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>Chapter 49. Genetic Query Optimizer</TD
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><A
NAME="GEQO-INTRO2"
>49.2. Genetic Algorithms</A
></H1
><P
>    The genetic algorithm (<ACRONYM
CLASS="ACRONYM"
>GA</ACRONYM
>) is a heuristic optimization method which
    operates through
    nondeterministic, randomized search. The set of possible solutions for the
    optimization problem is considered as a
    <I
CLASS="FIRSTTERM"
>population</I
> of <I
CLASS="FIRSTTERM"
>individuals</I
>.
    The degree of adaptation of an individual to its environment is specified
    by its <I
CLASS="FIRSTTERM"
>fitness</I
>.
   </P
><P
>    The coordinates of an individual in the search space are represented
    by <I
CLASS="FIRSTTERM"
>chromosomes</I
>, in essence a set of character
    strings. A <I
CLASS="FIRSTTERM"
>gene</I
> is a
    subsection of a chromosome which encodes the value of a single parameter
    being optimized. Typical encodings for a gene could be <I
CLASS="FIRSTTERM"
>binary</I
> or
    <I
CLASS="FIRSTTERM"
>integer</I
>.
   </P
><P
>    Through simulation of the evolutionary operations <I
CLASS="FIRSTTERM"
>recombination</I
>,
    <I
CLASS="FIRSTTERM"
>mutation</I
>, and
    <I
CLASS="FIRSTTERM"
>selection</I
> new generations of search points are found
    that show a higher average fitness than their ancestors.
   </P
><P
>    According to the <SPAN
CLASS="SYSTEMITEM"
>comp.ai.genetic</SPAN
> <ACRONYM
CLASS="ACRONYM"
>FAQ</ACRONYM
> it cannot be stressed too
    strongly that a <ACRONYM
CLASS="ACRONYM"
>GA</ACRONYM
> is not a pure random search for a solution to a
    problem. A <ACRONYM
CLASS="ACRONYM"
>GA</ACRONYM
> uses stochastic processes, but the result is distinctly
    non-random (better than random). 
   </P
><DIV
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><A
NAME="GEQO-DIAGRAM"
></A
><P
><B
>Figure 49-1. Structured Diagram of a Genetic Algorithm</B
></P
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><COL><COL><TBODY
><TR
><TD
>P(t)</TD
><TD
>generation of ancestors at a time t</TD
></TR
><TR
><TD
>P''(t)</TD
><TD
>generation of descendants at a time t</TD
></TR
></TBODY
></TABLE
><P
></P
></DIV
><PRE
CLASS="LITERALLAYOUT"
>+=========================================+
|&gt;&gt;&gt;&gt;&gt;&gt;&gt;&gt;&gt;&gt;&gt;  Algorithm GA  &lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;&lt;|
+=========================================+
| INITIALIZE t := 0                       |
+=========================================+
| INITIALIZE P(t)                         |
+=========================================+
| evaluate FITNESS of P(t)                |
+=========================================+
| while not STOPPING CRITERION do         |
|   +-------------------------------------+
|   | P'(t)  := RECOMBINATION{P(t)}       |
|   +-------------------------------------+
|   | P''(t) := MUTATION{P'(t)}           |
|   +-------------------------------------+
|   | P(t+1) := SELECTION{P''(t) + P(t)}  |
|   +-------------------------------------+
|   | evaluate FITNESS of P''(t)          |
|   +-------------------------------------+
|   | t := t + 1                          |
+===+=====================================+</PRE
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