In e-commerce systems, customer reviews are important information for understanding market feedbacks on certain commodities. However, accurate analyzing reviews is challenging due to the complexity of natural language processing and informal descriptions in reviews. Existing methods mainly focus on studying efficient algorithms that cannot guarantee the accuracy for review analysis. Crowdsourcing can improve the accuracy of review analysis while it is subject to extra costs and low response time. In this work, we combine machine learning and crowdsourcing together for better understanding customer reviews. First, we collectively use multiple machine learning algorithms to pre-process review classification. Second, we select the reviews on w...
Online reviews are a cornerstone of consumer decision mak-ing. However, their authenticity and quali...
The multi-label customer reviews classification task aims to identify the different thoughts of cust...
Fake reviews automatically generated by machine learning models can be manipulated to influence the ...
In e-commerce systems, customer reviews are important in-formation for understanding market feedback...
[Context and motivation] App stores and social media channels such as Twitter enable users to share ...
Online customer reviews are important sources of information influencing consumers’ attitudes toward...
Product review is way for customers to express their sentiments towards a product. Sentiment analys...
For some of the most popular products, hundreds, if not thousands, of online product reviews are wri...
Review helpfulness prediction has attracted growing attention of researchers that proposed various s...
Review helpfulness prediction has attracted growing attention of researchers that proposed various s...
Project (M.S., Computer Science)--California State University, Sacramento, 2014.Online shopping webs...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Online customer reviews represent one of the most popular and accessible source of product/service i...
Online reviews are a cornerstone of consumer decision mak-ing. However, their authenticity and quali...
The multi-label customer reviews classification task aims to identify the different thoughts of cust...
Fake reviews automatically generated by machine learning models can be manipulated to influence the ...
In e-commerce systems, customer reviews are important in-formation for understanding market feedback...
[Context and motivation] App stores and social media channels such as Twitter enable users to share ...
Online customer reviews are important sources of information influencing consumers’ attitudes toward...
Product review is way for customers to express their sentiments towards a product. Sentiment analys...
For some of the most popular products, hundreds, if not thousands, of online product reviews are wri...
Review helpfulness prediction has attracted growing attention of researchers that proposed various s...
Review helpfulness prediction has attracted growing attention of researchers that proposed various s...
Project (M.S., Computer Science)--California State University, Sacramento, 2014.Online shopping webs...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Online customer reviews represent one of the most popular and accessible source of product/service i...
Online reviews are a cornerstone of consumer decision mak-ing. However, their authenticity and quali...
The multi-label customer reviews classification task aims to identify the different thoughts of cust...
Fake reviews automatically generated by machine learning models can be manipulated to influence the ...