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Secure decision tree twin support vector machine training and classification process for encrypted IoT data via Blockchain platform

IR@CIMFR: CSIR-Central Institute of Mining and Fuel Research, Dhanbad

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Title Secure decision tree twin support vector machine training and classification process for encrypted IoT data via Blockchain platform
 
Creator Chaulya, Swades Kumar
 
Subject Instrumentation
 
Description A secure decision tree twin support vector machine (DT-TSVM) multi-classification algorithm has been proposed in this paper for improving the reliability and security of the collected IoT data from multiple data providers. The multiclass secure DT-TSVM algorithm has been employed to train a machine learning model using the encrypted training dataset. The training dataset is collected via a blockchain platform. A blockchain method has been adopted to construct a secure and reliable distributed platform among dataset providers. The Paillier homomorphic cryptosystem has been applied for encrypting the IoT dataset. Then, the dataset has been recorded on the distributed ledger. The secure DT-TSVM algorithm's-based train model effectiveness has been compared with the other two available algorithms, namely the multiclass binary support vector machine (MBSVM) and one-to-one SVM algorithms. The experiment results showed that the privacy-preserving multiclass secure DT-TSVM-based model did not reduce the accuracy, but it increased the average precision and recall by 0.53% and 0.44% than MBSVM and 0.82% and 0.71% than one-to-one SVM, respectively. Further, the time consumption of data providers and data analysts did not change significantly with the increase of number of data provider.
 
Publisher Wiley
 
Date 2021-03
 
Type Article
PeerReviewed
 
Identifier Chaulya, Swades Kumar (2021) Secure decision tree twin support vector machine training and classification process for encrypted IoT data via Blockchain platform. Concurrency and Computation Practice andExperience.
 
Relation http://cimfr.csircentral.net/2365/