Random forest classifier Abstract The phenomenon of cryptocurrencies continues to draw a lot of attention from investors, innovators and the general public. There are over different cryptocurrencies, including Bitcoin, Ethereum and Litecoin.
While the scope of blockchain technology and cryptocurrencies continues to increase, identification of unethical and fraudulent behaviour still remains an open issue. The absence of regulation of the cryptocurrencies ecosystem litecoin arba ethereum the lack of transparency of the transactions may lead to an increased number of fraudulent cases.
In this research, we have analyzed the possibility to identify fraudulent behaviour using different classification techniques. Based on Etherium transactional data, we constructed a transaction network which was analyzed using a graph traversal algorithm.
Data clustering was performed using three machine learning algorithms: k-means clustering, Support Vector Machine and random forest classifier.
The performance of the classifiers was evaluated using a few accuracy metrics that can be calculated from confusion matrix.
- Jo kūrėjų prielaidos buvo pašalinti bitkoino trūkumus ir sukurti efektyvesnę kriptovaliutą.
- Bitkoinas galėtų pakeisti dolerį
- Sužinokite, kaip nusipirkti Litecoin - BTC Mainai Egera
Research results revealed that the best performance was achieved using a random forest classification model.
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