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Lecture 1: Propositional Logic
Syntax
Semantics
Truth tables
Implications and Equivalences
Valid and Invalid arguments
Normal forms
Davis-Putnam Algorithm
1
Atomic propositions and logical connectives
An atomic proposition is a statement or assertion that must be true or false.
Examples of atomic propositions are: “5 is a prime” and “program terminates”.
Propositional formulas are constructed from atomic propositions by using logical connectives.
Connectives
false
true
not
and
or
conditional (implies)
biconditional (equivalent)
A typical propositional formula is
The truth value of a propositional formula can be calculated from the truth values of the atomic
propositions it contains.
2
Well-formed propositional formulas
The well-formed formulas of propositional logic are obtained by using the construction rules
below:
An atomic proposition is a well-formed formula.
If is a well-formed formula, then so is .
If and are well-formed formulas, then so are , , , and .
If is a well-formed formula, then so is .
Alternatively, can use Backus-Naur Form (BNF) :
formula ::= Atomic Proposition
formula
formula formula
formula formula
formula formula
formula formula
formula
3
Truth functions
The truth of a propositional formula is a function of the truth values of the atomic
propositions it contains.
A truth assignment is a mapping that associates a truth value with each of the atomic propositions
. Let be a truth assignment for .
If we identify with false and with true, we can easily determine the truth value of
under .
The other logical connectives can be handled in a similar manner.
Truth functions are sometimes called Boolean functions.
4
Truth tables for basic logical connectives
A truth table shows whether a propositional formula is true or false for each possible truth
assignment.
If we know how the five basic logical connectives work, it is easy (in principle) to construct a truth
table.
5
Mistake in table for implication?
Notice that is only if is and is .
If is , then the implication will be . Could this possibly be correct?
Some people feel that it is counterintuitive to say that the implication
“If horses have wings, then elephants can dance”
is true, when we know that horses don’t have wings and that elephants can’t dance.
There are four possible truth tables for implication :
T1 T2 T3 T4
6
Mistake in table for implication?
First Argument:
If we used T1, then would have the same table as .
If we used T2, then would have the same table as .
If we used T3, then would have the same table as –even worse!
Clearly, each of these three alternatives is unreasonable. Table T4 is the only remaining possibility.
7
Mistake in table for implication?
Second Argument:
We would certainly want to be a tautology. Let’s test each of the four possible
choices for .
T1 T2 T3 T4
Only T4 makes the implication a tautology.
8
A more complex truth table
Let be the formula
To construct the truth table for we must consider all possible truth assignments for , , and .
In this case there are such truth assignments. Hence, the table for will have 8 rows.
In general, if the truth of a formula depends on propositions, its truth table will have rows.
9
Special formulas
A propositional formula is
a tautology if for all .
a contradiction if for all .
satisfiable if for some .
It is easy to see that is a tautology and that is a contradiction,
The truth table on the previous page shows that the formula is a tautology.
Note that
is a contradiction iff is a tautology.
is satisfiable iff is not a tautology.
Major open problem: Is there a more efficient way to determine if a formula is a tautology (is
satisfiable) than by constructing its truth table?
10
Implications
In the formula
is the antecedent, hypothesis or premise
is the consequent or conclusion
Can be associated with 3 variants:
Converse:
Inverse:
Contrapositive:
An implication and its contrapositive are equivalent.
Modus Ponens: Given and , conclude .
Modus Tollens: Given and , conclude .
11
Equivalences
Two formulae and are equivalent iff for any truth assignment we have .
Claim: and are equivalent iff is a tautology.
Some Useful Equivalences that can be used to simplify complex formulas:
12
When is an argument valid?
An argument is an assertion that a set of statements, called the premises, yields another statement,
called the conclusion.
An argument is valid if and only if the conjunction of the premises implies the conclusion.
In other words, if we grant that the premises are all true, then the conclusion must be true also.
An invalid argument is called a fallacy. Unfortunately, fallacies are probably more common than
valid arguments.
In many cases, the validity of an argument can be checked by constructing a truth table.
All we have to do is show that the conjunction of the premises implies the conclusion.
13
Valid and Invalid Arguments
Which of the following arguments are valid?
1. If I am wealthy, then I am happy. I am happy. Therefore, I am wealthy.
2. If John drinks beer, he is at least 18 years old. John does not drink beer. Therefore, John is not
yet 18 years old.
3. If girls are blonde, they are popular with boys. Ugly girls are unpopular with boys. Intellectual
girls are ugly. Therefore, blonde girls are not intellectual.
4. If I study, then I will not fail basket weaving 101. If I do not play cards to often, then I will
study. I failed basket weaving 101. Therefore, I played cards too often.
14
A More Complicated Example!
The following example is due to Lewis Carroll. Prove that it is a valid argument.
