Neuro-Symbolic AI with Knowledge Graph | "True Reasoning" through data and logic 🌿🌱🐋🌍
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Updated
Nov 8, 2024 - JavaScript
Neuro-Symbolic AI with Knowledge Graph | "True Reasoning" through data and logic 🌿🌱🐋🌍
PyTorch implementation for the Neuro-Symbolic Concept Learner (NS-CL).
Implementation for the Neural Logic Machines (NLM).
A collection of papers of neural-symbolic AI (mainly focus on NLP applications)
Python library that enables using prolog syntax and logic programming in python
[CVPR 2024] Neural Markov Random Field for Stereo Matching
AIKA is a new type of artificial neural network designed to more closely mimic the behavior of a biological brain and to bridge the gap to classical AI. A key design decision in the Aika network is to conceptually separate the activations from their neurons, meaning that there are two separate graphs. One graph consisting of neurons and synapses…
Neuro-Symbolic Visual Question Answering on Sort-of-CLEVR using PyTorch
An efficient Python toolkit for Abductive Learning (ABL), a novel paradigm that integrates machine learning and logical reasoning in a unified framework.
RelNN is a novel first-order deep neural model for relational learning.
Lernd is ∂ILP (dILP) framework implementation based on Deepmind's paper Learning Explanatory Rules from Noisy Data.
Usable implementation of Emerging Symbol Binding Network (ESBN), in Pytorch
Holographic Reduced Representations
Tree Stack Memory Units
An attempt to merge ESBN with Transformers, to endow Transformers with the ability to emergently bind symbols
Pytorch implementation for Perspective Plane Program Induction from a Single Image (P3I).
A novel approach to learning concept embeddings and approximate reasoning in ALC knowledge bases with deep neural networks
BotGNN: Inclusion of Domain-Knowledge into GNNs using Mode-Directed Inverse Entailment
Vertex-Enriched Graph Neural Network (VEGNN)
PyEDCR is a package providing error detecting and corrective rules into Python. Given a model, PyEDCR's goal is to recognize when it is incorrect based on a set of conditions and then correct the incorrect prediction.
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