Analysis of algorithms








For looking up a given entry in a given ordered list, both the binary and the linear search algorithm (which ignores ordering) can be used. The analysis of the former and the latter algorithm shows that it takes at most log2(n) and n check steps, respectively, for a list of length n. In the depicted example list of length 33, searching for "Morin, Arthur" takes 5 and 28 steps with binary (shown in cyan) and linear (magenta) search, respectively.




Graphs of functions commonly used in the analysis of algorithms, showing the number of operations N versus input size n for each function


In computer science, the analysis of algorithms is the determination of the computational complexity of algorithms, that is the amount of time, storage and/or other resources necessary to execute them. Usually, this involves determining a function that relates the length of an algorithm's input to the number of steps it takes (its time complexity) or the number of storage locations it uses (its space complexity). An algorithm is said to be efficient when this function's values are small, or grow slowly compared to a growth in the size of the input. Different inputs of the same length may cause the algorithm to have different behavior, so best, worst and average case descriptions might all be of practical interest. When not otherwise specified, the function describing the performance of an algorithm is usually an upper bound, determined from the worst case inputs to the algorithm.


The term "analysis of algorithms" was coined by Donald Knuth.[1] Algorithm analysis is an important part of a broader computational complexity theory, which provides theoretical estimates for the resources needed by any algorithm which solves a given computational problem. These estimates provide an insight into reasonable directions of search for efficient algorithms.


In theoretical analysis of algorithms it is common to estimate their complexity in the asymptotic sense, i.e., to estimate the complexity function for arbitrarily large input. Big O notation, Big-omega notation and Big-theta notation are used to this end. For instance, binary search is said to run in a number of steps proportional to the logarithm of the length of the sorted list being searched, or in O(log(n)), colloquially "in logarithmic time". Usually asymptotic estimates are used because different implementations of the same algorithm may differ in efficiency. However the efficiencies of any two "reasonable" implementations of a given algorithm are related by a constant multiplicative factor called a hidden constant.


Exact (not asymptotic) measures of efficiency can sometimes be computed but they usually require certain assumptions concerning the particular implementation of the algorithm, called model of computation. A model of computation may be defined in terms of an abstract computer, e.g., Turing machine, and/or by postulating that certain operations are executed in unit time.
For example, if the sorted list to which we apply binary search has n elements, and we can guarantee that each lookup of an element in the list can be done in unit time, then at most log2n + 1 time units are needed to return an answer.




Contents





  • 1 Cost models


  • 2 Run-time analysis

    • 2.1 Shortcomings of empirical metrics


    • 2.2 Orders of growth


    • 2.3 Empirical orders of growth


    • 2.4 Evaluating run-time complexity


    • 2.5 Growth rate analysis of other resources



  • 3 Relevance


  • 4 Constant factors


  • 5 See also


  • 6 Notes


  • 7 References




Cost models


Time efficiency estimates depend on what we define to be a step. For the analysis to correspond usefully to the actual execution time, the time required to perform a step must be guaranteed to be bounded above by a constant. One must be careful here; for instance, some analyses count an addition of two numbers as one step. This assumption may not be warranted in certain contexts. For example, if the numbers involved in a computation may be arbitrarily large, the time required by a single addition can no longer be assumed to be constant.


Two cost models are generally used:[2][3][4][5][6]


  • the uniform cost model, also called uniform-cost measurement (and similar variations), assigns a constant cost to every machine operation, regardless of the size of the numbers involved

  • the logarithmic cost model, also called logarithmic-cost measurement (and similar variations), assigns a cost to every machine operation proportional to the number of bits involved

The latter is more cumbersome to use, so it's only employed when necessary, for example in the analysis of arbitrary-precision arithmetic algorithms, like those used in cryptography.


A key point which is often overlooked is that published lower bounds for problems are often given for a model of computation that is more restricted than the set of operations that you could use in practice and therefore there are algorithms that are faster than what would naively be thought possible.[7]



Run-time analysis


Run-time analysis is a theoretical classification that estimates and anticipates the increase in running time (or run-time) of an algorithm as its input size (usually denoted as n) increases. Run-time efficiency is a topic of great interest in computer science: A program can take seconds, hours, or even years to finish executing, depending on which algorithm it implements. While software profiling techniques can be used to measure an algorithm's run-time in practice, they cannot provide timing data for all infinitely many possible inputs; the latter can only be achieved by the theoretical methods of run-time analysis.



Shortcomings of empirical metrics


Since algorithms are platform-independent (i.e. a given algorithm can be implemented in an arbitrary programming language on an arbitrary computer running an arbitrary operating system), there are additional significant drawbacks to using an empirical approach to gauge the comparative performance of a given set of algorithms.


