Published July 21, 2021
| Version v1
Conference paper
Open
Wrong Answers for Wrong Reasons: The Risks of Ad Hoc Instruments
Description
This folder contains anonymized data from the experiment described in the paper "Wrong Answers for Wrong Reasons: The Risks of Ad Hoc Instruments".
questions.md
contains the 14 questions used as pre/post-test- Participants are identified using numeric identifiers (from 1 to 40).
conditions.csv
contains the mapping between participants identifiers and their condition-
{test}_{assessment_type}_anon.csv
contains data for a given test (pretest
orposttest
) using a certain assessment type. Two assessment types are used:mc
(multiple choice as assessed by Moodle:0
means wrong,1
means correct,-
means missing)revised
(human revision after reading the explanation: the judgment is either a0
or a1
following what presented in the paper)
-
Statistics are computed with Python and SciPy. You can execute the script by running:
python3 main.py
and you should get this output:
=== Analyzing answers using mc as assessment type === Results on pretest - Condition Text: N: 21, mean ± std: 9.81 ± 3.03 Results on pretest - Condition Graphic: N: 19, mean ± std: 9.68 ± 2.11 Mann Whitney U on pretest scores: U=184.0, p=0.3406 Results on posttest - Condition Text: N: 21, mean ± std: 11.19 ± 2.75 Results on posttest - Condition Graphic: N: 19, mean ± std: 10.74 ± 2.23 Mann Whitney U on posttest scores: U=164.0, p=0.1681 === Analyzing answers using revised as assessment type === Results on pretest - Condition Text: N: 20, mean ± std: 9.15 ± 3.10 Results on pretest - Condition Graphic: N: 19, mean ± std: 7.89 ± 3.16 Mann Whitney U on pretest scores: U=150.5, p=0.1344 Results on posttest - Condition Text: N: 20, mean ± std: 11.15 ± 2.39 Results on posttest - Condition Graphic: N: 19, mean ± std: 9.42 ± 3.11 Mann Whitney U on posttest scores: U=123.0, p=0.0299
You might need to install
scipy
(e.g., depending on your setup,pip install scipy
).
Files
conditions.csv
Files
(15.4 kB)
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