In computer science, the Akra–Bazzi method, or Akra–Bazzi theorem, is used to analyze the asymptotic behavior of the mathematical recurrences that appear in the analysis of divide and conquer algorithms where the sub-problems have substantially different sizes. It is a generalization of the master theorem for divide-and-conquer recurrences, which assumes that the sub-problems have equal size. It is named after mathematicians Mohamad Akra and Louay Bazzi.[1]

Formulation edit

The Akra–Bazzi method applies to recurrence formulas of the form:[1]

 

The conditions for usage are:

  • sufficient base cases are provided
  •   and   are constants for all  
  •   for all  
  •   for all  
  •  , where c is a constant and O notates Big O notation
  •   for all  
  •   is a constant

The asymptotic behavior of   is found by determining the value of   for which   and plugging that value into the equation:[2]

 

(see Θ). Intuitively,   represents a small perturbation in the index of  . By noting that   and that the absolute value of   is always between 0 and 1,   can be used to ignore the floor function in the index. Similarly, one can also ignore the ceiling function. For example,   and   will, as per the Akra–Bazzi theorem, have the same asymptotic behavior.

Example edit

Suppose   is defined as 1 for integers   and   for integers  . In applying the Akra–Bazzi method, the first step is to find the value of   for which  . In this example,  . Then, using the formula, the asymptotic behavior can be determined as follows:[3]

 

Significance edit

The Akra–Bazzi method is more useful than most other techniques for determining asymptotic behavior because it covers such a wide variety of cases. Its primary application is the approximation of the running time of many divide-and-conquer algorithms. For example, in the merge sort, the number of comparisons required in the worst case, which is roughly proportional to its runtime, is given recursively as   and

 

for integers  , and can thus be computed using the Akra–Bazzi method to be  .

See also edit

References edit

  1. ^ a b Akra, Mohamad; Bazzi, Louay (May 1998). "On the solution of linear recurrence equations". Computational Optimization and Applications. 10 (2): 195–210. doi:10.1023/A:1018373005182. S2CID 7110614.
  2. ^ "Proof and application on few examples" (PDF).
  3. ^ Cormen, Thomas; Leiserson, Charles; Rivest, Ronald; Stein, Clifford (2009). Introduction to Algorithms. MIT Press. ISBN 978-0262033848.

External links edit