Take as an example a program that looks up a specific entry in a sorted list of size n. Suppose this program were implemented on Computer A, a state-of-the-art machine, using a linear search algorithm, and on Computer B, a much slower machine, using a binary search algorithm. Benchmark testing on the two computers running their respective programs might look something like the following:


















n (list size)
Computer A run-time
(in nanoseconds)
Computer B run-time
(in nanoseconds)
16
8
100,000
63
32
150,000
250
125
200,000
1,000
500
250,000

Based on these metrics, it would be easy to jump to the conclusion that Computer A is running an algorithm that is far superior in efficiency to that of Computer B. However, if the size of the input-list is increased to a sufficient number, that conclusion is dramatically demonstrated to be in error:




































n (list size)
Computer A run-time
(in nanoseconds)
Computer B run-time
(in nanoseconds)
16
8
100,000
63
32
150,000
250
125
200,000
1,000
500
250,000
...
...
...
1,000,000
500,000
500,000
4,000,000
2,000,000
550,000
16,000,000
8,000,000
600,000
...
...
...
63,072 × 101231,536 × 1012 ns,
or 1 year
1,375,000 ns,
or 1.375 milliseconds

Computer A, running the linear search program, exhibits a linear growth rate. The program's run-time is directly proportional to its input size. Doubling the input size doubles the run time, quadrupling the input size quadruples the run-time, and so forth. On the other hand, Computer B, running the binary search program, exhibits a logarithmic growth rate. Quadrupling the input size only increases the run time by a constant amount (in this example, 50,000 ns). Even though Computer A is ostensibly a faster machine, Computer B will inevitably surpass Computer A in run-time because it's running an algorithm with a much slower growth rate.



Orders of growth



Informally, an algorithm can be said to exhibit a growth rate on the order of a mathematical function if beyond a certain input size n, the function f(n)displaystyle f(n)f(n) times a positive constant provides an upper bound or limit for the run-time of that algorithm. In other words, for a given input size n greater than some n0 and a constant c, the running time of that algorithm will never be larger than c×f(n)displaystyle ctimes f(n)displaystyle ctimes f(n). This concept is frequently expressed using Big O notation. For example, since the run-time of insertion sort grows quadratically as its input size increases, insertion sort can be said to be of order O(n2).


Big O notation is a convenient way to express the worst-case scenario for a given algorithm, although it can also be used to express the average-case — for example, the worst-case scenario for quicksort is O(n2), but the average-case run-time is O(n log n).



Empirical orders of growth


Assuming the execution time follows power rule, t ≈ k na, the coefficient a can be found [8] by taking empirical measurements of run time t1,t2displaystyle t_1,t_2displaystyle t_1,t_2 at some problem-size points n1,n2displaystyle n_1,n_2displaystyle n_1,n_2, and calculating t2/t1=(n2/n1)adisplaystyle t_2/t_1=(n_2/n_1)^at_2/t_1=(n_2/n_1)^a so that a=log⁡(t2/t1)/log⁡(n2/n1)displaystyle a=log(t_2/t_1)/log(n_2/n_1)a=log(t_2/t_1)/log(n_2/n_1). In other words, this measures the slope of the empirical line on the log–log plot of execution time vs. problem size, at some size point. If the order of growth indeed follows the power rule (and so the line on log–log plot is indeed a straight line), the empirical value of a will stay constant at different ranges, and if not, it will change (and the line is a curved line) - but still could serve for comparison of any two given algorithms as to their empirical local orders of growth behaviour. Applied to the above table:





















































n (list size)
Computer A run-time
(in nanoseconds)
Local order of growth
(n^_)
Computer B run-time
(in nanoseconds)
Local order of growth
(n^_)
15
7

100,000

65
32
1.04
150,000
0.28
250
125
1.01
200,000
0.21
1,000
500
1.00
250,000
0.16
...
...

...

1,000,000
500,000
1.00
500,000
0.10
4,000,000
2,000,000
1.00
550,000
0.07
16,000,000
8,000,000
1.00
600,000
0.06
...
...

...

It is clearly seen that the first algorithm exhibits a linear order of growth indeed following the power rule. The empirical values for the second one are diminishing rapidly, suggesting it follows another rule of growth and in any case has much lower local orders of growth (and improving further still), empirically, than the first one.



