HCOct 30, 2018

Designing Informative Rating Systems: Evidence from an Online Labor Market

arXiv:1810.13028v26 citations
Originality Incremental advance
AI Analysis

This addresses the issue of uninformative ratings for online platforms, offering a principled design approach that is incremental but practical.

The paper tackles the problem of inflated and uninformative ratings on online platforms by testing alternative rating scales in a randomized controlled trial on an online labor market, finding that positive-skewed verbal scales significantly reduce inflation and improve informativeness, and develops a model-based framework to optimize rating system design, with simulations showing substantial improvements over baseline designs.

Platforms critically rely on rating systems to learn the quality of market participants. In practice, however, these ratings are often highly inflated, and therefore not very informative. In this paper, we first investigate whether the platform can obtain less inflated, more informative ratings by altering the meaning and relative importance of the levels in the rating system. Second, we seek a principled approach for the platform to make these choices in the design of the rating system. First, we analyze the results of a randomized controlled trial on an online labor market in which an additional question was added to the feedback form. Between treatment conditions, we vary the question phrasing and answer choices; in particular, the treatment conditions include several positive-skewed verbal rating scales with descriptive phrases or adjectives providing specific interpretation for each rating level. The online labor market test reveals that current inflationary norms can in fact be countered by re-anchoring the meaning of the levels of the rating system. In particular, the positive-skewed verbal rating scales yield rating distributions that significantly reduce rating inflation and are much more informative about seller quality. Second, we develop a model-based framework to compare and select among rating system designs, and apply this framework to the data obtained from the online labor market test. Our simulations demonstrate that our model-based framework for scale design and optimization can identify the most informative rating system and substantially improve the quality of information obtained over baseline designs. Overall, our study illustrates that rating systems that are informative in practice can be designed, and demonstrates how to design them in a principled manner.

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