A. Airola, S. Pyysalo, J. Björne, T. Pahikkala, and F. Ginter, All-paths graph kernel for protein-prote.in interaction extraction with evaluation of cross-corpus learning, BMC Bioinformatics, vol.9, p.2, 2008.

E. Alphonse and C. Rouveirol, Lazy propositionalization for relational learning, p.14, 2000.

, European Conference on Artificial Intelligence (ECAI'2000), pp.256-260

J. Björne and . T. Salakoski, TEES 2.2: Biomedical Event Extraction for Diverse Corpora, S4, vol.16, 2015.

M. Brown and J. F. Kros, Data Mining and the Impact of Missing Data. Industrial Management and Data Systems, vol.103, pp.611-621, 2003.

E. Buyko, E. Faessler, J. Wermter, and U. Hahn, Syntactic Simplification and Semantic Enrichment: Trimming Dependency Graphsfor Event Extraction, Computational Intelligence, vol.27, issue.4, pp.610-644, 2011.

R. Byrd, G. M. Chin, J. Nocedal, and Y. Wu, Sample size selection in optimization methods for machine learning, Journal of Mathematical Programming, vol.134, issue.1, pp.127-155, 2012.

R. Camacho, J. G. Barbosa, A. Sampaio, J. Ladeiras, N. A. Fonseca et al., Chapter 16 Parallel Algorithms for Multirelational Data Mining: Application to Life Science Problems , in Resource Management for Big Data Platforms, Part of the series Computer Communications and Networks, pp.339-363, 2016.

R. Camacho, R. Ramos, and N. Fonseca, AND Parallelism for ILP: The APIS System, Inductive Logic Programming: 23rd International Conference, ILP 2013, pp.93-106, 2013.

E. Charniak and M. Johnson, Coarse-to-fine n-best parsing and maxent discriminative reranking, Proceedings of the 43rd Annual Meeting on Association for Computational Linguistics, ACL '05, pp.173-180, 2005.

N. V. Chawla, Data mining for imbalanced datasets: An overview, Data mining and knowledge discovery handbook, pp.853-867, 2005.

S. P. Choi, C. Jeong, Y. Choi, and S. Myaeng, Relation extraction based on extended composite kernel using flat lexical features, JKIISE: Software Application, p.36, 2009.

S. P. Choi, . S. Lee, H. Jung, and S. Song, An intensive case study on kernel -based relation extraction, Proceedings of Multimedia Tools and Applications, pp.1-27, 2013.

M. Ciaramita and Y. Altun, Broad-coverage sense disambiguation and information extraction with a supersense sequence tagger, Proceedings of the Conference on Empirical Methods in Natural Language Processing (EMNLP '06), pp.594-602, 2006.

J. Christensen, . Mausam, S. Soderland, and O. Etzioni, Semantic role labeling for open information extraction, Proceedings of the NAACL HLT, First International Workshop on Formalisms and Methodology for Learning by Reading (FAM-LbR '10), pp.52-60, 2010.

A. Culotta and J. Sorensen, Dependency tree kernels for relation extraction, 2004.

H. Cunningham, D. Maynard, K. Bontcheva, and V. Tablan, GATE: A Framework and Graphical Development Environment for Robust NLP Tools and Applications, Proceedings of the 40th Anniversary Meeting of the Association for Computational Linguistics (ACL'02), 2002.

M. De-marneffe and C. Manning, , 2008.

T. G. Dietterich, Ensemble Methods in Machine Learning, Lecture Notes in Computer Science, pp.1-15, 1857.

J. Ding, D. Berleant, D. Nettleton, and E. Wurtele, Mining MEDLINE: abstracts, sentences, or phrases?, Proc. of the Pacific Symposium on Biocomputing, pp.326-337, 2002.

D. Dou, H. Wang, and H. Liu, Semantic data mining: A survey of ontology-based approaches, IEEE International Conference on Semantic Computing (ICSC), pp.244-251, 2015.

C. Fellbaum, WordNet -An Electronic Lexical Database. Language, Speech and Communication, 1998.

P. Frasconi, F. Costa, L. D. Raedt, and K. D. Grave, kLog: A Language for Logical and Relational Learning with Kernels, 2012.

K. Fundel, R. Kuffner, and R. Zimmer, RelExRelation extraction using dependency parse trees, Bioinformatics, vol.23, issue.3, pp.365-371, 2007.

