PDF] Named entity disambiguation by leveraging wikipedia semantic

Por um escritor misterioso

Descrição

A novel similarity measure is proposed to leverage Wikipedia semantic knowledge for disambiguation, which surpasses other knowledge bases by the coverage of concepts, rich semantic information and up-to-date content and has been tested on the standard WePS data sets. Name ambiguity problem has raised an urgent demand for efficient, high-quality named entity disambiguation methods. The key problem of named entity disambiguation is to measure the similarity between occurrences of names. The traditional methods measure the similarity using the bag of words (BOW) model. The BOW, however, ignores all the semantic relations such as social relatedness between named entities, associative relatedness between concepts, polysemy and synonymy between key terms. So the BOW cannot reflect the actual similarity. Some research has investigated social networks as background knowledge for disambiguation. Social networks, however, can only capture the social relatedness between named entities, and often suffer the limited coverage problem. To overcome the previous methods' deficiencies, this paper proposes to use Wikipedia as the background knowledge for disambiguation, which surpasses other knowledge bases by the coverage of concepts, rich semantic information and up-to-date content. By leveraging Wikipedia's semantic knowledge like social relatedness between named entities and associative relatedness between concepts, we can measure the similarity between occurrences of names more accurately. In particular, we construct a large-scale semantic network from Wikipedia, in order that the semantic knowledge can be used efficiently and effectively. Based on the constructed semantic network, a novel similarity measure is proposed to leverage Wikipedia semantic knowledge for disambiguation. The proposed method has been tested on the standard WePS data sets. Empirical results show that the disambiguation performance of our method gets 10.7% improvement over the traditional BOW based methods and 16.7% improvement over the traditional social network based methods.
PDF] Named entity disambiguation by leveraging wikipedia semantic
Improving broad-coverage medical entity linking with semantic type
PDF] Named entity disambiguation by leveraging wikipedia semantic
Generation of training data for named entity recognition of
PDF] Named entity disambiguation by leveraging wikipedia semantic
Neural entity linking: A survey of models based on deep
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF] Robust and Collective Entity Disambiguation through Semantic
PDF] Named entity disambiguation by leveraging wikipedia semantic
SBLC: a hybrid model for disease named entity recognition based on
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF) Named Entity Disambiguation for Noisy Text
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF) Named entity disambiguation by leveraging wikipedia semantic
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF] diaNED: Time-Aware Named Entity Disambiguation for Diachronic
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF] AIDA-light: High-Throughput Named-Entity Disambiguation
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF) Graph-based semantic relatedness for named entity disambiguation
PDF] Named entity disambiguation by leveraging wikipedia semantic
Techniques for Named Entity Recognition
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF) Named Entity Disambiguation for Resource-Poor Languages
PDF] Named entity disambiguation by leveraging wikipedia semantic
Improving Named Entity Disambiguation using Entity Relatedness
PDF] Named entity disambiguation by leveraging wikipedia semantic
PDF] Named entity disambiguation by leveraging wikipedia semantic
de por adulto (o preço varia de acordo com o tamanho do grupo)