Evaluating run-time complexity


The run-time complexity for the worst-case scenario of a given algorithm can sometimes be evaluated by examining the structure of the algorithm and making some simplifying assumptions. Consider the following pseudocode:


1 get a positive integer from input
2 if n > 10
3 print "This might take a while..."
4 for i = 1 to n
5 for j = 1 to i
6 print i * j
7 print "Done!"

A given computer will take a discrete amount of time to execute each of the instructions involved with carrying out this algorithm. The specific amount of time to carry out a given instruction will vary depending on which instruction is being executed and which computer is executing it, but on a conventional computer, this amount will be deterministic.[9] Say that the actions carried out in step 1 are considered to consume time T1, step 2 uses time T2, and so forth.


In the algorithm above, steps 1, 2 and 7 will only be run once. For a worst-case evaluation, it should be assumed that step 3 will be run as well. Thus the total amount of time to run steps 1-3 and step 7 is:


T1+T2+T3+T7.displaystyle T_1+T_2+T_3+T_7.,T_1+T_2+T_3+T_7.,

The loops in steps 4, 5 and 6 are trickier to evaluate. The outer loop test in step 4 will execute ( n + 1 )
times (note that an extra step is required to terminate the for loop, hence n + 1 and not n executions), which will consume T4( n + 1 ) time. The inner loop, on the other hand, is governed by the value of j, which iterates from 1 to i. On the first pass through the outer loop, j iterates from 1 to 1: The inner loop makes one pass, so running the inner loop body (step 6) consumes T6 time, and the inner loop test (step 5) consumes 2T5 time. During the next pass through the outer loop, j iterates from 1 to 2: the inner loop makes two passes, so running the inner loop body (step 6) consumes 2T6 time, and the inner loop test (step 5) consumes 3T5 time.


Altogether, the total time required to run the inner loop body can be expressed as an arithmetic progression:


T6+2T6+3T6+⋯+(n−1)T6+nT6displaystyle T_6+2T_6+3T_6+cdots +(n-1)T_6+nT_6T_6+2T_6+3T_6+cdots +(n-1)T_6+nT_6

which can be factored[10] as


T6[1+2+3+⋯+(n−1)+n]=T6[12(n2+n)]displaystyle T_6left[1+2+3+cdots +(n-1)+nright]=T_6left[frac 12(n^2+n)right]T_6left[1+2+3+cdots +(n-1)+nright]=T_6left[frac 12(n^2+n)right]

The total time required to run the outer loop test can be evaluated similarly:


2T5+3T5+4T5+⋯+(n−1)T5+nT5+(n+1)T5= T5+2T5+3T5+4T5+⋯+(n−1)T5+nT5+(n+1)T5−T5displaystyle beginaligned&2T_5+3T_5+4T_5+cdots +(n-1)T_5+nT_5+(n+1)T_5\= &T_5+2T_5+3T_5+4T_5+cdots +(n-1)T_5+nT_5+(n+1)T_5-T_5endaligneddisplaystyle beginaligned&2T_5+3T_5+4T_5+cdots +(n-1)T_5+nT_5+(n+1)T_5\= &T_5+2T_5+3T_5+4T_5+cdots +(n-1)T_5+nT_5+(n+1)T_5-T_5endaligned

which can be factored as


T5[1+2+3+⋯+(n−1)+n+(n+1)]−T5=[12(n2+n)]T5+(n+1)T5−T5=T5[12(n2+n)]+nT5=[12(n2+3n)]T5displaystyle beginaligned&T_5left[1+2+3+cdots +(n-1)+n+(n+1)right]-T_5\=&left[frac 12(n^2+n)right]T_5+(n+1)T_5-T_5\=&T_5left[frac 12(n^2+n)right]+nT_5\=&left[frac 12(n^2+3n)right]T_5endaligneddisplaystyle beginaligned&T_5left[1+2+3+cdots +(n-1)+n+(n+1)right]-T_5\=&left[frac 12(n^2+n)right]T_5+(n+1)T_5-T_5\=&T_5left[frac 12(n^2+n)right]+nT_5\=&left[frac 12(n^2+3n)right]T_5endaligned

Therefore, the total running time for this algorithm is:


f(n)=T1+T2+T3+T7+(n+1)T4+[12(n2+n)]T6+[12(n2+3n)]T5displaystyle f(n)=T_1+T_2+T_3+T_7+(n+1)T_4+left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5f(n)=T_1+T_2+T_3+T_7+(n+1)T_4+left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5

which reduces to


f(n)=[12(n2+n)]T6+[12(n2+3n)]T5+(n+1)T4+T1+T2+T3+T7displaystyle f(n)=left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7f(n)=left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7

