Ontology in Hybrid Intelligence: a concise literature review (2303.17262v2)
Abstract: In a context of constant evolution and proliferation of AI technology,Hybrid Intelligence is gaining popularity to refer a balanced coexistence between human and artificial intelligence. The term has been extensively used in the past two decades to define models of intelligence involving more than one technology. This paper aims to provide (i) a concise and focused overview of the adoption of Ontology in the broad context of Hybrid Intelligence regardless of its definition and (ii) a critical discussion on the possible role of Ontology to reduce the gap between human and artificial intelligence within hybrid intelligent systems. Beside the typical benefits provided by an effective use of ontologies, at a conceptual level, the conducted analysis has pointed out a significant contribution of Ontology to improve quality and accuracy, as well as a more specific role to enable extended interoperability, system engineering and explainable/transparent systems. Additionally, an application-oriented analysis has shown a significant role in present systems (70+% of the cases) and, potentially, in future systems. However, despite the relatively consistent number of papers on the topic, a proper holistic discussion on the establishment of the next generation of hybrid-intelligent environments with a balanced co-existence of human and artificial intelligence is fundamentally missed in literature. Last but not the least, there is currently a relatively low explicit focus on automatic reasoning and inference in hybrid intelligent systems.
- Applications of artificial intelligence in transport: An overview. Sustainability, 11(1):189, 2019.
- Arash Bahrammirzaee. A comparative survey of artificial intelligence applications in finance: artificial neural networks, expert system and hybrid intelligent systems. Neural Computing and Applications, 19(8):1165–1195, 2010.
- Hybrid intelligent framework for automated medical learning. Expert Systems, 39(6):e12737, 2022.
- Using hybrid intelligent information system approach for text question generation. In CEUR Workshop Proceedings, volume 2782, pages 194–201, 2020.
- The semantic web. Scientific american, 284(5):34–43, 2001.
- Linked data: The story so far. In Semantic services, interoperability and web applications: emerging concepts, pages 205–227. IGI global, 2011.
- Ontology support for communicating agents in negotiation processes. In Fifth International Conference on Hybrid Intelligent Systems (HIS’05), pages 6–pp. IEEE, 2005.
- Requirements and challenges for hybrid intelligence: A case-study in education. Frontiers in Artificial Intelligence, 5, 2022.
- Concept maps: Integrating knowledge and information visualization. Knowledge and information visualization: Searching for synergies, pages 205–219, 2005.
- Design and conceptual development of a novel hybrid intelligent decision support system applied towards the prevention and early detection of forest fires. Forests, 14(2):172, 2023.
- What are ontologies, and why do we need them? IEEE Intelligent Systems and their applications, 14(1):20–26, 1999.
- Ontology-guided intelligent data mining assistance: Combining declarative and procedural knowledge. In Artificial Intelligence and Soft Computing, volume 2006, pages 9–14, 2006.
- Artificial intelligence in education: A review. Ieee Access, 8:75264–75278, 2020.
- The social web of things (swot)-structuring an integrated social network for human, things and services. J. Comput., 9(2):345–352, 2014.
- The hybrid intelligent information system approach as the basis for cognitive architecture. Procedia computer science, 145:143–152, 2018.
- A fog-based hybrid intelligent system for energy saving in smart buildings. Journal of Ambient Intelligence and Humanized Computing, 11:2793–2807, 2020.
- Hybrid intelligence. Business & Information Systems Engineering, 61(5):637–643, 2019.
- Design principles for a hybrid intelligence decision support system for business model validation. Electronic markets, 29:423–441, 2019.
- Applications of ontologies in requirements engineering: a systematic review of the literature. Requirements engineering, 21:405–437, 2016.
- A generic architecture for hybrid intelligent test systems. In 2008 7th IEEE International Conference on Cybernetic Intelligent Systems, pages 1–8. IEEE, 2008.
- Supporting trust in hybrid intelligence systems using blockchains. In AAAI Spring Symposium: Combining Machine Learning with Knowledge Engineering (1), 2020.
