Tyler Baldwin, Wyatt Clarke, et al.
Big Data 2022
Concept bottleneck model (CBM) are a popular way of creating more interpretable neural network by having hidden layer neurons correspond to human-understandable concepts. However, existing CBMs and their variants have two crucial limitations: first, the need to collect labeled data for each of the predefined concepts, which is time consuming and labor intensive; second, the accuracy of a CBM is often significantly lower than that of a standard neural network, especially on more complex datasets. This poor performance creates a barrier for adoption in practical real world applications. Motivated by these challenges, we propose Label-free CBM which is a framework to transform any neural network into an interpretable CBM without labeled concept data, while retaining a high accuracy. Our Label-free CBM has many advantages, it is: scalable - we present the first CBM scaled to ImageNet, efficient - creating a CBM takes only a few hours even for very large datasets, and automated - training it for a new dataset requires minimal human effort.
Tyler Baldwin, Wyatt Clarke, et al.
Big Data 2022
Natalia Martinez Gil, Kanthi Sarpatwar, et al.
NeurIPS 2023
Subha Maity, Mikhail Yurochkin, et al.
ICLR 2023
Daniel Karl I. Weidele, Hendrik Strobelt, et al.
SysML 2019