Computing Fundamentals 1 Lecture 1 Lecturer: Patrick Browne Room K308 Based on Chapter 1. A Logical...
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Transcript of Computing Fundamentals 1 Lecture 1 Lecturer: Patrick Browne Room K308 Based on Chapter 1. A Logical...
Computing Fundamentals 1Lecture 1
Lecturer: Patrick Brownehttp://www.comp.dit.ie/pbrowne/
Room K308Based on Chapter 1.
A Logical approach to Discrete Math By David Gries and Fred B. Schneider
Equational Reasoning
• Given the equations1. 0+x = x
2. x+0 = x
3. (-x)+x = 0
4. (x+y)+z = x +(y+z)
• prove that (-(-a)) = a for any a.
Equational Reasoning: Human Proof
Given the equations1. 0+X = X2. X+0 = X3. (-X)+X = 04. (X+Y)+Z = X +(Y+Z)
Prove that (-(-a)) = a for any a. i) (-(-a)) = (-(-a))+0 by 2ii) = (-(-a))+((-a)+a) by 3iii) = ((-(-a))+(-a))+a by 4iv) = 0+a by 3v) = a by 1
Human Equational Reasoning =\= Equational Logic
• Equational logic is a formalization of informal human equational reasoning. Broadly, this formalization provides a machine equivalent to human equational reasoning. But in detail there are technical differences between human & machine reasoning.
• The substitution in proof step ii) in the previous slide needed to be made explicit in the mechanical equational logic proof on the next slide. Whereas in the other steps the substitutions are automatic.
Equational Logic: CafeOBJ Proof
Given the equationsmod MY-NAT {
[ Nat ]
op -_ : Nat -> Nat
op 0 : -> Nat
op _+_ : Nat Nat -> Nat
vars X Y Z : Nat
eq [1] : 0 + X = X .
eq [2] : X + 0 = X .
eq [3] : (- X) + X = 0 .
eq [4] : ( X + Y )+ Z = X +( Y + Z) . }
Prove that (-(-a)) = a for any a. open MY-NAT .-- An arbitrary constant aop a : -> Nat . L->R reductionred - ( - a) == a . gives falsestart - ( - a) .apply -.2 at term .result ((- (- a)) + 0) : Natapply -.3 with X=a within term result ((- (- a)) + ((- a) + a)) : Natapply -.4 at term .result (((- (- a)) + (- a)) + a) : Natapply .3 at (1) .result (0 + a) : Natapply .1 at term .result a : Nat
Equational logic
• State is a list of variables with associated values.
• Evaluation of an expression E in a state is performed by replacing all variables in E by their values in the state and then computing the value of the resulting expression. For example:– Expression x – y + 2 – State (x,5),(y,6)– Gives 5 – 6 + 2– Evaluates to 1
• An expression may consists of constants, variable, operations and brackets.
Equational logic
• Theories in mathematical logic are defined by their axioms and inference rules (e.g. equational logic).
• An axiom is a distinguished expression that cannot be proved or disproved.
• An inference rule is a valid argument which permits the substitution of expressions in the steps of a formal proof.
• A theorem is either an axiom or an expression, that using the inference rules, is proved equal to an axiom or a previously proved theorem.
Textual Substitution
• Let E and R be expressions and let x be a variable then
• E[x := R]• Denotes an expression that is the same as E but
with all occurrences of variable x replaced by R.• Textual substitution only replaces variables not
expressions, but the variables can be replaced by expressions. The symbol ‘:=‘ indicates substitution (LHS replaced by RHS).
• Textual substitution has a higher precedence than any other operator.
E premise/hypothesis if true
R conclusion then also true
Inference Rule
The inference rule provides a mechanism for deriving "truths" or theorems. A theorem is an expression that is true in all states. The inference rule is written as follows:
(Expression or list of Expressions)
Inference Rule Substitution• Textual substitution can be considered as inference rule,
which provides a syntactic mechanism for deriving ‘truths’, or theorems. Theorems correspond to expressions that are true in all states. An inference rule consists of a list of expressions, called its premises or hypotheses, above a line and an expression, called its conclusion, below the line. It asserts that if the premises are theorems, then the conclusion is a theorem. The inference rule called substitution uses an expression E , a list of variables v , and a corresponding list of expressions F (next slide).
Inference Rule Substitution
• Inference Rule Substitution (IRS) uses an expression E, a list of variables v and a corresponding list of expressions F:
• (1.1) Substitution:
• This rule asserts that if expression E holds in all states then so does E with all occurrences of the variable v replaced with corresponding expression F. The symbol ‘:=‘ indicates substitution (LHS replaced by RHS)..
]:[ FvE
E
Inference Rule Substitution(1.1)
E premise/hypothesis if true
E[v := F] conclusion then also true
expression E , a list of variables v, and a corresponding list of
expressions FThis rule asserts that if expression E is a theorem, then so is E with all occurrences of the variables of v replaced by the corresponding expressions of F.
Inference Rule Substitution(1)
• If we know x + y = y + x in all states, then IRS allows us to conclude that b + 3 = 3 + b.
