01828nam a2200217 a 450000100080000000500110000800800410001902400380006010000200009824501000011826002580021830000200047649000600049652009350055665300160149165300230150765300250153070000160155570000170157170000220158818549022019-09-23 2009 bl uuuu u00u1 u #d7 a10.1007/978-3-642-04592-9_462DOI1 aPRADO, H. A. do aCounselor, a data mining based time estimation for software maintenance.h[electronic resource] aIn: In: VELÁSQUEZ, J. D.; RÍOS, S. A.; HOWLETT, R. J.; JAIN, L., C. (Ed.). Knowledge-Based and Intelligent Information and Engineering Systems 13th International Conference, KES 2009, Santiago, Chile, September 28-30, 2009, Proceedings, Part II.c2009 ap. 364-371 5712 a(Lecture Notes in Computer Science - LNCS, 5712).v5712 aMeasuring and estimating are fundamental activities for the success of any project. In the software maintenance realm the lack of maturity, or even a low level of interest in adopting effective maintenance techniques and related metrics, have been pointed out as an important cause for the high costs involved. In this paper data mining techniques are applied to provide a sound estimation for the time required to accomplish a maintenance task. Based on real world data regarding maintenance requests, some regression models are built to predict the time required for each maintenance. Data on the team skill and the maintenance characteristics are mapped into values that predict better time estimations in comparison to the one predicted by the human expert. A particular finding from this research is that the time prediction provided by a human expert works as an inductive bias that improves the overall prediction accuracy. aData mining aInformal reasoning aSoftware maintenance1 aFERNEDA, E.1 aANQUETIL, N.1 aTEIXEIRA, E. D'A.