AU-NN: ANFIS Unit Neural Network

In this paper is described the ANFIS Unit Neural Network, a deep neural network where each neuron is an independent ANFIS. Two use cases of this network are shown to test the capability of the network. (i) Classification of five imagined words. (ii) Incremental learning in the task of detecting Imagined Word Segments vs. Idle State Segments. In both cases, the proposed network outperforms the conventional methods. Additionally, is described a process of classification where instead of taking the whole instance as one example, each instance is decomposed into a set of smaller instances, and the classification is done by a majority vote over all the predictions of the set. The codes to build the AU-NN used in this paper, are available on the github repository https://github.com/tonahdztoro/AU_NN.

READ FULL TEXT

page 3

page 4

research
12/15/2021

Rethinking Nearest Neighbors for Visual Classification

Neural network classifiers have become the de-facto choice for current "...
research
12/14/2020

Application of the Neural Network Dependability Kit in Real-World Environments

In this paper, we provide a guideline for using the Neural Network Depen...
research
08/12/2023

Instruction Set Architecture (ISA) for Processing-in-Memory DNN Accelerators

In this article, we introduce an instruction set architecture (ISA) for ...
research
01/16/2023

On Using Deep Learning Proxies as Forward Models in Deep Learning Problems

Physics-based optimization problems are generally very time-consuming, e...
research
06/23/2022

Measuring Representational Robustness of Neural Networks Through Shared Invariances

A major challenge in studying robustness in deep learning is defining th...
research
06/12/2019

Sionnx: Automatic Unit Test Generator for ONNX Conformance

Open Neural Network Exchange (ONNX) is an open format to represent AI mo...
research
10/14/2021

The Irrationality of Neural Rationale Models

Neural rationale models are popular for interpretable predictions of NLP...

Please sign up or login with your details

Forgot password? Click here to reset