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    Home»Machine Learning»Study Note 26 Shallow Versus Deep Neural Networks | by Edward Yang | Mar, 2025
    Machine Learning

    Study Note 26 Shallow Versus Deep Neural Networks | by Edward Yang | Mar, 2025

    Team_AIBS NewsBy Team_AIBS NewsMarch 31, 2025No Comments2 Mins Read
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    Shallow vs Deep Neural Networks

    Shallow neural networks sometimes have one or two hidden layers

    Deep neural networks have three or extra hidden layers and plenty of neurons in every layer

    Deep neural networks can course of uncooked knowledge like pictures and textual content, whereas shallow networks solely take vector inputs

    Traits of Deep Neural Networks

    Deep neural networks can routinely extract needed options from uncooked knowledge

    They carry out higher with bigger quantities of information, not like typical machine studying algorithms

    Deep neural networks are efficient at avoiding overfitting when skilled with massive datasets

    Elements Behind the Deep Studying Growth

    1. Developments within the discipline:

    Introduction of ReLU activation operate helped overcome the vanishing gradient drawback

    This development enabled the creation of very deep neural networks

    2. Availability of information:

    Deep neural networks require massive quantities of information for optimum efficiency

    The elevated availability of information has facilitated experimentation with deep studying algorithms

    3. Improved computational energy:

    Highly effective GPUs have considerably diminished coaching time for deep neural networks

    Sooner coaching permits for extra experimentation and prototyping

    Affect on Machine Studying

    Deep studying algorithms proceed to enhance with extra knowledge, not like typical machine studying strategies

    The mix of elevated knowledge availability and computational energy has accelerated progress within the discipline

    Historic Context

    Neural networks have existed for a while however solely just lately turned “deep”

    The latest developments have led to quite a few thrilling functions in varied fields



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