• After substitution
]3,:,)[( byxxyyx
xyyx
)33( bb
xyyx
Inference Rule Substitution(1)
E is (2•x)/2 = x
Use inference rule substitution to form the inference rule
2•x/2 = x
(2•x/2 = x)[x := j+5]
after substitution
2•x/2 = x
2•(j+5)/2 = j+5
Equality
• At the syntactic (or symbol level) the RHS and LHS of 2•x/2=x are not equal. However, their values are equal.
• One way equality can be characterised in terms of expression evaluation:
• Evaluation of the expression X = Y in a state yields the value true if expressions X and Y have the same value and yields false if they have different values.
• Definition: iff is used as an abbreviation for “If and only if”; b iff c holds provided (i) b holds if c holds and (ii) c holds if b holds.
Equality
• Another way of looking at equality is to use laws that allow us to show expressions are equal without evaluating them.
• A collection of such laws can be regarded as a definition of equality, provided that two expressions have the same value in all states if and only if (iff) one expression can be translated into the other according to these laws.
Four laws for Equality
• Reflexivity: x = x• Symmetry: (x=y) = (y=x)• Transitivity:
• Leibniz:
ZXZYY,X
Y]:E[zX]:E[zYX
Leibniz says: Two expressions are equal in all states iff replacing one by the other in any expression E does not change the value of E (in any state).
Leibniz
• Two expressions are equal in all states iff replacing one by the other in any expression E does not change the value of E (in any state).
Y]:E[zX]:E[zYX
Leibniz
• The variable z is used in the conclusion because textual substitution is defined for the replacement of a variable but not for the replacement of an expression. In one copy of E, z is replace by X, and in the other copy it is replace by Y. Effectively, this use of the variable z allows replacement of an instance of X in E[z:= X] by Y, while still preserving the same value of E
Y]:E[zX]:E[zYX
Leibniz (See lab 2)
• Assume b+3 = c+5 holds in all states.• We can conclude that adding d to both sides d+b+3=d+c+5 holds by:
X: b+3
Y: c+5
E: d+z
z : z
Y]:E[zX]:E[zYX
5]c:z)[z(d3]b:z)[z(d5c3b
5)(cd3)(bd5c3b
After substitution
Semantics of variables, equality & Identity
x y
99999
x y
99999 99999
Identical (Python is)
=
Equal
Some points: CafeOBJ variables do not match the above (left) conventional view of variables. In CafeOBJ a variable is constrained to range over a particular sort or kind (a domain). A variable is not considered equal to a particular element in the domain.
In contrast to programming languages real world objects are unique, so we may need different concepts of equality and identity for real world objects than computational objects.
X:Nat
0, 1, 2 , 3 , ….
Variables in some programming language
Variables in Python & CafeOBJ
>>> x = 99999>>> y = 99999>>> x == yTrue>>> x is yFalse>>> x = y>>> x is yTrue
Functions
• Function application can be defined in terms of textual substitution. Let g.x:E define a function g, where E is an expression e.g. z+1. Then function application (or evaluation) of g.x is defined in general by: g.x = E[z:=x]
A specific example:g.z = z + 1 : Definition
g.3 = 3 + 1 : x=3 substituted for z
4 Result
Python>>> def g(z): return z + 1
>>> g (3)4
Fibonacci Function in Python and CafeOBJ
CafeOBJmod* FIB { pr(NAT) op fib : Nat -> Nat var N : Nat eq fib(0) = 0 . eq fib(1) = 1 . ceq fib(N) = fib(p(N)) + fib(p(p(N))) if N > 1 .}Start CafeOBJ @ cmd. promptin fib.cafeopen FIB .red fib(14) .
def fib(n):
if n == 0:
return 0
elif n == 1:
return 1
else:
return fib(n-1) + fib(n-2)
fib(14)
Function Name Formal parameter
Actual argument
Functions
• Function application can be defined in terms of textual substitution. Let
g.z: Expression • Define a function g, then function
application g.X is defined in general by:
g.X = E[z := X]
In this case:
g.6 = E[z := 6] (6 is substituted for z)
Python function definitiondef g(z) : return (z + 1)Function applicationg(6)
Functions
• This close correspondence between function application and textual substitution suggests that Liebniz links equality and function application:
g.Yg.XYX
In computing and mathematics there is a lot of notation!
Notation 2
Notation 1Notation 4
Notation 3
Reasoning with Leibniz’s rule
• Leibniz allows the substitution of equals for equals in an expression without changing the value of that expression. We can demonstrate that two expressions are equal as follows:
E[z:=X]
= <X=Y>
E[z:=Y]
ExpressionsVariables
Explanation of proof step
2 Notations for Leibniz’s rule
• Leibniz says: Two expressions are equal in all states iff replacing one by the other in any expression E does not change the value of E (in any state). Premise
E[z:=X] <X=Y> = <X=Y> E[z:=X]=E[z:=Y] E[z:=Y] Conclusion• The first and third lines on the left are the equal
expressions of the conclusion in Leibniz.• In notation on left the middle line is the premise.
