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Chapter 2:  Entity-Relationship Model Entity Sets Relationship Sets Design Issues  Mapping Constraints  Keys E-R Diagram Extended E-R Features Design of an E-R Database Schema Reduction of an E-R Schema to Tables
Entity Sets A  database  can be modeled as: a collection of entities, relationship among entities. An  entity  is an object that exists and is distinguishable from other objects. Example:  specific person, company, event, plant Entities have  attributes Example: people have  names  and  addresses An  entity set  is a set of entities of the same type that share the same properties. Example: set of all persons, companies, trees, holidays
Entity Sets  customer  and  loan customer-id  customer-  customer-  customer-  loan-  amount   name  street  city  number
Attributes An entity is represented by a set of attributes, that is descriptive properties possessed by all members of an entity set. Domain  – the set of permitted values for each attribute  Attribute types: Simple  and  composite  attributes. Single-valued  and  multi-valued  attributes E.g. multivalued attribute:  phone-numbers Derived  attributes Can be computed from other attributes E.g.  age , given date of birth Example:  customer = (customer-id, customer-name,    customer-street, customer-city) loan = (loan-number, amount)
Composite Attributes
Relationship Sets A  relationship  is an association among several entities Example: Hayes depositor A-102 customer  entity relationship set account  entity A  relationship  set  is a mathematical relation among  n     2 entities, each taken from entity sets {( e 1 ,  e 2 , …  e n ) |  e 1      E 1 ,  e 2      E 2 , …,  e n      E n } where ( e 1 ,  e 2 , …,  e n ) is a relationship Example:  (Hayes, A-102)     depositor
Relationship Set  borrower
Relationship Sets (Cont.) An  attribute  can also be property of a relationship set. For instance, the  depositor  relationship set between entity sets  customer  and  account  may have the attribute  access-date
Degree of a Relationship Set Refers to number of entity sets that participate in a relationship set. Relationship sets that involve two entity sets are  binary  (or degree two).  Generally, most relationship sets in a database system are binary. Relationship sets may involve more than two entity sets.  Relationships between more than two entity sets are rare.  Most relationships are binary. (More on this later.) E.g.  Suppose employees of a bank may have jobs (responsibilities) at multiple branches, with different jobs at different branches.  Then there is a ternary relationship set between entity sets  employee,  job and branch
Mapping Cardinalities Express the number of entities to which another entity can be associated via a relationship set. Most useful in describing binary relationship sets. For a binary relationship set the mapping cardinality must be one of the following types: One to one One to many Many to one Many to many
Mapping Cardinalities One to one One to many Note: Some elements in A and B may not be mapped to any  elements in the other set
Mapping Cardinalities  Many to one Many to many Note: Some elements in A and B may not be mapped to any  elements in the other set
Mapping Cardinalities affect ER Design Can make  access-date  an attribute of account, instead of a relationship attribute, if each account can have only one customer  I.e., the relationship from account to customer is many to one, or equivalently, customer to account is one to many
E-R Diagrams Rectangles  represent entity sets. Diamonds  represent relationship sets. Lines  link attributes to entity sets and entity sets to relationship sets. Ellipses  represent attributes Double ellipses  represent multivalued attributes. Dashed ellipses  denote derived attributes. Underline  indicates primary key attributes (will study later)
E-R Diagram With Composite, Multivalued, and Derived Attributes
Relationship Sets with Attributes
Roles Entity sets of a relationship need not be distinct The labels “manager” and “worker” are called  roles ; they specify how employee entities interact via the works-for relationship set. Roles are indicated in E-R diagrams by labeling the lines that connect diamonds to rectangles. Role labels are optional, and are used to clarify semantics of the relationship
Cardinality Constraints We express cardinality constraints by drawing either a directed line (  ), signifying “one,” or an undirected line (—), signifying “many,” between the relationship set and the entity set. E.g.: One-to-one relationship: A customer is associated with at most one loan via the relationship  borrower A loan is associated with at most one customer via  borrower
One-To-Many Relationship In the one-to-many relationship a loan is associated with at most one customer via  borrower , a customer is associated with several (including 0) loans via  borrower
Many-To-One Relationships In a many-to-one relationship a loan is associated with several (including 0) customers via  borrower , a customer is associated with at most one loan via  borrower
Many-To-Many Relationship A customer is associated with several (possibly 0) loans via borrower A loan is associated with several (possibly 0) customers via borrower
Participation of an Entity Set in a Relationship Set Total   participation  (indicated by double line):  every entity in the entity set participates in at least one relationship in the relationship set E.g. participation of  loan  in  borrower  is total every loan must have a customer associated to it via borrower Partial participation :  some entities may not participate in any relationship in the relationship set E.g. participation of  customer  in  borrower  is partial
Alternative Notation for Cardinality Limits Cardinality limits can also express participation constraints
Keys A  super key  of an entity set is a set of one or more attributes whose values uniquely determine each entity. A  candidate key  of an entity set is a minimal super key Customer-id  is candidate key of  customer account-number  is candidate key of  account Although several candidate keys may exist, one of the candidate keys is selected to be the  primary key .
