Akhdinirwanto , R., Agustini , R. & Jatmiko , B. 2020. Problem-based learning with argumentation as a hypothetical model to increase the critical thinking skills for junior high school students. Jurnal Pendidikan IPA Indonesia 9(3), 340–350.

Aleven , V. & Ashley , K. D. 1997. Evaluating a learning environment for case-based argumentation skills. In Proceedings of the 6th International Conference on Artificial Intelligence and Law, 170–179.

Andreadis , S., Moumtzidou , A., Apostolidis , K., Gkountakos , K., Galanopoulos , D., Michail , E., Gialampoukidis , I., Vrochidis , S., Mezaris , V. & Kompatsiaris , I. 2020. Verge in vbs 2020. In International Conference on Multimedia Modeling. Springer, 778–783.

Antoniou , C. & Bassiliades , N. 2022. A survey on semantic question answering systems. The Knowledge Engineering Review 37, e2.

Ashley , K. D., Desai , R. & Levine , J. M. 2002. Teaching case-based argumentation concepts using dialectic arguments vs. didactic explanations. In Intelligent Tutoring Systems: 6th International Conference, ITS 2002 Biarritz, France and San Sebastian, Spain, June 2–7, 2002 Proceedings. Springer, 585–595.

Asim , M. N., Wasim , M., Khan , M. U. G., Mahmood , N. & Mahmood , W. 2019. The use of ontology in retrieval: a study on textual, multilingual, and multimedia retrieval. IEEE Access 7, 21662–21686.

Berland , L. K. & McNeill , K. L. 2010. A learning progression for scientific argumentation: Understanding student work and designing supportive instructional contexts. Science Education 94(5), 765–793.

Cayrol , C., de Saint-Cyr , F. D. & Lagasquie-Schiex , M.-C. 2008. Revision of an argumentation system. KR 2008, 124–134.

Chen , Q., Bragg , J., Chilton , L. B. & Weld , D. S. 2019. Cicero: Multi-turn, contextual argumentation for accurate crowdsourcing. In Proceedings of the 2019 Chi Conference on Human Factors in Computing Systems, 1–14.

Chernova , S., Chu , V., Daruna , A., Garrison , H., Hahn , M., Khante , P., Liu , W. & Thomaz , A. 2020. Situated bayesian reasoning framework for robots operating in diverse everyday environments. In Robotics Research. Springer, 353–369.

Chi , N.-W., Jin , Y.-H. & Hsieh , S.-H. 2019. Developing base domain ontology from a reference collection to aid information retrieval. Automation in Construction 100, 180–189.

Clark , D. B., Sampson , V., Weinberger , A. & Erkens , G. 2007. Analytic frameworks for assessing dialogic argumentation in online learning environments. Educational Psychology Review 19, 343–374.

Coste-Marquis , S., Konieczny , S., Mailly , J.-G. & Marquis , P. 2014a. On the revision of argumentation systems: Minimal change of arguments statuses. In Fourteenth International Conference on the Principles of Knowledge Representation and Reasoning.

Coste-Marquis , S., Konieczny , S., Mailly , J.-G. & Marquis , P. 2014b. A translation-based approach for revision of argumentation frameworks. In Logics in Artificial Intelligence: 14th European Conference, JELIA 2014, Funchal, Madeira, Portugal, September 24–26, 2014. Proceedings 14. Springer, 397–411.

Cyras , K., Satoh, K. & Toni, F. 2016. Explanation for case-based reasoning via abstract argumentation. In Computational Models of Argument. IOS Press, 243–254.

Drapeau , R., Chilton , L., Bragg , J. & Weld , D. 2016. Microtalk: Using argumentation to improve crowdsourcing accuracy. In Proceedings of the AAAI Conference on Human Computation and Crowdsourcing, 4, 32–41.

Dung , P. M. 1995. An argumentation-theoretic foundation for logic programming. The Journal of Logic Programming 22(2), 151–177.

Falappa , M. A., Kern-Isberner , G. & Simari , G. R. 2009. Belief revision and argumentation theory. In Argumentation in Artificial Intelligence, 341–360.

Fan , X., Craven , R., Singer , R., Toni , F. & Williams , M. 2013. Assumption-based argumentation for decision-making with preferences: a medical case study. In Computational Logic in Multi-Agent Systems: 14th International Workshop, CLIMA XIV, Corunna, Spain, September 16–18, 2013. Proceedings 14. Springer, 374–390.

