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Understanding Big O Notation and Its Role in Algorithm Efficiencyโ€‚by@hedging
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Understanding Big O Notation and Its Role in Algorithm Efficiency

by Economic Hedging TechnologyOctober 22nd, 2024
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Big O notation describes the upper bound of algorithm performance by characterizing its growth rate as the input size increases. It helps developers compare algorithm efficiency and scalability in designing optimal systems.
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Abstract and 1. Introduction

1.1 Option Pricing

1.2 Asymptotic Notation (Big O)

1.3 Finite Difference

1.4 The Black-Schole Model

1.5 Monte Carlo Simulation and Variance Reduction Techniques

1.6 Our Contribution

  1. Literature Review
  2. Methodology

3.1 Model Assumption

3.2 Theorems and Model Discussion

  1. Result Analysis
  2. Conclusion and References

1.2 ASYMPTOTIC NOTATION (๐ต๐‘–๐‘” ๐‘‚)

Big ๐‘‚ notation, denoted as ๐‘‚(๐‘“(๐‘›)), is a mathematical representation widely used in computer science to describe the upper bound or worst-case behavior of algorithms and functions as the input size, denoted as n, approaches infinity. In essence, it characterizes a function's growth rate or an algorithm's time complexity [3].


Formally, for a given function ๐‘”(๐‘›),๐‘‚(๐‘”(๐‘›)) , represents the set of functions for which there exists positive constants c and nโ‚€ such that for all n greater than or equal to ๐‘›0 , the function ๐‘”(๐‘›) is bounded above by ๐‘ times ๐‘“(๐‘›). Mathematically, it can be expressed as:


๐‘‚(๐‘“(๐‘›)) = { ๐‘”(๐‘›) โˆถ โˆƒ๐‘ > 0, โˆƒ๐‘›0 > 0, ๐‘ ๐‘ข๐‘โ„Ž ๐‘กโ„Ž๐‘Ž๐‘ก


0 โ‰ค ๐‘”(๐‘›) โ‰ค ๐‘๐‘“(๐‘›) โˆ€ ๐‘› โ‰ฅ ๐‘›0}


In simpler terms, if a function ๐‘”(๐‘›) can be bounded by a constant multiple of ๐‘“(๐‘›) for sufficiently large values of n, then ๐‘”(๐‘›) belongs to the set ๐‘‚(๐‘“(๐‘›)).


Big ๐‘‚ notation provides a concise way to analyze and compare the efficiency of algorithms, focusing on their scalability and performance characteristics without getting bogged down in specific implementation details. By understanding the asymptotic behavior of algorithms, developers can make informed decisions about algorithm selection and optimization strategies, crucial for designing efficient and scalable software systems.


Authors:

(1) Agni Rakshit, Department of Mathematics, National Institute of Technology, Durgapur, Durgapur, India ([email protected]);

(2) Gautam Bandyopadhyay, Department of Management Studies, National Institute of Technology, Durgapur, Durgapur, India ([email protected]);

(3) Tanujit Chakraborty, Department of Science and Engineering & Sorbonne Center for AI, Sorbonne University, Abu Dhabi, United Arab Emirates ([email protected]).


This paper is available on arxiv under CC by 4.0 Deed (Attribution 4.0 International) license.