Keys for Relationship Sets The combination of primary keys of the participating entity sets forms a super key of a relationship set. ( customer-id, account-number ) is the super key of  depositor NOTE:  this means a pair of entity sets can have at most one relationship in a particular relationship set.  E.g. if we wish to track all access-dates to each account by each customer, we cannot assume a relationship for each access.  We can use a multivalued attribute though Must consider the mapping cardinality of the relationship set when deciding the what are the candidate keys  Need to consider semantics of relationship set in selecting the  primary key  in case of more than one candidate key
E-R  Diagram with a Ternary Relationship
Cardinality Constraints on Ternary Relationship We allow at most one arrow out of a ternary (or greater degree) relationship to indicate a cardinality constraint E.g. an arrow from  works-on  to  job  indicates each employee works on at most one job at any branch. If there is more than one arrow, there are two ways of defining the meaning.  E.g a ternary relationship  R  between  A ,  B  and  C  with arrows to  B  and  C  could mean 1.  each  A  entity is associated with a unique entity from  B  and  C  or  2.  each pair of entities from ( A, B ) is associated with a unique  C  entity,    and each pair ( A, C ) is associated with a unique  B Each alternative has been used in different formalisms To avoid confusion we outlaw more than one arrow
Binary Vs. Non-Binary Relationships Some relationships that appear to be non-binary may be better represented using binary relationships E.g.  A ternary relationship  parents , relating a child to his/her father and mother, is best replaced by two binary relationships,  father  and  mother Using two binary relationships allows partial information (e.g. only mother being know) But there are some relationships that are naturally non-binary E.g.  works-on
Converting Non-Binary Relationships to Binary Form In general, any non-binary relationship can be represented using binary relationships by creating an artificial entity set. Replace  R  between entity sets A, B and C   by an entity set  E , and three relationship sets:  1.  R A , relating  E  and  A    2. R B , relating  E  and  B 3.  R C , relating  E  and  C Create a special identifying attribute for  E Add any attributes of  R  to  E  For each relationship ( a i  , b i  , c i ) in  R,  create    1. a new entity  e i   in the entity set  E  2. add ( e i  , a i  ) to  R A   3. add ( e i  , b i   ) to  R B     4. add ( e i  , c i  ) to  R C
Converting Non-Binary Relationships (Cont.) Also need to translate constraints Translating all constraints may not be possible There may be instances in the translated schema that cannot correspond to any instance of  R Exercise:  add constraints to the relationships R A , R B  and R C  to ensure that a newly created entity corresponds to exactly one entity in each of entity sets  A, B  and  C We can avoid creating an identifying attribute by making E a weak entity set (described shortly) identified by the three relationship sets
Design Issues Use of entity sets vs. attributes Choice mainly depends on the structure of the enterprise being modeled, and on the semantics associated with the attribute in question. Use of entity sets vs. relationship sets Possible guideline is to designate a relationship set to describe an action that occurs between entities Binary versus  n -ary relationship sets Although it is possible to replace any nonbinary ( n -ary, for  n  > 2) relationship set by a number of distinct binary relationship sets, a  n -ary relationship set shows more clearly that several entities participate in a single relationship. Placement of relationship attributes
How about doing an ER design interactively on the board? Suggest an application to be modeled.
