TY - JOUR T1 - Use of network data analysis to improve algorithm of computerized adaptive tests TT - استفاده از تحلیل داده‎های شبکه‌ای در بهبود الگوریتم آزمون‎های انطباقی کامپیوتری JF - Journal-of-Psychological-Science JO - Journal-of-Psychological-Science VL - 20 IS - 97 UR - http://psychologicalscience.ir/article-1-942-en.html Y1 - 2021 SP - 23 EP - 38 KW - Computerized adaptive testing KW - network theory KW - item response theory KW - question selection KW - algorithm N2 - Background: Network methodology makes it possible to study several goals at the same time and has capabilities leads to providing appropriate analytical tools. There are studies on the use of network data analysis in the field of educational assessment but there is less research that has practically constructed an adaptive test based on network theory or presented its algorithm. Is it possible to use network science to build adaptive tests? Aims: This study was performed with the aim of improving the adaptive test algorithm based on network data analysis on language learners of language teaching centers and institutions in Tehran. Method: This research was descriptive and its main focus was on the analysis of test questions using network data analysis technique. The statistical population included all students of the top ten language teaching institutes in Tehran in 2019 who had the ability to read English at a minimum level. Among them, 1556 people were selected by convenience sampling method. The tool used was the 140-item English Vocabulary Size Test (VST) (Nation & Waring, 1997). The analysis of test questions was performed through classical test theory, item response theory and network analysis based on Fruchterman-Ringold algorithm. Results: The parameters of the test questions were calculated based on classical test theory and item respons theory. The relationship map between the questions was drawn based on Fruchterman-Ringold algorithm and statistical test of partial correlation with alpha modulation (p< 0/01), network centrality parameters and adaptive test algorithm were extracted. Conclusions: Utilizing the benefits of network data analysis techniques such as results visibility, providing simple and comprehensive reports and considering the importance of the questions in the structure of the communication network between the questions have led to the improvement of adaptive testing methodes. M3 ER -