J. Furnkranz, D. Gamberger, and N. Lavrac, Foundations of Rule Learning, 2012.

C. Giuliano, A. Lavelli, L. Romano, M. Goadrich, L. Oliphant et al., Gleaner: Creating ensembles of first-order clauses to improve recall-precision curves, ACM Trans. on Speech and Language Processing, vol.5, issue.1, pp.231-261, 2006.

T. Gruber, Towards Principles for the Design of Ontologies used for Knowledge Sharing. Int. Workshop on Formal Ontology in Conceptual Analysis and Knowledge Representation, 1993.

B. Hachey, . C. Grover, and R. Tobin, Datasets for Generic Relation Extraction, Journal of Natural Language Engineering, 2011.

S. Harabagiu, C. A. Bejan, and P. Morarescu, Shallow semantics for relation extraction, Proceedings of the 19th international joint conference on Artificial intelligence (IJCAI'05), pp.1061-1066, 2005.

I. Horrocks, P. Patel-schneider, H. Boley, S. Tabet, B. Grosof et al., SWRL: A Semantic Web Rule Language combining OWL and RuleML, 2010.

T. Horváth, G. Paass, F. Reichartz, and S. Wrobel, A Logic-based Approach to Relation Extraction from Texts, ILP, pp.34-48, 2009.

J. Jiang, Information Extraction from Text, pp.11-41, 2012.

J. Jiang and C. Zhai, A systematic exploration of the feature space for relation extraction, Proceedings of the Annual Conference of the North American Chapter of the Association for Computational Linguistics (NAACL-HLT'2007), pp.113-120, 2007.

T. Joachims, Making large-Scale SVM Learning Practical, Advances in KernelMethods -Support Vector Learning, 1999.

N. Kambhatla, Combining lexical, syntactic, and semantic features with maximum entropy models for extracting relations, The Companion Volume to the Proceedings of 42st Annual Meeting of the Association for Computational Linguistics, pp.178-181, 2004.

V. Karkaletsis, P. Fragkou, G. Petasis, and E. Iosif, Ontology-Based Information Extraction from Text, Multimedia Information Extraction, vol.6050, pp.89-109, 2011.

J. Kim, A. Mitchell, T. K. Attwood, and M. Hilario, Learning to extract relations for protein annotation, pp.256-263, 2007.

R. Kohavi and G. H. John, Automatic parameter selection by minimizing estimated error, 12th International Conference on Machine Learning, 1995.

P. Kordjamshidi, P. Frasconi, M. Van-otterlo, M. Moens, D. Raedt et al., Spatial relation extraction using relational learning. Latest Advances in Inductive Logic Programming. ILP'11, p.31, 2011.

G. Kruijff, Formal and Computational Aspects of Dependency Grammar: History and Development of DG, 2002.

T. Kuboyama, K. Hirata, H. Kashima, K. F. Aoki-kinoshita, and H. Yasuda, A spectrum tree kernel, Information and Media Technologies, vol.2, pp.292-299, 2007.

N. Lavrac and S. Dzeroski, Inductive Logic Programming: Techniques and Applications, 1994.

N. Lavrac and S. Dzeroski, Inductive Logic Programming Techniques and Application, 1994.

M. Li, T. Munkhdalai, X. Yu, and H. R. Keun, A Novel Approach for Protein-Named Entity Recognition and Protein-Protein Interaction Extraction, Mathematical Problems in Engineering, 2015.

Q. Li, H. Ji, and L. Huang, Joint event extraction via structured prediction with global features, Proceedings of the 51st Annual Meeting of the Association of Computational Linguistics, pp.73-82, 2013.

R. Lima, B. Espinasse, H. Oliveira, L. Pentagrossa, and F. Freitas, Information Extraction from the Web: An Ontology-Based Method using Inductive Logic Programming, Proceeding of the IEEE International Conference on Tools with Artificial Intelligence, IEEE-ICTAI 2013, pp.741-748, 2013.

R. Lima, J. Batista, R. Ferreira, F. Freitas, R. Lins et al., Transforming Graph-based Sentence Representation to Alleviate Overfitting in Relation Extraction, Proceedings of the 14th ACM Symposium on Document Engineering, 2014.

R. Lima, R. Espinasse, H. Oliveira, and F. Freitas, Ontology-based Information Extraction with OntoILPER, IEEE International Conference on Tools with Artificial Intelligence, vol.2014, 2014.

X. Liu, J. Wu, and Z. Zhou, Exploratory undersampling for class-imbalance learning, Trans. Sys. Man Cyber. Part B, vol.39, issue.2, pp.539-550, 2009.

