6533b85bfe1ef96bd12babb7
RESEARCH PRODUCT
Evaluating similarity measures for gaze patterns in the context of representational competence in physics education
Jochen KuhnSaleh MozaffariPascal KleinAndreas DengelSheraz AhmedJouni Viirisubject
graafinen esitysPhysics educationrepresentational competenceFeature selection02 engineering and technologycomputer.software_genresilmänliikkeetfeature selection0202 electrical engineering electronic engineering information engineeringta516fysiikkaCompetence (human resources)ta113eye-trackingbusiness.industry05 social sciences050301 education020207 software engineeringsimilarity measuresMutual informationLevenshtein distanceGazekatseEye trackingongelmanratkaisugaze patternsArtificial intelligencebusinessphysics0503 educationMaximal information coefficientcomputerNatural language processingdescription
The competent handling of representations is required for understanding physics' concepts, developing problem-solving skills, and achieving scientific expertise. Using eye-tracking methodology, we present the contributions of this paper as follows: We first investigated the preferences of students with the different levels of knowledge; experts, intermediates, and novices, in representational competence in the domain of physics problem-solving. It reveals that experts more likely prefer to use vector than other representations. Besides, a similar tendency of table representation usage was observed in all groups. Also, diagram representation has been used less than others. Secondly, we evaluated three similarity measures; Levenshtein distance, transition entropy, and Jensen-Shannon divergence. Conducting Recursive Feature Elimination technique suggests Jensen-Shannon divergence is the best discriminating feature among the three. However, investigation on mutual dependency of the features implies transition entropy mutually links between two other features where it has mutual information with Levenshtein distance (Maximal Information Coefficient = 0.44) and has a correlation with Jensen-Shannon divergence (r(18313) = 0.70, p
year | journal | country | edition | language |
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2018-06-14 | Proceedings of the 2018 ACM Symposium on Eye Tracking Research & Applications |