- An ontological and agent-oriented modeling approach for the specification of intelligent ambient assisted living systems for parkinson patients. In Hybrid Artificial Intelligent Systems: 8th International Conference, HAIS 2013, Salamanca, Spain, September 11-13, 2013. Proceedings 8, pages 11–20. Springer, 2013.
- Using a cbr approach based on ontologies for recommendation and reuse of knowledge sharing in decision making. In 2008 Eighth International Conference on Hybrid Intelligent Systems, pages 837–842. IEEE, 2008.
- Dss-based ontology alignment in solid reference system configuration. In Hybrid Intelligent Systems: 18th International Conference on Hybrid Intelligent Systems (HIS 2018) Held in Porto, Portugal, December 13-15, 2018 18, pages 530–539. Springer, 2020.
- Human-machine collaboration in online customer service–a long-term feedback-based approach. Electronic Markets, 31:319–341, 2021.
- Nicola Guarino. Formal ontology, conceptual analysis and knowledge representation. International journal of human-computer studies, 43(5-6):625–640, 1995.
- MB Hadjiski and VG Boishina. Integration of knowledge components in hybrid intelligent control systems. Innovative Issues in Intelligent Systems, pages 57–109, 2016.
- Hvac control via hybrid intelligent systems. Cybernetics and Information Technologies, 7(1):71–94, 2007.
- Artificial intelligence in medicine. Metabolism, 69:S36–S40, 2017.
- A hybrid intelligent multiagent system for the remote control of solar farms. Applied Artificial Intelligence, 33(2):124–136, 2019.
- Hybint: a hybrid intelligence system for critical infrastructures protection. Security and Communication Networks, 2018, 2018.
- Argumentation for knowledge base inconsistencies in hybrid intelligence scenarios. In KR4HI First International Workshop on Knowledge Representation for Hybrid intelligence, 2022.
- Knowledge graphs. ACM Computing Surveys (CSUR), 54(4):1–37, 2021.
- Hybrid intelligence for driver assistance. In FLAIRS Conference, pages 281–285, 2003.
- Towards ontology-based intelligent model for intrusion detection and prevention. In Computational Intelligence in Security for Information Systems: CISIS’09, 2nd International Workshop Burgos, Spain, September 2009 Proceedings, pages 109–116. Springer, 2009.
- Ontologies in digital twins: A systematic literature review. arXiv preprint arXiv:2308.15168, 2023.
- On social web sites. Information systems, 35(2):215–236, 2010.
- Agents’ ontologies negotiation in cohesive hybrid intelligent multi-agent systems. In Journal of Physics: Conference Series, volume 2094, page 032033. IOP Publishing, 2021.
- Gary Klein. The power of intuition: How to use your gut feelings to make better decisions at work. Currency, 2004.
- Gary A Klein. Sources of power: How people make decisions. MIT press, 2017.
- A hybrid reasoning architecture for business intelligence applications. In 2008 Eighth International Conference on Hybrid Intelligent Systems, pages 843–848. IEEE, 2008.
- Cognitive architecture for co-evolutionary hybrid intelligence. In Artificial General Intelligence: 15th International Conference, AGI 2022, Seattle, WA, USA, August 19–22, 2022, Proceedings, pages 293–303. Springer, 2023.
- Co-evolutionary hybrid intelligence is a key concept for the world intellectualization. Kybernetes, (ahead-of-print), 2022.
- Stargazer: A hybrid intelligence platform for drug target prioritization and digital drug repositioning using streamlit. Frontiers in Genetics, 13, 2022.
- Jan Marco Leimeister. Collective intelligence. Business & Information Systems Engineering, 2:245–248, 2010.
- Assessing the impact of automated suggestions on decision making: Domain experts mediate model errors but take less initiative. In Proceedings of the 2021 CHI Conference on Human Factors in Computing Systems, pages 1–13, 2021.
- Applications of artificial intelligence in intelligent manufacturing: a review. Frontiers of Information Technology & Electronic Engineering, 18:86–96, 2017.
- An agent-based hybrid intelligent system for financial investment planning. In 2010 International Conference on E-Product E-Service and E-Entertainment, pages 1–4. IEEE, 2010.
