DETERMINISTIC COMMUNICATION VS. PARTITION NUMBER\Ast
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Automating Cutting Planes Is NP-Hard
Automating Cutting Planes is NP-Hard Mika G¨o¨os† Sajin Koroth Ian Mertz Toniann Pitassi Stanford University Simon Fraser University Uni. of Toronto Uni. of Toronto & IAS April 20, 2020 Abstract We show that Cutting Planes (CP) proofs are hard to find: Given an unsatisfiable formula F , (1) it is NP-hard to find a CP refutation of F in time polynomial in the length of the shortest such refutation; and (2) unless Gap-Hitting-Set admits a nontrivial algorithm, one cannot find a tree-like CP refutation of F in time polynomial in the length of the shortest such refutation. The first result extends the recent breakthrough of Atserias and M¨uller (FOCS 2019) that established an analogous result for Resolution. Our proofs rely on two new lifting theorems: (1) Dag-like lifting for gadgets with many output bits. (2) Tree-like lifting that simulates an r-round protocol with gadgets of query complexity O(log r) independent of input length. Contents 1 Introduction1 4.1 Subcubes from simplices . .9 1.1 Cutting Planes . .1 4.2 Simplified proof . 11 1.2 Dag-like result . .2 4.3 Accounting for error . 12 1.3 Tree-like result . .2 5 Tree-like definitions 13 2 Overview of proofs3 5.1 Tree-like dags/proofs . 13 2.1 Dag-like case . .3 5.2 Real protocols . 14 arXiv:2004.08037v1 [cs.CC] 17 Apr 2020 2.2 Tree-like case . .4 6 Tree-like lifting 14 3 Dag-like definitions6 6.1 Proof of real lifting . 14 3.1 Standard models . -
Some Hardness Escalation Results in Computational Complexity Theory Pritish Kamath
Some Hardness Escalation Results in Computational Complexity Theory by Pritish Kamath B.Tech. Indian Institute of Technology Bombay (2012) S.M. Massachusetts Institute of Technology (2015) Submitted to Department of Electrical Engineering and Computer Science in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Electrical Engineering & Computer Science at Massachusetts Institute of Technology February 2020 ⃝c Massachusetts Institute of Technology 2019. All rights reserved. Author: ............................................................. Department of Electrical Engineering and Computer Science September 16, 2019 Certified by: ............................................................. Ronitt Rubinfeld Professor of Electrical Engineering and Computer Science, MIT Thesis Supervisor Certified by: ............................................................. Madhu Sudan Gordon McKay Professor of Computer Science, Harvard University Thesis Supervisor Accepted by: ............................................................. Leslie A. Kolodziejski Professor of Electrical Engineering and Computer Science, MIT Chair, Department Committee on Graduate Students Some Hardness Escalation Results in Computational Complexity Theory by Pritish Kamath Submitted to Department of Electrical Engineering and Computer Science on September 16, 2019, in partial fulfillment of the requirements for the degree of Doctor of Philosophy in Computer Science & Engineering Abstract In this thesis, we prove new hardness escalation results in computational complexity theory; a phenomenon where hardness results against seemingly weak models of computation for any problem can be lifted, in a black box manner, to much stronger models of computation by considering a simple gadget composed version of the original problem. For any unsatisfiable CNF formula F that is hard to refute in the Resolution proof system, we show that a gadget-composed version of F is hard to refute in any proof system whose lines are computed by efficient communication protocols. -
IAN MERTZ Contact Research Theory Group [email protected] Department of Computer Science University of Toronto
IAN MERTZ Contact Research www.cs.toronto.edu/∼mertz Theory Group [email protected] Department of Computer Science University of Toronto EDUCATION University of Toronto, Toronto, ON ................................................................... Winter 2018- Ph.D. in Computer Science Advisor: Toniann Pitassi University of Toronto, Toronto, ON .......................................................... Fall 2016-Winter 2018 Masters in Science, Computer Science Advisor: Toniann Pitassi, Stephen Cook Rutgers University, Piscataway, NJ ........................................................... Fall 2012-Spring 2016 B.S. in Computer Science, B.A. in Mathematics, B.A. in East Asian Language Studies (concentration in Japanese) Summa cum laude, honors program, Dean's List PUBLICATIONS Lifting is as easy as 1,2,3 Ian Mertz, Toniann Pitassi In submission, STOC '21. Automating Cutting Planes is NP-hard Mika G¨o¨os,Sajin Koroth, Ian Mertz, Toniann Pitassi In Proc. 52nd ACM Symposium on Theory of Computing (STOC '20), Association for Computing Machinery (ACM), 84 (132) pp. 68-77, 2020. Catalytic Approaches to the Tree Evaluation Problem James Cook, Ian Mertz In Proc. 52nd ACM Symposium on Theory of Computing (STOC '20), Association for Computing Machinery (ACM), 84 (132) pp. 752-760, 2020. Short Proofs Are Hard to Find Ian Mertz, Toniann Pitassi, Yuanhao Wei In Proc. 46th International Colloquium on Automata, Languages and Programming (ICALP '19), Leibniz International Proceedings in Informatics (LIPIcs), 84 (132) pp. 1-16, 2019. Dual VP Classes Eric Allender, Anna G´al,Ian Mertz computational complexity, 25 pp. 1-43, 2016. An earlier version appeared in Proc. 40th International Symposium on Mathematical Foundations of Computer Science (MFCS '15), Lecture Notes in Computer Science, 9235 pp. 14-25, 2015. -
Query-To-Communication Lifting for PNP∗†
Query-to-Communication Lifting for PNP∗† Mika Göös1, Pritish Kamath2, Toniann Pitassi3, and Thomas Watson4 1 Harvard University, Cambridge, MA, USA [email protected] 2 Massachusetts Institute of Technology, Cambridge, MA, USA [email protected] 3 University of Toronto, Toronto, ON, Canada [email protected] 4 University of Memphis, Memphis, TN, USA [email protected] Abstract We prove that the PNP-type query complexity (alternatively, decision list width) of any boolean function f is quadratically related to the PNP-type communication complexity of a lifted version of f. As an application, we show that a certain “product” lower bound method of Impagliazzo and Williams (CCC 2010) fails to capture PNP communication complexity up to polynomial factors, which answers a question of Papakonstantinou, Scheder, and Song (CCC 2014). 1998 ACM Subject Classification F.1.3 Complexity Measures and Classes Keywords and phrases Communication Complexity, Query Complexity, Lifting Theorem, PNP Digital Object Identifier 10.4230/LIPIcs.CCC.2017.12 1 Introduction Broadly speaking, a query-to-communication lifting theorem (a.k.a. communication- to-query simulation theorem) translates, in a black-box fashion, lower bounds on some type of query complexity (a.k.a. decision tree complexity) [38, 6, 19] of a boolean function f : {0, 1}n → {0, 1} into lower bounds on a corresponding type of communication complexity [23, 19, 27] of a two-party version of f. Table 1 lists several known results in this vein. In this work, we provide a lifting theorem for PNP-type query/communication complexity. PNP decision trees. Recall that a deterministic (i.e., P-type) decision tree computes an n-bit boolean function f by repeatedly querying, at unit cost, individual bits xi ∈ {0, 1} of the input x until the value f(x) is output at a leaf of the tree. -