1 cs 162 introduction to computer science chapter 10 c++ simulation of recursion herbert g. mayer,...
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CS 162Introduction to Computer Science
Chapter 10C++ Simulation of Recursion
Herbert G. Mayer, PSUStatus 11/17/2014
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Syllabus Definition of Recursive Algorithm
Recursion vs. Iteration
Fact() and Fibo(), Recursive and Iterative
Q-Sequence
Ackermann Function
Stack Data Structure
Simulate Recursion via Iteration
References
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Definition of Recursive AlgorithmAn algorithms is recursive, if it is partly defined by simpler versions of itself [1]
A recursive program is the implementation of a recursive algorithm What is the problem for a programmer, using a language that is non-recursive (e.g.
standard Fortran) if the algorithm to be implemented is recursive? --See later!
What then are the other parts of a recursive algorithm, aside from the partly? Correct recursive algorithm requires a starting point, formally known as “base case” Base case could be multiple steps
Simpler version means: the algorithm cannot use the original call. For example, if the original call was a(n), the recursive call cannot also be a(n), but perhaps a(n-1)
Recursive body can be indirectly recursive through intermediate function a()-> b()-> a() – through intermediate function b()
Primitive examples are the factorial( n ) function; or Fibonacci( n ), for non-negative arguments n; Fibo( n ) shown here, discussed next:
Base case 1: Fibo(0) = 0 Base case 2: Fibo(1) = 1 Recursive Definition: Fibo( n ) for n > 1 = Fibo( n-1 ) + Fibo( n-2 )
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Recursion vs. Iteration• Iteration is expressed in programming languages by
loops; e.g. for-, while-, do-, or repeat loops
• These are readable and efficient methods for expressing iteration, but are not strictly necessary
• Recursion can replace iterative steps; yet for some people this seems counter-intuitive
• Neophytes are sometimes unused to recursion; yet recursion can be as intuitive as simple iteration
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Fact() and Fibo(), Recursive + Iterative We’ll show both solutions for the factorial and the
fibonacci functions Factorial: fact1() iterative, fact2() recursive
Fibonacci: fibo1() iterative, fibo2() recursive
Sometimes the recursive algorithm is easier to see + understand, if the problem is inherently recursive
Later we discuss both with recursion simulated, not at CCUT CS 162
Fibonacci was Italian mathematician in Pisa, 1170 – c. 1250; introduced Hindu-Arabic numeral system to Europe
Also show the famous Towers of Hanoi
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Fact() and Fibo(), Recursive + Iterative
Factorial(n) is the product of the first n unsigned numbers, with factorial(0) defined as = 1
Fibonacci(n) is defined as 0 and 1 for arguments indexed 0, and 1. For all other n the result is the sum of the previous 2 Fibonacci numbers, i.e. Fibonacci(n) = Fibonacci(n-1) + Fibonacci(n-2)
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Fact(), Recursive and Iterative#include <iostream.h>
unsigned fact1( unsigned arg ) // iterative{ // fact1
unsigned int result = 1;for ( int i = 1; i <= arg; i++ ) {
result *= i;} //end forreturn result;
} //end fact1
unsigned fact2( unsigned arg ) // recursive{ // fact2
if ( arg < 2 ) {return 1;
}else{return arg * fact2( arg-1 );
} //end if} //end fact2
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Fact(), Recursive and Iterativeint main( void ){ // main
for ( int i = 0; i < 10; i++ ) {cout << "fact1(" << i << ") = " << fact1( i )
<< endl<< "fact2(" << i << ") = " <<
fact2( i ) << endl;} //end for
return 0;} //end main
fact1(0) = 1fact2(0) = 1fact1(1) = 1fact2(1) = 1fact1(2) = 2fact2(2) = 2. . .fact1(7) = 5040fact2(7) = 5040fact1(8) = 40320fact2(8) = 40320fact1(9) = 362880fact2(9) = 362880
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Fibo(), Recursive and Iterative#include <iostream.h>unsigned fibo1( unsigned arg ) // iterative{ // fibo1
unsigned fm2 = 0;unsigned fm1 = 1;unsigned fm0 = 1;for ( int i = 1; i <= arg; i++ ) {
fm2 = fm1;fm1 = fm0;fm0 = fm1 + fm2;
} //end forreturn fm2;
} //end fibo1
unsigned fibo2( unsigned arg ) // recursive{ // fibo2
if ( arg < 2 ) {return arg;
}else{return fibo2( arg-1 ) + fibo2( arg-2 );
} //end if} //end fibo2
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Fibo(), Recursive and Iterativeint main( void ){ // main
for ( int i = 0; i < 10; i++ ) {cout << "fibo1(" << i << ") = " << fibo1( i ) << endl
<< "fibo2(" << i << ") = " << fibo2( i ) << endl;} //end forreturn 0;
} //end main
fibo1(0) = 0fibo2(0) = 0fibo1(1) = 1fibo2(1) = 1fibo1(2) = 1fibo2(2) = 1fibo1(3) = 2fibo2(3) = 2fibo1(4) = 3fibo2(4) = 3. . .fibo1(9) = 34fibo2(9) = 34
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Replace Iteration via Recursion• What is the problem, if algorithm to be programmed
