Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

What is JoVE Visualize?

  1. Home
  2. Research Domains
  • Information And Computing Sciences
  • Artificial Intelligence
  • Knowledge Representation And Reasoning
  • Knowledge representation and reasoning

    AI-categorized content indicator

    Knowledge representation and reasoning research is a vital area within artificial intelligence focused on how information can be formally structured and logically processed by machines. This field explores ways to model knowledge so that AI systems can understand, infer, and make decisions effectively. By integrating JoVE Visualize’s paired PubMed articles with JoVE’s experiment videos, researchers and students gain a richer understanding of the methodologies and discoveries shaping this evolving discipline.

    Key Methods & Emerging Trends

    Core Methods in Knowledge Representation and Reasoning

    Traditional approaches to knowledge representation and reasoning include logic-based formalisms such as propositional and predicate logic, semantic networks, and frame-based systems. Ontologies play a crucial role, providing structured vocabularies that support consistent data interpretation across AI applications. Rule-based reasoning and Bayesian networks remain foundational techniques, facilitating inference and uncertainty management. These methods underpin much of what is explored in knowledge representation and reasoning PDFs and textbooks, serving as essential tools for AI research and practical implementation.

    Emerging and Innovative Approaches

    Recent advances incorporate machine learning with symbolic reasoning to address challenges in scalability and adaptability. Neural-symbolic integration is gaining momentum, combining deep learning's pattern recognition with classical reasoning's interpretability. Advances in knowledge graphs and probabilistic programming offer dynamic frameworks for complex knowledge scenarios. These trends are shaping the future of knowledge representation and reasoning in AI, reflected in new research questions and course materials that bridge traditional concepts with cutting-edge techniques.

    Recently Published Articles

    |April 15, 2026

    Strengthening research infrastructure through local networks of light microscopy facilities

    Ann Wheeler, Dale A Moulding

    |April 15, 2026

    The relationship between physical activity and academic burnout among Yi primary school students in Southwest China: a moderated chain-mediation model

    Wei Zhang, Xuping Zhao, Xiaoqian Hong, Yanxi Chen, Kang Zhang

    |April 15, 2026

    Comparative evaluation of sperm parameters in Italian (<i>Apis mellifera ligustica</i>) and Africanized (<i>Apis mellifera</i>) honeybee drones from the Caatinga biome

    Lilian Leal Dantas, Andréia Maria da Silva, Leandro Alves da Silva, Pedro Augusto Pinheiro Brito, Yuri Gonçalves Matos, Romário Parente Santos, Kátia Peres Gramacho, Alexandre Rodrigues Silva

    |April 15, 2026

    Six-month surveillance of <i>Candida parapsilosis</i> in Tyrol, Austria: high-risk ST11 lineage and early, heterogeneous fluconazole resistance

    Stephan Steixner, Roya Vahedi-Shahandashti, David Eisele, Werner Ruppitsch, Cornelia Lass-Flörl

    |April 15, 2026

    Psychometric Comparison of the Complete and Short Form of the Persian Academic Procrastination Scale Among Iranian Students

    Abbas Abdollahi, Fateme Nematollahi, Soolmaz Dehghanidowlatabadi

    |April 15, 2026

    Phylogenomics unravels the early divergence and diversification in Bignoniaceae

    Pengpeng Yan, Chang Guo, Xingyong Cui, Enze Li, Yuran Bai, Manuel R Roncal-Rabanal, Gangmin Zhang, Wenpan Dong

    |April 15, 2026

    Strategies to Enhance Satisfaction and Success in an Academic Career in Pharmacoepidemiology

    Vincent Lo Re, Greta Bushnell, Luciane Cruz Lopes, Anton Pottegård

    |April 15, 2026

    When high hopes meet low action: identifying the "Ambitious Procrastinator" profile in the physical activity intention-behavior gap and its mental health toll

    Xishan Liu, Peijun Wei

    Pageof 1,997,530