Reasoning with Leibniz’s rule• Recall John and Mary’s apples: [eq1] m = 2 * j and
[eq2] m/2 = 2 * (j – 1)• Using Leibniz: [eq2] m/2 = 2 * (j – 1) = <using [eq1] m = 2 * j equation in terms of j> [eq3] (2*j)/2 = 2 * (j – 1)• From arithmetic, the following holds in every state: 2*x/2 = x• Continuing from above: 2*j/2 = 2 * (j – 1) = < 2*j/2 = j , can put j on LHS> j = 2*(j – 1)
Reasoning with Leibniz’s rule• Solve the following for j: j = 2*(j – 1)• giving: j = 2j – 2 j = 2• We can reduce equations to value (or answer), or
at least to their simplest possible form (SPF). • An example of SPF
J = Y * (J – 1)J = Y * J – Y * 1J = Y * J - Y
• Without additional information we can go no further.
The assignment statement
• In a procedural programming language (e.g. Python) the execution assignment statement looks like: (1.10) x := E (x becomes E)
• Where x is a variable and E is an expression. This does not say that x is mathematically equal to E. Also, it is not a test for equality. The assignment statement in some programming languages is the same symbol as used for textual substitution (i.e. :=)
The assignment statement
• A Hoare Triple is of the form {P}S{Q} where P is a precondition, Q is a post-condition and S is a statement.
• Example of a procedural language + pre/post condition • {x=0} x := x+1 {x > 0} • is VALID iff execution of x:=x+1 in any state where x=0 results in a state where x>0.
• This provides a logical scaffolding or logical framework for procedural programs (e.g. written in C). The framework is added to the program, the program does not include the logical framework.
The assignment statement in a procedural programming language.• (1.12) Definition of Program Assignment • {R[x:= E]} x:= E {R}. • This allows us to compute the pre-condition from
the post-condition and assignment. • Suppose we want to use the assignment x:=x+1 and we want a post condition of x>4. Then R is x>4 so the pre-condition is
(x>4)[x:=x+1] which after substitution gives
x+1>4 or x>3.
This is program assignmentThis is substitution
This is substitution
The assignment statement in a procedural programming language.Working through the last example in detail:{R[x:=E]} x:=E {R} : General form {?} x:=x+1 {x>4} : This case• R is x>4,
• Assignment/substitution is x:=x+1
• pre-condition is {R[x:=E]} x>4[x:= x+1] substitution gives
x+1 > 4 or x > 3.
Substitution examples
Perform the following textual substitutions.
• a + b a[a := d + 3] • Solution: a+b(d+3)• Using brackets we get• (a + b a)[a := d + 3] • Solution: (d+3)+b(d+3)
Substitution examples
• Substituting two variables.
• x + 2 y[x,y := y,x] • (x + 2 y)[x := y][y := x]
• Textual substitution is left associative.• E[x := R][y := Q] is• (E[x := R])[y := Q]
The assignment statement in a procedural programming language
Finding preconditions: • {precondition} y:=y+4 { x + y > 10}• x+(y+4)>10 simplifies to x+y>6
• {precondition} a:=a+b { a = b }• (a+b)=b simplifies to a=0.
• {precondition} x:=x+1 { x = y - 1 }• {x + 1 = y – 1} or { x = y-2}
Precondition Examples(*)
{precondition} x:=x+7 { x + y > 20}
Solution: {(x+7)+y>20} simplifies to {x+y>13}
{precondition} y:=x+y { x = y }
Solution: x = (x+y) simplifies to y=0.
{precondition} a:=a+1 { a = y - 1 }
Solution: {a + 1 = y – 1} or { a = y - 2}
Leibniz substitution in CafeOBJ
eq [axiom] : (b + 3) = (c + 5) .
• In Leibniz terms:
• X = Y implies E[z := X] = E[z := Y]
•E = d + z,
•E[z := (b + 3)] = E[z := (c + 5)],
•The following reduction should give true.red d + (b + 3) == d + (c + 5) .•A Logical Approach to Discrete Math by David Gries, David, Fred Schneider, page 12
Actual substitution
X = Y
General substitution
Substitutions in CafeOBJ
module SIMPLE-NAT { [Zero NzNat < Nat ]
op 0 : -> Zero op s : Nat -> NzNat op _+_ : Nat Nat -> Nat vars N N' : Nat eq [eq1] : 0 + N = N . eq [eq2] : s(N) + N’ = s(N + N’) . }• Substitutions can be used for proofs. Evaluate
expressions from CafeOBJ manual, see notes below.
SIMPLE-NAT1
Here is a graphical representation of SIMPLE-NAT. Note the sets and the operations.
module SIMPLE-NAT { [Zero NzNat < Nat ]
op 0 : -> Zero op s : Nat -> NzNat op _+_ : Nat Nat -> Nat vars N N' : Nat eq [eq1] : 0 + N = N . eq [eq2] : s(N) + N’ = s(N + N’) . }