is recursive, but language does not allow recursion?1. Rewrite the algorithm
2. Or simulate recursion <- not discussed at CCUT!
• Here we do the opposite: Use recursion to simulate all mathematical dyadic operations + - / * etc.
• Using only functions, called recursively
• Plus arithmetic increment/decrement operators ++ -- and unary minus –
• And conventional relational operators > >= != etc.
• All other operators are dis-allowed, i.e. cannot use + - * / % ** etc.
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Recursion vs. Iteration: add()
// return a + b without + operation!int add( int a, int b ){ // addif ( 0 == b ) {
return a;}else if ( b < 0 ) {
return add( --a, ++b );}else{
return add( ++a, --b );} //end if
} //end add
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Recursion vs. Iteration: sub()
// return a – b; no dyadic – operationint sub( int a, int b ){ // subreturn add( a, -b );
} //end sub
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Recursion vs. Iteration: mult()// return a * b, no * but add()int mult( int a, int b ){ // multif ( 0 == b ) {
return 0;}else if ( 1 == b ) {
return a;}else if ( b < 0 ) {
return -mult( a, -b );}else{
// b > 0return add( a, mult( a, --b
) );} //end if
} //end mult
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Recursion vs. Iteration: expo()// return a ** b, no ** op in C++; requires mult( int, int )int expo( int a, int b ){ // expo if ( 0 == a ) { if ( 0 == b ) { printf( ”undefined value0^0\n" ); }else if ( b < 0 ) { printf( “0 to <0 power is undefined\n" );
} //end if return 0;
}else if ( 0 == b ) { return 1; }else if ( 1 == a ) { return 1; }else if ( -1 == a ) { return b % 2 ? -1 : 1; }else if ( b < 0 ) { return 0; }else{ return mult( expo( a, --b ), a ); } //end if} //end expo
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Q-Sequence, DefinitionQ-Sequence defined by Douglas Hofstadter in [1] as a function q( n ) for
positive integers n > 0
Base case n = 1: q(1) = 1Base case n = 2: q(2) = 1
Recursive definition of q(n), for positive n > 2
q( n ) = q( n – q( n - 1 ) ) + q( n – q( n - 2 ) )
Q-Sequence reminds us of Fibonacci( n ) function, but with surprising difference in the type of result:
By contract, the function results of fibonacci( n ) are monotonically increasing with increasing argument
Results of q( n ) are non-monotonic!
Note # of calls: calls(q( 40 )) = 1,137,454,741
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Q-Sequence, Coded in C++#define MAX 100 // arbitrary limit; never reached!!!!int calls; // will be initialized each time
int q( int arg ){ // q
calls++; // track another callif ( arg <= 2 ) { return 1; // base case}else{ // now recurse! return q( arg - q( arg-1 ) ) + q( arg - q( arg-2 ) );} // end if
} // end q
void main(){ // main
for( int i = 1; i < MAX; i++ ) { calls = 0; // initially no calls yet printf( "Q(%2d) = %3d, #calls = %10d\n", i, q(i), calls );} // end for
} // end main
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Q-Sequence ResultsQ( 1) = 1, #calls = 1Q( 2) = 1, #calls = 1Q( 3) = 2, #calls = 5Q( 4) = 3, #calls = 13Q( 5) = 3, #calls = 25Q( 6) = 4, #calls = 49Q( 7) = 5, #calls = 93Q( 8) = 5, #calls = 161Q( 9) = 6, #calls = 281Q(10) = 6, #calls = 481Q(11) = 6, #calls = 813
. . .
