Neural networks are not great generalizers outside their training range i.e. they are good at capturing bias but might miss the overall concept. Important issues with neural networks is that when testing data goes outside training range they fail to predict accurate results. Hence, they loose the ability to generalize a concept. For systematic numeric exploration neural accumulators (NAC) and neural arithmetic logic unit(NALU) are proposed which performs excellent for simple arithmetic operations. But, major limitation with these units is that they can't handle complex mathematical operations \& equations. For example, NALU can predict accurate results for multiplication operation but not for factorial function which is essentially composit...
In this paper a new tool is proposed as a possible aid to study differences and similarities between...
Abstract—Interval arithmetic has become a popular tool for general optimization problems such as rob...
This article studies the computational power of various discontinuous real computational models that...
Neural networks can learn to represent and manipulate numerical information, but they seldom general...
Neural networks can learn to represent and manipulate numerical information, but they seldom general...
Neural networks have to capture mathematical relationships in order to learn various tasks. They app...
Neural networks can learn complex functions, but they often have troubles with extrapolating even si...
Answering complex questions that require multi-step multi-type reasoning over raw text is challengin...
Neural Arithmetic Logic Modules have become a growing area of interest, though remain a niche field....
There is presently great interest in the abilities of neural networks to mimic "qualitative rea...
Numerical reasoning skills are essential for complex question answering (CQA) over text. It requires...
We demonstrate that a neural network pre-trained on text and fine-tuned on code solves mathematics c...
A simple Neural Network model is presented for end-to-end visual learning of arithmetic operations f...
A longstanding question in cognitive science concerns the learning mechanisms underlying composition...
International audienceDeep neural networks are difficult to train when applied to tasks that can be ...
In this paper a new tool is proposed as a possible aid to study differences and similarities between...
Abstract—Interval arithmetic has become a popular tool for general optimization problems such as rob...
This article studies the computational power of various discontinuous real computational models that...
Neural networks can learn to represent and manipulate numerical information, but they seldom general...
Neural networks can learn to represent and manipulate numerical information, but they seldom general...
Neural networks have to capture mathematical relationships in order to learn various tasks. They app...
Neural networks can learn complex functions, but they often have troubles with extrapolating even si...
Answering complex questions that require multi-step multi-type reasoning over raw text is challengin...
Neural Arithmetic Logic Modules have become a growing area of interest, though remain a niche field....
There is presently great interest in the abilities of neural networks to mimic "qualitative rea...
Numerical reasoning skills are essential for complex question answering (CQA) over text. It requires...
We demonstrate that a neural network pre-trained on text and fine-tuned on code solves mathematics c...
A simple Neural Network model is presented for end-to-end visual learning of arithmetic operations f...
A longstanding question in cognitive science concerns the learning mechanisms underlying composition...
International audienceDeep neural networks are difficult to train when applied to tasks that can be ...
In this paper a new tool is proposed as a possible aid to study differences and similarities between...
Abstract—Interval arithmetic has become a popular tool for general optimization problems such as rob...
This article studies the computational power of various discontinuous real computational models that...