Weak Entity Sets An entity set that does not have a primary key is referred to as a  weak entity set . The existence of a weak entity set depends on the existence of a  identifying entity   set it must relate to the identifying entity set via a total, one-to-many relationship set from the identifying to the weak entity set Identifying relationship  depicted using a double diamond The  discriminator  (or partial key)  of a weak entity set is the set of attributes that distinguishes among all the entities of a weak entity set. The primary key of a weak entity set is formed by the primary key of the strong entity set on which the weak entity set is existence dependent, plus the weak entity set’s discriminator.
Weak Entity Sets (Cont.) We depict a weak entity set by double rectangles. We underline the discriminator of a weak entity set  with a dashed line. payment-number  – discriminator of the  payment  entity set  Primary key for  payment  – ( loan-number, payment-number )
Weak Entity Sets (Cont.) Note: the primary key of the strong entity set is not explicitly stored with the weak entity set, since it is implicit in the identifying relationship. If  loan-number  were explicitly stored,  payment  could be made a strong entity, but then the relationship between  payment  and  loan  would be duplicated by an implicit relationship defined by the attribute  loan-number  common to  payment  and  loan
More Weak Entity Set Examples In a university, a  course  is a strong entity and a  course-offering  can be modeled as a weak entity The discriminator of  course-offering  would be  semester  (including year) and  section-number  (if there is more than one section) If we model  course-offering  as a strong entity we would model  course-number  as an attribute.  Then the relationship with  course  would be implicit in the  course-number  attribute
Specialization Top-down design process; we designate subgroupings within an entity set that are distinctive from other entities in the set. These subgroupings become lower-level entity sets that have attributes or participate in relationships that do not apply to the higher-level entity set. Depicted by a  triangle  component labeled ISA (E.g.  customer  “is a”  person ). Attribute inheritance  – a lower-level entity set inherits all the attributes and relationship participation of the higher-level entity set to which it is linked.
Specialization Example
Generalization A bottom-up design process – combine a number of entity sets that share the same features into a higher-level entity set. Specialization and generalization are simple inversions of each other; they are represented in an E-R diagram in the same way. The terms specialization and generalization are used interchangeably.
Specialization and Generalization (Contd.) Can have multiple specializations of an entity set based on different features.  E.g.  permanent-employee  vs.  temporary-employee , in addition to  officer  vs.  secretary  vs.  teller Each particular employee would be  a member of one of  permanent-employee  or  temporary-employee ,  and also a member of one of  officer ,  secretary , or  teller The ISA relationship also referred to as  superclass - subclass  relationship
Design Constraints on a Specialization/Generalization Constraint on which entities can be members of a given lower-level entity set. condition-defined E.g. all customers over 65 years are members of  senior-citizen  entity set;  senior-citizen  ISA  person . user-defined Constraint on whether or not entities may belong to more than one lower-level entity set within a single generalization. Disjoint an entity can belong to only one lower-level entity set Noted in E-R diagram by writing  disjoint  next to the ISA triangle Overlapping an entity can belong to more than one lower-level entity set
Design Constraints on a Specialization/Generalization (Contd.) Completeness   constraint  -- specifies whether or not an entity in the higher-level entity set must belong to at least one of the lower-level entity sets within a generalization. total   : an entity must belong to one of the lower-level entity sets partial : an entity need not belong to one of the lower-level entity sets
Aggregation Consider the ternary relationship  works-on , which we saw earlier Suppose we want to record managers for tasks performed by an    employee at a branch
Aggregation (Cont.) Relationship sets  works-on  and  manages  represent overlapping information Every  manages  relationship corresponds to a  works-on  relationship However, some  works-on  relationships may not correspond to any  manages  relationships  So we can’t discard the  works-on  relationship Eliminate this redundancy via  aggregation Treat relationship as an abstract entity Allows relationships between relationships  Abstraction of relationship into new entity Without introducing redundancy, the following diagram represents: An employee works on a particular job at a particular branch  An employee, branch, job combination may have an associated manager
E-R Diagram With Aggregation
E-R Design Decisions The use of an attribute or entity set to represent an object. Whether a real-world concept is best expressed by an entity set or a relationship set. The use of a ternary relationship versus a pair of binary relationships. The use of a strong or weak entity set. The use of specialization/generalization – contributes to modularity in the design. The use of aggregation – can treat the aggregate entity set as a single unit without concern for the details of its internal structure.