- S Listopad. Estimating of the similarity of agents’ goals in cohesive hybrid intelligent multi-agent system. In Proceedings of the 8th International conference Fuzzy Systems, Soft Computing and Intelligent Technologies (FSSCIT-2020), pages 180–185, 2020.
- Sergey Listopad. Cohesive hybrid intelligent multi-agent system architecture. In 2020 26th Conference of Open Innovations Association (FRUCT), pages 262–269. IEEE, 2020.
- Sergey Listopad. Modeling team cohesion using hybrid intelligent multi-agent systems. In 2020 2nd International Conference on Control Systems, Mathematical Modeling, Automation and Energy Efficiency (SUMMA), pages 416–421. IEEE, 2020.
- SV Listopad and IA Kirikov. Similarity measure of agents’ ontologies in cohesive hybrid intelligent multi-agent system. In Journal of Physics: Conference Series, volume 1679, page 032061. IOP Publishing, 2020.
- Yang Lu. Artificial intelligence: a survey on evolution, models, applications and future trends. Journal of Management Analytics, 6(1):1–29, 2019.
- Cyber-individual meets brain informatics. IEEE Intelligent Systems, 26(5):30–37, 2011.
- Computing Machinery. Computing machinery and intelligence-am turing. Mind, 59(236):433, 1950.
- Efficient services in the industry 4.0 and intelligent management network. In 2017 IEEE 26th International Symposium on Industrial Electronics (ISIE), pages 1495–1500. IEEE, 2017.
- Human abilities: Emotional intelligence. Annu. Rev. Psychol., 59:507–536, 2008.
- John McCarthy. What is artificial intelligence. 2007.
- Explaining scientific and technical emergence forecasting. Applications of Social Media and Social Network Analysis, pages 177–192, 2015.
- In the search of web of intelligence. In 2019 5th International Conference on Web Research (ICWR), pages 215–220. IEEE, 2019.
- Future progress in artificial intelligence: A survey of expert opinion. Fundamental issues of artificial intelligence, pages 555–572, 2016.
- Peter Murray-Rust. Open data in science. Nature Precedings, pages 1–1, 2008.
- Natalya F Noy. Semantic integration: a survey of ontology-based approaches. ACM Sigmod Record, 33(4):65–70, 2004.
- The evaluation of ontologies: Toward improved semantic interoperability. Semantic web: Revolutionizing knowledge discovery in the life sciences, pages 139–158, 2007.
- Sharon Oviatt. Technology as infrastructure for dehumanization: three hundred million people with the same face. In Proceedings of the 2021 International Conference on Multimodal Interaction, pages 278–287, 2021.
- Tim O’reilly. What is web 2.0, 2005.
- The noosphere paradigm of the development of science and artificial intelligence. Cybernetics and Systems Analysis, 53:503–511, 2017.
- S Palvannan and Gerard Deepak. Hias: Hybrid intelligence approach for soil classification and recommendation of crops. In Electronic Governance with Emerging Technologies: First International Conference, EGETC 2022, Tampico, Mexico, September 12–14, 2022, Revised Selected Papers, pages 81–94. Springer, 2023.
- Yunhe Pan. Heading toward artificial intelligence 2.0. Engineering, 2(4):409–413, 2016.
- Tadeusz Pankowski. Combining owl ontology and schema annotations in metadata management. In Hybrid Artificial Intelligent Systems: 6th International Conference, HAIS 2011, Wroclaw, Poland, May 23-25, 2011, Proceedings, Part I 6, pages 255–262. Springer, 2011.
- Ontology in software engineering. In ACIS 2018-29th Australasian Conference on Information Systems, 2018.
- Salvatore Flavio Pileggi. Getting formal ontologies closer to final users through knowledge graph visualization: Interpretation and misinterpretation. In Computational Science–ICCS 2022: 22nd International Conference, London, UK, June 21–23, 2022, Proceedings, Part IV, pages 611–622. Springer, 2022.
- Knowledge graph identification. In The Semantic Web–ISWC 2013: 12th International Semantic Web Conference, Sydney, NSW, Australia, October 21-25, 2013, Proceedings, Part I 12, pages 542–557. Springer, 2013.