As a rule-of-thumb, one can assume that the highest-order term in any given function dominates its rate of growth and thus defines its run-time order. In this example, n2 is the highest-order term, so one can conclude that f(n) = O(n2). Formally this can be proven as follows:



Prove that [12(n2+n)]T6+[12(n2+3n)]T5+(n+1)T4+T1+T2+T3+T7≤cn2, n≥n0displaystyle left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7leq cn^2, ngeq n_0left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7leq cn^2, ngeq n_0




[12(n2+n)]T6+[12(n2+3n)]T5+(n+1)T4+T1+T2+T3+T7≤(n2+n)T6+(n2+3n)T5+(n+1)T4+T1+T2+T3+T7 (for n≥0)displaystyle beginaligned&left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7\leq &(n^2+n)T_6+(n^2+3n)T_5+(n+1)T_4+T_1+T_2+T_3+T_7 (textfor ngeq 0)endaligneddisplaystyle beginaligned&left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7\leq &(n^2+n)T_6+(n^2+3n)T_5+(n+1)T_4+T_1+T_2+T_3+T_7 (textfor ngeq 0)endaligned



Let k be a constant greater than or equal to [T1..T7]


T6(n2+n)+T5(n2+3n)+(n+1)T4+T1+T2+T3+T7≤k(n2+n)+k(n2+3n)+kn+5k=2kn2+5kn+5k≤2kn2+5kn2+5kn2 (for n≥1)=12kn2displaystyle beginaligned&T_6(n^2+n)+T_5(n^2+3n)+(n+1)T_4+T_1+T_2+T_3+T_7leq k(n^2+n)+k(n^2+3n)+kn+5k\=&2kn^2+5kn+5kleq 2kn^2+5kn^2+5kn^2 (textfor ngeq 1)=12kn^2endaligneddisplaystyle beginaligned&T_6(n^2+n)+T_5(n^2+3n)+(n+1)T_4+T_1+T_2+T_3+T_7leq k(n^2+n)+k(n^2+3n)+kn+5k\=&2kn^2+5kn+5kleq 2kn^2+5kn^2+5kn^2 (textfor ngeq 1)=12kn^2endaligned



Therefore [12(n2+n)]T6+[12(n2+3n)]T5+(n+1)T4+T1+T2+T3+T7≤cn2,n≥n0 for c=12k,n0=1displaystyle left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7leq cn^2,ngeq n_0text for c=12k,n_0=1displaystyle left[frac 12(n^2+n)right]T_6+left[frac 12(n^2+3n)right]T_5+(n+1)T_4+T_1+T_2+T_3+T_7leq cn^2,ngeq n_0text for c=12k,n_0=1



A more elegant approach to analyzing this algorithm would be to declare that [T1..T7] are all equal to one unit of time, in a system of units chosen so that one unit is greater than or equal to the actual times for these steps. This would mean that the algorithm's running time breaks down as follows:[11]


4+∑i=1ni≤4+∑i=1nn=4+n2≤5n2 (for n≥1)=O(n2).displaystyle 4+sum _i=1^nileq 4+sum _i=1^nn=4+n^2leq 5n^2 (textfor ngeq 1)=O(n^2).displaystyle 4+sum _i=1^nileq 4+sum _i=1^nn=4+n^2leq 5n^2 (textfor ngeq 1)=O(n^2).



Growth rate analysis of other resources


The methodology of run-time analysis can also be utilized for predicting other growth rates, such as consumption of memory space. As an example, consider the following pseudocode which manages and reallocates memory usage by a program based on the size of a file which that program manages:


while (file still open)
let n = size of file
for every 100,000 kilobytes of increase in file size
double the amount of memory reserved

In this instance, as the file size n increases, memory will be consumed at an exponential growth rate, which is order O(2n). This is an extremely rapid and most likely unmanageable growth rate for consumption of memory resources.



Relevance


Algorithm analysis is important in practice because the accidental or unintentional use of an inefficient algorithm can significantly impact system performance. In time-sensitive applications, an algorithm taking too long to run can render its results outdated or useless. An inefficient algorithm can also end up requiring an uneconomical amount of computing power or storage in order to run, again rendering it practically useless.



Constant factors


Analysis of algorithms typically focuses on the asymptotic performance, particularly at the elementary level, but in practical applications constant factors are important, and real-world data is in practice always limited in size. The limit is typically the size of addressable memory, so on 32-bit machines 232 = 4 GiB (greater if segmented memory is used) and on 64-bit machines 264 = 16 EiB. Thus given a limited size, an order of growth (time or space) can be replaced by a constant factor, and in this sense all practical algorithms are O(1) for a large enough constant, or for small enough data.


