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

Related Concept Videos

Vector Algebra: Graphical Method01:10

Vector Algebra: Graphical Method

14.7K
Vectors can be multiplied by scalars, added to other vectors, or subtracted from other vectors. The vector sum of two (or more) vectors is called the resultant vector or, for short, the resultant.
We use the laws of geometry to construct resultant vectors, followed by trigonometry to find vector magnitudes and directions. For a geometric construction of the sum of two vectors in a plane, we follow the parallelogram rule. Suppose two vectors are at arbitrary positions. Translate either one of...
14.7K
Sequence Networks of Rotating Machines01:24

Sequence Networks of Rotating Machines

154
A Y-connected synchronous generator, grounded through a neutral impedance, is designed to produce balanced internal phase voltages with only positive-sequence components. The generator's sequence networks include a source voltage that is exclusively in the positive-sequence network. The sequence components of line-to-ground voltages at the generator terminals illustrate this configuration.
Zero-sequence current induces a voltage drop across the generator's neutral impedance and other...
154
Signal Flow Graphs01:18

Signal Flow Graphs

334
Signal-flow graphs offer a streamlined and intuitive approach to representing control systems, providing an alternative to traditional block diagrams. These graphs use branches to symbolize systems and nodes to represent signals, effectively illustrating the relationships and interactions within the system.
In a signal-flow graph, branches denote the system's transfer functions, while nodes represent the signals. The direction of signal flow is indicated by arrows, with the corresponding...
334
Neural Circuits01:25

Neural Circuits

1.7K
Neural circuits and neuronal pools are two of the main structures found in the nervous system. Neural circuits are networks of neurons that work together to carry out a specific task or process. They consist of interconnected neurons and glial cells, which provide structural and metabolic support.
Neuronal pools are collections of nerve cells with similar functions and interact through chemical and electrical signals. These pools include both interneurons (the central neural circuit nodes that...
1.7K
End Point Prediction: Gran Plot01:07

End Point Prediction: Gran Plot

649
A Gran plot is used to predict the equivalence volume or endpoint of a potentiometric or acid-base titration without reaching the endpoint. Typically, titration data is collected as a function of the titrant's volume up to a point less than the equivalence volume and then transformed into a linear format. The straight line is extended to the x-axis, indicating the necessary titrant volume to achieve the equivalence point.
For potentiometric titration, the Gran plot is created by plotting...
649
Observational Learning01:12

Observational Learning

348
Albert Bandura's observational learning, also known as imitation or modeling, occurs when a person observes and imitates another's behavior. It is a quicker process than operant conditioning. A well-known example is the Bobo doll study, where children who saw an adult acting aggressively towards the doll were more likely to act aggressively when left alone, compared to those who observed a nonaggressive adult. Many psychologists view observational learning as a form of latent learning...
348

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Enhanced upconversion nanoparticles as turn-on fluorescent nanosensors for determination of Porcine epidemic diarrhea virus.

Spectrochimica acta. Part A, Molecular and biomolecular spectroscopy·2026
Same author

Inhibiting methanogenesis with medium-chain fatty acids: strategy for rapid start-up and stable operation of food waste chain elongation systems.

Bioresource technology·2026
Same author

Learning fair graph representation through graph information disentanglement.

Neural networks : the official journal of the International Neural Network Society·2026
Same author

Development of a Light-Triggered Biotin-Bioorthogonal System for Targeted Anti-Tumor Therapy.

Journal of medicinal chemistry·2026
Same author

Mechanistic study of pharmacodynamic regulation in tumorigenesis: Epigenetic targeting of key enzymes by active ginsenoside components.

Cancer letters·2026
Same author

Post-traumatic growth in liver cirrhosis patients: a cross-sectional study on the roles of psychological resilience and fear of progression based on the stress-coping theory.

Frontiers in psychology·2026
Same journal

Hidden Data Recovery and Forecasting via Next-Generation Reservoir Computing With Multiscale Delay Selection.

IEEE transactions on neural networks and learning systems·2026
Same journal

CAFF-CIL: Causality-Aware Freedom Forgetting Approach for Class-Incremental Learning.