- Benedikt Reitemeyer. Automatic generation of conceptual enterprise models. In 2020 IEEE 24th International Enterprise Distributed Object Computing Workshop (EDOCW), pages 74–79. IEEE, 2020.
- Introduction: a hybrid regulatory framework and technical architecture for a human-centered and explainable ai. In AI Approaches to the Complexity of Legal Systems XI-XII: AICOL International Workshops 2018 and 2020: AICOL-XI@ JURIX 2018, AICOL-XII@ JURIX 2020, XAILA@ JURIX 2020, Revised Selected Papers XII, pages 1–11. Springer, 2021.
- Sophiya Rumovskaya. Visualization of team cohesion in hybrid intelligent multi-agent systems. In 2020 2nd International Conference on Control Systems, Mathematical Modeling, Automation and Energy Efficiency (SUMMA), pages 620–623. IEEE, 2020.
- Vis4ml: An ontology for visual analytics assisted machine learning. IEEE transactions on visualization and computer graphics, 25(1):385–395, 2018.
- Context aware ontology-based hybrid intelligent framework for vehicle driver categorization. Transactions on Emerging Telecommunications Technologies, 33(8):e3729, 2022.
- Principles of building personalized intelligent human assistants. In 2022 Fourth International Conference Neurotechnologies and Neurointerfaces (CNN), pages 148–151. IEEE, 2022.
- Daniil Shunkevich. Ontology-based design of hybrid problem solvers. In Open Semantic Technologies for Intelligent Systems: 11th International Conference, OSTIS 2021, Minsk, Belarus, September 16–18, 2021, Revised Selected Papers, pages 101–131. Springer, 2022.
- Ontology-based knowledge representation for bioinformatics. Briefings in bioinformatics, 1(4):398–414, 2000.
- The text fragment extraction module of the hybrid intelligent information system for analysis of judicial practice of arbitration courts. In Advances in Neural Computation, Machine Learning, and Cognitive Research IV: Selected Papers from the XXII International Conference on Neuroinformatics, October 12-16, 2020, Moscow, Russia, pages 242–248. Springer, 2021.
- H Holden Thorp. Chatgpt is fun, but not an author, 2023.
- Knowledge graphs as tools for explainable machine learning: A survey. Artificial Intelligence, 302:103627, 2022.
- A hybrid fuzzy-ontology based intelligent system to determine level of severity and treatment recommendation for benign prostatic hyperplasia. Computer methods and programs in biomedicine, 113(1):301–313, 2014.
- Artificial intelligence (ai) applications for covid-19 pandemic. Diabetes & Metabolic Syndrome: Clinical Research & Reviews, 14(4):337–339, 2020.
- Modular design patterns for hybrid learning and reasoning systems: a taxonomy, patterns and use cases. Applied Intelligence, 51(9):6528–6546, 2021.
- Ontology-based meta-model for hybrid collaborative scheduling. In Hybrid Intelligent Systems: 18th International Conference on Hybrid Intelligent Systems (HIS 2018) Held in Porto, Portugal, December 13-15, 2018 18, pages 408–417. Springer, 2020.
- Assessing the impact of generative ai on medicinal chemistry. Nature biotechnology, 38(2):143–145, 2020.
- Hybrid intelligence aspects of programming in* aida algorithmic pictures. Future Generation Computer Systems, 37:417–428, 2014.
- Ontology-based systems engineering: A state-of-the-art review. Computers in Industry, 111:148–171, 2019.
- Artificial intelligence in healthcare. Nature biomedical engineering, 2(10):719–731, 2018.
- An agent-based hybrid intelligent system for financial investment planning. In PRICAI 2002: Trends in Artificial Intelligence: 7th Pacific Rim International Conference on Artificial Intelligence Tokyo, Japan, August 18–22, 2002 Proceedings 7, pages 355–364. Springer, 2002.
- Hybrid-augmented intelligence: collaboration and cognition. Frontiers of Information Technology & Electronic Engineering, 18(2):153–179, 2017.
- Constructing hybrid intelligent systems for data mining from agent perspectives. Intelligent Technologies for Information Analysis, pages 333–359, 2004.
- Salvatore F. Pileggi (3 papers)