Explanation" loss and "Patch-Prototype Correspondence" loss to facilitate such a transfer. Global Explanation loss forces the student prototypes to be close...
Pretrained models could be reused in a way that allows for improvement in training accuracy. Trainin...
Distillation efforts have led to language models that are more compact and efficient without serious...
In this work, we introduce an extension to ProtoPNet called ProtoPShare which shares prototypical pa...
We introduce ProtoPool, an interpretable image classification model with a pool of prototypes shared...
ProtoPNet and its follow-up variants (ProtoPNets) have attracted broad research interest for their i...
Prototypical part neural networks (ProtoPartNNs), namely PROTOPNET and its derivatives, are an intri...
Explaining black-box Artificial Intelligence (AI) models is a cornerstone for trustworthy AI and a p...
We present a deformable prototypical part network (Deformable ProtoPNet), an interpretable image cla...
Continual learning enables incremental learning of new tasks without forgetting those previously lea...
Image recognition with prototypes is considered an interpretable alternative for black box deep lear...
Current machine learning models have shown high efficiency in solving a wide variety of real-world p...
We propose a novel interpretable deep neural network for text classification, called ProtoryNet, bas...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Large Language Models (LLMs) have significantly advanced the field of Natural Language Processing (N...
While deep reinforcement learning has proven to be successful in solving control tasks, the "black-b...
Pretrained models could be reused in a way that allows for improvement in training accuracy. Trainin...
Distillation efforts have led to language models that are more compact and efficient without serious...
In this work, we introduce an extension to ProtoPNet called ProtoPShare which shares prototypical pa...
We introduce ProtoPool, an interpretable image classification model with a pool of prototypes shared...
ProtoPNet and its follow-up variants (ProtoPNets) have attracted broad research interest for their i...
Prototypical part neural networks (ProtoPartNNs), namely PROTOPNET and its derivatives, are an intri...
Explaining black-box Artificial Intelligence (AI) models is a cornerstone for trustworthy AI and a p...
We present a deformable prototypical part network (Deformable ProtoPNet), an interpretable image cla...
Continual learning enables incremental learning of new tasks without forgetting those previously lea...
Image recognition with prototypes is considered an interpretable alternative for black box deep lear...
Current machine learning models have shown high efficiency in solving a wide variety of real-world p...
We propose a novel interpretable deep neural network for text classification, called ProtoryNet, bas...
Unexplainable black-box models create scenarios where anomalies cause deleterious responses, thus cr...
Large Language Models (LLMs) have significantly advanced the field of Natural Language Processing (N...
While deep reinforcement learning has proven to be successful in solving control tasks, the "black-b...
Pretrained models could be reused in a way that allows for improvement in training accuracy. Trainin...
Distillation efforts have led to language models that are more compact and efficient without serious...
In this work, we introduce an extension to ProtoPNet called ProtoPShare which shares prototypical pa...