1. All the dated letters in this room are written on blue paper.
2. None of them are in black ink, except those that are written in the third person.
3. I have not filed any of those that I can read.
4. None of those that are written on one sheet are undated.
5. All of those that are not crossed out are in black ink.
6. All of those that are written by Brown begin with “Dear Sir.”
7. All of those that are written on blue paper are filed.
8. None of those that are written on more than one sheet are crossed out.
9. None of those that begin with “Dear sir” are written in the third person.
Therefore, I cannot read any of Brown’s letters.
15
Lewis Carrol example (cont.)
Let
be “the letter is dated,”
be “the letter is written on blue paper,”
be “the letter is written in black ink,”
be “the letter is written in the third person,”
be “the letter is filed,”
be “I can read the letter,”
be “the letter is written on one sheet,”
be “the letter is crossed out,”
be “the letter is written by Brown,”
be “the letter begins with ‘Dear Sir’ “
16
Lewis Carrol example (cont.)
Now, we can write the argument in propositional logic.
1.
2.
3.
4.
5.
6.
7.
8.
9.
Therefore
17
Negation Normal Form
Some more useful equivalences:
18
Negation Normal Form
The negation of
is simply
This may not be very useful. Often desirable to simplify formula as much as possible using four
tautologies above.
The resulting formula is said to be in negation normal form.
19
Disjunctive Normal Form
Every propositional formula is equivalent to a formula in disjunctive normal form (DNF):
where each is a literal (an atomic proposition or the negation of one).
In short: .
Every propositional formula is equivalent to a formula in conjunctive normal form (CNF):
where each is a literal.
In short: .
How hard is it to check if CNF formula is a tautology? How about DNF? How about checking for
satisfiability instead?
20
Connectives
From CNF (or DNF) it follows that no connectives other than are really needed.
Since is equivalent to , we only need .
Likewise, is sufficient.
Likewise, is sufficient.
But is not sufficient.
NAND
Consider the binary connective .
Claim: alone is sufficient.
21
Deciding satisfiability
The fastest known algorithms for deciding propositional satisfiability are based on the
Davis-Putnam Algorithm.
A unit clause is a clause that consists of a single literal.
function Satisfiable (clause list S) returns boolean;
/* unit propagation */
repeat
for each unit clause do
delete from every clause containing
delete from every clause of in which it occurs
end for
if is empty then return TRUE
else if null clause is in then return FALSE end if
until no further changes result end repeat
/* splitting */
choose a literal occurring in
if Satisfiable ( ) then return TRUE
else if Satisfiable ( then return TRUE
else return FALSE end if
end function
22

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propositional_logic.pdf

  • 1. Lecture 1: Propositional Logic Syntax Semantics Truth tables Implications and Equivalences Valid and Invalid arguments Normal forms Davis-Putnam Algorithm 1
  • 2. Atomic propositions and logical connectives An atomic proposition is a statement or assertion that must be true or false. Examples of atomic propositions are: “5 is a prime” and “program terminates”. Propositional formulas are constructed from atomic propositions by using logical connectives. Connectives false true not and or conditional (implies) biconditional (equivalent) A typical propositional formula is The truth value of a propositional formula can be calculated from the truth values of the atomic propositions it contains. 2
  • 3. Well-formed propositional formulas The well-formed formulas of propositional logic are obtained by using the construction rules below: An atomic proposition is a well-formed formula. If is a well-formed formula, then so is . If and are well-formed formulas, then so are , , , and . If is a well-formed formula, then so is . Alternatively, can use Backus-Naur Form (BNF) : formula ::= Atomic Proposition formula formula formula formula formula formula formula formula formula formula 3
  • 4. Truth functions The truth of a propositional formula is a function of the truth values of the atomic propositions it contains. A truth assignment is a mapping that associates a truth value with each of the atomic propositions . Let be a truth assignment for . If we identify with false and with true, we can easily determine the truth value of under . The other logical connectives can be handled in a similar manner. Truth functions are sometimes called Boolean functions. 4
  • 5. Truth tables for basic logical connectives A truth table shows whether a propositional formula is true or false for each possible truth assignment. If we know how the five basic logical connectives work, it is easy (in principle) to construct a truth table. 5
  • 6. Mistake in table for implication? Notice that is only if is and is . If is , then the implication will be . Could this possibly be correct? Some people feel that it is counterintuitive to say that the implication “If horses have wings, then elephants can dance” is true, when we know that horses don’t have wings and that elephants can’t dance. There are four possible truth tables for implication : T1 T2 T3 T4 6
  • 7. Mistake in table for implication? First Argument: If we used T1, then would have the same table as . If we used T2, then would have the same table as . If we used T3, then would have the same table as –even worse! Clearly, each of these three alternatives is unreasonable. Table T4 is the only remaining possibility. 7
  • 8. Mistake in table for implication? Second Argument: We would certainly want to be a tautology. Let’s test each of the four possible choices for . T1 T2 T3 T4 Only T4 makes the implication a tautology. 8
