Главная
Study mode:
on
1
Intro
2
Description and Types of Inference
3
Description and Uses
4
Methods of Embedding
5
Structure of Memory Networks
6
Inference of Memory Networks
7
Training/Learning in Memory Networks
8
Problem Formulation
9
Syntactic Normalization
10
Model Architecture
11
Model Description
12
Cross KG entailment
Description:
Explore deductive reasoning for cross-knowledge graph entailment in this 17-minute video from the Neuro Symbolic Channel. Delve into the framework of deduction, knowledge graphs, and memory networks as part of a series on cutting-edge artificial intelligence and machine learning concepts. Learn about inference types, embedding methods, memory network structures, and their training processes. Examine the problem formulation, syntactic normalization, and model architecture for cross-knowledge graph entailment. Access accompanying slides and research paper for deeper understanding. Originally from an AI course at Arizona State University, this presentation by Aniruddha Datta, Ethan Clark, and Viswa Ivaturi offers valuable insights into the intersection of symbolic methods and deep learning.

Deductive Reasoning for Cross-Knowledge Graph Entailment - Part 1

Neuro Symbolic
Add to list
0:00 / 0:00