This paper describes the effect of introducing embeddingbased features in a learning to rank approach to entity relatedness. We define several features that exploit word- and link-embedding approaches by relying on both links and the content that appear in Wikipedia articles. These features are combined with other state-of-the-art relatedness measures by using a learning to rank framework. In the evaluation, we report the performance of each feature individually. Moreover, we investigate the contribution of each feature to the ranking function by analysing the output of a feature selection algorithm. The results of this analysis prove that features based on word and link embeddings are able to increase the performance of the learning to ran...
Entity Linking (EL) is the task of resolving mentions to referential entities in a knowledge base, w...
Learning to rank is a new statistical learning technology on creating a ranking model for sorting ob...
The recent years have been characterized by a strong democratization of news production on the web. ...
This paper describes the effect of introducing embeddingbased features in a learning to rank approac...
This paper address the problem of entity link-ing. Specifically, given an entity mentioned in unstru...
Human Language Technologies: The 2010 Annual Conference of the North American Chapter of the ACLThis...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
This article presents a novel approach to estimate semantic entity sim- ilarity using entity feature...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
International audienceCollective entity linking is a core natural language processing task, which co...
International audienceCollective entity linking is a core natural language processing task, which co...
International audienceCollective entity linking is a core natural language processing task, which co...
Ranking algorithms, as the core of web search systems, are responsible for finding and ranking the m...
Entity Linking (EL) is the task of resolving mentions to referential entities in a knowledge base, w...
Learning to rank is a new statistical learning technology on creating a ranking model for sorting ob...
The recent years have been characterized by a strong democratization of news production on the web. ...
This paper describes the effect of introducing embeddingbased features in a learning to rank approac...
This paper address the problem of entity link-ing. Specifically, given an entity mentioned in unstru...
Human Language Technologies: The 2010 Annual Conference of the North American Chapter of the ACLThis...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
Many text mining tasks, such as clustering, classification, retrieval, and named entity linking, ben...
This article presents a novel approach to estimate semantic entity sim- ilarity using entity feature...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
International audienceThe extraction and the disambiguation of knowledge guided by textual resources...
International audienceCollective entity linking is a core natural language processing task, which co...
International audienceCollective entity linking is a core natural language processing task, which co...
International audienceCollective entity linking is a core natural language processing task, which co...
Ranking algorithms, as the core of web search systems, are responsible for finding and ranking the m...
Entity Linking (EL) is the task of resolving mentions to referential entities in a knowledge base, w...
Learning to rank is a new statistical learning technology on creating a ranking model for sorting ob...
The recent years have been characterized by a strong democratization of news production on the web. ...