E-R Diagram for a Banking Enterprise
How about doing another ER design interactively on the board?
Summary of Symbols Used in E-R Notation
Summary of Symbols (Cont.)
Alternative E-R Notations
UML UML: Unified Modeling Language UML has many components to graphically model different aspects of an entire software system UML Class Diagrams correspond to E-R Diagram, but several differences.
Summary of UML Class Diagram Notation
UML Class Diagrams (Contd.) Entity sets are shown as boxes, and attributes are shown within  the box, rather than as separate ellipses in E-R diagrams. Binary relationship sets are represented in UML by just drawing a line connecting the entity sets. The relationship set name is written adjacent to the line.  The role played by an entity set in a relationship set may also be specified by writing the role name on the line, adjacent to the entity set.  The relationship set name may alternatively be written in a box, along with attributes of the relationship set, and the box is connected, using a dotted line, to the line depicting the  relationship set. Non-binary relationships drawn using diamonds, just as in ER diagrams
UML Class Diagram Notation (Cont.) * Note reversal of position in cardinality constraint depiction * Generalization can use merged or separate arrows independent of disjoint/overlapping overlapping disjoint
UML Class Diagrams (Contd.) Cardinality constraints are specified in the form  l..h ,  where  l  denotes the minimum and  h  the maximum number of relationships an entity can participate in. Beware: the positioning of the constraints is exactly the reverse of the positioning of constraints in E-R diagrams. The constraint 0..* on the  E 2   side and 0..1 on the  E 1 side means that each  E 2 entity can participate in at most one relationship, whereas each  E 1 entity can participate in many relationships; in other words, the relationship is many to one from  E 2 to  E 1. Single values, such as 1 or * may be written on edges; The single value 1 on an edge is treated as equivalent to 1..1, while * is equivalent to 0..*.
Reduction of an E-R Schema to Tables Primary keys allow entity sets and relationship sets to be expressed uniformly as  tables  which represent the contents of the database. A database which conforms to an E-R diagram can be represented by a collection of tables. For each entity set and relationship set there is a unique table which is assigned the name of the corresponding entity set or relationship set. Each table has a number of columns (generally corresponding to attributes), which have unique names. Converting an E-R diagram to a table format is the basis for deriving a relational database design from an E-R diagram.
Representing Entity Sets as Tables A strong entity set reduces to a table with the same attributes.
Composite and Multivalued Attributes Composite attributes are flattened out by creating a separate attribute for each component attribute E.g. given entity set  custome r with composite attribute  name  with component attributes  first-name  and  last-name  the table corresponding to the entity set has two attributes   name.first-name   and  name.last-name A multivalued attribute M of an entity E is represented by a separate table EM Table EM has attributes corresponding to the primary key of E and an attribute corresponding to multivalued attribute M E.g.  Multivalued attribute  dependent-names  of  employee  is represented by a table   employee-dependent-names (  employee-id, dname )   Each value of the multivalued attribute maps to a separate row of the table EM E.g.,  an employee entity with primary key  John and  dependents  Johnson and Johndotir maps to two rows:    (John, Johnson) and (John, Johndotir)
Representing Weak Entity Sets A weak entity set becomes a table that includes a column for the primary key of the identifying strong entity set
Representing Relationship Sets as Tables A many-to-many relationship set is represented as a table with columns for the primary keys of the two participating entity sets, and any descriptive attributes of the relationship set.  E.g.: table for relationship set  borrower
Redundancy of Tables Many-to-one and one-to-many relationship sets that are total on the many-side can be represented by adding an extra attribute to the many side, containing the primary key of the one side E.g.: Instead of creating a table for relationship  account-branch , add an attribute  branch  to the entity set  account
Redundancy of Tables (Cont.) For one-to-one relationship sets, either side can be chosen to act as the “many” side That is, extra attribute can be added to either of the tables corresponding to the two entity sets  If participation is  partial  on the many side, replacing a table by an extra attribute in the relation corresponding to the “many” side could result in null values The table corresponding to a relationship set linking a weak entity set to its identifying strong entity set is redundant. E.g. The  payment  table already contains the information that would appear in the  loan-payment  table (i.e., the columns loan-number and  payment-number ).
