Effects of symmetry in combinatorial complexity measures of Boolean functions/ Chandrima Kayal
Material type:
- 23rd 511.324 K23
- Guided by Prof. Sourav Chakraborty
Item type | Current library | Call number | Status | Notes | Date due | Barcode | Item holds | |
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THESIS | ISI Library, Kolkata | 511.324 K23 (Browse shelf(Opens below)) | Available | E-Thesis. Guided by Prof. Sourav Chakraborty | TH618 |
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Thesis (Ph.D.) - Indian Statistical Institute, 2024
Includes bibliography
Introduction -- Preliminaries -- Classes of Boolean functions with Symmetry -- Separation results via Transitive Pointer function -- Separation results for Transitive functions using other functions -- Non-deterministic degree of Symmetric Boolean functions -- Approximate degree composition in terms of Block sensitivity and some applications -- Approximate degree composition for recursive functions -- Randomized query complexity composition for some classes of functions --
Guided by Prof. Sourav Chakraborty
Boolean functions are one of the central objects in the study of Computer Science. Any decision problem can be expressed as a Boolean function that takes an $n$-bit string as input and gives a single-bit output. Its versatility in capturing various problems in a simple form makes it crucial to understand the different properties of Boolean functions. There are various aspects to understanding Boolean functions. In this thesis, we will be focusing on the study of Boolean functions using the query complexity model. Various complexity measures are motivated and generated from the query complexity world, for example, Deterministic query complexity, Randomized query complexity, Quantum query complexity, sensitivity, block sensitivity, and many more. Investigating the interplay among these measures has been an active area of research in computational complexity theory for over three decades, with implications reaching across different areas of theoretical computer science. Exploring specialized classes of Boolean functions enhances our understanding of their inherent complexities. Analyzing complexity measures within specific function classes illuminates broader patterns and aids in identifying critical properties essential for general study. Among these classes, those characterized by complete symmetry have gotten significant attention for their widespread applicability across diverse domains. Symmetry, as a defining property, influences the behavior of Boolean functions. While 'Symmetric Boolean functions' that is the Boolean functions that are invariant under any permutation of the input string, have undergone extensive study and are nearly well understood, functions exhibiting partial symmetry remain less understood. Our investigation navigates through the landscape of partial symmetry, focusing on the following: 1. UNDERSTANDING THE IMPACT OF PARTIAL SYMMETRY ON COMBINATORIAL MEASURES: Examining the relationship between various combinatorial measures and their behavior under partial symmetry. Precisely, we prove separation results for the classes of transitive functions. 2. EXPLORING COMPLEXITY MEASURES UNDER FUNCTION COMPOSITION: In particular, two big open problems in this area are that it is not known how randomized query complexity and approximate degree behave under composition. We made some progress towards the main open problems as well, and we have proved the composition theorem for both the complexity measures for the functions with partial symmetry.
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