The Proceedings of The Computational Mechanics Conference
Online ISSN : 2424-2799
2022.35
Session ID : 22-09
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A consideration on causal structure and real time of FQHNN using Iris data
*Hiroe ABELuis DIAGOAtsushi MINAMIHATAIchiro HAGIAWARA
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Abstract

It is effective for promoting self-driving car society to grasp driver’s emotions in level 3 and to grasp remote observer ‘s ones in level 4 which are difficult for Convolutional Neural Network (CNN) which is leading the present third generation of AI because CNN has not clear causality. And so our object is to grasp these emotions by using Fuzzy quantification(FQ) theory aided Holographic Neural Network(FQHNN) because both of HNN and FQ theory have causality and HNN is highefficiency. But here we try to grasp the causal characteristics of FQHNN by using IRIS data which is often used for classification. As a result, it becomes clear that only HNN has not enough accurate but FQHNN is good accuracy in both learning and predict. And we get two causal characteristics from FQHNN.

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© 2022 The Japan Society of Mechanical Engineers
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