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dc.contributor.advisorDoumas, Alex
dc.contributor.advisorMartin-Nieuwland, Andrea
dc.contributor.authorPuebla Ramírez, Guillermo Antonio
dc.date.accessioned2022-11-18T11:16:11Z
dc.date.available2022-11-18T11:16:11Z
dc.date.issued2022-11-18
dc.identifier.urihttps://hdl.handle.net/1842/39497
dc.identifier.urihttp://dx.doi.org/10.7488/era/2747
dc.description.abstractRelational reasoning is central to many cognitive processes, ranging from “lower” processes like object recognition to “higher” processes such as analogy-making and sequential decision-making. The first chapter of this thesis gives an overview of relational reasoning and the computational demands that it imposes on a system that performs relational reasoning. These demands are characterized in terms of the binding problem in neural networks. There has been a longstanding debate in the literature regarding whether neural network models of cognition are, in principle, capable of relation-base processing. In the second chapter I investigated the relational reasoning capabilities of the Story Gestalt model (St. John, 1992), a classic connectionist model of text comprehension, and a Seq-to-Seq model, a deep neural network of text processing (Bahdanau, Cho, & Bengio, 2015). In both cases I found that the purportedly relational behavior of the models was explainable by the statistics of their training datasets. We propose that both models fail at relational processing because of the binding problem in neural networks. In the third chapter of this thesis, I present an updated version of the DORA architecture (Doumas, Hummel, & Sandhofer, 2008), a symbolic-connectionist model of relation learning and inference that uses temporal synchrony to solve the binding problem. We use this model to perform relational policy transfer between two Atari games. Finally, in the fourth chapter I present a model of relational reinforcement that is able to select relevant relations, from a potentially large pool of applicable relations, to characterize a problem and learn simple rules from the reward signal, helping to bridge the gap between reinforcement learning and relational reasoning.en
dc.language.isoenen
dc.publisherThe University of Edinburghen
dc.relation.hasversionPuebla, G., Martin, A. E. & Doumas, L. A. (2021). The relational processing limits of classic and contemporary neural network models of language processing. Language, Cognition and Neuroscience, 36(2), 240-254. https://doi.org/10.1080/23273798 .2020.1821906en
dc.relation.hasversionDoumas, L. A. A., Puebla, G., Martin, A. E. & Hummel, J. E. (2022). A theory of rela tion learning and cross-domain generalization. Psychological Review. Advance online publication. https://doi.org/10.1037/rev0000346en
dc.relation.hasversionPuebla, G. & Doumas, L. A. (2021). Learning relational rules from rewards. arXiv https:// arxiv.org/abs/2203.13599en
dc.relation.hasversionPuebla, G., & Bowers, J. S. (2021). Can deep convolutional neural networks support relational reasoning in the same-different task? bioRxiv. doi: 10.1101/2021.09.03.458919en
dc.subjectartificial intelligenceen
dc.subjectrelational reasoningen
dc.subjectStory Gestalt modelen
dc.subjectSeq-to-Seq modelen
dc.subjectDORA architectureen
dc.titleRelation learning and reasoning on computational models of high level cognitionen
dc.typeThesis or Dissertationen
dc.type.qualificationlevelDoctoralen
dc.type.qualificationnamePhD Doctor of Philosophyen


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