Inductive Logic Programming. N Lavrac, S Dzeroski WLP, 146-160, 1994 | 1414 | 1994 |
The multi-purpose incremental learning system AQ15 and its testing application to three medical domains RS Michalski, I Mozetic, J Hong, N Lavrac Proc. AAAI 1986, 1-041, 1986 | 1172 | 1986 |
Subgroup discovery with CN2-SD N Lavrac, B Kavsek, P Flach, L Todorovski J. Mach. Learn. Res. 5 (2), 153-188, 2004 | 624* | 2004 |
Rule evaluation measures: A unifying view N Lavrač, P Flach, B Zupan International Conference on Inductive Logic Programming, 174-185, 1999 | 571 | 1999 |
Selected techniques for data mining in medicine N Lavrač Artificial intelligence in medicine 16 (1), 3-23, 1999 | 496 | 1999 |
Supervised descriptive rule discovery: A unifying survey of contrast set, emerging pattern and subgroup mining. PK Novak, N Lavrač, GI Webb Journal of Machine Learning Research 10 (2), 2009 | 491 | 2009 |
Propositionalization approaches to relational data mining S Kramer, N Lavrač, P Flach Relational data mining, 262-291, 2001 | 405 | 2001 |
Foundations of rule learning J Fürnkranz, D Gamberger, N Lavrač Springer Science & Business Media, 2012 | 396 | 2012 |
Informal identification of outliers in medical data J Laurikkala, M Juhola, E Kentala, N Lavrac, S Miksch, B Kavsek Fifth international workshop on intelligent data analysis in medicine and …, 2000 | 358 | 2000 |
APRIORI-SD: Adapting association rule learning to subgroup discovery B Kavšek, N Lavrač Applied Artificial Intelligence 20 (7), 543-583, 2006 | 306 | 2006 |
Learning nonrecursive definitions of relations with LINUS N Lavrač, S Džeroski, M Grobelnik European working session on learning, 265-281, 1991 | 284 | 1991 |
Stream-based active learning for sentiment analysis in the financial domain J Smailović, M Grčar, N Lavrač, M Žnidaršič Information sciences 285, 181-203, 2014 | 274 | 2014 |
Expert-guided subgroup discovery: Methodology and application D Gamberger, N Lavrac Journal of Artificial Intelligence Research 17, 501-527, 2002 | 268 | 2002 |
KARDIO: a study in deep and qualitative knowledge for expert systems I Bratko, I Mozetič, N Lavrač Mit Press, 1990 | 256 | 1990 |
The AQ15 inductive learning system: an overview and experiments R Michalski Reports of Machine Learning and Inference Laboratory, 1986 | 241 | 1986 |
Experiments with noise filtering in a medical domain D Gamberger, N Lavrac, C Groselj ICML 99, 143-151, 1999 | 230 | 1999 |
A rule based approach to word lemmatization J Plisson, N Lavrac, D Mladenic Proceedings of IS 3, 83-86, 2004 | 223 | 2004 |
Comparative evaluation of approaches to propositionalization MA Krogel, S Rawles, F Železný, PA Flach, N Lavrač, S Wrobel International Conference on Inductive Logic Programming, 197-214, 2003 | 182 | 2003 |
Propositionalization-based relational subgroup discovery with RSD F Železný, N Lavrač Machine Learning 62 (1), 33-63, 2006 | 146 | 2006 |
Predictive sentiment analysis of tweets: A stock market application J Smailović, M Grčar, N Lavrač, M Žnidaršič International workshop on human-computer interaction and knowledge discovery …, 2013 | 144 | 2013 |