%Aigaion2 BibTeX export from Knowledge Engineering Publications %Friday 17 December 2021 11:56:17 PM @INPROCEEDINGS{fuernkranz20decodeml, author = {F{\"{u}}rnkranz, Johannes and H{\"{u}}llermeier, Eyke and Loza Menc{\'{\i}}a, Eneldo and Rapp, Michael}, month = sep, title = {Learning Structured Declarative Rule Sets — A Challenge for Deep Discrete Learning}, booktitle = {2nd Workshop on Deep Continuous-Discrete Machine Learning (DeCoDeML)}, year = {2020}, url = {https://sites.google.com/view/decodeml-workshop-2020/program}, abstract = {Arguably the key reason for the success of deep neural networks is their ability to autonomously form non-linear combinations of the input features, which can be used in subsequent layers of the network. The analogon to this capability in inductive rule learning is to learn a structured rule base, where the inputs are combined to learn new auxiliary concepts, which can then be used as inputs by subsequent rules. Yet, research on rule learning algorithms that have such capabilities is still in their infancy, which is - we would argue - one of the key impediments to substantial progress in this field. In this position paper, we want to draw attention to this unsolved problem, with a particular focus on previous work in predicate invention and multi-label rule learning} }