Predicting Transaction Latency with Deep Learning in Proof-of-Work Blockchains
Abstract
Proof-of-work based cryptocurrencies, like Bitcoin, have a fee market
where transactions are included in the blockchain 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 delays
and evictions unless an enormous fee is paid.
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In this paper, we present a novel machine-learning model, solving a binary classification problem, that can predict
transaction fee volatility in the Bitcoin network so that users can optimize
their fees expenses and the approval time for their transactions.
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The model's output will give a confidence score whether a new incoming transaction will be included in the next mined block.
The model is trained on data from a longitudinal study of the Bitcoin blockchain, containing more than 10 million transactions.
New features that we generate include information on how many bytes were already
occupied by other transactions in the mempool, assuming
they are ordered by fee density in each mining pool.
The collected dataset allows to generate a model for transaction
inclusion pattern prediction in the Bitcoin network, hence telling whether a transaction
is well formed or not, according to the previous transactions analyzed.
With this, we obtain a prediction score for up to 86%.
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
IEEE (Institute of Electrical and Electronical Engineers)Citation
Tedesch,i E; Nordmo, TA; Johansen, D; Johansen, H.J. (2019) Predicting Transaction Latency with Deep Learning in Proof-of-Work Blockchains. Proceedings of 2019 IEEE International Conference on Big Data (Big Data), 4223-4231.Metadata
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