Representing Specialization as Tables Method 1:  Form a table for the higher level entity  Form a table for each lower level entity set, include primary key of higher level entity set and local attributes   table   table attributes person name, street, city  customer name, credit-rating employee name, salary Drawback:  getting information about, e.g.,  employee  requires accessing two tables
Representing Specialization as Tables (Cont.) Method 2:  Form a table for each entity set with all local and inherited attributes table    table attributes person name, street, city customer name, street, city, credit-rating employee  name, street, city, salary If specialization is total, table for generalized entity ( person ) not required to store information Can be defined as a “view” relation containing union of specialization tables But explicit table may still be needed for foreign key constraints Drawback:  street and city may be stored redundantly for persons who are both customers and employees
Relations Corresponding to Aggregation To represent aggregation, create a table containing primary key of the aggregated relationship, the primary key of the associated entity set Any descriptive attributes
Relations Corresponding to Aggregation (Cont.) E.g. to represent aggregation  manages  between relationship  works-on  and entity set  manager , create a table   manages ( employee-id, branch-name, title, manager-name ) Table  works-on  is redundant  provided  we are willing to store null values for attribute  manager - name  in table  manages
End of Chapter 2
E-R Diagram for Exercise 2.10
E-R Diagram for Exercise 2.15
E-R Diagram for Exercise 2.22
E-R Diagram for Exercise 2.15
Existence Dependencies If the existence of entity  x  depends on the existence of entity  y , then  x  is said to be  existence dependent  on  y . y  is a  dominant entity  (in example below,  loan ) x  is a  subordinate entity  (in example below,  payment ) If a  loan  entity is deleted, then all its associated  payment  entities must be deleted also. loan-payment payment loan

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2. Entity Relationship Model in DBMS

  • 1. Chapter 2: Entity-Relationship Model Entity Sets Relationship Sets Design Issues Mapping Constraints Keys E-R Diagram Extended E-R Features Design of an E-R Database Schema Reduction of an E-R Schema to Tables
  • 2. Entity Sets A database can be modeled as: a collection of entities, relationship among entities. An entity is an object that exists and is distinguishable from other objects. Example: specific person, company, event, plant Entities have attributes Example: people have names and addresses An entity set is a set of entities of the same type that share the same properties. Example: set of all persons, companies, trees, holidays
  • 3. Entity Sets customer and loan customer-id customer- customer- customer- loan- amount name street city number
  • 4. Attributes An entity is represented by a set of attributes, that is descriptive properties possessed by all members of an entity set. Domain – the set of permitted values for each attribute Attribute types: Simple and composite attributes. Single-valued and multi-valued attributes E.g. multivalued attribute: phone-numbers Derived attributes Can be computed from other attributes E.g. age , given date of birth Example: customer = (customer-id, customer-name, customer-street, customer-city) loan = (loan-number, amount)
  • 6. Relationship Sets A relationship is an association among several entities Example: Hayes depositor A-102 customer entity relationship set account entity A relationship set is a mathematical relation among n  2 entities, each taken from entity sets {( e 1 , e 2 , … e n ) | e 1  E 1 , e 2  E 2 , …, e n  E n } where ( e 1 , e 2 , …, e n ) is a relationship Example: (Hayes, A-102)  depositor
  • 7. Relationship Set borrower
  • 8. Relationship Sets (Cont.) An attribute can also be property of a relationship set. For instance, the depositor relationship set between entity sets customer and account may have the attribute access-date
  • 9. Degree of a Relationship Set Refers to number of entity sets that participate in a relationship set. Relationship sets that involve two entity sets are binary (or degree two). Generally, most relationship sets in a database system are binary. Relationship sets may involve more than two entity sets. Relationships between more than two entity sets are rare. Most relationships are binary. (More on this later.) E.g. Suppose employees of a bank may have jobs (responsibilities) at multiple branches, with different jobs at different branches. Then there is a ternary relationship set between entity sets employee, job and branch
  • 10. Mapping Cardinalities Express the number of entities to which another entity can be associated via a relationship set. Most useful in describing binary relationship sets. For a binary relationship set the mapping cardinality must be one of the following types: One to one One to many Many to one Many to many
