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%T Combining Clickstream Analyses and Graph-Modeled Data Clustering for Identifying Common Response Processes
%A Ulitzsch, Esther
%A He, Qiwei
%A Ulitzsch, Vincent
%A Molter, Hendrik
%A Nichterlein, André
%A Niedermeier, Rolf
%A Pohl, Steffi
%J Psychometrika
%N 1
%P 190-214
%V 86
%D 2021
%K action sequences; response times; complex problem solving; cluster editing; PIAAC 2012
%@ 1860-0980
%~ FDB
%> https://nbn-resolving.org/urn:nbn:de:0168-ssoar-85084-7
%X Complex interactive test items are becoming more widely used in assessments. Being computer-administered, assessments using interactive items allow logging time-stamped action sequences. These sequences pose a rich source of information that may facilitate investigating how examinees approach an item and arrive at their given response. There is a rich body of research leveraging action sequence data for investigating examinees’ behavior. However, the associated timing data have been considered mainly on the item-level, if at all. Considering timing data on the action-level in addition to action sequences, however, has vast potential to support a more fine-grained assessment of examinees’ behavior. We provide an approach that jointly considers action sequences and action-level times for identifying common response processes. In doing so, we integrate tools from clickstream analyses and graph-modeled data clustering with psychometrics. In our approach, we (a) provide similarity measures that are based on both actions and the associated action-level timing data and (b) subsequently employ cluster edge deletion for identifying homogeneous, interpretable, well-separated groups of action patterns, each describing a common response process. Guidelines on how to apply the approach are provided. The approach and its utility are illustrated on a complex problem-solving item from PIAAC 2012.
%C USA
%G en
%9 Zeitschriftenartikel
%W GESIS - http://www.gesis.org
%~ SSOAR - http://www.ssoar.info