Grouping Product Aspects from Short Texts Using Multiple Classifiers
نویسندگان
چکیده
منابع مشابه
Utilizing review analysis to suggest product advertisement improvements
On an e-commerce site, product blurbs (short promotional statements) and user reviews give us a lot of information about products. While a blurb should be appealing to encourage more users to click on a product link, sometimes sellers may miss or misunderstand which aspects of the product are important to their users. We therefore propose a novel task: suggesting aspects of products for an adve...
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