Q(26) = 14, #calls = 1341433Q(27) = 16, #calls = 2174493Q(28) = 16, #calls = 3521137Q(29) = 16, #calls = 5700281Q(30) = 16, #calls = 9229053Q(31) = 20, #calls = 14941993Q(32) = 17, #calls = 24182797Q(33) = 17, #calls = 39137473Q(34) = 20, #calls = 63354153Q(35) = 21, #calls = 102525697Q(36) = 19, #calls = 165896537Q(37) = 20, #calls = 268460333Q(38) = 22, #calls = 434429737Q(39) = 21, #calls = 702952137Q(40) = 22, #calls = 1137454741
. . . Will never reach Q(100) in your life time
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Ackermann Definition
Ackermann a( m, n ) is defined as a function of two non-negative (i.e. unsigned in C++) integers m and n
Base case 1: a( 0, n ) = n + 1Base case 2: a( m, 0 ) = a( m - 1, 1 )
Recursive definition of a( m, n ), m, n > 0a( m, n ) = a( m - 1, a( m, n - 1 ) )
Ackermann complexity grows awfully fast; e.g. a(4,2) is an integer number with 19,729 decimal digits; greater than the national US debt!
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Ackermann Definition
Students, code now in C++, volunteers shows result on white-board:
Base case 1: a( 0, n ) = n + 1Base case 2: a( m, 0 ) = a( m - 1, 1 )
Recursive definition of a( m, n ), m, n > 0a( m, n ) = a( m - 1, a( m, n - 1 ) )
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Ackermann Coded in C++
unsigned a( unsigned m, unsigned n ){ // a
calls++;// global unsigned
if ( 0 == m ) { // note operand order return n + 1; // first base case}else if ( 0 == n ) { // m > 0
return a( m - 1, 1 ); // other base case}else{
// m > 0, n > 0 return a( m-1, a( m, n-1 ) ); // recurse!
} // end if} // end q
void main(){ // main
for( int i = 0; i < MAX; i++ ) { printf( "\nFor m = %d\n", i ); for( int j = 0; j < MAX; j++ ) {
calls = 0; printf( "a(%1d,%1d) = %10u, calls =
%12u\n", i, j, a( i, j ), calls );
} // end for} // end forreturn 0;
} // end main
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Ackermann ResultsFor m = 0a(0,0) = 1, calls = 1. . .
For m = 1. . .a(1,7) = 9, calls = 16
For m = 2a(2,0) = 3, calls = 5a(2,1) = 5, calls = 14a(2,2) = 7, calls = 27a(2,3) = 9, calls = 44a(2,4) = 11, calls = 65a(2,5) = 13, calls = 90a(2,6) = 15, calls = 119a(2,7) = 17, calls = 152
For m = 3a(3,0) = 5, calls = 15a(3,1) = 13, calls = 106a(3,2) = 29, calls = 541a(3,3) = 61, calls = 2432a(3,4) = 125, calls = 10307a(3,5) = 253, calls = 42438a(3,6) = 509, calls = 172233a(3,7) = 1021, calls = 693964
For m = 4a(4,0) = 13, calls = 107
don’t even dream about computing a(4,2) or higher!
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Stack Data Structure High-level language functions call each other in a
nested fashion, recursively, even indirectly recursively
And return in strictly the reverse order (LIFO), but with any number of further calls in between
Stack is the natural data structure to track callée return information
Languages also allow local data per function call, of which formal parameters are just one variation
Natural to have locals also live and die on the run time stack, synchronized with call-return information
Possible but wasteful to have a separate stack for automatic locals: conclusion to have unified stack
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Other temps
0 or more locals
Field 1: Function return value
Caller pushes formals
0..32 registers saved
Field 2: return address
Field 3: dynamic link
Field 4: static link
sp
bp
hp
Stack Marker
Stack Frame
Stack Frame of callee
Stack growsdownwardsStack growsdownward
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Stack Data Structure Stack is natural data structure for recursive call:
1.) Before call: provide (push) all actual parameters During the call, these are the formal parameters 2.) Then execute call, provide the return address on stack Provide space on stack for return value if needed (function) And push bp register, pointing to the frame of caller: known
as dynamic link 3.) Before executing callée code: allocate locals on stack And allocate temps, e.g. copies of all regs to be used, save
them and later restore before return
Thus stack grows by 3 physical + logical sections:1. Formal parameters, some of them just addresses for &
2. Stack Marker, AKA Activation Record: RA, RV, Dynamic Link
3. Locals + temps+ saved regs
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Stack Data Structure Stack is addressed by 2 HW resources, typically registers bp
and sp (AKA top) It is computable to have a single register address stack via
current frame, since the compiler “knows” at each place, by how much stack must have grown
Actually so done by Greenhills compilers in 1990s for register-starved Intel architecture
Base Pointer register bp points to some defined place of stack marker, typically to dynamic link
The top of stack register sp points to the dynamically changing, momentary top of stack –dynamic = during the call
The bp stays invariant during the call; changes only at further calls and at any returns –static = during the call
The sp changes with each call preparation, each temp pushed on top, each intermediate result, etc.
