5 results on '"Filatovas, Ernestas"'
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2. Advancing Research Reproducibility in Machine Learning through Blockchain Technology.
- Author
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Filatovas, Ernestas, Stripinis, Linas, Orts, Francisco, and Paulavičius, Remigijus
- Subjects
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MACHINE learning , *BLOCKCHAINS , *REPRODUCIBLE research , *ARTIFICIAL intelligence , *ACCESS control , *RESEARCH personnel - Abstract
Like other disciplines, machine learning is currently facing a reproducibility crisis that hinders the advancement of scientific research. Researchers face difficulties reproducing key results due to the lack of critical details, including the disconnection between publications and associated models, data, parameter settings, and experimental results. To promote transparency and trust in research, solutions that improve the accessibility of models and data, facilitate experiment tracking, and allow audit of experimental results are needed. Blockchain technology, characterized by its decentralization, data immutability, cryptographic hash functions, consensus algorithms, robust security measures, access control mechanisms, and innovative smart contracts, offers a compelling pathway for the development of such solutions. To address the reproducibility challenges in machine learning, we present a novel concept of a blockchain-based platform that operates on a peer-to-peer network. This network comprises organizations and researchers actively engaged in machine learning research, seamlessly integrating various machine learning research and development frameworks. To validate the viability of our proposed concept, we implemented a blockchain network using the Hyperledger Fabric infrastructure and conducted experimental simulations in several scenarios to thoroughly evaluate its effectiveness. By fostering transparency and facilitating collaboration, our proposed platform has the potential to significantly improve reproducible research in machine learning and can be adapted to other domains within artificial intelligence. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF
3. Data-Driven Consensus Protocol Classification Using Machine Learning.
- Author
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Marcozzi, Marco, Filatovas, Ernestas, Stripinis, Linas, and Paulavičius, Remigijus
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CLASSIFICATION algorithms , *CLASSIFICATION , *MACHINE learning - Abstract
The consensus protocol plays a vital role in the performance and security of a specific Distributed Ledger Technology (DLT) solution. Currently, the traditional classification of consensus algorithms relies on subjective criteria, such as protocol families (Proof of Work, Proof of Stake, etc.) or other protocol features. However, such classifications often result in representatives with strongly different characteristics belonging to the same category. To address this challenge, a quantitative data-driven classification methodology that leverages machine learning—specifically, clustering—is introduced here to achieve unbiased grouping of analyzed consensus protocols implemented in various platforms. When different clustering techniques were used on the analyzed DLT dataset, an average consistency of 78 % was achieved, while some instances exhibited a match of 100 % , and the lowest consistency observed was 55 % . [ABSTRACT FROM AUTHOR]
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- 2024
- Full Text
- View/download PDF
4. A Decade of Blockchain: Review of the Current Status, Challenges, and Future Directions.
- Author
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PAULAVIČIUS, Remigijus, GRIGAITIS, Saulius, IGUMENOV, Aleksandr, and FILATOVAS, Ernestas
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ELECTRONIC money ,ELECTRONIC systems ,BITCOIN ,TECHNOLOGICAL progress - Abstract
In this paper, we present the progress of blockchain technology from the advent of the original publication titled "Bitcoin: A Peer-to-Peer Electronic Cash System," written by the mysterious Satoshi Nakamoto, until the current days. Historical background and a comprehensive overview of the blockchain technology are given. We provide an up-to-date comparison of the most popular blockchain platforms with particular emphasis given to consensus protocols. Additionally, we introduce a BlockLib, an extensively growing online library on blockchain platforms collected from the various sources and designed to enable contributions from the blockchain community. Main directions of the current blockchain research, facing challenges as well as the main fields of applications, are summarized. We also layout the possible future lines in the blockchain technology development. [ABSTRACT FROM AUTHOR]
- Published
- 2019
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- View/download PDF
5. A MCDM-based framework for blockchain consensus protocol selection.
- Author
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Filatovas, Ernestas, Marcozzi, Marco, Mostarda, Leonardo, and Paulavičius, Remigijus
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BLOCKCHAINS , *DISRUPTIVE innovations , *CONSENSUS (Social sciences) , *DATA integrity , *ENERGY consumption , *MULTIPLE criteria decision making , *BITCOIN - Abstract
Blockchain is one of the most disruptive technologies introduced in Bitcoin, which engaged great attention from the industry and academia and determined a rapid growth of other Distributed Ledger Technologies (DLTs). In the complex architecture of a DLT system, a consensus protocol plays a key role by ensuring that all participants agree on the data integrity without any central authority. A wide range of consensus protocols have been designed with different concepts and properties (e.g., lower energy consumption, better scalability, smaller latency, higher throughput, etc.). The key requirements for consensus protocols passing from one blockchain system to another often differ significantly, and there is no one-fit-all protocol. Therefore, selecting the most suitable consensus protocol for a particular DLT system is essential, but at the same time a challenging step, as decision-makers need to make a trade-off between conflicting requirements. This paper introduces a framework for selecting the most suitable consensus protocols depending on the identified criteria, priorities, and other requirements by incorporating Multi-Criteria Decision-Making (MCDM) techniques. We demonstrate its potential by identifying the preferable consensuses for the three most common types of existing blockchain systems and on an actual application for bike renting. Moreover, the collected data and tools are freely available, ensuring full replicability, reusability, and further development. • A comprehensive literature review dedicated to selecting consensus protocols. • A new open-source data collection reflecting 18 state-of-the-art consensus protocols. • The first MCDM-based framework to identify preferable consensus protocols. • Demonstration on three main types of blockchains and bike renting application. [ABSTRACT FROM AUTHOR]
- Published
- 2022
- Full Text
- View/download PDF
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