  • 11. Mapping Cardinalities One to one One to many Note: Some elements in A and B may not be mapped to any elements in the other set
  • 12. Mapping Cardinalities Many to one Many to many Note: Some elements in A and B may not be mapped to any elements in the other set
  • 13. Mapping Cardinalities affect ER Design Can make access-date an attribute of account, instead of a relationship attribute, if each account can have only one customer I.e., the relationship from account to customer is many to one, or equivalently, customer to account is one to many
  • 14. E-R Diagrams Rectangles represent entity sets. Diamonds represent relationship sets. Lines link attributes to entity sets and entity sets to relationship sets. Ellipses represent attributes Double ellipses represent multivalued attributes. Dashed ellipses denote derived attributes. Underline indicates primary key attributes (will study later)
  • 15. E-R Diagram With Composite, Multivalued, and Derived Attributes
  • 17. Roles Entity sets of a relationship need not be distinct The labels “manager” and “worker” are called roles ; they specify how employee entities interact via the works-for relationship set. Roles are indicated in E-R diagrams by labeling the lines that connect diamonds to rectangles. Role labels are optional, and are used to clarify semantics of the relationship
  • 18. Cardinality Constraints We express cardinality constraints by drawing either a directed line (  ), signifying “one,” or an undirected line (—), signifying “many,” between the relationship set and the entity set. E.g.: One-to-one relationship: A customer is associated with at most one loan via the relationship borrower A loan is associated with at most one customer via borrower
  • 19. One-To-Many Relationship In the one-to-many relationship a loan is associated with at most one customer via borrower , a customer is associated with several (including 0) loans via borrower
  • 20. Many-To-One Relationships In a many-to-one relationship a loan is associated with several (including 0) customers via borrower , a customer is associated with at most one loan via borrower
  • 21. Many-To-Many Relationship A customer is associated with several (possibly 0) loans via borrower A loan is associated with several (possibly 0) customers via borrower
  • 22. Participation of an Entity Set in a Relationship Set Total participation (indicated by double line): every entity in the entity set participates in at least one relationship in the relationship set E.g. participation of loan in borrower is total every loan must have a customer associated to it via borrower Partial participation : some entities may not participate in any relationship in the relationship set E.g. participation of customer in borrower is partial
  • 23. Alternative Notation for Cardinality Limits Cardinality limits can also express participation constraints
  • 24. Keys A super key of an entity set is a set of one or more attributes whose values uniquely determine each entity. A candidate key of an entity set is a minimal super key Customer-id is candidate key of customer account-number is candidate key of account Although several candidate keys may exist, one of the candidate keys is selected to be the primary key .
  • 25. Keys for Relationship Sets The combination of primary keys of the participating entity sets forms a super key of a relationship set. ( customer-id, account-number ) is the super key of depositor NOTE: this means a pair of entity sets can have at most one relationship in a particular relationship set. E.g. if we wish to track all access-dates to each account by each customer, we cannot assume a relationship for each access. We can use a multivalued attribute though Must consider the mapping cardinality of the relationship set when deciding the what are the candidate keys Need to consider semantics of relationship set in selecting the primary key in case of more than one candidate key
  • 26. E-R Diagram with a Ternary Relationship
  • 27. Cardinality Constraints on Ternary Relationship We allow at most one arrow out of a ternary (or greater degree) relationship to indicate a cardinality constraint E.g. an arrow from works-on to job indicates each employee works on at most one job at any branch. If there is more than one arrow, there are two ways of defining the meaning. E.g a ternary relationship R between A , B and C with arrows to B and C could mean 1. each A entity is associated with a unique entity from B and C or 2. each pair of entities from ( A, B ) is associated with a unique C entity, and each pair ( A, C ) is associated with a unique B Each alternative has been used in different formalisms To avoid confusion we outlaw more than one arrow
