TY - JOUR ID - SisLab2638 UR - https://doi.org/10.1007/s40595-017-0094-4 A1 - Divrood, Ali Rezaei A1 - Ha, Quang Thuy A1 - Nguyen, Linh Anh A1 - Nguyen, Hung Son Y1 - 2017/02/15/ N2 - It is well known that any Boolean function in classical propositional calculus can be learned correctly if the training information system is good enough. In this paper, we extend that result for description logics. We prove that any concept in any description logic that extends ALCALC with some features amongst I (inverse roles), QkQk (qualified number restrictions with numbers bounded by a constant k), and SelfSelf (local reflexivity of a role) can be learned correctly if the training information system (specified as a finite interpretation) is good enough. That is, there exists a learning algorithm such that, for every concept C of those logics, there exists a training information system such that applying the learning algorithm to it results in a concept equivalent to C. For this result, we introduce universal interpretations and bounded bisimulation in description logics and develop an appropriate learning algorithm. We also generalize common types of queries for description logics, introduce interpretation queries, and present some consequences. PB - Springer Berlin Heidelberg JF - Vietnam Journal of Computer Science VL - 2017 SN - 2196-8888; Online 2196-8896 TI - On the possibility of correct concept learning in description logics SP - 1 AV - public EP - 12 ER -