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What is JoVE Visualize?

  1. Home
  2. Research Domains
  • Information And Computing Sciences
  • Data Management And Data Science
  • Data Mining And Knowledge Discovery
  • Data mining and knowledge discovery

    AI-categorized content indicator

    Data mining and knowledge discovery research is a dynamic field focused on extracting valuable insights and patterns from large datasets, bridging the gap between raw data and actionable knowledge. This category falls under Information and Computing Sciences, specifically within data management and data science, reflecting its pivotal role in handling complex information. Researchers and students benefit from JoVE Visualize, which enriches traditional PubMed articles by pairing them with JoVE’s experiment videos, offering a more immersive understanding of research methods and discoveries in this field.

    Key Methods & Emerging Trends

    Core Methods in Data Mining and Knowledge Discovery

    Established methods in data mining and knowledge discovery include classification, clustering, association rule mining, and anomaly detection. These techniques enable researchers to organize, interpret, and summarize vast amounts of data effectively. Algorithms such as decision trees, support vector machines, and neural networks represent foundational tools. Preprocessing steps like data cleaning and dimensionality reduction are also central to enhancing data quality and analysis outcomes. These core practices have consistently driven advances in fields ranging from bioinformatics to market analysis.

    Emerging and Innovative Approaches

    Emerging methods in this field emphasize deep learning integration, automated machine learning (AutoML), and explainable AI to improve the interpretability and efficiency of data mining results. Innovative trends also focus on leveraging big data platforms and cloud computing to handle increasingly large and complex datasets. Additionally, real-time data mining and adaptive learning models are gaining traction, addressing the need for timely and dynamic knowledge discovery. Researchers interested in the Data mining and knowledge discovery impact factor often explore these developments to understand evolving publication landscapes. JoVE Visualize supports these insights by linking new research with experiment videos that illuminate novel methodologies.

    Recently Published Articles

    |April 15, 2026

    Picolinate-based acyclic ligand for rare earth element extraction and separation

    Yangyang Gao, Sean Medin, Alexa M Schmitz, Justin J Wilson

    |April 15, 2026

    Lead and antimony enrichment in soils near informal lead-acid battery repair shops in central India and associated human health risks

    Aarti Sahu, Saquib Ali, Kamini Arya, Bhagyashree Meena, Surbhi Mathur, Animesh Kumar, Subbiah Rajasekaran, Rajesh Ahirwar

    |April 15, 2026

    Predicting copper leaching from slag: an interpretable machine learning approach under oxidative sulfuric acid conditions

    Sung-Jin Kim, Song-Sae Kang, Kyong-Nam Pae, Song-Il Pak, Hyon-Il Jo, Ryong-Jin Kim

    |April 15, 2026

    The Third-Generation Magnetic Super-Stable Mineralizer: Complete Removal and Separation of Multiple Heavy Metal Pollutants

    Haoran Wang, Menghan Huang, Ruihua Mao, Xiaohan Zhang, Zhaohui Wu, Xiaofeng Pang, Tong Lin, Dongyuan Cui, Sai An, Yu-Fei Song

    |April 15, 2026

    A federated multimodal deep learning framework for brain tumor classification using MRI

    K Lakshmi Vasanthi, J Sree Darshne, Pattabiraman Venkatasubbu, Parvathi Ramasubramanian

    |April 15, 2026

    Maximizing fidelity of neuropsychology assessments in fully remote studies

    Keera N Fishman, Paula M McLaughlin, Brian Tan, Angela K Troyer, Joseph B Orange, Angela C Roberts, Donna Kwan, Brian Levine, Natalie Rashkovan, Richard H Swartz

    |April 15, 2026

    Time-resolved tomography algorithm using one projection per time step: Non-monotonic case

    Maxim Grigoriev, Alexey Buzmakov

    |April 15, 2026

    Cybersecurity breaches in medical devices: analyzing FDA safety communications in response to patient security concerns

    Vidya Menon

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