Responsible use of machine learning requires that models be audited for
...
Interpretability is an essential building block for trustworthiness in
r...
We study the faithfulness of an explanation system to the underlying
pre...
Recent research has recognized interpretability and robustness as essent...
The explosive growth of easily-accessible unlabeled data has lead to gro...
We study k-median clustering under the sequential no-substitution settin...
We investigate k-means clustering in the online no-substitution setting
...
Despite the popularity of explainable AI, there is limited work on effec...
Clustering is a popular form of unsupervised learning for geometric data...
Combinatorial dimensions play an important role in the theory of machine...
In this paper we study k-means clustering in the online setting. In the
...
Deep neural networks have become the default choice for many of the mach...
In an era of big data there is a growing need for memory-bounded learnin...
It is well known that options can make planning more efficient, among th...