The authors address two novel and significant challenges in using online text reviews to obtain attribute level ratings. First, they introduce the problem of inferring attribute level sentiment from text data to the marketing literature and develop a deep learning model to address it. While extant bag of words based topic models are fairly good at attribute discovery based on frequency of word or phrase occurrences, associating sentiments to attributes requires exploiting the spatial and sequential structure of language. Second, they illustrate how to correct for attribute self-selection—reviewers choose the subset of attributes to write about—in metrics of attribute level restaurant performance. Using Yelp.com reviews for empirical illustra...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Online word-of-mouth content mining is of great significance to product, service improvement and dem...
Online reviews are often accessed by users deciding to buy a product, see a movie, or go to a restau...
The authors address two novel and significant challenges in using online text reviews to obtain attri...
The authors address two significant challenges in using online text reviews to obtain finegrained attr...
This thesis studies the use of firm and user-generated unstructured data (e.g., text and videos) for...
Even though the most online review systems offer star rating in addition to free text reviews, this ...
Research has consistently shown that online word-of-mouth (WOM) plays an important role in shaping c...
Despite widespread use of online reviews in consumer purchase decision making, the potential value o...
We concentrate on the rating conjecture task. However, user’s rating star-level information isn't ne...
The consumption and production of online reviews have become an integral part of our modern lives as...
This chapter explores the elements influencing online reviews’ usefulness by focusing on the languag...
Sentiment analysis of written customer reviews is a powerful way to generate knowledge about custome...
With the advancement of internet technologies, in the present days, online forums, social media...
ABSTRACT: User-generated content, such as user reviews, posts, tags, ratings, and opinions on the in...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Online word-of-mouth content mining is of great significance to product, service improvement and dem...
Online reviews are often accessed by users deciding to buy a product, see a movie, or go to a restau...
The authors address two novel and significant challenges in using online text reviews to obtain attri...
The authors address two significant challenges in using online text reviews to obtain finegrained attr...
This thesis studies the use of firm and user-generated unstructured data (e.g., text and videos) for...
Even though the most online review systems offer star rating in addition to free text reviews, this ...
Research has consistently shown that online word-of-mouth (WOM) plays an important role in shaping c...
Despite widespread use of online reviews in consumer purchase decision making, the potential value o...
We concentrate on the rating conjecture task. However, user’s rating star-level information isn't ne...
The consumption and production of online reviews have become an integral part of our modern lives as...
This chapter explores the elements influencing online reviews’ usefulness by focusing on the languag...
Sentiment analysis of written customer reviews is a powerful way to generate knowledge about custome...
With the advancement of internet technologies, in the present days, online forums, social media...
ABSTRACT: User-generated content, such as user reviews, posts, tags, ratings, and opinions on the in...
The amount of digital text-based consumer review data has increased dramatically and there exist man...
Online word-of-mouth content mining is of great significance to product, service improvement and dem...
Online reviews are often accessed by users deciding to buy a product, see a movie, or go to a restau...