Revisiting the Socrates Example

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Transcription:

Section 1.6

Revisiting the Socrates Example We have the two premises: All men are mortal. Socrates is a man. And the conclusion: Socrates is mortal. How do we get the conclusion from the premises?

The Argument We can express the premises (above the line) and the conclusion (below the line) in predicate logic as an argument: We will see shortly that this is a valid argument.

Arguments in Propositional Logic A argument in propositional logic is a sequence of propositions. All but the final proposition are called premises. The last statement is the conclusion. The argument is valid if the premises imply the conclusion. An argument form is an argument that is valid no matter what propositions are substituted into its propositional variables. If the premises are p 1,p 2,,p n and the conclusion is q then (p 1 p 2 p n ) q is a tautology. Inference rules are all argument simple argument forms that will be used to construct more complex argument forms.

Rules of Inference for Propositional Logic: Modus Ponens Corresponding Tautology: (p (p q)) q Example: Let p be It is snowing. Let q be I will study discrete math. If it is snowing, then I will study discrete math. It is snowing. Therefore, I will study discrete math.

Modus Tollens Corresponding Tautology: ( p (p q)) q Example: Let p be it is snowing. Let q be I will study discrete math. If it is snowing, then I will study discrete math. I will not study discrete math. Therefore, it is not snowing.

Hypothetical Syllogism Corresponding Tautology: ((p q) (q r)) (p r) Example: Let p be it snows. Let q be I will study discrete math. Let r be I will get an A. If it snows, then I will study discrete math. If I study discrete math, I will get an A. Therefore, If it snows, I will get an A.

Disjunctive Syllogism Corresponding Tautology: ( p (p q)) q Example: Let p be I will study discrete math. Let q be I will study English literature. I will study discrete math or I will study English literature. I will not study discrete math. Therefore, I will study English literature.

Addition Corresponding Tautology: p (p q) Example: Let p be I will study discrete math. Let q be I will visit Las Vegas. I will study discrete math. Therefore, I will study discrete math or I will visit Las Vegas.

Simplification Corresponding Tautology: (p q) p Example: Let p be I will study discrete math. Let q be I will study English literature. I will study discrete math and English literature Therefore, I will study discrete math.

Conjunction Corresponding Tautology: ((p) (q)) (p q) Example: Let p be I will study discrete math. Let q be I will study English literature. I will study discrete math. I will study English literature. Therefore, I will study discrete math and I will study English literature.

Resolution Resolution plays an important role in AI and is used in Prolog. Corresponding Tautology: (( p r ) (p q)) (q r) Example: Let p be I will study discrete math. Let r be I will study English literature. Let q be I will study databases. I will not study discrete math or I will study English literature. I will study discrete math or I will study databases. Therefore, I will study databases or I will English literature.

Using the Rules of Inference to Build Valid Arguments A valid argument is a sequence of statements. Each statement is either a premise or follows from previous statements by rules of inference. The last statement is called conclusion. A valid argument takes the following form: S 1 S 2 S n C

Valid Arguments Example 1: From the single proposition Show that q is a conclusion. Solution:

Valid Arguments Example 2: With these hypotheses: It is not sunny this afternoon and it is colder than yesterday. We will go swimming only if it is sunny. If we do not go swimming, then we will take a canoe trip. If we take a canoe trip, then we will be home by sunset. Using the inference rules, construct a valid argument for the conclusion: We will be home by sunset. Solution: 1. Choose propositional variables: p : It is sunny this afternoon. r : We will go swimming. t : We will be home by sunset. q : It is colder than yesterday. s : We will take a canoe trip. 2. Translation into propositional logic: Continued on next slide

Valid Arguments 3. Construct the Valid Argument

Exercise Conclude q r from (p t) (r s) q (u t) u p s

Handling Quantified Statements Valid arguments for quantified statements are a sequence of statements. Each statement is either a premise or follows from previous statements by rules of inference which include: Rules of Inference for Propositional Logic Rules of Inference for Quantified Statements The rules of inference for quantified statements are introduced in the next several slides.

Universal Instantiation (UI) Example: Our domain consists of all dogs and Fido is a dog. All dogs are cuddly. Therefore, Fido is cuddly.

Universal Generalization (UG) Used often implicitly in Mathematical Proofs.

Existential Instantiation (EI) Example: There is someone who got an A in the course. Let s call her a and say that a got an A

Existential Generalization (EG) Example: Michelle got an A in the class. Therefore, someone got an A in the class.

Using Rules of Inference Example 1: Using the rules of inference, construct a valid argument to show that John Smith has two legs is a consequence of the premises: Every man has two legs. John Smith is a man. Solution: Let M(x) denote x is a man and L(x) x has two legs and let John Smith be a member of the domain. Valid Argument:

Using Rules of Inference Example 2: Use the rules of inference to construct a valid argument showing that the conclusion Someone who passed the first exam has not read the book. follows from the premises A student in this class has not read the book. Everyone in this class passed the first exam. Solution: Let C(x) denote x is in this class, B(x) denote x has read the book, and P(x) denote x passed the first exam. First we translate the premises and conclusion into symbolic form. Continued on next slide

Using Rules of Inference Valid Argument:

Returning to the Socrates Example

Solution for Socrates Example Valid Argument

Universal Modus Ponens Universal Modus Ponens combines universal instantiation and modus ponens into one rule. This rule could be used in the Socrates example.