2018
DOI: 10.1109/tkde.2017.2756658
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Weakly-Supervised Deep Embedding for Product Review Sentiment Analysis

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Cited by 150 publications
(51 citation statements)
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“…allow customers to submit their reviews along with a rating over a five-point scale. Even though the rating might not directly correlate with the sentiment of the review, but they provide weak signals for estimating sentence polarity [10,31]. These weakly supervision rating datasets are termed as "Weakly Labeled Dataset (WLD)".…”
Section: Weakly Labelled Review Datasetsmentioning
confidence: 99%
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“…allow customers to submit their reviews along with a rating over a five-point scale. Even though the rating might not directly correlate with the sentiment of the review, but they provide weak signals for estimating sentence polarity [10,31]. These weakly supervision rating datasets are termed as "Weakly Labeled Dataset (WLD)".…”
Section: Weakly Labelled Review Datasetsmentioning
confidence: 99%
“…sentiment = positive, if 4 or 5 star rated negative, if 1 or 2 star rated Please note that we do not consider three-star rated reviews. The current study uses three weakly labeled datasets, Amazon product reviews [18,31], YELP restaurant reviews [8] and IMDB movie reviews [17], which we henceforth refer to as AWLD (Amazon weakly labeled dataset), YWLD (YELP weakly labeled dataset) and IWLD (IMDB weakly labeled dataset), respectively. The WLDs are easier to collect, are not explicitly labeled for sentiments, but are manual ratings given to reviews complementing the review text.…”
Section: Weakly Labelled Datasets (Wld)mentioning
confidence: 99%
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“…This problem by proposing a framework of adding a sentiment sentencecompression (Sent Comp) stepbefore performing the aspectbased sentiment analysis. "Wei Zhao" [3] says,Product reviews are valuable for upcoming buyers in helping them make decisions. To this end, different opinion mining techniques have been proposed, where judging a review sentence's orientation (e.g.…”
Section: IImentioning
confidence: 99%
“…The observation is also echoed by scholars who suggest that consumers are often inclined to acquire product review information to enhance the formation of informed purchase decisions. There are numerous easily accessible product reviews posted in various online shopping websites that compete [3] for consumer's attention; hence, the key priority of a website manager is to select and publish more helpful reviews to minimize consumer's inclination to abandon visits to their websites and strengthen their effectiveness in attracting new customers. Although presenting helpful reviews to consumers has become one of the most useful marketing tools of a company (e.g., Amazon.com), the question of what type of product reviews on online shopping websites can be evaluated as helpful by consumers, has not been thoroughly researched.…”
Section: Introductionmentioning
confidence: 99%