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Simulate Recursion via Iteration• Important for master programmer to understand RT-
stack and recursion!• What to do, if you implement a recursive algorithm
using a language that does not support recursion?• Replace recursive by a non-recursive algorithm!• Or simulate recursion via non-recursive methods• After all, a computer chip has no notion of recursion; it
is a sequential machine that “simulates recursion” via non-recursive methods; the compiler plus run-time system perform this transformation!
• Done so at local industry in the past: FPS used Fortran!! to implement System SW and compilers
• Here are the actual steps of simulating recursion via iteration; must use language with Goto –terrible sin
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Steps of Simulating Recursion consider directly-recursive calls of simulated function:1. Define data structure struct stack_tp, to hold params, locals, etc.2. Define explicit stack with top of stack (top) index, initially top=0;
like a real stack identified by sp, may overflow, so include code to check; stack[ top ] holds parameters, function return value, return location (labels after a recursive call), and automatics
3. Define labels for each point of recursive call, more precisely at each point after the call; number these points of return, e.g. l1, l2, l3, l4 etc. There shall be branches=gotos to these points of return
4. At each point of recursive call: Increment : i.e. top++, like HW recursion that grows + shrinks sp Manually move parameters for “this call” onto stack; e.g. assign:
stack[ top ].arg1 = actual1; stack[ top ].arg2 = actual2 . . Store the place of return:
stack[ top ].ret = 1, or 2, or 3 alluding to l1, l2, l3 . . . Initialize local, automatic objects: stack[ top ].local1 = value1 . . . Jump (Goto, the terrible sin!) to function head, not including initializing code
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Steps of Simulating Recursion4. Point of return: In simple cases, all explicitly coded returns
and the implied return at the end of the recursive function body can be re-coded into a single place; if not, the code to simulate a return is replicated: Decrement the top of stack index: top-- Check, to which of the stored labels the flow of control has to
branch to simulate return (via goto) to continue execution; e.g.:
if ( stack[ top+1 ].ret == xyz ) goto label_xyz;
And if no other branch is open, then fall through to the end For void functions this is a literal fall-through For true functions, the return value has to be computed before
the fall-through, e.g.:return stack[ top ].return_val; // top is that of caller!
5. For nested recursive calls or several recursive calls in a row or both: “be creative” ; see an example later; apply these steps with meticulous precision
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Simulate Recursion, fact()#include <stdio.h>#define MAX_STACK 100 // never reached or exceeded!#define MAX 14 // higher factorial overflows
32bits
unsigned calls = 0; // track # of calls
typedef struct s_tp {unsigned arg; // for formal parametersunsigned fact; // function return valueunsigned ret; // code address after call, return!
} struct_s_tp;
// first the recursive fact() function for reference// includes tracking # of callsunsigned fact( unsigned arg ){ // fact
calls++; // gotta be globalif ( 0 == arg ) { // why strange order? return 1;}else{ return fact( arg - 1 ) * arg;} // end if// there should be an assertion here!
