Brian Riordan


2020

pdf bib
Using PRMSE to evaluate automated scoring systems in the presence of label noise
Anastassia Loukina | Nitin Madnani | Aoife Cahill | Lili Yao | Matthew S. Johnson | Brian Riordan | Daniel F. McCaffrey
Proceedings of the Fifteenth Workshop on Innovative Use of NLP for Building Educational Applications

The effect of noisy labels on the performance of NLP systems has been studied extensively for system training. In this paper, we focus on the effect that noisy labels have on system evaluation. Using automated scoring as an example, we demonstrate that the quality of human ratings used for system evaluation have a substantial impact on traditional performance metrics, making it impossible to compare system evaluations on labels with different quality. We propose that a new metric, PRMSE, developed within the educational measurement community, can help address this issue, and provide practical guidelines on using PRMSE.

pdf bib
An empirical investigation of neural methods for content scoring of science explanations
Brian Riordan | Sarah Bichler | Allison Bradford | Jennifer King Chen | Korah Wiley | Libby Gerard | Marcia C. Linn
Proceedings of the Fifteenth Workshop on Innovative Use of NLP for Building Educational Applications

With the widespread adoption of the Next Generation Science Standards (NGSS), science teachers and online learning environments face the challenge of evaluating students’ integration of different dimensions of science learning. Recent advances in representation learning in natural language processing have proven effective across many natural language processing tasks, but a rigorous evaluation of the relative merits of these methods for scoring complex constructed response formative assessments has not previously been carried out. We present a detailed empirical investigation of feature-based, recurrent neural network, and pre-trained transformer models on scoring content in real-world formative assessment data. We demonstrate that recent neural methods can rival or exceed the performance of feature-based methods. We also provide evidence that different classes of neural models take advantage of different learning cues, and pre-trained transformer models may be more robust to spurious, dataset-specific learning cues, better reflecting scoring rubrics.

pdf bib
Context-based Automated Scoring of Complex Mathematical Responses
Aoife Cahill | James H Fife | Brian Riordan | Avijit Vajpayee | Dmytro Galochkin
Proceedings of the Fifteenth Workshop on Innovative Use of NLP for Building Educational Applications

The tasks of automatically scoring either textual or algebraic responses to mathematical questions have both been well-studied, albeit separately. In this paper we propose a method for automatically scoring responses that contain both text and algebraic expressions. Our method not only achieves high agreement with human raters, but also links explicitly to the scoring rubric – essentially providing explainable models and a way to potentially provide feedback to students in the future.