Remove Definition Remove Explainability Remove Neural Network
article thumbnail

Liquid Neural Networks: Definition, Applications, & Challenges

Unite.AI

A neural network (NN) is a machine learning algorithm that imitates the human brain's structure and operational capabilities to recognize patterns from training data. Despite being a powerful AI tool, neural networks have certain limitations, such as: They require a substantial amount of labeled training data.

article thumbnail

This AI Paper from King’s College London Introduces a Theoretical Analysis of Neural Network Architectures Through Topos Theory

Marktechpost

In their paper, the researchers aim to propose a theory that explains how transformers work, providing a definite perspective on the difference between traditional feedforward neural networks and transformers. Despite their widespread usage, the theoretical foundations of transformers have yet to be fully explored.

professionals

Sign Up for our Newsletter

This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.

Trending Sources

article thumbnail

Researchers at the University College London Unravel the Universal Dynamics of Representation Learning in Deep Neural Networks

Marktechpost

Deep neural networks (DNNs) come in various sizes and structures. The specific architecture selected along with the dataset and learning algorithm used, is known to influence the neural patterns learned. It shows that these networks naturally learn structured representations, especially when they start with small weights.

article thumbnail

Explainable AI: Thinking Like a Machine

Towards AI

Alongside this, there is a second boom in XAI or Explainable AI. Explainable AI is focused on helping us poor, computationally inefficient humans understand how AI “thinks.” First bringing together conflicting literature on what XAI is and some important definitions and distinctions.

article thumbnail

Graph Neural Networks (GNNs) – 2024 Comprehensive Guide

Viso.ai

Graph Neural Networks (GNNs) are a type of neural network designed to directly operate on graphs, a data structure consisting of nodes (vertices) and edges connecting them. In this article, we’ll start with a gentle introduction to Graph Neural Networks and follow with a comprehensive technical deep dive.

article thumbnail

Explainability and Interpretability

Pickl AI

Summary: This blog post delves into the importance of explainability and interpretability in AI, covering definitions, challenges, techniques, tools, applications, best practices, and future trends. It highlights the significance of transparency and accountability in AI systems across various sectors.

article thumbnail

Researchers at Cambridge Provide Empirical Insights into Deep Learning through the Pedagogical Lens of Telescopic Model that Uses First-Order Approximations

Marktechpost

Neural networks remain a beguiling enigma to this day. Neural networks many times exhibit counterintuitive and abnormal behavior, like non-monotonic generalization performance, which reinstates doubts about their caliber. Even XGBoost and Random Forests outperform neural networks in structured data.