比例结块性的高效算法及其在公共区块链中自私挖矿的应用

Algorithms Pub Date : 2024-04-15 DOI:10.3390/a17040159
Carla Piazza, Sabina Rossi, Daria Smuseva
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摘要

本文探讨了比例可凑合性的概念,将其作为可凑合性原始定义的扩展,以解决在计算大型随机模型性能指标时状态空间爆炸问题带来的挑战。可凑合性传统上依赖于状态聚合技术,适用于表现出结构规律性的马尔可夫链。比例可凑合性扩展了这一理念,提出马尔可夫链的过渡率可以通过某些因素进行修改,从而产生可凑合的新马尔可夫链。这一概念有助于推导出原始流程的精确性能指标。本文确定了计算最粗比例可叠加性问题的定义明确的性质,以完善给定的初始分区,确保存在唯一的解决方案。此外,本文还介绍了一种多项式时间算法来解决这一问题,为比例可包性概念和更广泛的分区细化技术领域提供了宝贵的见解。比例可凑合性的有效性通过一个案例研究得到了证明,该案例研究包括设计一个模型来调查公共区块链上的自私挖矿行为。这项研究有助于人们更好地理解处理大型随机模型的有效方法,并突出了比例可凑合性在推导精确性能指标方面的实际应用性。
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Efficient Algorithm for Proportional Lumpability and Its Application to Selfish Mining in Public Blockchains
This paper explores the concept of proportional lumpability as an extension of the original definition of lumpability, addressing the challenges posed by the state space explosion problem in computing performance indices for large stochastic models. Lumpability traditionally relies on state aggregation techniques and is applicable to Markov chains demonstrating structural regularity. Proportional lumpability extends this idea, proposing that the transition rates of a Markov chain can be modified by certain factors, resulting in a lumpable new Markov chain. This concept facilitates the derivation of precise performance indices for the original process. This paper establishes the well-defined nature of the problem of computing the coarsest proportional lumpability that refines a given initial partition, ensuring a unique solution exists. Additionally, a polynomial time algorithm is introduced to solve this problem, offering valuable insights into both the concept of proportional lumpability and the broader realm of partition refinement techniques. The effectiveness of proportional lumpability is demonstrated through a case study that consists of designing a model to investigate selfish mining behaviors on public blockchains. This research contributes to a better understanding of efficient approaches for handling large stochastic models and highlights the practical applicability of proportional lumpability in deriving exact performance indices.
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