C. Ma, Y. Zhang, and M. Zhang, Tree Kernel-based Protein-Protein Interaction Extraction Considering both Modal Verb Phrases and Appositive Dependency Features, Proc. of the 24th International Conference on World Wide Web, pp.655-660, 2015.

M. Miwa, S. Rune, and M. Yusuke, Protein-protein interaction extraction by leveraging multiple kernels and parsers, International Journal of Medical Informatics, 2009.

M. Miwa, R. Saetre, Y. Miyao, and J. Tsujii, Entity-focused sentence simplification for relation extraction. COLING '10, pp.788-796, 2010.

S. Muggleton, J. Santos, and A. Tamaddoni-nezhad, ProGolem: a system based on relative minimal generalisation, 19th International Conference on ILP, pp.131-148, 2009.

S. Muggleton, Inductive Logic Programming, New Generation Computing, vol.8, issue.4, p.29, 1991.

S. Muggleton, Inverse entailment and Progol, New Generation Computing, vol.13, pp.245-286, 1995.

S. Muggleton and C. Feng, Efficient induction in logic programs, Inductive Logic Programming, pp.281-298, 1992.

A. Muzaffar, F. Azam, and U. Qamar, A Relation Extraction Framework for Biomedical Text Using Hybrid Feature Set, Computational and Mathematical Methods in Medicine, vol.2015, 2015.

A. Nazarenko, C. Nédellec, A. E. Aubin, S. , T. Hamon et al., Manine. Semantic annotation in the Alvis project, Proceedings of the International Workshop on Intelligent Information Access, pp.40-54, 2006.

C. Nédellec and A. Nazarenko, Ontologies and Information Extraction, 2005.

C. Nédellec, A. Nazarenco, and R. Bossy, Information Extraction, Ontology Handbook, 2008.

G. Plotkin, A note on inductive generalization, Machine Intelligence, vol.5, pp.153-163, 1971.

S. Pyysalo, A. Airola, J. Heimonen, J. Björne, and F. Ginter, Comparative analysis of five protein-protein interaction corpora, BMC Bioinformatics, vol.9, 2008.

L. Qian and G. Zhou, Tree kernel-based protein-protein interaction extraction from biomedical literature, Journal of Biomedical Informatics, vol.45, issue.3, pp.535-543, 2012.

J. Santos, Efficient Learning and Evaluation of Complex Concepts in Inductive Logic Programming, 2010.

M. D. Seneviratne and D. N. Ranasinghe, Inductive Logic Programming in an Agent System for Ontological Relation Extraction, Int. Journal of Machine Learning and Computing, vol.1, issue.4, pp.344-352, 2011.

D. Smole, M. Ceh, and T. Podobnikar, Evaluation of inductive logic programming for information extraction from natural language texts to support spatial data recommendation services, International Journal of Geographical Information Science, vol.25, pp.1809-1827, 2011.

A. Srinivasan, T. Faruquie, and S. Joshi, Data and task parallelism in ILP using MapReduce, Journal of Machine Learning, vol.86, issue.1, pp.141-168, 2012.

D. Tikk, P. Thomas, P. Palaga, J. Hakenberg, and U. Leser, A comprehensive benchmark of kernel methods to extract protein-protein interactions from the literature, PLoS computational biology, 2010.

J. Turmo, A. Ageno, and N. Català, Adaptive information extraction, ACM Comput. Surv, vol.38, 2006.

D. C. Wimalasuriya and D. Dou, Ontology-Based Information Extraction: An Introduction and a Survey of Current Approaches, Journal of Information Science, pp.1-20, 2009.

M. Zhang, J. Zhang, J. Su, and G. D. Zhou, A Composite Kernel to Extract Relations between Entities with both Flat and Structured Features. COLING-ACL-2006, pp.825-832, 2006.

S. B. Zhao and R. Grishman, Extracting relations with integrated information using kernel-based methods, Proceedings of the Annual Meeting of the Association for Computational Linguistics (ACLí2005), pp.419-426, 2005.

G. Zhou, M. Zhang, D. Ji, and Q. Zhu, Tree Kernel-based Relation Extraction with Context-Sensitive Structured Parse Tree Information, Proc. of the 2007 Joint Conference on Empirical Methods in NLP and Computational Natural Language Learning, pp.728-736, 2007.

G. D. Zhou, J. Su, J. Zhang, and M. Zhang, Exploring various knowledge in relation extraction, 2005.