Nadine Braun


2023

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How reproducible is best-worst scaling for human evaluation? A reproduction of ‘Data-to-text Generation with Macro Planning’
Emiel van Miltenburg | Anouck Braggaar | Nadine Braun | Debby Damen | Martijn Goudbeek | Chris van der Lee | Frédéric Tomas | Emiel Krahmer
Proceedings of the 3rd Workshop on Human Evaluation of NLP Systems

This paper is part of the larger ReproHum project, where different teams of researchers aim to reproduce published experiments from the NLP literature. Specifically, ReproHum focuses on the reproducibility of human evaluation studies, where participants indicate the quality of different outputs of Natural Language Generation (NLG) systems. This is necessary because without reproduction studies, we do not know how reliable earlier results are. This paper aims to reproduce the second human evaluation study of Puduppully & Lapata (2021), while another lab is attempting to do the same. This experiment uses best-worst scaling to determine the relative performance of different NLG systems. We found that the worst performing system in the original study is now in fact the best performing system across the board. This means that we cannot fully reproduce the original results. We also carry out alternative analyses of the data, and discuss how our results may be combined with the other reproduction study that is carried out in parallel with this paper.

2022

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A reproduction study of methods for evaluating dialogue system output: Replicating Santhanam and Shaikh (2019)
Anouck Braggaar | Frédéric Tomas | Peter Blomsma | Saar Hommes | Nadine Braun | Emiel van Miltenburg | Chris van der Lee | Martijn Goudbeek | Emiel Krahmer
Proceedings of the 15th International Conference on Natural Language Generation: Generation Challenges

In this paper, we describe our reproduction ef- fort of the paper: Towards Best Experiment Design for Evaluating Dialogue System Output by Santhanam and Shaikh (2019) for the 2022 ReproGen shared task. We aim to produce the same results, using different human evaluators, and a different implementation of the automatic metrics used in the original paper. Although overall the study posed some challenges to re- produce (e.g. difficulties with reproduction of automatic metrics and statistics), in the end we did find that the results generally replicate the findings of Santhanam and Shaikh (2019) and seem to follow similar trends.

2016

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The Multilingual Affective Soccer Corpus (MASC): Compiling a biased parallel corpus on soccer reportage in English, German and Dutch
Nadine Braun | Martijn Goudbeek | Emiel Krahmer
Proceedings of the 9th International Natural Language Generation conference