International audienceIdentifying the semantic relations that hold between words is of crucial importance for reasoning purposes. Within this context, different methodolo-gies have been proposed that either exclusively focus on a single lexical relation (two-class problem) or learn specific classifiers capable of identifying multiple semantic relations (multi-class problem). In this paper, we propose another way to look at the problem that relies on the multi-task learning paradigm. Preliminary results based on simple learning strategies and state-of-the-art distributional feature representations show that concurrent learning can lead to improvements
This paper describes a novel approach to the semantic relation detection problem. Instead of relying...
Different semantic interpretation tasks such as text entailment and question answering require the c...
Given several tasks, multi-task learning (MTL) learns multiple tasks jointly by exploring the interd...
International audienceIdentifying the semantic relations that hold between words is of crucial impor...
The identification of lexical-semantic relations is of crucial importance for taskssuch as query exp...
One crucial objective of multi-task learning is to align distributions across tasks so that the info...
Multi-task Learning (MTL) aims to learn multiple related tasks si-multaneously instead of separately...
Multimedia applications often require concurrent solutions to multiple tasks. These tasks hold clues...
We present a novel learning method for word embeddings designed for relation classification. Our wor...
Multi-task learning offers a way to benefit from synergy of multiple related prediction tasks via th...
In this paper, we empirically evaluate the utility of transfer and multi-task learning on a challeng...
Multitask learning has shown promising performance in learning multiple related tasks simultaneously...
Much effort has been devoted to evaluate whether multi-task learning can be leveraged to learn rich ...
In multi-task learning, multiple related tasks are considered simultaneously, with the goal to impro...
Multi-task learning is a learning paradigm that improves the performance of "related" task...
This paper describes a novel approach to the semantic relation detection problem. Instead of relying...
Different semantic interpretation tasks such as text entailment and question answering require the c...
Given several tasks, multi-task learning (MTL) learns multiple tasks jointly by exploring the interd...
International audienceIdentifying the semantic relations that hold between words is of crucial impor...
The identification of lexical-semantic relations is of crucial importance for taskssuch as query exp...
One crucial objective of multi-task learning is to align distributions across tasks so that the info...
Multi-task Learning (MTL) aims to learn multiple related tasks si-multaneously instead of separately...
Multimedia applications often require concurrent solutions to multiple tasks. These tasks hold clues...
We present a novel learning method for word embeddings designed for relation classification. Our wor...
Multi-task learning offers a way to benefit from synergy of multiple related prediction tasks via th...
In this paper, we empirically evaluate the utility of transfer and multi-task learning on a challeng...
Multitask learning has shown promising performance in learning multiple related tasks simultaneously...
Much effort has been devoted to evaluate whether multi-task learning can be leveraged to learn rich ...
In multi-task learning, multiple related tasks are considered simultaneously, with the goal to impro...
Multi-task learning is a learning paradigm that improves the performance of "related" task...
This paper describes a novel approach to the semantic relation detection problem. Instead of relying...
Different semantic interpretation tasks such as text entailment and question answering require the c...
Given several tasks, multi-task learning (MTL) learns multiple tasks jointly by exploring the interd...