- About
- Events
- Events
- Calendar
- Graduation Information
- Cornell Learning Machines Seminar
- Student Colloquium
- BOOM
- Spring 2025 Colloquium
- Conway-Walker Lecture Series
- Salton 2024 Lecture Series
- Seminars / Lectures
- Big Red Hacks
- Cornell University / Cornell Tech - High School Programming Workshop and Contest 2025
- Game Design Initiative
- CSMore: The Rising Sophomore Summer Program in Computer Science
- Explore CS Research
- ACSU Research Night
- Cornell Junior Theorists' Workshop 2024
- People
- Courses
- Research
- Undergraduate
- M Eng
- MS
- PhD
- PhD
- Admissions
- Current Students
- Computer Science Graduate Office Hours
- Advising Guide for Research Students
- Business Card Policy
- Cornell Tech
- Curricular Practical Training
- A & B Exam Scheduling Guidelines
- Fellowship Opportunities
- Field of Computer Science Ph.D. Student Handbook
- Graduate TA Handbook
- Field A Exam Summary Form
- Graduate School Forms
- Instructor / TA Application
- Ph.D. Requirements
- Ph.D. Student Financial Support
- Special Committee Selection
- Travel Funding Opportunities
- Travel Reimbursement Guide
- The Outside Minor Requirement
- Robotics Ph. D. prgram
- Diversity and Inclusion
- Graduation Information
- CS Graduate Minor
- Outreach Opportunities
- Parental Accommodation Policy
- Special Masters
- Student Spotlights
- Contact PhD Office
Concentration Bounds for Almost k-wise Independence with Applications to Non-Uniform Security (via Zoom)
Abstract: We prove a few concentration inequalities for the sum of n binary random variables under weaker conditions than k-wise independence. Namely, we consider two standard conditions that are satisfied in many applications: (a) direct product conditions (b) XOR condition. Both conditions are weaker than mutual independence and both imply strong concentration bounds (similar to Chernoff-Hoeffding) on the tail probability of the sum of bounded random variables ([Impagliazzo and Kabanets, APPROX-RANDOM 10], [Unger, FOCS 09]). Our inequalities can be stated as the implication of threshold direct product theorems from either k-wise direct product conditions, or the k-wise XOR condition. By proving optimality of our inequalities, we show a clear separation for k≪n between k-wise product conditions and XOR condition as well as a stark contrast between k-wise and n-wise product theorems.
We use these bounds in the cryptographic application that provides provable security against algorithms with S-bit advice. Namely, we show how the problem reduces to proving S-wise direct product theorems or S-wise XOR lemmas for certain ranges of parameters. Finally, we derive a new S-wise XOR lemma, which yields a tight non-uniform bound for length increasing pseudorandom generators, resolving a 10-year-old open problem from [De, Trevisan, and Tulsiani, CRYPTO 10].
Joint work with Nick Gravin, Tsz Chiu Kwok and Pinyan Lu.
Bio: Siyao Guo is an Assistant Professor of Computer Science, NYU Shanghai; Global Network Assistant Professor, NYU. Previously, she was a postdoctoral fellow at the Cybersecurity and Privacy Institute at Northeastern University, Simons Institute for the theory of computation at UC Berkeley, and the Courant Institute of Mathematical Sciences at New York University. Her research interests are cryptography, computational complexity and pseudorandomness.