The Automatic Training of Rule Bases that Use Numerical Uncertainty Representations

03/27/2013
by   Richard A. Caruana, et al.
0

The use of numerical uncertainty representations allows better modeling of some aspects of human evidential reasoning. It also makes knowledge acquisition and system development, test, and modification more difficult. We propose that where possible, the assignment and/or refinement of rule weights should be performed automatically. We present one approach to performing this training - numerical optimization - and report on the results of some preliminary tests in training rule bases. We also show that truth maintenance can be used to make training more efficient and ask some epistemological questions raised by training rule weights.

READ FULL TEXT

page 1

page 2

page 3

page 4

page 5

page 6

page 7

research
03/01/2021

Measuring Inconsistency over Sequences of Business Rule Cases

In this report, we investigate (element-based) inconsistency measures fo...
research
11/19/2019

Towards Inconsistency Measurement in Business Rule Bases

We investigate the application of inconsistency measures to the problem ...
research
03/27/2013

Truth Maintenance Under Uncertainty

This paper addresses the problem of resolving errors under uncertainty i...
research
04/20/2019

Mining Rules Incrementally over Large Knowledge Bases

Multiple web-scale Knowledge Bases, e.g., Freebase, YAGO, NELL, have bee...
research
10/19/2012

Dealing with uncertainty in fuzzy inductive reasoning methodology

The aim of this research is to develop a reasoning under uncertainty str...
research
02/25/2020

Training Binary Neural Networks using the Bayesian Learning Rule

Neural networks with binary weights are computation-efficient and hardwa...
research
02/19/2015

Forgetting and consolidation for incremental and cumulative knowledge acquisition systems

The application of cognitive mechanisms to support knowledge acquisition...

Please sign up or login with your details

Forgot password? Click here to reset