We consider the task of learning distributed representations for arithmetic word problems. We outline the characteristics of the domain of arithmetic word problems that make generic text embedding methods inadequate, necessitating a specialized representation learning method to facilitate the task of retrieval across a wide range of use cases within online learning platforms. Our contribution is two-fold; first, we propose several 'operators' that distil knowledge of the domain of arithmetic word problems and schemas into word problem transformations. Second, we propose a novel neural architecture that combines LSTMs with graph convolutional networks to leverage word problems and their operator-transformed versions to learn distributed repr...
Named entity disambiguation (NED) is a central problem in information extraction. The goal is to lin...
Learning representations from data is one of the funda-mental problems of artificial intelligence an...
Despite the growing interest in prediction-based word embedding learning methods, it remains unclear...
Natural logic offers a powerful relational conception of meaning that is a natural counterpart to di...
Liguda C, Pfeiffer T. Modeling math word problems with augmented semantic networks. In: Bouma G, Itt...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...
Combined with neural language models, distributed word representations achieve significant advantage...
Abstract. A learner who can solve a problem cannot always understand the problem adequately. In orde...
Designing an automatic solver for math word problems has been considered as a crucial step towards g...
The problem with distributed representations generated by neural networks is that the meaning of the...
Solving arithmetic word problems is a cornerstone task in assessing language understanding and reaso...
We look at distributed representation of structure with variable binding, that is natural for neural...
This thesis presents new methods for unsupervised learning of distributed representations of words a...
Distributed representations of meaning are a natural way to encode covariance relationships between ...
This paper presents a novel approach to au-tomatically solving arithmetic word problems. This is the...
Named entity disambiguation (NED) is a central problem in information extraction. The goal is to lin...
Learning representations from data is one of the funda-mental problems of artificial intelligence an...
Despite the growing interest in prediction-based word embedding learning methods, it remains unclear...
Natural logic offers a powerful relational conception of meaning that is a natural counterpart to di...
Liguda C, Pfeiffer T. Modeling math word problems with augmented semantic networks. In: Bouma G, Itt...
The mathematical representation of semantics is a key issue for Natural Language Processing (NLP). A...
Combined with neural language models, distributed word representations achieve significant advantage...
Abstract. A learner who can solve a problem cannot always understand the problem adequately. In orde...
Designing an automatic solver for math word problems has been considered as a crucial step towards g...
The problem with distributed representations generated by neural networks is that the meaning of the...
Solving arithmetic word problems is a cornerstone task in assessing language understanding and reaso...
We look at distributed representation of structure with variable binding, that is natural for neural...
This thesis presents new methods for unsupervised learning of distributed representations of words a...
Distributed representations of meaning are a natural way to encode covariance relationships between ...
This paper presents a novel approach to au-tomatically solving arithmetic word problems. This is the...
Named entity disambiguation (NED) is a central problem in information extraction. The goal is to lin...
Learning representations from data is one of the funda-mental problems of artificial intelligence an...
Despite the growing interest in prediction-based word embedding learning methods, it remains unclear...