This interpretation is primarily useful for functions that grow extremely slowly: (binary) iterated logarithm (log*) is less than 5 for all practical data (265536 bits); (binary) log-log (log log n) is less than 6 for virtually all practical data (264 bits); and binary log (log n) is less than 64 for virtually all practical data (264 bits). An algorithm with non-constant complexity may nonetheless be more efficient than an algorithm with constant complexity on practical data if the overhead of the constant time algorithm results in a larger constant factor, e.g., one may have K>klog⁡log⁡ndisplaystyle K>klog log nK>klog log n so long as K/k>6displaystyle K/k>6K/k>6 and n<226=264displaystyle n<2^2^6=2^64n<2^2^6=2^64.


For large data linear or quadratic factors cannot be ignored, but for small data an asymptotically inefficient algorithm may be more efficient. This is particularly used in hybrid algorithms, like Timsort, which use an asymptotically efficient algorithm (here merge sort, with time complexity nlog⁡ndisplaystyle nlog nnlog n), but switch to an asymptotically inefficient algorithm (here insertion sort, with time complexity n2displaystyle n^2n^2) for small data, as the simpler algorithm is faster on small data.



See also


  • Amortized analysis

  • Analysis of parallel algorithms

  • Asymptotic computational complexity

  • Best, worst and average case

  • Big O notation

  • Computational complexity theory

  • Master theorem (analysis of algorithms)

  • NP-Complete

  • Numerical analysis

  • Polynomial time

  • Program optimization

  • Profiling (computer programming)

  • Scalability

  • Smoothed analysis


  • Termination analysis — the subproblem of checking whether a program will terminate at all


  • Time complexity — includes table of orders of growth for common algorithms

  • Information-based complexity


Notes




  1. ^ Donald Knuth, Recent News


  2. ^ Alfred V. Aho; John E. Hopcroft; Jeffrey D. Ullman (1974). The design and analysis of computer algorithms. Addison-Wesley Pub. Co. , section 1.3


  3. ^ Juraj Hromkovič (2004). Theoretical computer science: introduction to Automata, computability, complexity, algorithmics, randomization, communication, and cryptography. Springer. pp. 177–178. ISBN 978-3-540-14015-3. 


  4. ^ Giorgio Ausiello (1999). Complexity and approximation: combinatorial optimization problems and their approximability properties. Springer. pp. 3–8. ISBN 978-3-540-65431-5. 


  5. ^ Wegener, Ingo (2005), Complexity theory: exploring the limits of efficient algorithms, Berlin, New York: Springer-Verlag, p. 20, ISBN 978-3-540-21045-0 


  6. ^ Robert Endre Tarjan (1983). Data structures and network algorithms. SIAM. pp. 3–7. ISBN 978-0-89871-187-5. 


  7. ^ Examples of the price of abstraction?, cstheory.stackexchange.com


  8. ^ How To Avoid O-Abuse and Bribes, at the blog "Gödel’s Lost Letter and P=NP" by R. J. Lipton, professor of Computer Science at Georgia Tech, recounting idea by Robert Sedgewick


  9. ^ However, this is not the case with a quantum computer


  10. ^ It can be proven by induction that 1+2+3+⋯+(n−1)+n=n(n+1)2displaystyle 1+2+3+cdots +(n-1)+n=frac n(n+1)21+2+3+cdots +(n-1)+n=frac n(n+1)2


  11. ^ This approach, unlike the above approach, neglects the constant time consumed by the loop tests which terminate their respective loops, but it is trivial to prove that such omission does not affect the final result




References



  • Cormen, Thomas H.; Leiserson, Charles E.; Rivest, Ronald L. & Stein, Clifford (2001). Introduction to Algorithms. Chapter 1: Foundations (Second ed.). Cambridge, MA: MIT Press and McGraw-Hill. pp. 3–122. ISBN 0-262-03293-7. 


  • Sedgewick, Robert (1998). Algorithms in C, Parts 1-4: Fundamentals, Data Structures, Sorting, Searching (3rd ed.). Reading, MA: Addison-Wesley Professional. ISBN 978-0-201-31452-6. 


  • Knuth, Donald. The Art of Computer Programming. Addison-Wesley. 


  • Greene, Daniel A.; Knuth, Donald E. (1982). Mathematics for the Analysis of Algorithms (Second ed.). Birkhäuser. ISBN 3-7643-3102-X. 


  • Goldreich, Oded (2010). Computational Complexity: A Conceptual Perspective. Cambridge University Press. ISBN 978-0-521-88473-0. 








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