Hasso Plattner Institut
Imprint   Data Privacy

Ralf Krestel

You are here:   Home > Publications > Conference Papers > WI 11

WI 11

Diversifying Product Review Rankings: Getting the Full Picture

E-commerce Web sites owe much of their popularity to consumer reviews provided together with product descriptions. On-line customers spend hours and hours going through heaps of textual reviews to build confidence in products they are planning to buy. At the same time, popular products have thousands of user-generated reviews. Current approaches to present them to the user or recommend an individual review for a product are based on the helpfulness or usefulness of each review. In this paper we look at the top-k reviews in a ranking to give a good summary to the user with each review complementing the others. To this end we use Latent Dirichlet Allocation to detect latent topics within reviews and make use of the assigned star rating for the product as an indicator of the polarity expressed towards the product and the latent topics within the review. We present a framework to cover different ranking strategies based on the user's need: Summarizing all reviews; focus on a particular latent topic; or focus on positive, negative or neutral aspects. We evaluated the system using manually annotated review data from a commercial review Web site.
Full Paper
Conference Homepage
WI-IAT 2011
BibTex Entry


Watch our new MOOC in German about hate and fake in the Internet ("Trolle, Hass und Fake-News: Wie können wir das Internet retten?") on openHPI (link).

New Photos

I added some photos from my trip to Hildesheim.

Powered by CMSimple| Template: ge-webdesign.de| Login