International audienceDistributional similarity methods have proven to be a valuable tool for the induction of semantic similarity. Until now, most algorithms use two-way co-occurrence data to compute the meaning of words. Co-occurrence frequencies, however, need not be pairwise. One can easily imagine situations where it is desirable to investigate co-occurrence frequencies of three modes and beyond. This paper will investigate tensor factorization methods to build a model of three-way co-occurrences. The approach is applied to the problem of selectional preference induction, and automatically evaluated in a pseudo-disambiguation task. The results show that tensor factorization, and non-negative tensor factorization in particular, is a pro...
Abstract—Non-negative Tensor Factorization (NTF) is a widely used technique for decomposing a non-ne...
This paper investigates the use of neural networks for the acquisition of selectional preferences. I...
Most recommendation methods employ item-item similarity measures or use ratings data to generate rec...
The distributional similarity methods have proven to be a valuable tool for the induction of semanti...
International audienceThis paper introduces a novel method for joint unsupervised aquisition of verb...
A selectional preference is the relation between a head-word and plausible arguments of that head-wo...
We investigate several questions in transitive verb structure representation by decomposing tensors ...
International audienceIn this paper, we present a novel method for the computation of compositionali...
AbstractThe ability to predict the activities of users is an important one for recommender systems a...
This paper presents a comparison of three computational approaches to selectional preferences: (i) a...
The well-known formal equivalence between non-negative matrix factorization and multinomial mixture ...
International audienceThis paper investigates the use of neural networks for the acquisition of sele...
Machine learning algorithms are typically designed to deal with data represented as vectors. Several...
International audienceA challenge faced by dictionary learning and non-negative matrix factorization...
Predicting human activities is important for improving recommender systems or analyzing social relat...
Abstract—Non-negative Tensor Factorization (NTF) is a widely used technique for decomposing a non-ne...
This paper investigates the use of neural networks for the acquisition of selectional preferences. I...
Most recommendation methods employ item-item similarity measures or use ratings data to generate rec...
The distributional similarity methods have proven to be a valuable tool for the induction of semanti...
International audienceThis paper introduces a novel method for joint unsupervised aquisition of verb...
A selectional preference is the relation between a head-word and plausible arguments of that head-wo...
We investigate several questions in transitive verb structure representation by decomposing tensors ...
International audienceIn this paper, we present a novel method for the computation of compositionali...
AbstractThe ability to predict the activities of users is an important one for recommender systems a...
This paper presents a comparison of three computational approaches to selectional preferences: (i) a...
The well-known formal equivalence between non-negative matrix factorization and multinomial mixture ...
International audienceThis paper investigates the use of neural networks for the acquisition of sele...
Machine learning algorithms are typically designed to deal with data represented as vectors. Several...
International audienceA challenge faced by dictionary learning and non-negative matrix factorization...
Predicting human activities is important for improving recommender systems or analyzing social relat...
Abstract—Non-negative Tensor Factorization (NTF) is a widely used technique for decomposing a non-ne...
This paper investigates the use of neural networks for the acquisition of selectional preferences. I...
Most recommendation methods employ item-item similarity measures or use ratings data to generate rec...