Welcome to D
SIGMOD 2003
PODS 2003
SIGMOD-RECOR
ADBIS
CIDR 2003
CIKM 2003
DASFAA 2003
Data Enginee
DEBS
DMKD 2003
DOLAP 2003
DPDJ 2003
ER
GIS 2003
Hypertext 20
ICDE 2003
ICDM 2003
ICDT 2003
JCDL 2003
KRDB 2003
MIR 2003
MIS 2003
MMDB 2003
RIDE 2003
SBBD 2003
SIGIR 2003
SIGIR-FORUM
SIGKDD 2003
SIGKDD-EXP
SSDBM 2003
TIME 2003
TODS
VLDB 2003
VLDB Journal
WIDM 2003
About DiSC 2
Editorial Bo
Acknowledgem
DiSC 2004 Pr
ADVIS
DiSC'04 Feed
DiSC'04 Site
Search DiSC'
<<<Author Index>>>
Copyright No

Saso Dzeroski

Papers on DiSC'04


Multi-Relational Data Mining: An Introduction

A Report on the Summer School on Relational Data Mining

Editorial: Multi-Relational Data Mining: The Current Frontiers

Multirelational Data Mining 2003: Workshop Report

Publications


Note: Links lead to the DBLP on the Web.

Saso Dzeroski

Tomaz Erjavec , Saso Dzeroski: Machine Learning of Morphosyntactic Structure: Lemmatizing Unknown Slovene Words. Applied Artificial Intelligence 18 (1): 17-41 (2004)

Saso Dzeroski, Ljupco Todorovski , Peter Ljubic : Using Constraints in Discovering Dynamics. Discovery Science 2003 : 297-305

Saso Dzeroski, Ljupco Todorovski , Boris Zmazek , Janja Vaupotic , Ivan Kobal : Modelling Soil Radon Concentration for Earthquake Prediction. Discovery Science 2003 : 87-99

Ljupco Todorovski , Saso Dzeroski: Using Domain Specific Knowledge for Automated Modeling. IDA 2003 : 48-59

Ljupco Todorovski , Saso Dzeroski: Combining Classifiers with Meta Decision Trees. Machine Learning 50 (3): 223-249 (2003)

Saso Dzeroski: Relational Reinforcement Learning for Agents in Worlds with Objects. Adaptive Agents and Multi-Agents Systems 2002 : 306-322

Ljupco Todorovski , Hendrik Blockeel , Saso Dzeroski: Ranking with Predictive Clustering Trees. ECML 2002 : 444-455

Bernard Zenko , Saso Dzeroski: Stacking with an Extended Set of Meta-level Attributes and MLR. ECML 2002 : 493-504

Kurt Driessens , Saso Dzeroski: Integrating Experimentation and Guidance in Relational Reinforcement Learning. ICML 2002 : 115-122

Saso Dzeroski, Bernard Zenko : Is Combining Classifiers Better than Selecting the Best One. ICML 2002 : 123-130

Pat Langley , Javier Nicolás Sánchez , Ljupco Todorovski , Saso Dzeroski: Inducing Process Models from Continuous Data. ICML 2002 : 347-354

Saso Dzeroski: Learning in Rich Representations: Inductive Logic Programming and Computational Scientific Discovery. ILP 2002 : 346-349

Saso Dzeroski, Bernard Zenko : Stacking with Multi-response Model Trees. Multiple Classifier Systems 2002 : 201-211

Saso Dzeroski, Luc De Raedt : Multi-Relational Data Mining: a Workshop Report. SIGKDD Explorations 4 (2): 122-124 (2002)

Ljupco Todorovski , Saso Dzeroski: Theory Revision in Equation Discovery. Discovery Science 2001 : 389-400

Saso Dzeroski, Pat Langley : Computational Discovery of Communicable Knowledge: Symposium Report. Discovery Science 2001 : 45-49

Ljupco Todorovski , Saso Dzeroski: Using Domain Knowledge on Population Dynamics Modeling for Equation Discovery. ECML 2001 : 478-490

Bernard Zenko , Ljupco Todorovski , Saso Dzeroski: A Comparison of Stacking with Meta Decision Trees to Bagging, Boosting, and Stacking with other Methods. ICDM 2001 : 669-670

