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Related Concept Videos

Structural Joints: Synovial Joints01:16

Structural Joints: Synovial Joints

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Synovial joints are the most common type of joint in the body. A key structural characteristic for a synovial joint is the presence of a joint cavity. This fluid-filled space is where the articulating surfaces of the bones contact each other. Also, unlike fibrous or cartilaginous joints, the articulating bone surfaces at a synovial joint are not directly connected to each other with fibrous connective tissue or cartilage. This gives the bones of a synovial joint the ability to move smoothly...
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Structural Joints: Fibrous Joints01:03

Structural Joints: Fibrous Joints

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Fibrous joints are a type of joint where the bones are connected by fibrous connective tissue. These joints provide stability and minimal to no movement between the articulating bones. There are three types of fibrous joints.
Suture
All the bones of the skull, except for the mandible, are joined to each other by a fibrous joint called a suture. The fibrous connective tissue found at a suture strongly unites the adjacent skull bones and thus helps to protect the brain and form the face. In...
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Structural Joints: Cartilaginous Joints01:17

Structural Joints: Cartilaginous Joints

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As the name indicates, at a cartilaginous joint, the adjacent bones are united by cartilage, a tough but flexible type of connective tissue. Unlike synovial joints, these types of joints lack a joint cavity and involve bones joined together by either hyaline cartilage or fibrocartilage.
There are two types of cartilaginous joints:
Synchondrosis
A synchondrosis ("joined by cartilage") is a cartilaginous joint where bones are connected by hyaline cartilage. Synchondrosis may be temporary...
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Joints01:26

Joints

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Joints, also called articulations or articular surfaces, are points at which ligaments or other tissues connect adjacent bones. Joints permit movement and stability, and can be classified based on their structure or function.
Structural joint classifications are based on the material that makes up the joint as well as whether or not the joint contains a space between the bones. Joints are structurally classified as fibrous, cartilaginous, or synovial.
Fibrous Joints Are Immovable
The bones of a...
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Method of Joints01:30

Method of Joints

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The method of joints is a commonly used technique to analyze the forces in structural trusses. The method is based on the principle of equilibrium, which assumes that the truss members are connected by frictionless pins. The forces at each joint can be determined by considering the equilibrium of the forces acting on that joint.
Since plane truss members are in the same plane, each joint is subjected to a coplanar and concurrent force system. To apply the method of joints, the first step is to...
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Introduction to Joints00:58

Introduction to Joints

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The adult human body usually has 206 bones, and except for the hyoid bone in the neck, each bone is connected to at least one other bone. Joints are the location where bones come together. Many joints allow for movement between the bones. At these joints, the articulating surfaces of the adjacent bones can move smoothly against each other. However, the bones of other joints may be joined by connective tissue or cartilage. These joints are designed for stability and provide little or no...
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Jointly learning word embeddings using a corpus and a knowledge base.

Mohammed Alsuhaibani1, Danushka Bollegala1,2, Takanori Maehara3,2

  • 1Department of Computer Science, University of Liverpool, Liverpool, United Kingdom.

Plos One
|March 13, 2018
PubMed
Summary
This summary is machine-generated.

This study introduces a novel method for learning word embeddings by integrating knowledge from text corpora and knowledge bases (KBs). This approach enhances semantic understanding and improves performance on various natural language processing tasks.

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Area of Science:

  • Natural Language Processing
  • Computational Linguistics
  • Artificial Intelligence

Background:

  • Traditional word embedding methods rely solely on text corpora, often overlooking valuable semantic relationships.
  • Manually curated knowledge bases (KBs) like ontologies capture rich word relationships but are not always integrated with corpus-based methods.
  • Existing approaches struggle to fully leverage the complementary strengths of both textual data and structured knowledge.

Purpose of the Study:

  • To develop a joint word representation learning method that effectively combines information from text corpora and knowledge bases.
  • To enhance the accuracy and semantic richness of word embeddings by incorporating relational knowledge.
  • To introduce novel techniques for dynamically expanding knowledge bases to improve embedding generation.

Main Methods:

  • A joint learning framework that uses corpus co-occurrence statistics and relational constraints derived from KBs.
  • Development of Nearest Neighbour Expansion (NNE) and Hedged Nearest Neighbour Expansion (HNE) for dynamic KB augmentation.
  • An objective function defined by corpus data, constrained by KB-derived relationships.

Main Results:

  • The proposed method significantly improves the accuracy of learned word embeddings compared to corpus-only baselines.
  • Experimental results demonstrate superior performance on benchmark tasks, including semantic similarity prediction and word analogy detection.
  • The novel NNE and HNE approaches effectively expand the KB, providing more guidance for the optimization process.

Conclusions:

  • Integrating knowledge from both text corpora and KBs leads to demonstrably better word embeddings.
  • The proposed joint learning method offers a powerful approach for enhancing natural language understanding.
  • Dynamic KB expansion techniques further refine embedding quality, outperforming existing hybrid methods.