Symbolic Knowledge Extraction using Łukasiewicz Logics

04/11/2016
by   Carlos Leandro, et al.
0

This work describes a methodology that combines logic-based systems and connectionist systems. Our approach uses finite truth-valued Łukasiewicz logic, wherein every connective can be defined by a neuron in an artificial network. This allowed the injection of first-order formulas into a network architecture, and also simplified symbolic rule extraction. For that we trained a neural networks using the Levenderg-Marquardt algorithm, where we restricted the knowledge dissemination in the network structure. This procedure reduces neural network plasticity without drastically damaging the learning performance, thus making the descriptive power of produced neural networks similar to the descriptive power of Łukasiewicz logic language and simplifying the translation between symbolic and connectionist structures. We used this method for reverse engineering truth table and in extraction of formulas from real data sets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/11/2016

Reverse Engineering and Symbolic Knowledge Extraction on Łukasiewicz Fuzzy Logics using Linear Neural Networks

This work describes a methodology to combine logic-based systems and con...
research
04/11/2016

Knowledge Extraction and Knowledge Integration governed by Łukasiewicz Logics

The development of machine learning in particular and artificial intelli...
research
04/13/2005

Diagnostic Rule Extraction Using Neural Networks

The neural networks have trained on incomplete sets that a doctor could ...
research
12/22/2021

Neural-Symbolic Integration for Interactive Learning and Conceptual Grounding

We propose neural-symbolic integration for abstract concept explanation ...
research
03/16/2020

Deep Adaptive Semantic Logic (DASL): Compiling Declarative Knowledge into Deep Neural Networks

We introduce Deep Adaptive Semantic Logic (DASL), a novel framework for ...
research
05/31/2017

Propositional Knowledge Representation in Restricted Boltzmann Machines

Representing symbolic knowledge into a connectionist network is the key ...
research
07/03/2003

Generation of Explicit Knowledge from Empirical Data through Pruning of Trainable Neural Networks

This paper presents a generalized technology of extraction of explicit k...

Please sign up or login with your details

Forgot password? Click here to reset