학술논문

Entity Type Recognition Using an Ensemble of Distributional Semantic Models to Enhance Query Understanding
Document Type
Conference
Source
2016 IEEE 40th Annual Computer Software and Applications Conference (COMPSAC) Computer Software and Applications Conference (COMPSAC), 2016 IEEE 40th Annual. 1:631-636 Jun, 2016
Subject
Computing and Processing
General Topics for Engineers
Companies
Encyclopedias
Electronic publishing
Internet
Context
Semantics
Information Extraction
Entity Type Recognition
Search Queries
Ensemble Distributional Semantics
Wikipedia
Language
ISSN
0730-3157
Abstract
We present an ensemble approach for categorizing search query entities in the recruitment domain. Understanding the types of entities expressed in a search query (Company, Skill, Job Title, etc.) enables more intelligent information retrieval based upon those entities compared to a traditional keyword-based search. Because search queries are typically very short, leveraging a traditional bag-of-words model to identify entity types would be inappropriate due to the lack of contextual information. Our approach instead combines clues from different sources of varying complexity in order to collect real-world knowledge about query entities. We employ distributional semantic representations of query entities through two models: 1) contextual vectors generated from encyclopedic corpora like Wikipedia, and 2) high dimensional word embedding vectors generated from millions of job postings using word2vec. Additionally, our approach utilizes both entity linguistic properties obtained from WordNet and ontological properties extracted from DBpedia. We evaluate our approach on a data set created at CareerBuilder, the largest job board in the US. The data set contains entities extracted from millions of job seekers/recruiters search queries, job postings, and resume documents. After constructing the distributional vectors of search entities, we use supervised machine learning to infer search entity types. Empirical results show that our approach outperforms the state-of-the-art word2vec distributional semantics model trained on Wikipedia. Moreover, we achieve micro-averaged F1 score of 97% using the proposed distributional representations ensemble.