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Paper Motives
Do customer reviews drive purchase decisions? (2017)
- Average review score has a positive effect on probability of a purchase. This effect is more profound when there are many reviews than when there are few.
- When customers read review content they are more likely to be affected by the average review score and by the volume of reviews
- Additional hypothesis proven about high price items being highly influenced by reviews, especially when customers read them and not just look at average rating / volume.
The Value of Online Customer Reviews (2016)
- On average the conversion rate for a product increases by as much as 270% as reviews are written for it.
- High price products can have their conversion rate increased by 380% due to reviews, and 190% for low price products.
- Customers focus on the first few reviews available.
- This provides a really good insight into Yelp activity, although it is old.
Fake It Till You Make It: Reputation, Competition and Yelp Review Fraud (2015)
- Based on Yelp's spam detection algorithm, one out of five (20%) of reviews on Yelp are fake.
The Impact of Fake Reviews on Online Visibility:
- Fun to read, some of it is like a story book. Background section has some really useful information.
- One hotel can become more visible than another hotel after posting just 50 fake reviews in 80% of cases
- Sites use proprietary rating functions, which allows fake reviews to have greater impact because the function weights it's output mostly by recent reviews.
- On TripAdvisor dataset
The Consequences of Fake Fans, 'Likes' and Reviews on Social Networks (2012)
- Could not access, but apparently content predicted 10-15% of likes, fans and reviews were fake in 2014.
Detecting Deceptive Reviews using Generative Adversarial Networks
- Recently shown that a cetrain GAN architecture is effective at detecting deceptive reviews.
- To the knowledge of the paper this is the first work to use GANs for this purpose.
- We would like to create a comparison of this
- We can evaluate it on a much larger dataset, this paper uses 400 truthful and 400 deceptive reviews
- As original as it gets, shows that this is an established and challenging problem.
- States that 52% of reviews it checks are spam, but I don't think this is very reliable.
The Importance Of Online Customer Reviews [Infographic]
Online reviews of products and services have become significantly more important over the last two decades. Reviews sway probability of purchase through review score and volume of reviews. [1]. It has been found that on average the conversion rate of a product increases by 270% as it gains reviews. For high price products, reviews can increase conversion rate by 380% [2]. In competitive, ranked conditions it is worthwhile for unlawful merchants to create fake reviews. For TripAdvisor, in 80% of cases a hotel could become more visible than another hotel using just 50 deceptive reviews [3]. Faking reviews is an established problem [4] and has been exploited as it was found that 1 in 5 (20%) of Yelp reviews are marked as fake by Yelp's algorithm [5].
- Do customer reviews drive purchase decisions? (2017)
- The Value of Online Customer Reviews (2016)
- The Impact of Fake Reviews on Online Visibility (2016)
- Review Spam Detection (2007)
- Fake It Till You Make It: Reputation, Competition and Yelp Review Fraud (2015)
- ACLSW 2019
- Our datasets
- Experiment Results
- Research Analysis
- Hypothesis
- Machine Learning
- Deep Learning
- Paper Section Drafts
- Word Embeddings
- References/Resources
- Correspondence with H. Aghakhani
- The Gotcha! Collection