CrowdGrader: Crowdsourcing the Evaluation of Homework Assignments
Luca de Alfaro, Michael Shavlovsky

TL;DR
CrowdGrader is a crowdsourcing platform that uses a reputation-based algorithm to aggregate student grades and incentivize accurate peer review for large-scale homework evaluation.
Contribution
It introduces a novel reputation-based crowdsourcing algorithm for aggregating grades and demonstrates its effectiveness in educational settings.
Findings
Algorithm outperforms non-reputation methods on synthetic data.
Performance depends on the nature of review errors.
Incentive mechanism encourages accurate reviewing.
Abstract
Crowdsourcing offers a practical method for ranking and scoring large amounts of items. To investigate the algorithms and incentives that can be used in crowdsourcing quality evaluations, we built CrowdGrader, a tool that lets students submit and collaboratively grade solutions to homework assignments. We present the algorithms and techniques used in CrowdGrader, and we describe our results and experience in using the tool for several computer-science assignments. CrowdGrader combines the student-provided grades into a consensus grade for each submission using a novel crowdsourcing algorithm that relies on a reputation system. The algorithm iterativerly refines inter-dependent estimates of the consensus grades, and of the grading accuracy of each student. On synthetic data, the algorithm performs better than alternatives not based on reputation. On our preliminary experimental data,…
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Taxonomy
TopicsParental Involvement in Education · Technology Adoption and User Behaviour · ICT Impact and Policies
