Continual learning classification method with the weighted k-nearest neighbor rule for time-varying data space based on the artificial immune system

2022 ◽  
pp. 108145
Author(s):  
Dong Li ◽  
Ming Gu ◽  
Shulin Liu ◽  
Xin Sun ◽  
Lanlan Gong ◽  
...  
2021 ◽  
pp. 1-14
Author(s):  
Dong Li ◽  
Shulin Liu ◽  
Furong Gao ◽  
Xin Sun

Classification methods play an important role in many fields. However, they cannot effectively classify the samples from sample spaces that are varying with time, for they lack continual learning ability. A continual learning classification method for time-varying data space based on artificial immune system, CLCMTVD, is proposed. It is inspired by the intelligent mechanism that memory cells of the biological immune system can recognize and eliminate previous invaders when they attack again very fast and more efficiently, and these memory cells can evolve with the evolution of previous invaders. Memory cells were continuously updated by learning testing data during the testing stage, thus realize the self-improvement of classification performance. CLCMTVD changes a linearly inseparable spatial problem into many classification problems of several different times, and it will degenerate into a common supervised learning classification method when all data independent of time. To assess the performance and possible advantages of CLCMTVD, the experiments on well-known datasets from UCI repository, synthetic data and XJTU-SY rolling element bearing accelerated life test datasets were performed. Results show that CLCMTVD has better classification performance for time-invariant data, and outperforms the other methods for time-varying data space.


2012 ◽  
Vol 433-440 ◽  
pp. 900-906 ◽  
Author(s):  
H.R. Mamatha ◽  
Murthy K. Srikanta ◽  
K.S. Amrutha ◽  
P. Anusha ◽  
R. Azeemunisa

Artificial immune system (AIS) based classification approach is relatively new in the field of pattern recognition (PR). The capability of AIS for learning new information, recalling what has been learned and recognizing a decentralized pattern are reasons why numerous models have been developed, implemented and used in various types of problems. This paper explores this paradigm in the context of recognition of handwritten Kannada numerals. In this paper, the AIS is used for training the extracted features of handwritten Kannada numerals. Zonal based feature extraction algorithm is being used and K-Nearest Neighbor (K-NN) classifier is used for classification. The performance of the proposed algorithm has been investigated in detail on nearly 1250 samples of Handwritten Kannada Numerals and an recognition accuracy of 98.11% has been obtained.


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