Joaquim Comas , Saso Dzeroski, Karina Gibert , Ignasi R.-Roda , Miquel Sànchez-Marrè : Knowledge discovery by means of inductive methods in wastewater treatment plannt data. AI Commun. 14 (1): 45-62 (2001)

Saso Dzeroski, Luc De Raedt , Kurt Driessens : Relational Reinforcement Learning. Machine Learning 43 (1/2): 7-52 (2001)

Peter A. Flach , Saso Dzeroski: Editorial: Inductive Logic Programming is Coming of Age. Machine Learning 44 (3): 207-209 (2001)

James Cussens , Saso Dzeroski: Learning Language in Logic Springer 2000

Ljupco Todorovski , Saso Dzeroski, Ashwin Srinivasan , Jonathan Whiteley , David Gavaghan : Discovering the Structure of Partial Differential Equations from Example Behaviour. ICML 2000 : 991-998

Dimitar Hristovski , Saso Dzeroski, Borut Peterlin , Anamarija Rozic-Hristovski : Supporting Discovery in Medicine by Association Rule Mining of Bibliographic Databases. PKDD 2000 : 446-451

Ljupco Todorovski , Saso Dzeroski: Combining Multiple Models with Meta Decision Trees. PKDD 2000 : 54-64

Saso Dzeroski, Damjan Demsar , Jasna Grbovic : Predicting Chemical Parameters of River Water Quality from Bioindicator Data. Appl. Intell. 13 (1): 7-17 (2000)

Dragan Gamberger , Nada Lavrac , Saso Dzeroski: Noise Detection and Elimination in data Proprocessing: Experiments in Medical Domains. Applied Artificial Intelligence 14 (2): 205-223 (2000)

Ivan Bratko , Saso Dzeroski: Proceedings of the Sixteenth International Conference on Machine Learning (ICML 1999), Bled, Slovenia, June 27 - 30, 1999 Morgan Kaufmann 1999

Saso Dzeroski, Peter A. Flach : Inductive Logic Programming, 9th International Workshop, ILP-99, Bled, Slovenia, June 24-27, 1999, Proceedings Springer 1999

James Cussens , Saso Dzeroski, Tomaz Erjavec : Morphosyntactic Tagging of Slovene Using Progol. ILP 1999 : 68-79

Saso Dzeroski, Hendrik Blockeel , Boris Kompare , Stefan Kramer , Bernhard Pfahringer , Wim Van Laer : Experiments in Predicting Biodegradability. ILP 1999 : 80-91

Saso Dzeroski, James Cussens , Suresh Manandhar : An Introduction to Inductive Logic Programming and Learning Language in Logic. Learning Language in Logic 1999 : 3-35

Saso Dzeroski, Tomaz Erjavec : Learning to Lemmatise Slovene Words. Learning Language in Logic 1999 : 69-88

Hendrik Blockeel , Saso Dzeroski, Jasna Grbovic : Simultaneous Prediction of Mulriple Chemical Parameters of River Water Quality with TILDE. PKDD 1999 : 32-40

Ljupco Todorovski , Saso Dzeroski: Experiments in Meta-level Learning with ILP. PKDD 1999 : 98-106

Saso Dzeroski, Nada Lavrac : Editorial. Data Min. Knowl. Discov. 3 (1): 5-6 (1999)

Nada Lavrac , Saso Dzeroski, Masayuki Numao : Inductive Logic Programming for Relational Knowledge Discovery. New Generation Comput. 17 (1): 3-23 (1999)

Saso Dzeroski, Nico Jacobs , Martín Molina , Carlos Moure : ILP Experiments in Detecting Traffic Problems. ECML 1998 : 61-66

Saso Dzeroski, Luc De Raedt , Hendrik Blockeel : Relational Reinforcement Learning. ICML 1998 : 136-143

Saso Dzeroski, Luc De Raedt , Hendrik Blockeel : Relational Reinforcement Learning. ILP 1998 : 11-22

Suresh Manandhar , Saso Dzeroski, Tomaz Erjavec : Learning Multilingual Morphology with CLOG. ILP 1998 : 135-144

Saso Dzeroski, Nico Jacobs , Martín Molina , Carlos Moure , Stephen Muggleton , Wim Van Laer : Detecting Traffic Problems with ILP. ILP 1998 : 281-290

