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Bibliographic Details
Main Authors: Ramseyer, Geoffrey, Goel, Ashish
Format: Preprint
Published: 2023
Subjects:
Online Access:https://arxiv.org/abs/2304.02730
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author Ramseyer, Geoffrey
Goel, Ashish
author_facet Ramseyer, Geoffrey
Goel, Ashish
contents Prior work studies the question of ``fairly'' ordering transactions in a replicated state machine. Each of $n$ replicas receives transactions in a possibly different order, and the system must aggregate the observed orderings into a single order. We argue that this problem is best viewed through the lens of social choice theory, in which (in the preference aggregation problem) rankings on candidates are aggregated into an election result. Two features make this problem novel. First, the number of transactions is unbounded, and an ordering must be defined over a countably infinite set. And second, decisions must be made quickly, with only partial information. Additionally, some faulty replicas might alter their reported observations; their influence on the output should be bounded and well understood. Prior work studies a ``$γ$-batch-order-fairness'' property, which divides an ordering into contiguous batches. If a $γ$ fraction of replicas receive $τ$ before $τ^\prime$, then $τ^\prime$ cannot be in an earlier batch than $τ$. We strengthen this definition to require that batches have minimal size ($γ$-batch-order-fairness can be vacuously satisfied by large batches) while accounting for the possibility of faulty replicas. This social choice lens enables an ordering protocol with strictly stronger fairness and liveness properties than prior work. We study the Ranked Pairs method. Analysis of how missing information moves through the algorithm allows our streaming version to know when it can output a transaction. Deliberate construction of a tiebreaking rule ensures our algorithm outputs a transaction after a bounded time (in a synchronous network). Prior work relies on a fixed choice of $γ$ and bound on the number of faulty replicas $f$, but our algorithm satisfies our definition for every $\frac{1}{2}<γ\leq 1$ simultaneously and for any $f$.
format Preprint
id arxiv_https___arxiv_org_abs_2304_02730
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publishDate 2023
record_format arxiv
spellingShingle Fair Ordering in Replicated Systems via Streaming Social Choice
Ramseyer, Geoffrey
Goel, Ashish
Cryptography and Security
Prior work studies the question of ``fairly'' ordering transactions in a replicated state machine. Each of $n$ replicas receives transactions in a possibly different order, and the system must aggregate the observed orderings into a single order. We argue that this problem is best viewed through the lens of social choice theory, in which (in the preference aggregation problem) rankings on candidates are aggregated into an election result. Two features make this problem novel. First, the number of transactions is unbounded, and an ordering must be defined over a countably infinite set. And second, decisions must be made quickly, with only partial information. Additionally, some faulty replicas might alter their reported observations; their influence on the output should be bounded and well understood. Prior work studies a ``$γ$-batch-order-fairness'' property, which divides an ordering into contiguous batches. If a $γ$ fraction of replicas receive $τ$ before $τ^\prime$, then $τ^\prime$ cannot be in an earlier batch than $τ$. We strengthen this definition to require that batches have minimal size ($γ$-batch-order-fairness can be vacuously satisfied by large batches) while accounting for the possibility of faulty replicas. This social choice lens enables an ordering protocol with strictly stronger fairness and liveness properties than prior work. We study the Ranked Pairs method. Analysis of how missing information moves through the algorithm allows our streaming version to know when it can output a transaction. Deliberate construction of a tiebreaking rule ensures our algorithm outputs a transaction after a bounded time (in a synchronous network). Prior work relies on a fixed choice of $γ$ and bound on the number of faulty replicas $f$, but our algorithm satisfies our definition for every $\frac{1}{2}<γ\leq 1$ simultaneously and for any $f$.
title Fair Ordering in Replicated Systems via Streaming Social Choice
topic Cryptography and Security
url https://arxiv.org/abs/2304.02730