  • 9. A more complex truth table Let be the formula To construct the truth table for we must consider all possible truth assignments for , , and . In this case there are such truth assignments. Hence, the table for will have 8 rows. In general, if the truth of a formula depends on propositions, its truth table will have rows. 9
  • 10. Special formulas A propositional formula is a tautology if for all . a contradiction if for all . satisfiable if for some . It is easy to see that is a tautology and that is a contradiction, The truth table on the previous page shows that the formula is a tautology. Note that is a contradiction iff is a tautology. is satisfiable iff is not a tautology. Major open problem: Is there a more efficient way to determine if a formula is a tautology (is satisfiable) than by constructing its truth table? 10
  • 11. Implications In the formula is the antecedent, hypothesis or premise is the consequent or conclusion Can be associated with 3 variants: Converse: Inverse: Contrapositive: An implication and its contrapositive are equivalent. Modus Ponens: Given and , conclude . Modus Tollens: Given and , conclude . 11
  • 12. Equivalences Two formulae and are equivalent iff for any truth assignment we have . Claim: and are equivalent iff is a tautology. Some Useful Equivalences that can be used to simplify complex formulas: 12
  • 13. When is an argument valid? An argument is an assertion that a set of statements, called the premises, yields another statement, called the conclusion. An argument is valid if and only if the conjunction of the premises implies the conclusion. In other words, if we grant that the premises are all true, then the conclusion must be true also. An invalid argument is called a fallacy. Unfortunately, fallacies are probably more common than valid arguments. In many cases, the validity of an argument can be checked by constructing a truth table. All we have to do is show that the conjunction of the premises implies the conclusion. 13
  • 14. Valid and Invalid Arguments Which of the following arguments are valid? 1. If I am wealthy, then I am happy. I am happy. Therefore, I am wealthy. 2. If John drinks beer, he is at least 18 years old. John does not drink beer. Therefore, John is not yet 18 years old. 3. If girls are blonde, they are popular with boys. Ugly girls are unpopular with boys. Intellectual girls are ugly. Therefore, blonde girls are not intellectual. 4. If I study, then I will not fail basket weaving 101. If I do not play cards to often, then I will study. I failed basket weaving 101. Therefore, I played cards too often. 14
  • 15. A More Complicated Example! The following example is due to Lewis Carroll. Prove that it is a valid argument. 1. All the dated letters in this room are written on blue paper. 2. None of them are in black ink, except those that are written in the third person. 3. I have not filed any of those that I can read. 4. None of those that are written on one sheet are undated. 5. All of those that are not crossed out are in black ink. 6. All of those that are written by Brown begin with “Dear Sir.” 7. All of those that are written on blue paper are filed. 8. None of those that are written on more than one sheet are crossed out. 9. None of those that begin with “Dear sir” are written in the third person. Therefore, I cannot read any of Brown’s letters. 15
  • 16. Lewis Carrol example (cont.) Let be “the letter is dated,” be “the letter is written on blue paper,” be “the letter is written in black ink,” be “the letter is written in the third person,” be “the letter is filed,” be “I can read the letter,” be “the letter is written on one sheet,” be “the letter is crossed out,” be “the letter is written by Brown,” be “the letter begins with ‘Dear Sir’ “ 16
  • 17. Lewis Carrol example (cont.) Now, we can write the argument in propositional logic. 1. 2. 3. 4. 5. 6. 7. 8. 9. Therefore 17
  • 18. Negation Normal Form Some more useful equivalences: 18
  • 19. Negation Normal Form The negation of is simply This may not be very useful. Often desirable to simplify formula as much as possible using four tautologies above. The resulting formula is said to be in negation normal form. 19
  • 20. Disjunctive Normal Form Every propositional formula is equivalent to a formula in disjunctive normal form (DNF): where each is a literal (an atomic proposition or the negation of one). In short: . Every propositional formula is equivalent to a formula in conjunctive normal form (CNF): where each is a literal. In short: . How hard is it to check if CNF formula is a tautology? How about DNF? How about checking for satisfiability instead? 20
  • 21. Connectives From CNF (or DNF) it follows that no connectives other than are really needed. Since is equivalent to , we only need . Likewise, is sufficient. Likewise, is sufficient. But is not sufficient. NAND Consider the binary connective . Claim: alone is sufficient. 21
  • 22. Deciding satisfiability The fastest known algorithms for deciding propositional satisfiability are based on the Davis-Putnam Algorithm. A unit clause is a clause that consists of a single literal. function Satisfiable (clause list S) returns boolean; /* unit propagation */ repeat for each unit clause do delete from every clause containing delete from every clause of in which it occurs end for if is empty then return TRUE else if null clause is in then return FALSE end if until no further changes result end repeat /* splitting */ choose a literal occurring in if Satisfiable ( ) then return TRUE else if Satisfiable ( then return TRUE else return FALSE end if end function 22