Fan , X. & Toni , F. 2015. On explanations for non-acceptable arguments. In International Workshop on Theory and Applications of Formal Argumentation. Springer, 112–127.

Fellbaum , C. 2010. Wordnet. In Theory and Applications of Ontology: Computer Applications. Springer, 231–243.

Fiorini , R. A. 2020. Computational intelligence from autonomous system to super-smart society and beyond. International Journal of Software Science and Computational Intelligence (IJSSCI) 12(3), 1–13.

Heras , S., Jordán , J., Botti , V. & Julián , V. 2013. Argue to agree: a case-based argumentation approach. International Journal of Approximate Reasoning 54(1), 82–108.

Hu , B., Gaurav , A., Choi , C. & Almomani , A. 2022. Evaluation and comparative analysis of semantic web-based strategies for enhancing educational system development. International Journal on Semantic Web and Information Systems (IJSWIS) 18(1), 1–14.

Hyvönen , E. 2012. Publishing and using cultural heritage linked data on the semantic web. Synthesis Lectures on the Semantic Web: Theory and Technology 2(1), 1–159.

Icarte , R. T., Baier , J. A., Ruz , C. & Soto , A. 2017. How a general-purpose commonsense ontology can improve performance of learning-based image retrieval. arXiv preprint arXiv:1705.08844.

Joulin , A., Grave , E., Bojanowski , P., Douze , M., Jégou , H. & Mikolov , T. 2016. Fasttext. zip: Compressing text classification models. arXiv preprint arXiv:1612.03651.

Kelly , K. T. 1998. The learning power of belief revision. In TARK, 98. Citeseer, 111–124.

Kumar , V. R. S., Khamis , A., Fiorini , S., Carbonera , J. L., Alarcos , A. O., Habib , M., Goncalves , P., Li , H. & Olszewska , J. I. 2019. Ontologies for industry 4.0. The Knowledge Engineering Review 34, e17, 1 of 14.

Lopes , D. M. 2007. Shikinen sengu and the ontology of architecture in japan. The Journal of Aesthetics and Art Criticism 65(1), 77–84.

Lynch , K. et al. 1960. The image of the city (vol. 11).

Modgil , S. & Prakken , H. 2014. The aspic+ framework for structured argumentation: a tutorial. Argument & Computation 5(1), 31–62.

Možina , M., Žabkar , J., Bench-Capon , T. & Bratko , I. 2005. Argument based machine learning applied to law. Artificial Intelligence and Law 13, 53–73.

Možina , M., Žabkar , J. & Bratko , I. 2007. Argument based machine learning. Artificial Intelligence 171(10–15), 922–937.

Munir , K. & Anjum , M. S. 2018. The use of ontologies for effective knowledge modelling and information retrieval. Applied Computing and Informatics 14(2), 116–126.

Okuno , K. & Takahashi , K. 2009. Argumentation system with changes of an agent’s knowledge base. In Twenty-First International Joint Conference on Artificial Intelligence. Citeseer.

Ontañón , S. & Plaza , E. 2007. Learning and joint deliberation through argumentation in multiagent systems. In Proceedings of the 6th International Joint Conference on Autonomous Agents and Multiagent Systems, 1–8.

Ontanón , S. & Plaza , E. 2010. Multiagent inductive learning: an argumentation-based approach. In ICML, 839–846.

Pennington , J., Socher , R. & Manning , C. D. 2014. Glove: global vectors for word representation. In Proceedings of the 2014 Conference on Empirical Methods in Natural Language Processing (EMNLP), 1532–1543.

Pilotti , P., Casali , A. & Chesnevar , C. 2012. A belief revision approach for argumentation-based negotiation with cooperative agents. In 9th International Workshop on Argumentation in Multi-Agent Systems (ArgMAS 2012), Valencia, Spain. Citeseer.

Pilotti , P., Casali , A. & Chesnevar , C. 2014. Incorporating object features in collaborative argumentation-based negotiation agents. In Brazilian Conference on Intelligent Systems (BRACIS)/Encontro Nacional de Inteligencia Artificial e Computacional (ENIAC), Sao Carlos, SP, Brazil, 31–37.

Pistola , T., Georgakopoulou , N., Shvets , A., Chatzistavros , K., Xefteris , V.-R., Garca , A. T., Koulalis , I., Diplaris , S., Wanner , L., Vrochidis , S. et al. 2022. Imageability-based multi-modal analysis of urban environments for architects and artists. In International Conference on Image Analysis and Processing. Springer, 198–209.

