Entity Network Prediction Using Multitype Topic Models
スポンサーリンク
概要
- 論文の詳細を見る
Conveying information about who, what, when and where is a primary purpose of some genres of documents, typically news articles. Statistical models that capture dependencies between named entities and topics can play an important role. Although some relationships between who and where should be mentioned in such a document, no statistical topic models explicitly address in handling such information the textual interactions between a who-entity and a where-entity. This paper presents a statistical model that directly captures the dependencies between an arbitrary number of word types, such as who-entities, where-entities and topics, mentioned in each document. We show that this multitype topic model performs better at making predictions on entity networks, in which each vertex represents an entity and each edge weight represents how a pair of entities at the incident vertices is closely related, through our experiments on predictions of who-entities and links between them. We also demonstrate the scale-free property in the weighted networks of entities extracted from written mentions.
- (社)電子情報通信学会の論文
- 2008-11-01
著者
関連論文
- Entity Network Prediction Using Multitype Topic Models
- A Method to Extract Sentences with Protein Functional Information from Literature by Iterative Learning of the Corpus
- Erratum: Entity Network Prediction Using Multitype Topic Models [IEICE Transactions on Information and Systems E91.D (2008) , No. 11 pp.2589-2598]
- A Method to Extract Sentences with Protein Functional Information from Literature by Iterative Learning of the Corpus
- A Comparative Analysis of Metabolic Pathways Based on Metabolic Steady States