59 pagesOnline review aggregation platforms suffer from biases which can lead to distress to both the platforms and their consumers as the average rating crowd sourced on these platforms do not represent the correct perceived quality of the product or service. We look at the problem of polarization bias on Yelp and present the evaluation of an estimation model to determine the unbiased average rating. We explore how the Yelp's elite membership program helps in cutting down the bias. Our results propose that the average biased rating listed on platforms is correlated with the true unbiased rating and by including more information from online reviews as input features of our model we can get a reasonably well estimate of the average unbiased ...
Consumer review websites leverage the wisdom of the crowd, with each product being reviewed many tim...
In this paper, we present an analysis of features influencing Yelp\u27s proprietary review filtering...
In this paper, we present an analysis of features influencing Yelp\u27s proprietary review filtering...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Nowadays, the popular online review sites like Yelp have greatly affected the user purchase behavior...
Online reviews are playing important roles for the online shoppers to make buying decisions. However...
The authors of this work present a model that reduces product rating biases that are a result of var...
E-commerce websites facilitate customers to leave their experiences in the form of textual reviews f...
Fake reviews automatically generated by machine learning models can be manipulated to influence the ...
Online reviews are an important asset for users deciding to buy a product, see a movie, or go to a r...
E-commerce websites facilitate customers to leave their experiences in the form of textual reviews f...
Online reviews are an important asset for users deciding to buy a product, see a movie, or go to a r...
In the era of Big Data and Social Computing, the role of customer reviews and ratings can be instrum...
In this research, the authors investigate the prevalence, robustness, and possible reasons underlyin...
Online product review forums commonly provide consumers with averages of product ratings given by re...
Consumer review websites leverage the wisdom of the crowd, with each product being reviewed many tim...
In this paper, we present an analysis of features influencing Yelp\u27s proprietary review filtering...
In this paper, we present an analysis of features influencing Yelp\u27s proprietary review filtering...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Nowadays, the popular online review sites like Yelp have greatly affected the user purchase behavior...
Online reviews are playing important roles for the online shoppers to make buying decisions. However...
The authors of this work present a model that reduces product rating biases that are a result of var...
E-commerce websites facilitate customers to leave their experiences in the form of textual reviews f...
Fake reviews automatically generated by machine learning models can be manipulated to influence the ...
Online reviews are an important asset for users deciding to buy a product, see a movie, or go to a r...
E-commerce websites facilitate customers to leave their experiences in the form of textual reviews f...
Online reviews are an important asset for users deciding to buy a product, see a movie, or go to a r...
In the era of Big Data and Social Computing, the role of customer reviews and ratings can be instrum...
In this research, the authors investigate the prevalence, robustness, and possible reasons underlyin...
Online product review forums commonly provide consumers with averages of product ratings given by re...
Consumer review websites leverage the wisdom of the crowd, with each product being reviewed many tim...
In this paper, we present an analysis of features influencing Yelp\u27s proprietary review filtering...
In this paper, we present an analysis of features influencing Yelp\u27s proprietary review filtering...