This repository contains the anonymized survey results we have collected for our research on metrics for calculating the distance between argumentation graphs.
The survey has been conducted with workers from Amazon Mechanical Turk (MTurk) from the US. Most questions has different scenarios which were randomly assigned to a participant during the survey. The results file only contains the answers of participants who answered at least 3 of 5 control questions correctly.
The file results.html
contains each question which has been asked.
The different scenarios (h3 level) or grouped together (h2 level).
The h2 heading contains the exact question which has been asked, followed by the summary of all answers frequencies for this scenario, each scenario's text and answer frequencies.
If multiple questions have been asked for the same scenario, its text is not repeated again.
More complex scenarios include a graphic representing the argumentations; those graphics were not part of the questionnaire.
The answer we have expected from our hypotheses are marked bold. Significant answer frequencies are underlined in different styles depending on the significance level:
Note that only the p-values for our expected answers are valid, as no correction for multiple testing is applied. Each percentage is followed by the concrete ratio of given answers and Clopper–Pearson confidence intervals for α=0.05.
counting only participants who answered at least 3 out of 5 control questions correctly
Age Group | # |
---|---|
20-29 | 25 |
30-39 | 25 |
40-49 | 2 |
50-59 | 6 |
60-69 | 2 |
>69 | 0 |
Gender | # |
---|---|
Male | 53 |
Female | 27 |
Rather not say | 0 |
Each question (or question group) has a unique identifier. The following table shows which questions have been used to support which hypothesis. For more complex scenarios in the questionnaire, a graphical visualization is included (cf. html for expected answers).
When using this dataset, please cite the following publication:
Brenneis, M., Mauve, M.: Do I Argue Like Them? A Human Baseline for Comparing Attitudes in Argumentations. In: Proceedings of the Workshop on Advances In Argumentation In Artificial Intelligence 2020. pp. 1–15. No. 2777 in CEUR Workshop Proceedings, Aachen (Nov 2020)