On Optimizing Transaction Fees in Bitcoin using AI: Investigation on Miners Inclusion Pattern
Permanent link
https://hdl.handle.net/10037/25022Date
2022-04-09Type
Journal articleTidsskriftartikkel
Peer reviewed
Abstract
The transaction-rate bottleneck built into popular proof-of-work-based cryptocurrencies, like Bitcoin and Ethereum, leads to fee markets where transactions are included according to a first-price auction for block space. Many attempts have been made to adjust and predict the fee volatility, but even well-formed transactions sometimes experience unexpected delays and evictions unless a substantial fee is offered. In this paper, we propose a novel transaction inclusion model that describes the mechanisms and patterns governing miners decisions to include individual transactions in the Bitcoin system. Using this model we devise a Machine Learning (ML) approach to predict transaction inclusion. We evaluate our predictions method using historical observations of the Bitcoin network from a five month period that includes more than 30 million transactions and 120 million entries. We find that our Machine Learning (ML) model can predict fee volatility with an accuracy of up to 91%. Our findings enable Bitcoin users to improve their fee expenses and the approval time for their transactions.
Is part of
Tedeschi, E. (2023). Predictive Modeling for Fair and Efficient Transaction Inclusion in Proof-of-Work Blockchain Systems. (Doctoral thesis). https://hdl.handle.net/10037/31116.Publisher
Association for Computing Machinery (ACM)Citation
Tedeschi, Nordmo, Johansen, Johansen. On Optimizing Transaction Fees in Bitcoin using AI: Investigation on Miners Inclusion Pattern. ACM Transactions on Internet Technology. 2022Metadata
Show full item recordCollections
Copyright 2022 The Author(s)
Related items
Showing items related by title, author, creator and subject.
-
Improving the text compression ratio for ASCII text Using a combination of dictionary coding, ASCII compression, and Huffman coding
Haldar-Iversen, Sondre (Mastergradsoppgave; Master thesis, 2020-11-15)Data compression is a field that has been extensively researched. Many compression algorithms in use today have been around for several decades, like Huffman Coding and dictionary coding. These are general-purpose compression algorithms and can be used on anything from text data to images and video. There are, however, much fewer lossless algorithms that are customized for compressing certain types ... -
Beam based finite element modelling of Herøysund bridge
Berg, Patrick Norheim (Master thesis; Mastergradsoppgave, 2023-05-15)In this thesis the candidate aims to model two finite elements models of the post tensioned concrete Herøysund bridge. First a solid element model is modelled using the documentation from the bridge construction, then a beam element model is modelled using the solid model as a foundation. These models are subjected to a structural analysis that applies boundary conditions, joints, mass, gravity, ... -
Wireless charging of offshore wind service vessels
Nilsen, Henrik Fjeld (Master thesis; Mastergradsoppgave, 2021-05-18)This report discusses the possibility for wireless charging solutions for electric vessels, with a focus on offshore wind turbine service. Where the charging time is minimal and safety for crew is important. Different types of wireless technologies have been studied, where the Inductive power transfer (IPT) is shown to be the preferred technology. Inductive power transfer (IPT) grants a safe ...