SOTAVerified

Investigating neural architectures for short answer scoring

2017-09-01WS 2017Unverified0· sign in to hype

Brian Riordan, Andrea Horbach, Aoife Cahill, Torsten Zesch, Chong MIn Lee

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

Neural approaches to automated essay scoring have recently shown state-of-the-art performance. The automated essay scoring task typically involves a broad notion of writing quality that encompasses content, grammar, organization, and conventions. This differs from the short answer content scoring task, which focuses on content accuracy. The inputs to neural essay scoring models -- ngrams and embeddings -- are arguably well-suited to evaluate content in short answer scoring tasks. We investigate how several basic neural approaches similar to those used for automated essay scoring perform on short answer scoring. We show that neural architectures can outperform a strong non-neural baseline, but performance and optimal parameter settings vary across the more diverse types of prompts typical of short answer scoring.

Tasks

Reproductions