New Bounds for the Ideal Proof System in Positive Characteristic
Amik Raj Behera, Nutan Limaye, Varun Ramanathan, Srikanth Srinivasan

TL;DR
This paper extends bounds for the Ideal Proof System (IPS) from characteristic zero fields to positive characteristic fields, establishing exponential lower bounds and efficient refutations for certain algebraic proof subsystems.
Contribution
It adapts the functional lower bound method to positive characteristic fields, providing new exponential lower bounds and demonstrating efficient refutations for symmetric instances.
Findings
Exponential size lower bounds for IPS subsystems over positive characteristic fields.
Efficient constant-depth IPS refutations for certain instances.
Constant-depth IPS can refute all symmetric instances efficiently.
Abstract
In this work, we prove upper and lower bounds over fields of positive characteristics for several fragments of the Ideal Proof System (IPS), an algebraic proof system introduced by Grochow and Pitassi (J. ACM 2018). Our results extend the works of Forbes, Shpilka, Tzameret, and Wigderson (Theory of Computing 2021) and also of Govindasamy, Hakoniemi, and Tzameret (FOCS 2022). These works primarily focused on proof systems over fields of characteristic , and we are able to extend these results to positive characteristic. The question of proving general IPS lower bounds over positive characteristic is motivated by the important question of proving -Frege lower bounds. This connection was observed by Grochow and Pitassi (J. ACM 2018). Additional motivation comes from recent developments in algebraic complexity theory due to Forbes (CCC 2024) who showed how to extend previous…
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Taxonomy
TopicsPolynomial and algebraic computation · Complexity and Algorithms in Graphs · Advanced Graph Theory Research
