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authorJacob Ward <jacobward1898@gmail.com>2016-03-11 20:20:16 -0700
committerJacob Ward <jacobward1898@gmail.com>2016-03-11 20:20:16 -0700
commitb5d71122bdd53c11a6836bc9cf0652d250e66def (patch)
tree13b87ecf6d3836d5f08c288640f4681cf776dc96
parentf44d8afc1d8247d5c23efc25b4f99779b1c5e9f6 (diff)
parentbe873f83fa818899a8b4bd29f1d3933e3be958c5 (diff)
Merge pull request #2175 from divayprakash/typos-fix5
[asymptotic-notation/en] Added content, closes #2174
-rw-r--r--asymptotic-notation.html.markdown45
1 files changed, 39 insertions, 6 deletions
diff --git a/asymptotic-notation.html.markdown b/asymptotic-notation.html.markdown
index 4167ba8d..d7dbb960 100644
--- a/asymptotic-notation.html.markdown
+++ b/asymptotic-notation.html.markdown
@@ -3,6 +3,7 @@ category: Algorithms & Data Structures
name: Asymptotic Notation
contributors:
- ["Jake Prather", "http://github.com/JakeHP"]
+ - ["Divay Prakash", "http://github.com/divayprakash"]
---
# Asymptotic Notations
@@ -67,9 +68,10 @@ Exponential - a^n, where a is some constant
```
### Big-O
-Big-O, commonly written as O, is an Asymptotic Notation for the worst case, or ceiling of growth
-for a given function. Say `f(n)` is your algorithm runtime, and `g(n)` is an arbitrary time complexity
-you are trying to relate to your algorithm. `f(n)` is O(g(n)), if for any real constant c (c > 0),
+Big-O, commonly written as **O**, is an Asymptotic Notation for the worst case, or ceiling of growth
+for a given function. It provides us with an _**asymptotic uppper bound**_ for the growth rate of runtime of an algorithm.
+Say `f(n)` is your algorithm runtime, and `g(n)` is an arbitrary time complexity
+you are trying to relate to your algorithm. `f(n)` is O(g(n)), if for some real constant c (c > 0),
`f(n)` <= `c g(n)` for every input size n (n > 0).
*Example 1*
@@ -114,10 +116,41 @@ Is there some constant c that satisfies this for all n?
No, there isn't. `f(n)` is NOT O(g(n)).
### Big-Omega
-Big-Omega, commonly written as Ω, is an Asymptotic Notation for the best case, or a floor growth rate
-for a given function.
+Big-Omega, commonly written as **Ω**, is an Asymptotic Notation for the best case, or a floor growth rate
+for a given function. It provides us with an _**asymptotic lower bound**_ for the growth rate of runtime of an algorithm.
-`f(n)` is Ω(g(n)), if for any real constant c (c > 0), `f(n)` is >= `c g(n)` for every input size n (n > 0).
+`f(n)` is Ω(g(n)), if for some real constant c (c > 0), `f(n)` is >= `c g(n)` for every input size n (n > 0).
+
+### Note
+
+The asymptotic growth rates provided by big-O and big-omega notation may or may not be asymptotically tight.
+Thus we use small-o and small-omega notation to denote bounds that are not asymptotically tight.
+
+### Small-o
+Small-o, commanly written as **o**, is an Asymptotic Notation to denote the upper bound (that is not asmptotically tight)
+on the growth rate of runtime of an algorithm.
+
+`f(n)` is o(g(n)), if for any real constant c (c > 0), `f(n)` is < `c g(n)` for every input size n (n > 0).
+
+The definitions of O-notation and o-notation are similar. The main difference is that in f(n) = O(g(n)), the bound f(n) <= g(n)
+holds for _**some**_ constant c > 0, but in f(n) = o(g(n)), the bound f(n) < c g(n) holds for _**all**_ constants c > 0.
+
+### Small-omega
+Small-omega, commanly written as **ω**, is an Asymptotic Notation to denote the lower bound (that is not asmptotically tight)
+on the growth rate of runtime of an algorithm.
+
+`f(n)` is ω(g(n)), if for any real constant c (c > 0), `f(n)` is > `c g(n)` for every input size n (n > 0).
+
+The definitions of Ω-notation and ω-notation are similar. The main difference is that in f(n) = Ω(g(n)), the bound f(n) >= g(n)
+holds for _**some**_ constant c > 0, but in f(n) = ω(g(n)), the bound f(n) > c g(n) holds for _**all**_ constants c > 0.
+
+### Theta
+Theta, commonly written as **Θ**, is an Asymptotic Notation to denote the _**asmptotically tight bound**_ on the growth rate
+of runtime of an algorithm.
+
+`f(n)` is Θ(g(n)), if for some real constants c1, c2 (c1 > 0, c2 > 0), `c1 g(n)` is < `f(n)` is < `c2 g(n)` for every input size n (n > 0).
+
+∴ `f(n)` is Θ(g(n)) implies `f(n)` is O(g(n)) as well as `f(n)` is Ω(g(n)).
Feel free to head over to additional resources for examples on this. Big-O is the primary notation used
for general algorithm time complexity.