  • 28. Binary Vs. Non-Binary Relationships Some relationships that appear to be non-binary may be better represented using binary relationships E.g. A ternary relationship parents , relating a child to his/her father and mother, is best replaced by two binary relationships, father and mother Using two binary relationships allows partial information (e.g. only mother being know) But there are some relationships that are naturally non-binary E.g. works-on
  • 29. Converting Non-Binary Relationships to Binary Form In general, any non-binary relationship can be represented using binary relationships by creating an artificial entity set. Replace R between entity sets A, B and C by an entity set E , and three relationship sets: 1. R A , relating E and A 2. R B , relating E and B 3. R C , relating E and C Create a special identifying attribute for E Add any attributes of R to E For each relationship ( a i , b i , c i ) in R, create 1. a new entity e i in the entity set E 2. add ( e i , a i ) to R A 3. add ( e i , b i ) to R B 4. add ( e i , c i ) to R C
  • 30. Converting Non-Binary Relationships (Cont.) Also need to translate constraints Translating all constraints may not be possible There may be instances in the translated schema that cannot correspond to any instance of R Exercise: add constraints to the relationships R A , R B and R C to ensure that a newly created entity corresponds to exactly one entity in each of entity sets A, B and C We can avoid creating an identifying attribute by making E a weak entity set (described shortly) identified by the three relationship sets
  • 31. Design Issues Use of entity sets vs. attributes Choice mainly depends on the structure of the enterprise being modeled, and on the semantics associated with the attribute in question. Use of entity sets vs. relationship sets Possible guideline is to designate a relationship set to describe an action that occurs between entities Binary versus n -ary relationship sets Although it is possible to replace any nonbinary ( n -ary, for n > 2) relationship set by a number of distinct binary relationship sets, a n -ary relationship set shows more clearly that several entities participate in a single relationship. Placement of relationship attributes
  • 32. How about doing an ER design interactively on the board? Suggest an application to be modeled.
  • 33. Weak Entity Sets An entity set that does not have a primary key is referred to as a weak entity set . The existence of a weak entity set depends on the existence of a identifying entity set it must relate to the identifying entity set via a total, one-to-many relationship set from the identifying to the weak entity set Identifying relationship depicted using a double diamond The discriminator (or partial key) of a weak entity set is the set of attributes that distinguishes among all the entities of a weak entity set. The primary key of a weak entity set is formed by the primary key of the strong entity set on which the weak entity set is existence dependent, plus the weak entity set’s discriminator.
  • 34. Weak Entity Sets (Cont.) We depict a weak entity set by double rectangles. We underline the discriminator of a weak entity set with a dashed line. payment-number – discriminator of the payment entity set Primary key for payment – ( loan-number, payment-number )
  • 35. Weak Entity Sets (Cont.) Note: the primary key of the strong entity set is not explicitly stored with the weak entity set, since it is implicit in the identifying relationship. If loan-number were explicitly stored, payment could be made a strong entity, but then the relationship between payment and loan would be duplicated by an implicit relationship defined by the attribute loan-number common to payment and loan
  • 36. More Weak Entity Set Examples In a university, a course is a strong entity and a course-offering can be modeled as a weak entity The discriminator of course-offering would be semester (including year) and section-number (if there is more than one section) If we model course-offering as a strong entity we would model course-number as an attribute. Then the relationship with course would be implicit in the course-number attribute
  • 37. Specialization Top-down design process; we designate subgroupings within an entity set that are distinctive from other entities in the set. These subgroupings become lower-level entity sets that have attributes or participate in relationships that do not apply to the higher-level entity set. Depicted by a triangle component labeled ISA (E.g. customer “is a” person ). Attribute inheritance – a lower-level entity set inherits all the attributes and relationship participation of the higher-level entity set to which it is linked.
  • 39. Generalization A bottom-up design process – combine a number of entity sets that share the same features into a higher-level entity set. Specialization and generalization are simple inversions of each other; they are represented in an E-R diagram in the same way. The terms specialization and generalization are used interchangeably.
