SOTAVerified

RankME: Reliable Human Ratings for Natural Language Generation

2018-03-15NAACL 2018Code Available0· sign in to hype

Jekaterina Novikova, Ondřej Dušek, Verena Rieser

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Human evaluation for natural language generation (NLG) often suffers from inconsistent user ratings. While previous research tends to attribute this problem to individual user preferences, we show that the quality of human judgements can also be improved by experimental design. We present a novel rank-based magnitude estimation method (RankME), which combines the use of continuous scales and relative assessments. We show that RankME significantly improves the reliability and consistency of human ratings compared to traditional evaluation methods. In addition, we show that it is possible to evaluate NLG systems according to multiple, distinct criteria, which is important for error analysis. Finally, we demonstrate that RankME, in combination with Bayesian estimation of system quality, is a cost-effective alternative for ranking multiple NLG systems.

Tasks

Reproductions