Qiu , W., Li , W., Liu , X. & Huang , X. 2021. Subjective street scene perceptions for shanghai with large-scale application of computer vision and machine learning, Technical report, EasyChair.

Rahwan , I., Moraitis , P. & Reed , C. 2005. Argumentation in Multi-Agent Systems: First International Workshop, ArgMAS 2004, New York, NY, USA, July 19, 2004, Revised Selected and Invited Papers, 3366. Springer.

Raven , D., de Boer , V., Esmeijer , E. & Oomen , J. 2020. Modeling ontologies for individual artists. Vrije Universiteit Amsterdam.

Rong , X. & 2014. word2vec parameter learning explained. arXiv preprint arXiv:1411.2738.

Schneider , A. 2020. Alternatives: World ontologies and dialogues between contemporary arts and anthropologies. In Alternative Art and Anthropology. Routledge, 1–26.

Slonim , N., Bilu , Y., Alzate , C., Bar-Haim , R., Bogin , B., Bonin , F., Choshen , L., Cohen-Karlik , E., Dankin , L., Edelstein , L. et al. 2021. An autonomous debating system. Nature 591(7850), 379–384.

Speer , R., Chin , J. & Havasi , C. 2017. Conceptnet 5.5: An open multilingual graph of general knowledge. In Thirty-first AAAI Conference on Artificial Intelligence.

Stathopoulos , E., Vassiliades , A., Diplaris , S., Vrochidis , S., Bassiliades , N. & Kompatsiaris , I. 2023. The mindspaces knowledge graph: Applied logic and semantics on indoor and urban adaptive design. In Proceedings of the 15th International Conference on Agents and Artificial Intelligence - Volume 3: ICAART. INSTICC, SciTePress, 334–341.

Vassiliades , A., Bassiliades , N., Gouidis , F. & Patkos , T. 2020. A knowledge retrieval framework for household objects and actions with external knowledge. In International Conference on Semantic Systems. Springer, 36–52.

Vassiliades , A., Bassiliades , N. & Patkos , T. 2021. Argumentation and explainable artificial intelligence: a survey. The Knowledge Engineering Review 36, e5.

Vassiliades , A., Bassiliades , N., Patkos , T. & Vrakas , D. 2022. An open-ended web knowledge retrieval framework for the household domain with explanation and learning through argumentation. International Journal on Semantic Web and Information Systems (IJSWIS) 18(1), 1–34.

Vassiliades , A., Patkos , T., Flouris , G., Bikakis , A., Bassiliades , N. & Plexousakis , D. 2021. Abstract argumentation frameworks with domain assignments. In Proceedings of the Thirtieth International Joint Conference on Artificial Intelligence (IJCAI-21). IJCAI: International Joint Conferences on Artificial Intelligence Organization, 2076–2082.

Veerman , A. L. 2000. Computer-Supported Collaborative Learning through Argumentation. PhD thesis, Urtecht University.

Von Aufschnaiter , C., Erduran , S., Osborne , J. & Simon , S. 2008. Arguing to learn and learning to argue: Case studies of how students’ argumentation relates to their scientific knowledge. Journal of Research in Science Teaching: The Official Journal of the National Association for Research in Science Teaching 45(1), 101–131.

Wagner , A. & Rüppel , U. 2019. Bpo: The building product ontology for assembled products. In Proceedings of the 7th Linked Data in Architecture and Construction Workshop (LDAC 2019), Lisbon, Portugal, 12.

Young , J., Basile , V., Kunze , L., Cabrio , E. & Hawes , N. 2016. Towards lifelong object learning by integrating situated robot perception and semantic web mining. In Proceedings of the Twenty-second European Conference on Artificial Intelligence. IOS Press, 1458–1466.

Young , J., Basile , V., Suchi , M., Kunze , L., Hawes , N., Vincze , M. & Caputo , B. 2017. Making sense of indoor spaces using semantic web mining and situated robot perception. In European Semantic Web Conference. Springer, 299–313.

Yu , B. 2019. Research on information retrieval model based on ontology. EURASIP Journal on Wireless Communications and Networking 2019(1), 1–8.

Zamazal , O. 2020. A survey of ontology benchmarks for semantic web ontology tools. International Journal on Semantic Web and Information Systems (IJSWIS) 16(1), 47–68.