Named entity classification of Wikipedia articles is a fundamental research area that can be used to automatically build large-scale corpora of named entity recognition or to support other entity processing, such as entity linking, as auxiliary tasks. This paper describes a method of classifying named entities in Chinese Wikipedia with fine-grained types. We con-sidered multi-faceted information in Chinese Wikipedia to construct four feature sets, designed different feature selection methods for each feature, and fused different features with a vector space using different strategies. Experimental results show that the explored feature sets and their combination can effectively improve the performance of named entity clas-sification
Abstract. In order to build an automatic named entity recognition (NER) system for machine learning,...
This paper presents a hybrid model which combines conditional random fields (CRFs) with dynamic gaze...
We investigate the automatic generation of Wikipedia articles as an alternative to its manual creati...
An approach for named entity classification based on Wikipedia article infoboxes is described in thi...
Over the last 15 years the role of named entities became more and more impor- tant in natural langu...
AbstractWe automatically create enormous, free and multilingual silver-standard training annotations...
Named entity recognition can deeply explore semantic features and enhance the ability of vector repr...
Automatically constructing knowledge bases from free online encyclopedias has been considered to be ...
In natural language understanding, extraction of named entity (NE) mentions in given text and classi...
The performance of Chinese-named entity recognition (NER) has improved via word enhancement or new f...
The Chinese named entity recognition (NER) is a critical task in natural language processing, aiming...
One major problem in text mining and semantic retrieval is that detected entity mentions have to be ...
Named entity recognition (NER) plays an important role in many natural language processing applicati...
This paper presents a system for identifying entity types of articles on Wikipedia (e.g. people or s...
This paper presents a method for categorizing named entities in Wikipedia. In Wikipedia, an anchor t...
Abstract. In order to build an automatic named entity recognition (NER) system for machine learning,...
This paper presents a hybrid model which combines conditional random fields (CRFs) with dynamic gaze...
We investigate the automatic generation of Wikipedia articles as an alternative to its manual creati...
An approach for named entity classification based on Wikipedia article infoboxes is described in thi...
Over the last 15 years the role of named entities became more and more impor- tant in natural langu...
AbstractWe automatically create enormous, free and multilingual silver-standard training annotations...
Named entity recognition can deeply explore semantic features and enhance the ability of vector repr...
Automatically constructing knowledge bases from free online encyclopedias has been considered to be ...
In natural language understanding, extraction of named entity (NE) mentions in given text and classi...
The performance of Chinese-named entity recognition (NER) has improved via word enhancement or new f...
The Chinese named entity recognition (NER) is a critical task in natural language processing, aiming...
One major problem in text mining and semantic retrieval is that detected entity mentions have to be ...
Named entity recognition (NER) plays an important role in many natural language processing applicati...
This paper presents a system for identifying entity types of articles on Wikipedia (e.g. people or s...
This paper presents a method for categorizing named entities in Wikipedia. In Wikipedia, an anchor t...
Abstract. In order to build an automatic named entity recognition (NER) system for machine learning,...
This paper presents a hybrid model which combines conditional random fields (CRFs) with dynamic gaze...
We investigate the automatic generation of Wikipedia articles as an alternative to its manual creati...