IEEE transactions on neural networks and learning systems·2026
Same journal

Harmonic Autoencoding Framework for Multiple Tasks in Magnetic Particle Imaging Reconstruction.

IEEE transactions on neural networks and learning systems·2026
Same journal

A Survey on Human-Centric Voice-Face Multimodal Learning.

IEEE transactions on neural networks and learning systems·2026
Same journal

Vision-Assisted Foundation Model for Solving Multitask Vehicle Routing Problems.

IEEE transactions on neural networks and learning systems·2026
Same journal

FP3O: Enabling Proximal Policy Optimization in Multiagent Cooperation With Parameter-Sharing Versatility.

IEEE transactions on neural networks and learning systems·2026
See all related articles

Related Experiment Video

Updated: Sep 28, 2025

Evidence-based Knowledge Synthesis and Hypothesis Validation: Navigating Biomedical Knowledge Bases via Explainable AI and Agentic Systems
05:47

Evidence-based Knowledge Synthesis and Hypothesis Validation: Navigating Biomedical Knowledge Bases via Explainable AI and Agentic Systems

Published on: June 13, 2025

629

Reverse Graph Learning for Graph Neural Network.

Liang Peng, Rongyao Hu, Fei Kong

    IEEE Transactions on Neural Networks and Learning Systems
    |April 5, 2022
    PubMed
    Summary
    This summary is machine-generated.

    This study introduces a novel reverse Graph Neural Network (GNN) model to enhance feature learning by creating high-quality graphs. The method also introduces an out-of-sample extension for improved supervised and semi-supervised learning.

    More Related Videos

    Inherent Dynamics Visualizer, an Interactive Application for Evaluating and Visualizing Outputs from a Gene Regulatory Network Inference Pipeline
    10:44

    Inherent Dynamics Visualizer, an Interactive Application for Evaluating and Visualizing Outputs from a Gene Regulatory Network Inference Pipeline

    Published on: December 7, 2021

    2.3K

    Related Experiment Videos

    Last Updated: Sep 28, 2025

    Evidence-based Knowledge Synthesis and Hypothesis Validation: Navigating Biomedical Knowledge Bases via Explainable AI and Agentic Systems
    05:47

    Evidence-based Knowledge Synthesis and Hypothesis Validation: Navigating Biomedical Knowledge Bases via Explainable AI and Agentic Systems

    Published on: June 13, 2025

    629
    Inherent Dynamics Visualizer, an Interactive Application for Evaluating and Visualizing Outputs from a Gene Regulatory Network Inference Pipeline
    10:44

    Inherent Dynamics Visualizer, an Interactive Application for Evaluating and Visualizing Outputs from a Gene Regulatory Network Inference Pipeline

    Published on: December 7, 2021

    2.3K

    Area of Science:

    • Machine Learning
    • Graph Neural Networks
    • Data Mining

    Background:

    • Graph Neural Networks (GNNs) excel at feature learning by preserving local data structure.
    • Existing GNNs struggle with noisy initial graphs (faulty/missing edges) and out-of-sample prediction.
    • These limitations hinder performance in real-world applications.

    Purpose of the Study:

    • To propose a reverse GNN model for learning graphs from intrinsic data spaces.
    • To develop a new out-of-sample extension method for GNNs.
    • To improve feature learning quality and enable supervised/semi-supervised learning on unseen data.

    Main Methods:

    • A reverse GNN model is proposed to learn an optimal graph structure.
    • An out-of-sample extension technique is introduced to handle unseen data points.
    • The model integrates graph learning and prediction for enhanced GNN capabilities.

    Main Results:

    • The reverse GNN model generates high-quality graphs, improving feature learning.
    • The out-of-sample extension method allows for effective supervised and semi-supervised learning.
    • Competitive performance achieved in node classification, link prediction, and image retrieval tasks.

    Conclusions:

    • The proposed reverse GNN approach effectively addresses limitations of traditional GNNs.
    • This method offers a robust solution for feature learning and out-of-sample prediction.
    • The approach demonstrates strong potential for various graph-based machine learning applications.