Is intelligence realized by connectionist or classicist? While connectionist approaches have achieved superhuman performance, there has been growing evidence that such task-specific superiority is particularly fragile in systematic generalization. This observation lies in the central debate between connectionist and classicist, wherein the latter continually advocates an algebraic treatment in cognitive architectures. In this work, we follow the classicist's call and propose a hybrid approach to improve systematic generalization in reasoning. Specifically, we showcase a prototype with algebraic representation for the abstract spatial-temporal reasoning task of Raven's Progressive Matrices (RPM) and present the ALgebra-Aware Neuro-Semi-Symbo...
Connectionism is an approach to neural-networks-based cognitive modeling that encompasses the recent...
The dissertation represents a critical evaluation of the major connectionist theories of human cogni...
In an influential paper, Marcus et al. [1999] claimed that connectionist models cannot account for h...
We present a critical review of computational models of generalization of simple grammar-like rules,...
The cornerstone of neural algorithmic reasoning is the ability to solve algorithmic tasks, especiall...
It is generally acknowledged that tremendous computational activity underlies some of the most commo...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
Humans not only learn concepts from labeled supervision but also induce new relational concepts unsu...
Despite the tremendous success, existing machine learning models still fall short of human-like syst...
Reasoning is an essential element of intelligence. Automated reasoning in formal and symbolic system...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Great endeavors have been made to study AI's ability in abstract reasoning, along with which differe...
Humans can systematically generalize to novel compositions of existing concepts. Recent studies argu...
Neural networks leverage robust internal representations in order to generalise. Learning them is di...
Neural networks need to be able to guarantee their intrinsic generalisation abilities if they are to...
Connectionism is an approach to neural-networks-based cognitive modeling that encompasses the recent...
The dissertation represents a critical evaluation of the major connectionist theories of human cogni...
In an influential paper, Marcus et al. [1999] claimed that connectionist models cannot account for h...
We present a critical review of computational models of generalization of simple grammar-like rules,...
The cornerstone of neural algorithmic reasoning is the ability to solve algorithmic tasks, especiall...
It is generally acknowledged that tremendous computational activity underlies some of the most commo...
The power of human language and thought arises from systematic compositionality—the algebraic abilit...
Humans not only learn concepts from labeled supervision but also induce new relational concepts unsu...
Despite the tremendous success, existing machine learning models still fall short of human-like syst...
Reasoning is an essential element of intelligence. Automated reasoning in formal and symbolic system...
Artificial intelligence algorithms are capable of fantastic exploits, yet they are still grossly ine...
Great endeavors have been made to study AI's ability in abstract reasoning, along with which differe...
Humans can systematically generalize to novel compositions of existing concepts. Recent studies argu...
Neural networks leverage robust internal representations in order to generalise. Learning them is di...
Neural networks need to be able to guarantee their intrinsic generalisation abilities if they are to...
Connectionism is an approach to neural-networks-based cognitive modeling that encompasses the recent...
The dissertation represents a critical evaluation of the major connectionist theories of human cogni...
In an influential paper, Marcus et al. [1999] claimed that connectionist models cannot account for h...