Saso Dzeroski, Steffen Schulze-Kremer , Karsten R. Heidtke , Karsten Siems , Dietrich Wettschereck , Hendrik Blockeel : Diterpene Structure Elucidation from 13CNMR Spectra with Inductive Logic Programming. Applied Artificial Intelligence 12 (5): 363-383 (1998)

Blaz Zupan , Saso Dzeroski: Acquiring background knowledge for machine learning using function decomposition: a case study in rheumatology. Artificial Intelligence in Medicine 14 (1-2): 101-117 (1998)

Nada Lavrac , Saso Dzeroski: Inductive Logic Programming, 7th International Workshop, ILP-97, Prague, Czech Republic, September 17-20, 1997, Proceedings Springer 1997

Blaz Zupan , Saso Dzeroski: Acquiring and Validating Background Knowledge for Machine Learning Using Function Decomposition. AIME 1997 : 86-97

Saso Dzeroski, George Potamias , Vassilis Moustakis , Giorgos Charissis : Automated Revision of Expert Rules for Treating Acute Abdominal Pain in Children. AIME 1997 : 98-109

Ljupco Todorovski , Saso Dzeroski: Declarative Bias in Equation Discovery. ICML 1997 : 376-384

Yannis Dimopoulos , Saso Dzeroski, Antonis C. Kakas : Integrating Explanatory and Descriptive Learning in ILP. IJCAI (2) 1997 : 900-907

Saso Dzeroski, Tomaz Erjavec : Induction of Slovene Nominal Paradigms. ILP 1997 : 141-148

Wim Van Laer , Luc De Raedt , Saso Dzeroski: On Multi-class Problems and Discretization in Inductive Logic Programming. ISMIS 1997 : 277-286

Dragan Gamberger , Nada Lavrac , Saso Dzeroski: Noise Elimination in Inductive Concept Learning: A Case Study in Medical Diagnosois. ALT 1996 : 199-212

Saso Dzeroski, Steffen Schulze-Kremer , Karsten R. Heidtke , Karsten Siems , Dietrich Wettschereck : Applying ILP to Diterpene Structure Elucidation from 13 C NMR Spectra. Inductive Logic Programming Workshop 1996 : 41-54

Saso Dzeroski: Inductive Logic Programming and Knowledge Discovery in Databases. Advances in Knowledge Discovery and Data Mining 1996 : 117-152

Nada Lavrac , Irene Weber , Darko Zupanic , Dimitar Kazakov , Olga Stepánková , Saso Dzeroski: ILPNET Repositories on WWW: Inductive Logic Programming Systems, Datasets and Bibliography. AI Commun. 9 (4): 157-206 (1996)

Nada Lavrac , Saso Dzeroski: A Reply to Pazzani's Book Review of ``Inductive Logic Programming: Techniques and Applications''. Machine Learning 23 (1): 109-111 (1996)

Saso Dzeroski, Ljupco Todorovski , Tanja Urbancic : Handling Real Numbers in ILP: A Step Towards Better Behavioural Clones (Extended Abstract). ECML 1995 : 283-286

Saso Dzeroski: Knowledge Discovery in a Water Quality Database. KDD 1995 : 81-86

Saso Dzeroski: Learning First-order Clausal Theories in the Presence of Noise. SCAI 1995 : 51-60

Saso Dzeroski, Ljupco Todorovski : Discovering Dynamics: From Inductive Logic Programming to Machine Discovery. J. Intell. Inf. Syst. 4 (1): 89-108 (1995)

Ivan Bratko , Saso Dzeroski: Engineering Applications of ILP. New Generation Comput. 13 (3&4): 313-333 (1995)

Saso Dzeroski, Igor Petrovski : Discovering Dynamics with Genetic Programming. ECML 1994 : 347-350

Luc De Raedt , Saso Dzeroski: First-Order jk-Clausal Theories are PAC-Learnable. Artif. Intell. 70 (1-2): 375-392 (1994)

Jörg-Uwe Kietz , Saso Dzeroski: Inductive Logic Programming and Learnability. SIGART Bulletin 5 (1): 22-32 (1994)

Saso Dzeroski, Stephen Muggleton , Stuart J. Russell : Learnability of Constrained Logic Programs. ECML 1993 : 342-347

