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

Associative Learning01:27

Associative Learning

849
Associative learning is a fundamental concept in behavioral psychology, wherein a connection is established between two stimuli or events, leading to a learned response. This process is critical in understanding how behaviors are acquired and modified. Conditioning, the mechanism through which associations are formed, can be divided into two main types: classical conditioning and operant conditioning, each elucidating different aspects of associative learning.
Classical conditioning, also known...
849
Introduction to Learning01:18

Introduction to Learning

695
Learning is the process of acquiring knowledge or skills through practice or experience, leading to long-lasting behavioral changes. This acquisition occurs through interaction with the environment and requires practice or experience. For instance, mastering a skill such as surfing requires considerable practice and experience, highlighting the essential role of repeated interactions with the environment in learning.
In contrast to learned behaviors, unlearned behaviors such as crying, sexual...
695
Observational Learning01:12

Observational Learning

613
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...
613
The Representativeness Heuristic02:13

The Representativeness Heuristic

16.5K
The representative heuristic describes a biased way of thinking, in which you unintentionally stereotype someone or something. For example, you may assume that your professors spend their free time reading books and engaging in intellectual conversation, because the idea of them spending their time playing volleyball or visiting an amusement park does not fit in with your stereotypes of professors.
16.5K
Vector Algebra: Graphical Method01:10

Vector Algebra: Graphical Method

16.1K
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...
16.1K
Cognitive Learning01:21

Cognitive Learning

828
Cognitive learning is based on purposive behavior, incidental learning, and insight learning.
E. C. Tolman's theory of purposive behavior emphasizes that much behavior is goal-directed. He argued that to understand behavior, we must look at the entire sequence of actions leading to a goal. For instance, high school students study hard, not just due to past reinforcement but also to achieve the goal of getting into a good college.
Tolman introduced the idea that behavior is influenced by...
828

You might also read

Related Articles

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

Sort by
Same author

Analytical study on steady seepage of a foundation pit adjacent to a structure.

Scientific reports·2025
Same author

PKG-Mediated Phosphorylation of TOP2A Activates HDAC to Drive Photoreceptor Cell Death in rd1 Mouse Inherited Retinal Degeneration.

Journal of neurochemistry·2025
Same author

A Circularly Polarized Broadband Composite Spiral Antenna for Ground Penetrating Radar.

Sensors (Basel, Switzerland)·2025
Same author

Fabricating a Three-Dimensional Surface-Enhanced Raman Scattering Substrate Using Hydrogel-Loaded Freeze-Induced Silver Nanoparticle Aggregates for the Highly Sensitive Detection of Organic Pollutants in Seawater.

Sensors (Basel, Switzerland)·2025
Same author

Investigating immune cell infiltration and gene expression features in pterygium pathogenesis.

Scientific reports·2025
Same author

Clinical characteristics and risk factors for readmission after deep anterior lamellar keratoplasty: a nationwide, cross-sectional, multicenter study.

BMC ophthalmology·2025

Related Experiment Video

Updated: Nov 16, 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

893

Learning Knowledge Graph Embedding With Heterogeneous Relation Attention Networks.

Zhifei Li, Hai Liu, Zhaoli Zhang

    IEEE Transactions on Neural Networks and Learning Systems
    |February 19, 2021
    PubMed
    Summary
    This summary is machine-generated.

    This study introduces a novel heterogeneous graph neural network (GNN) framework using an attention mechanism for knowledge graph (KG) embedding. The method effectively aggregates diverse semantic information from complex graph data, outperforming existing approaches.

    More Related Videos

    Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness
    03:14

    Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness

    Published on: December 6, 2024

    839
    A Methodology for Capturing Joint Visual Attention Using Mobile Eye-Trackers
    12:39

    A Methodology for Capturing Joint Visual Attention Using Mobile Eye-Trackers

    Published on: January 18, 2020

    7.9K

    Related Experiment Videos

    Last Updated: Nov 16, 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

    893
    Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness
    03:14

    Augmenting Large Language Models via Vector Embeddings to Improve Domain-Specific Responsiveness

    Published on: December 6, 2024

    839
    A Methodology for Capturing Joint Visual Attention Using Mobile Eye-Trackers
    12:39

    A Methodology for Capturing Joint Visual Attention Using Mobile Eye-Trackers

    Published on: January 18, 2020

    7.9K

    Area of Science:

    • Artificial Intelligence
    • Machine Learning
    • Data Science

    Background:

    • Knowledge graph (KG) embedding seeks to represent KGs in a lower-dimensional space while preserving their structure.
    • Graph neural networks (GNNs) are powerful tools for graph representation learning.
    • Heterogeneous KGs, with diverse entities and relations, pose challenges for standard GNNs in aggregating multi-semantic information.

    Purpose of the Study:

    • To propose a novel heterogeneous GNN framework that effectively handles complex graph structures and aggregates multi-semantic information.
    • To develop a method that can capture various types of semantic information and selectively aggregate informative features for KG embedding.

    Main Methods:

    • A heterogeneous GNN framework employing an attention mechanism is proposed.
    • Neighbor features are aggregated under each relation-path.
    • Relation features are utilized to learn the importance of different relation-paths.
    • Weighted aggregation of relation-path-based features generates the final embedding representation.

    Main Results:

    • The proposed method successfully aggregates entity features from different semantic aspects.
    • It selectively aggregates informative features by assigning appropriate weights.
    • Experiments on three real-world KGs show superior performance compared to state-of-the-art methods.

    Conclusions:

    • The novel heterogeneous GNN framework effectively addresses the challenge of KG embedding in heterogeneous graphs.
    • The attention-based approach enables selective aggregation of multi-semantic information, leading to improved embedding representations.
    • This work offers a promising direction for advancing KG embedding techniques.