} // end fact
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Simulate Recursion, fact()unsigned nrfact( unsigned arg ){ // nrfact
struct_s_tp s[ MAX_STACK ]; // simulate RT stack!unsigned top = 0; // simulate sp registers[ top ].arg = arg; // this call’s arguments[ top ].ret = 3; // 3 alludes to label l3
l1: if ( 0 == s[ top ].arg ) { s[ top ].fact = 1;}else{ top++; // recursion! s[ top ].arg = s[ top-1 ].arg-1; s[ top ].ret = 2; // remember label l2 goto l1; // now simulate recursion
l2: // back from recursive call top--; // sp-- s[ top ].fact = s[ top + 1 ].fact * s[ top ].arg;} // end ifif ( s[ top ].ret == 2 ) { // test, where to branch to goto l2; // unstructured goto into if} // end if
l3:return s[ top ].fact;
} // end nrfact
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Simulate Recursion, fact() Result r_fact( 0) = 1, calls = 1 r_fact( 1) = 1, calls = 2 r_fact( 2) = 2, calls = 3 r_fact( 3) = 6, calls = 4 r_fact( 4) = 24, calls = 5 r_fact( 5) = 120, calls = 6 r_fact( 6) = 720, calls = 7 r_fact( 7) = 5040, calls = 8 r_fact( 8) = 40320, calls = 9 r_fact( 9) = 362880, calls = 10 r_fact(10) = 3628800, calls = 11 r_fact(11) = 39916800, calls = 12 r_fact(12) = 479001600, calls = 13 r_fact(13) = 1932053504, calls = 14
nr_fact( 0) = 1nr_fact( 1) = 1nr_fact( 2) = 2nr_fact( 3) = 6nr_fact( 4) = 24nr_fact( 5) = 120nr_fact( 6) = 720nr_fact( 7) = 5040nr_fact( 8) = 40320nr_fact( 9) = 362880nr_fact(10) = 3628800nr_fact(11) = 39916800nr_fact(12) = 479001600nr_fact(13) = 1932053504
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Simulate Recursion, fibo()#define MAX_STACK 100 // never to be reached or exceeded!#define MAX 30 // higher fibo(n) not
computable!
unsigned calls; // in case we track # of calls
typedef struct s_tp { // type of stackunsigned arg; // copy of fibo’s argunsigned fibo; // return value for fibounsigned ret; // to which label to goto?
} struct_s_tp;
// recursive function for reference:unsigned fibo( unsigned arg ){ // fibo
calls++;if ( arg <= 1 ) { // base case? return arg; // if so: done!}else{ return fibo( arg-1 ) + fibo( arg-2 );} // end if
} // end fibo
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Simulate Recursion, fibo()unsigned nr_fibo( unsigned arg ){ //nr_fibo
struct_s_tp s[ MAX_STACK ]; // stack can be local unsigned top = 0; // initially s[ top ].arg = arg; // copy arg to stack s[ top ].ret = 4; // if all fails, return
l1: if ( s[ top ].arg <= 1 ) { s[ top ].fibo = s[ top ].arg; }else{ top++; // ready to recurse s[ top ].arg = s[ top - 1 ].arg - 1; s[ top ].ret = 2; // to place of 1. return goto l1; // recurse!
l2: top++;// ready to recurse again
s[ top ].arg = s[ top - 2 ].arg - 2; s[ top ].ret = 3; // to place of 2nd return goto l1; // recurse!
l3: // two returns simulated top -= 2; // simulate 2 returns s[ top ].fibo = s[ top + 1 ].fibo + s[ top + 2 ].fibo; } // end if if ( 2 == s[ top ].ret ) { // second recursive call goto l2; }else if ( 3 == s[ top ].ret ) { goto l3; } // end if
l4: return s[ top ].fibo; // all done} // end nr_fibo
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Simulate Recursion, fibo() Result r_fibo( 0) = 0, calls = 1 r_fibo( 1) = 1, calls = 1 r_fibo( 2) = 1, calls = 3
r_fibo( 3) = 2, calls = 5 r_fibo( 4) = 3, calls = 9 . . . r_fibo(22) = 17711, calls = 57313 r_fibo(23) = 28657, calls = 92735 r_fibo(24) = 46368, calls = 150049 r_fibo(25) = 75025, calls = 242785 r_fibo(26) = 121393, calls = 392835 r_fibo(27) = 196418, calls = 635621 r_fibo(28) = 317811, calls = 1028457 r_fibo(29) = 514229, calls = 1664079
nr_fibo( 0) = 0nr_fibo( 1) = 1nr_fibo( 2) = 1nr_fibo( 3) = 2nr_fibo( 4) = 3
. . .nr_fibo(22) = 17711nr_fibo(23) = 28657nr_fibo(24) = 46368nr_fibo(25) = 75025nr_fibo(26) = 121393nr_fibo(27) = 196418nr_fibo(28) = 317811nr_fibo(29) = 514229
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Simulating Return of fibo()
Must the computation of the continuation place be after the if-statement? Or can we relocate it into the Else-Clause?