Saso Dzeroski, Ljupco Todorovski : Discovering Dynamics. ICML 1993 : 97-103

Luc De Raedt , Nada Lavrac , Saso Dzeroski: Multiple Predicate Learning. IJCAI 1993 : 1037-1043

Saso Dzeroski: Handling Imperfetc Data in Inductive Logic Programming. SCAI 1993 : 111-125

Nada Lavrac , Saso Dzeroski, Vladimir Pirnat , Viljem Krizman : The utility of background knowledge in learning medical diagnostic rules. Applied Artificial Intelligence 7 (3): 273-293 (1993)

Saso Dzeroski, Nada Lavrac : Inductive Learning in Deductive Databases. IEEE Trans. Knowl. Data Eng. 5 (6): 939-949 (1993)

Nada Lavrac , Saso Dzeroski: Background Knowledge and Declarative Bias in Inductive Concept Learning. AII 1992 : 51-71

Saso Dzeroski, Stephen Muggleton , Stuart J. Russell : PAC-Learnability of Determinate Logic Programs. COLT 1992 : 128-135

Nada Lavrac , Saso Dzeroski, Marko Grobelnik : Learning Nonrecursive Definitions of Relations with LINUS. EWSL 1991 : 265-281

Saso Dzeroski, Nada Lavrac : Learning Relations from Noisy Examples: An Empirical Comparison of LINUS and FOIL. ML 1991 : 399-402

Nada Lavrac , Saso Dzeroski, Vladimir Pirnat , Viljem Krizman : Learning Rules for Early Diagnosis of Rheumatic Diseases. SCAI 1991 : 138-149

1 [ 33 ] [ 36 ] [ 37 ] [ 42 ] [ 45 ] [ 69 ]

2 [ 15 ] [ 48 ]

3 [ 29 ]

4 [ 57 ]

5 [ 44 ] [ 46 ] [ 54 ]

6 [ 50 ]

7 [ 27 ]

8 [ 56 ] [ 67 ]

9 [ 26 ] [ 35 ] [ 43 ] [ 46 ] [ 75 ]

10 [ 47 ] [ 55 ]

11 [ 24 ] [ 49 ]

12 [ 53 ]

13 [ 57 ]

14 [ 42 ] [ 50 ]

15 [ 3 ]

16 [ 23 ] [ 33 ]

17 [ 52 ]

18 [ 34 ] [ 38 ]

19 [ 27 ]

20 [ 21 ]

21 [ 12 ]

22 [ 73 ]

23 [ 45 ]

24 [ 45 ]

25 [ 1 ] [ 7 ]

26 [ 25 ] [ 34 ] [ 45 ]

27 [ 60 ] [ 65 ]

28 [ 1 ] [ 2 ] [ 3 ] [ 5 ] [ 6 ] [ 7 ] [ 9 ] [ 20 ] [ 21 ] [ 24 ] [ 31 ] [ 39 ] [ 40 ] [ 49 ]

29 [ 74 ]

30 [ 35 ] [ 44 ]

31 [ 34 ] [ 38 ]

32 [ 34 ] [ 38 ]

33 [ 29 ]

34 [ 4 ] [ 11 ] [ 34 ]

35 [ 39 ]

36 [ 52 ]

37 [ 14 ]

38 [ 45 ]

39 [ 1 ] [ 7 ]

40 [ 29 ]

41 [ 57 ]

42 [ 9 ] [ 13 ] [ 25 ] [ 36 ] [ 37 ] [ 56 ] [ 62 ]

43 [ 52 ]

44 [ 4 ] [ 11 ]

45 [ 65 ]

46 [ 57 ]

47 [ 23 ] [ 33 ]

48 [ 23 ] [ 33 ]

49 [ 53 ]

50 [ 21 ]

51 [ 10 ] [ 16 ] [ 19 ] [ 28 ] [ 41 ] [ 51 ] [ 53 ] [ 58 ] [ 59 ] [ 61 ] [ 65 ] [ 69 ] [ 71 ] [ 72 ] [ 73 ] [ 74 ]

52 [ 19 ]

53 [ 73 ]

54 [ 21 ]

55 [ 23 ] [ 33 ]

56 [ 53 ]

57 [ 58 ] [ 63 ] [ 66 ] [ 68 ]

58 [ 73 ]

59 [ 30 ] [ 32 ]

60 [ 21 ]




©2004 Association for Computing Machinery