We propose symbolic learning as extensions to standard inductive learning models such as neural nets as a means to solve few shot learning problems. We device a class of visual discrimination puzzles that calls for recognizing objects and object relationships as well learning higher-level concepts from very few images. We propose a two-phase learning framework that combines models learned from large data sets using neural nets and symbolic first-order logic formulas learned from a few shot learning instance. We develop first-order logic synthesis techniques for discriminating images by using symbolic search and logic constraint solvers. By augmenting neural nets with them, we develop and evaluate a tool that can solve few shot visual discri...
In this article, we propose deep visual reasoning, which is a convolutional recurrent neural network...
Neural network models of categorical perception can help solve the symbol-grounding problem [Harnad,...
Few-shot learning models learn representations with limited human annotations, and such a learning p...
Humans not only learn concepts from labeled supervision but also induce new relational concepts unsu...
Deep neural networks learn representations of data to facilitate problem-solving in their respective...
Analogical Reasoning problems challenge both connectionist and symbolic AI systems as these entail a...
We consider a class of visual analogical reasoning problems that involve discovering the sequence of...
Neural net models of categorical perception (compression of within-category similarities and separat...
Humans regularly reason from visual information, engaging in simple object search in a scene to ab...
The detection of semantic relationships between objects represented in an image is one of the fundam...
Pick and place systems that operate in a warehouse setting have been studied a lot recently due to t...
Neuro-Symbolic (NeSy) integration combines symbolic reasoning with Neural Networks (NNs) for tasks r...
Semantic image interpretation can vastly benefit from approaches that combine sub-symbolic distribut...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Neural network models of categorical perception (compression of within-category similarity and dilat...
In this article, we propose deep visual reasoning, which is a convolutional recurrent neural network...
Neural network models of categorical perception can help solve the symbol-grounding problem [Harnad,...
Few-shot learning models learn representations with limited human annotations, and such a learning p...
Humans not only learn concepts from labeled supervision but also induce new relational concepts unsu...
Deep neural networks learn representations of data to facilitate problem-solving in their respective...
Analogical Reasoning problems challenge both connectionist and symbolic AI systems as these entail a...
We consider a class of visual analogical reasoning problems that involve discovering the sequence of...
Neural net models of categorical perception (compression of within-category similarities and separat...
Humans regularly reason from visual information, engaging in simple object search in a scene to ab...
The detection of semantic relationships between objects represented in an image is one of the fundam...
Pick and place systems that operate in a warehouse setting have been studied a lot recently due to t...
Neuro-Symbolic (NeSy) integration combines symbolic reasoning with Neural Networks (NNs) for tasks r...
Semantic image interpretation can vastly benefit from approaches that combine sub-symbolic distribut...
Neural-symbolic models bridge the gap between sub-symbolic and symbolic approaches, both of which ha...
Neural network models of categorical perception (compression of within-category similarity and dilat...
In this article, we propose deep visual reasoning, which is a convolutional recurrent neural network...
Neural network models of categorical perception can help solve the symbol-grounding problem [Harnad,...
Few-shot learning models learn representations with limited human annotations, and such a learning p...