We present a framework for learning arithmetic expressions from a set of observations. Our intention is to introduce a Bayesian method for what is known as equation discovery. Our method is based on measuring a degree of belief (posterior probability) for a set of hypothesized expressions to find those which best explain the observed data. This measure is used as the basis for choosing one hypothesis over another. In our work we distinguish two tasks in the process of equation discovery, namely: the task of exploring the space of arithmetic expressions and that of evaluating the degree that an expression describes the data. Separating these two, allows us to investigate them independently. For the first task, we use a context-free grammar t...
The biggest limitation of probabilistic graphical models is the complexity of inference, which is of...
A better understanding of the emergent computation and problem-solving capabilities of recent large ...
The authors present a Bayesian framework for understanding how adults and children learn the meaning...
This work presents a framework for learning arithmetic expressions from a set of observations. Our i...
Recognizing handwritten mathematics is a challenging classification problem, requiring simulta-neous...
In this paper we explore how machine learning techniques can be applied to the discovery of efficien...
Graphical models are usually learned without re-gard to the cost of doing inference with them. As a ...
This paper presents a novel approach to au-tomatically solving arithmetic word problems. This is the...
Students ’ solution processes can offer significant insight into their misunderstandings. However, f...
We discuss a procedure which extracts statistical and entropic information from data in order to dis...
Researchers in numerical cognition rely on hypothesis testing and parameter estimation to evaluate t...
A study of the possibility of casting plausible matheamtical inference in Bayesian terms
This paper presents a novel approach to learning to solve simple arithmetic word problems. Our syste...
Probabilistic proposals of Language of Thoughts (LoTs) can explain learning across different domains...
Equation learning aims to infer differential equation models from data. While a number of studies ha...
The biggest limitation of probabilistic graphical models is the complexity of inference, which is of...
A better understanding of the emergent computation and problem-solving capabilities of recent large ...
The authors present a Bayesian framework for understanding how adults and children learn the meaning...
This work presents a framework for learning arithmetic expressions from a set of observations. Our i...
Recognizing handwritten mathematics is a challenging classification problem, requiring simulta-neous...
In this paper we explore how machine learning techniques can be applied to the discovery of efficien...
Graphical models are usually learned without re-gard to the cost of doing inference with them. As a ...
This paper presents a novel approach to au-tomatically solving arithmetic word problems. This is the...
Students ’ solution processes can offer significant insight into their misunderstandings. However, f...
We discuss a procedure which extracts statistical and entropic information from data in order to dis...
Researchers in numerical cognition rely on hypothesis testing and parameter estimation to evaluate t...
A study of the possibility of casting plausible matheamtical inference in Bayesian terms
This paper presents a novel approach to learning to solve simple arithmetic word problems. Our syste...
Probabilistic proposals of Language of Thoughts (LoTs) can explain learning across different domains...
Equation learning aims to infer differential equation models from data. While a number of studies ha...
The biggest limitation of probabilistic graphical models is the complexity of inference, which is of...
A better understanding of the emergent computation and problem-solving capabilities of recent large ...
The authors present a Bayesian framework for understanding how adults and children learn the meaning...