Clustering Prominent People and Organizations in Topic-Specific Text Corpora

07/27/2018
by   Abdulkareem Alsudais, et al.
0

Named entities in text documents are the names of people, organization, location or other types of objects in the documents that exist in the real world. A persisting research challenge is to use computational techniques to identify such entities in text documents. Once identified, several text mining tools and algorithms can be utilized to leverage these discovered named entities and improve NLP applications. In this paper, a method that clusters prominent names of people and organizations based on their semantic similarity in a text corpus is proposed. The method relies on common named entity recognition techniques and on recent word embeddings models. The semantic similarity scores generated using the word embeddings models for the named entities are used to cluster similar entities of the people and organizations types. Two human judges evaluated ten variations of the method after it was run on a corpus that consists of 4,821 articles on a specific topic. The performance of the method was measured using three quantitative measures. The results of these three metrics demonstrate that the method is effective in clustering semantically similar named entities.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/30/2021

Chemical Identification and Indexing in PubMed Articles via BERT and Text-to-Text Approaches

The Biocreative VII Track-2 challenge consists of named entity recogniti...
research
05/12/2022

Comparing Open Arabic Named Entity Recognition Tools

The main objective of this paper is to compare and evaluate the performa...
research
07/03/2019

Clustering of Medical Free-Text Records Based on Word Embeddings

Is it true that patients with similar conditions get similar diagnoses? ...
research
01/30/2018

A Machine Learning Approach to Quantitative Prosopography

Prosopography is an investigation of the common characteristics of a gro...
research
01/06/2020

Semantic Sensitive TF-IDF to Determine Word Relevance in Documents

Keyword extraction has received an increasing attention as an important ...
research
08/13/2019

Improving Generalization in Coreference Resolution via Adversarial Training

In order for coreference resolution systems to be useful in practice, th...
research
07/01/2022

Multi-features based Semantic Augmentation Networks for Named Entity Recognition in Threat Intelligence

Extracting cybersecurity entities such as attackers and vulnerabilities ...

Please sign up or login with your details

Forgot password? Click here to reset