Title :
Summarizing Online Reviews Using Aspect Rating Distributions and Language Modeling
Author :
Di Fabbrizio, G. ; Aker, A. ; Gaizauskas, Robert
Author_Institution :
Univ. of Sheffield, Sheffield, UK
Abstract :
Product and service reviews are abundantly available online, but selecting relevant information from them involves a significant amount of time. The authors address this problem with Starlet, a novel approach for extracting multidocument summarizations that considers aspect rating distributions and language modeling. These features encourage the inclusion of sentences in the summary that preserve the overall opinion distribution and reflect the reviews´ original language.
Keywords :
Internet; information retrieval; reviews; text analysis; Starlet; aspect rating distributions; information selection; language modeling; multidocument summarization extraction; online reviews summarization; opinion distribution; product review; sentences; service reviews; Computational linguistics; Computational modeling; Data mining; Feature extraction; Natural language processing; Predictive models; Text analysis; Computational linguistics; Computational modeling; Data mining; Feature extraction; Natural language processing; Predictive models; Text analysis; reviews summarization; rating prediction models; A* search;
Journal_Title :
Intelligent Systems, IEEE
DOI :
10.1109/MIS.2013.36