Luecht, Richard M.Hirsch, Thomas M.2011-09-192011-09-191992Luecht, Richard M & Hirsch, Thomas M. (1992). Item selection using an average growth approximation of target information functions. Applied Psychological Measurement, 16, 41-51. doi:10.1177/014662169201600104doi:10.1177/014662169201600104https://hdl.handle.net/11299/115638The derivations of several item selection algorithms for use in fitting test items to target information functions (IFS) are described. These algorithms circumvent iterative solutions by using the criteria of moving averages of the distance to a target IF and by simultaneously considering an entire range of ability points used to condition the IFS. The algorithms were tested by generating six forms of an ACT math test, each fit to an existing target test, including content-designated item subsets. The results indicate that the algorithms provided reliable fit to the target in terms of item parameters, test information functions, and expected score distributions. Index terms: computerized testing, information functions, item information, parallel tests, test construction, test information.enItem selection using an average growth approximation of target information functionsArticle