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Bibliographic Details
Main Authors: Davis, Vincent, Rossi, Emanuele, Singh, Vikash
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.12087
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author Davis, Vincent
Rossi, Emanuele
Singh, Vikash
author_facet Davis, Vincent
Rossi, Emanuele
Singh, Vikash
contents The Bitcoin Lightning Network is a Layer 2 payment protocol that addresses Bitcoin's scalability by facilitating quick and cost effective transactions through payment channels. This research explores the feasibility of using machine learning models to interpolate channel balances within the network, which can be used for optimizing the network's pathfinding algorithms. While there has been much exploration in balance probing and multipath payment protocols, predicting channel balances using solely node and channel features remains an uncharted area. This paper evaluates the performance of several machine learning models against two heuristic baselines and investigates the predictive capabilities of various features. Our model performs favorably in experimental evaluation, outperforming by 10% against an equal split baseline where both edges are assigned half of the channel capacity.
format Preprint
id arxiv_https___arxiv_org_abs_2405_12087
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Channel Balance Interpolation in the Lightning Network via Machine Learning
Davis, Vincent
Rossi, Emanuele
Singh, Vikash
Machine Learning
The Bitcoin Lightning Network is a Layer 2 payment protocol that addresses Bitcoin's scalability by facilitating quick and cost effective transactions through payment channels. This research explores the feasibility of using machine learning models to interpolate channel balances within the network, which can be used for optimizing the network's pathfinding algorithms. While there has been much exploration in balance probing and multipath payment protocols, predicting channel balances using solely node and channel features remains an uncharted area. This paper evaluates the performance of several machine learning models against two heuristic baselines and investigates the predictive capabilities of various features. Our model performs favorably in experimental evaluation, outperforming by 10% against an equal split baseline where both edges are assigned half of the channel capacity.
title Channel Balance Interpolation in the Lightning Network via Machine Learning
topic Machine Learning
url https://arxiv.org/abs/2405.12087