@inproceedings { , title = {Opinion context extraction for aspect sentiment analysis.}, abstract = {Sentiment analysis is the computational study of opinionated text and is becoming increasing important to online commercial applications. However, the majority of current approaches determine sentiment by attempting to detect the overall polarity of a sentence, paragraph, or text window, but without any knowledge about the entities mentioned (e.g. restaurant) and their aspects (e.g. price). Aspect-level sentiment analysis of customer feedback data when done accurately can be leveraged to understand strong and weak performance points of businesses and services, and can also support the formulation of critical action steps to improve performance. In this paper we focus on aspect-level sentiment classification, studying the role of opinion context extraction for a given aspect and the extent to which traditional and neural sentiment classifiers benefit when trained using the opinion context text. We propose four methods to aspect context extraction using lexical, syntactic and sentiment co-occurrence knowledge. Further, we evaluate the usefulness of the opinion contexts for aspect-sentiment analysis. Our experiments on benchmark data sets from SemEval and a real-world dataset from the insurance domain suggests that extracting the right opinion context is effective in improving classification performance.Specifically combining syntactical features with sentiment co-occurrence knowledge leads to the best aspect-sentiment classification performance.}, conference = {12th Association for the Advancement of Artificial Intelligence (AAAI) international conference on web and social media (ICWSM 2018)}, note = {COMPLETED -- Chased AAM 18/9/2018 LM -- Requested AAM 10/8/2018 LM -- Rec'd permission for AAM, VOR only to be used in AAAI Digital Library 10/8/2018 LM -- Requested permission from publications18@aaai.org 9/8/2018 LM -- Info via Scopus 9/8/2018 LM ADDITIONAL INFORMATION: Bandhakavi, Anil ; Wiratunga, Nirmalie ; Massie, Stewart -- Panel B}, pages = {564-567}, publicationstatus = {Published}, publisher = {Association for the Advancement of Artificial Intelligence}, url = {http://hdl.handle.net/10059/3179}, keyword = {Living in a Digital World, Aspects, Opinion context, Sentiment analysis}, year = {2018}, author = {Bandhakavi, Anil and Wiratunga, Nirmalie and Massie, Stewart and Luhar, Rushi} }