This page is part of a global project to create a better online reviews system. If you want to know more or give your feedback, write at [email protected] and we’ll grab a beer ;)
Consider this common scenario: a reviewer gives a rating without a comment. This type of review is less trustworthy than one where the reviewer took the time to describe their experience. Despite this, both ratings impact the average equally. Even short comments don’t offer much help to readers who seek useful information, and still count the same.
I bet you wouldn’t consider this review
A comprehensive meta-analysis by Watson and Wu $^1$ analyzed customers' perceptions of online reviews, gathering many existing papers on the topic. It outlines various parameters that determine a review's credibility. Based on this article, additional literature and my understanding, here are a few criteria that influence the credibility of a review:
Companies are aware that reviews don’t carry the same weight and adjust the average rating based on other characteristics (e.g., Amazon, Trustpilot). However, these adjustments are often opaque, and the specifics of the algorithm are not disclosed. One certainty is that newer reviews are weighted more heavily.
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Selection of criteria. Allow potential customers to filter reviews based on their criteria. It’s impractical to read all comments for specific information. A search bar helps, but different words can apply to the same criterion, making it less effective.
Amazon's AI-generated summary with filter options is a good example of what can be done. Unfortunately, it’s not available for every product and seems to be in phase test only for now.
Google reviews’ search filter is not enough: different words could relate to the same concept.
Keep user preferences. Store user preferences to show the most relevant reviews first and potentially create a “personal average rating.” This is particularly useful for industries with frequent recurring use, like movies or restaurants. However, this approach raises data privacy concerns that need addressing.
Marking reviews as “Helpful”. Websites where readers can upvote reviews use this as a reputation metric. The current challenge is distinguishing whether an upvote indicates the review helped someone make a decision or if it resonated with their own experience. Platforms should clarify this distinction, potentially adding a step in the review process.
Amazon's "Helpful" button. It’s not clear whether actual buyers or potential customers marked it as helpful.
Display similar experiences. Indicate how many reviews share a similar sentiment. This helps users quickly gauge the credibility of a comment without reading through all reviews. AI could capture this information, and reviews with the most similarities should be highlighted first.
Simple design proposition for Airbnb.
Weighted average rating. Make the weighted average rating calculation transparent. Platforms like IMDb, Amazon, and Trustpilot use weighted averages but don’t disclose their algorithms, which can affect trust.
Peer reviews. Highlight reviews from friends and connections first. Recommendations from people we know are the most influential.
“Certified Reviewer” status. Amazon’s certified reviewer status enhances credibility. Detailed and objective reviews from certified reviewers should carry more weight in the average rating. The criteria for certification should focus on review quality rather than the quantity of reviews left.
Amazon's reviewer status increases credibility.
Include External Context. For example, Airbnb displays information like the length of the stay and how long the user has been on Airbnb.
Airbnb displays additional context to reviews.
A useful piece of information for products would be the time elapsed between the purchase and the review, helping readers understand if the satisfaction has lasted over time.
Original Amazon review. The date of purchase is already present.
Redesign attempt. Changing the date to the time passed since the review, and adding the time passed between the purchase and the review.
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