That would lead to a partial simulation, in which only the case arg > 1 continues correctly
Yet even cases for arg <= 1 must compute the right continuation via (unstructured) brute-force gotos:
if ( 2 == s[ top ].ret ) { // second recursive call goto l2;
}else if ( 3 == s[ top ].ret ) { goto l3;
} // end if
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Towers of hanoi() The game of the “Towers of Hanoi” is a game to
move a stack of n discs, while obeying certain rules
All n discs are of different sizes, residing on top of one another, a smaller disc always over a larger
The goal is to move the whole tower from start, to the goal position, using one additional buffer location
But only moving 1 single disc at a time
And never placing a larger disc on top of a smaller
During various times, any disc may be placed on the start position, the goal, or the buffer
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Towers of hanoi(), Recursive#include <iostream.h>#define MAX … some small integer < 32
void hanoi( int discs, char* start, char* goal, char* buff ){ // hanoi
if ( discs > 0 ){hanoi( discs-1, start, buff, goal );cout << "move disc " << discs << " from " << start
<< " to “ << goal << endl;hanoi( discs-1, buff, goal, start );
} // end if} // end hanoi
int main(){ // main
for ( int discs = 1; discs <= MAX; discs++ ) {cout << ” hanoi for " << discs << " discs" << endl;hanoi( discs, "start", "goal ", "buff " );cout << endl;
} // end for return 0;
} // end main
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Towers of hanoi(), Recursivemove disc 1 from start to goal < For 1 disc
move disc 1 from start to buff < For 2 discs move disc 2 from start to goal move disc 1 from buff to goal
move disc 1 from start to goal < For 3 discs move disc 2 from start to buff move disc 1 from goal to buff move disc 3 from start to goal move disc 1 from buff to startmove disc 2 from buff to goal move disc 1 from start to goal
move disc 1 from start to buff < For 4 discs move disc 2 from start to goal move disc 1 from buff to goal move disc 3 from start to buff move disc 1 from goal to startmove disc 2 from goal to buff move disc 1 from start to buff move disc 4 from start to goal move disc 1 from buff to goal move disc 2 from buff to startmove disc 1 from goal to startmove disc 3 from buff to goal move disc 1 from start to buff move disc 2 from start to goal move disc 1 from buff to goal
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Simulate Recursion, hanoi()void nr_hanoi( unsigned discs, char* start, char* goal, char* buff ){ // nr_hanoi
struct_h_type s[ MAX_STACK ]; unsigned top = 0;s[ top ].discs = discs;s[ top ].start = start;s[ top ].buff = buff;s[ top ].goal = goal;s[ top ].ret = 4;
l1:if ( s[ top ].discs > 0 ) {top++;s[ top ].discs = s[ top-1 ].discs - 1;s[ top ].start = s[ top-1 ].start;s[ top ].buff = s[ top-1 ].goal;s[ top ].goal = s[ top-1 ].buff;s[ top ].ret = 2;goto l1;
l2:cout << "nr move disc “ << s[ top ].discs << “ from “ << s[ top ].start << “ to “ << s[ top ].goal << endl;
top++; s[ top ].discs = s[ top-1 ].discs - 1; s[ top ].start = s[ top-1 ].buff; s[ top ].buff = s[ top-1 ].start; s[ top ].goal = s[ top-1 ].goal; s[ top ].ret = 3; goto l1;} // end if
l3:if ( 2 == s[ top ].ret ) { top--; goto l2;}else if ( 3 == s[ top ].ret ) { top--; goto l3;} // end if
} // end nr_hanoi
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References1. Douglas R. Hofstadter, “Gödel, Escher, Bach: an
eternal golden braid”, Basic Books, 1999, ISBN 0465026567; came out in 1979
2. Ackermann function at NIST: http://xlinux.nist.gov/dads/HTML/ackermann.html
3. Herbert G Mayer: “Advanced C Programming on the IBM PC”, 1989, Windcrest, ISBN 0-8306-9163-4
4. Non-recursive solution to Towers of Hanoi: http://portal.acm.org/citation.cfm?id=948602
5. Herbert G Mayer, Don Perkins, SIGLAN Notices, 1984, non-recursive Towers of Hanoi Solution: http://dl.acm.org/citation.cfm?id=948573