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Relational Math

Relational Math. Relational Algebra. The rules for combining one or more numbers (or symbols standing in for numbers) to obtain another number is called algebra .

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Relational Math

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  1. Relational Math

  2. Relational Algebra • The rules for combining one or more numbers (or symbols standing in for numbers) to obtain another number is called algebra. • For example, the rules for combining one or more Boolean variables (expressions which are either true or false) to obtain another Boolean is called Boolean algebra. • The rules for combining one or more relations to obtain another relation is called relational algebra.

  3. Operations • The specific ways of combining elements are known as operations. • E.g. addition is an algebraic operation • E.g. ANDing is a Boolean operation • Operations are called unary if they act on one element and binary if they act on two elements. • E.g square root is a unary algebraic operation. • E.g. addition is a binary algebraic operation.

  4. Relation  Table • Relational algebra sounds so abstract. • Recall a representation of a relation is a table. • So relational algebra means that we do stuff to tables and get other tables out. • A relational database is made of tables. • Relational algebra tells us how to operate on tables. • That is, relational algebra tells us what a Data Manipulation Language (DML) should do.

  5. Synonym • Recall our old synonyms • Table  Relation  File • Row  Tuple  Record • Column  Attribute  Property  Field • A new synonym pair is • Condition  Predicate • A condition is a Boolean, an expression that is true or false, e.g. Salary > 600000 or Name=“Smith”

  6. Selection/Restriction • A selection (a.k.a. restriction) picks out those rows from a table that meet some condition. • Example: Let us select from the Customer table those people who are from PA. • predicate ( R )

  7. Selection Example: Customers from PA (Design) Customer.* refers to all of the columns. The condition (predicate) selecting out particular rows.

  8. Selection Example: PA Only (DataSheet)

  9. Selection Example: PA Only (SQL) Condition

  10. Condition can be compound. • The selection condition may be a compound condition. • ConditionA AND ConditionB • ConditionA OR ConditionB • Example: Let us select from the Customer table those people who from Philadelphia and from PA. (There are other Philadelphias, e.g. in Mississippi)

  11. Added Some New Customers

  12. Selection Example: Philadelphia AND PA (Design) ANDed conditions are entered on the same line.

  13. Selection Example: Philadelphia AND PA (DataSheet)

  14. Selection Example: Philadelphia AND PA (SQL) ANDed conditions

  15. Selection Example: Customers from PA or NJ (Design) ORed conditions are entered on separate lines.

  16. Selection Example: Customers from PA or NJ (DataSheet)

  17. Selection Example: Customers from PA or NJ (SQL) ORed Conditions

  18. Projection • The projection operator picks out a set of columns that will belong to the resulting table. • Recall the concept of views in which certain fields would be hidden from certain users. • Example: Let us project from the Customer table the first and last names. • column1,column2,… ( R )

  19. Projection Example: Customer’s first and last names (Design) Choose columns and check to show them.

  20. Projection Example: Customer’s first and last names (DataSheet)

  21. Projection Example: Customer’s first and last names (SQL) Columns that will appear.

  22. Union Compatible • Think of the records in a table as elements of a set. • If two sets have the same sorts of records, that is, the same fields in the same order or minimally the same type fields in the same order, then the sets are said to be union-compatible. • Then you can consider forming • The union of the two sets • The intersection of the two sets • The set difference

  23. A Simpsons Database

  24. Union • The union of set A and set B contains all of the elements of set A as well as all of the elements of set B • If an element belongs to set A and set B, the union contains only one copy of it. • Example: let us make a table containing all of the names from the Character and RealPerson tables • FirstName,LastName(Character)  FirstName,LastName(RealPerson)

  25. Union Example: Character and RealPerson names Step 1 would be to create union-compatible tables using projection. Step 2 would be to take the union of these tables.

  26. Union Example: Character and RealPerson names (DataSheet)

  27. Union Example: Character and RealPerson names (DataSheet)

  28. Union Example: Character and RealPerson names (No Design ) • Query-By-Example (QEB) which is what we do in Design View takes the join as its principle binary operation. • While the union is a more fundamental binary operation in Relational algebra, the join is the more common operation in querying. • SQL does have the union operation!

  29. Union Example: Character and RealPerson names

  30. UNION ALL • UNION ALLis a variation on the UNION operation that does not eliminate duplicate records from the results. • It is somewhat faster because the system does not have to look for the possibility of duplications. • The result is “weird” in that we usually do not want duplicate records.

  31. Intersection • The intersection of set A and set B contains only the elements that belong both to set A and to set B. • Example: let us make a table containing all of the names of people who play themselves on the Simpsons. •  FirstName,LastName(Character)   FirstName,LastName(RealPerson) • Again the first step is to make “union-compatible” tables.

  32. Intersection Example: People playing themselves (DataSheet)

  33. Intersection Example: People playing themselves (Design, step 1)

  34. Intersection Example: People playing themselves (Design, step 2) Dragging a field icon from one table to another establishes a relationship. Right click on a line to remove a relationship from the query.

  35. Intersection Example: People playing themselves (SQL) SQL has an INTERSECT operation like its UNION operation, but it is not supported by Access.

  36. Intersection Example: People playing themselves (Design, version 2) concatenation subquery Uses concatenation and a subquery.

  37. Intersection Example: People playing themselves (SQL, version 2) Note: Access adds lots of parentheses.

  38. Set Difference • The set differenceof Set A and Set B is all of the elements in Set A that are not also elements of set B. • Example: Simpsons characters who are not real people. • FirstName,LastName(Character) -FirstName,LastName(RealPerson) • Again the first step is to make “union-compatible” tables.

  39. Set Difference Example: Characters that are not real people (DataSheet) Ernest Borgnine and James Brown removed.

  40. Set Difference Example: Characters that are not real people (Design) Same as the second version of the Intersection query except IN  NOT IN

  41. Set Difference Example: Characters that are not real people (SQL)

  42. Cartesian Product • A row in the Cartesian productof Table A and Table B is the concatenation of a row from Table A and a row from Table B. • All possible combinations of a row from A and a row from B are made. • A  B • On its own the Cartesian product is not very useful, but it is the first ingredient in a join, which is very useful in querying relational databases.

  43. How big is the Cartesian product? Degree(B) Degree(A) Cardinality(A) Cardinality(B) Cardinality(AB) = Cardinality(A) * Cardinality(B) Degree(AB) = Degree(A) + Degree(B)

  44. Perform a Selection on the Cartesian Product • Recall that • (Most of) our tables correspond to entities. • Entities have relationships. • Relationships are realized by having fields in two tables take values from the same domain. • E.g. That a Character is voiced by a Real Person is represented by having the PersonID (which identifies a person in the RealPerson Table) appear the Character Table.

  45. Perform a Selection on the Cartesian Product (Cont.) • The Cartesian product of the Character and RealPerson Tables has rows in which the person voices the character and rows in which the person does not voice the character. • What distinguishes the former is that the Character.PersonID matches the RealPerson.PersonID. • We can use this condition (predicate) to select out the meaningful rows.

  46. match

  47. After the selection Now we have a table with two identical columns. We can eliminate one (or both) by projecting.

  48. After projection • The combination of Cartesian product, selection and projection allows you to bring together the related information that was placed in different tables. • This is the key operation in querying. • It is called a join.

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