  • 40. Specialization and Generalization (Contd.) Can have multiple specializations of an entity set based on different features. E.g. permanent-employee vs. temporary-employee , in addition to officer vs. secretary vs. teller Each particular employee would be a member of one of permanent-employee or temporary-employee , and also a member of one of officer , secretary , or teller The ISA relationship also referred to as superclass - subclass relationship
  • 41. Design Constraints on a Specialization/Generalization Constraint on which entities can be members of a given lower-level entity set. condition-defined E.g. all customers over 65 years are members of senior-citizen entity set; senior-citizen ISA person . user-defined Constraint on whether or not entities may belong to more than one lower-level entity set within a single generalization. Disjoint an entity can belong to only one lower-level entity set Noted in E-R diagram by writing disjoint next to the ISA triangle Overlapping an entity can belong to more than one lower-level entity set
  • 42. Design Constraints on a Specialization/Generalization (Contd.) Completeness constraint -- specifies whether or not an entity in the higher-level entity set must belong to at least one of the lower-level entity sets within a generalization. total : an entity must belong to one of the lower-level entity sets partial : an entity need not belong to one of the lower-level entity sets
  • 43. Aggregation Consider the ternary relationship works-on , which we saw earlier Suppose we want to record managers for tasks performed by an employee at a branch
  • 44. Aggregation (Cont.) Relationship sets works-on and manages represent overlapping information Every manages relationship corresponds to a works-on relationship However, some works-on relationships may not correspond to any manages relationships So we can’t discard the works-on relationship Eliminate this redundancy via aggregation Treat relationship as an abstract entity Allows relationships between relationships Abstraction of relationship into new entity Without introducing redundancy, the following diagram represents: An employee works on a particular job at a particular branch An employee, branch, job combination may have an associated manager
  • 45. E-R Diagram With Aggregation
  • 46. E-R Design Decisions The use of an attribute or entity set to represent an object. Whether a real-world concept is best expressed by an entity set or a relationship set. The use of a ternary relationship versus a pair of binary relationships. The use of a strong or weak entity set. The use of specialization/generalization – contributes to modularity in the design. The use of aggregation – can treat the aggregate entity set as a single unit without concern for the details of its internal structure.
  • 47. E-R Diagram for a Banking Enterprise
  • 48. How about doing another ER design interactively on the board?
  • 49. Summary of Symbols Used in E-R Notation
  • 52. UML UML: Unified Modeling Language UML has many components to graphically model different aspects of an entire software system UML Class Diagrams correspond to E-R Diagram, but several differences.
  • 53. Summary of UML Class Diagram Notation
  • 54. UML Class Diagrams (Contd.) Entity sets are shown as boxes, and attributes are shown within the box, rather than as separate ellipses in E-R diagrams. Binary relationship sets are represented in UML by just drawing a line connecting the entity sets. The relationship set name is written adjacent to the line. The role played by an entity set in a relationship set may also be specified by writing the role name on the line, adjacent to the entity set. The relationship set name may alternatively be written in a box, along with attributes of the relationship set, and the box is connected, using a dotted line, to the line depicting the relationship set. Non-binary relationships drawn using diamonds, just as in ER diagrams
  • 55. UML Class Diagram Notation (Cont.) * Note reversal of position in cardinality constraint depiction * Generalization can use merged or separate arrows independent of disjoint/overlapping overlapping disjoint
  • 56. UML Class Diagrams (Contd.) Cardinality constraints are specified in the form l..h , where l denotes the minimum and h the maximum number of relationships an entity can participate in. Beware: the positioning of the constraints is exactly the reverse of the positioning of constraints in E-R diagrams. The constraint 0..* on the E 2 side and 0..1 on the E 1 side means that each E 2 entity can participate in at most one relationship, whereas each E 1 entity can participate in many relationships; in other words, the relationship is many to one from E 2 to E 1. Single values, such as 1 or * may be written on edges; The single value 1 on an edge is treated as equivalent to 1..1, while * is equivalent to 0..*.
  • 57. Reduction of an E-R Schema to Tables Primary keys allow entity sets and relationship sets to be expressed uniformly as tables which represent the contents of the database. A database which conforms to an E-R diagram can be represented by a collection of tables. For each entity set and relationship set there is a unique table which is assigned the name of the corresponding entity set or relationship set. Each table has a number of columns (generally corresponding to attributes), which have unique names. Converting an E-R diagram to a table format is the basis for deriving a relational database design from an E-R diagram.
  • 58. Representing Entity Sets as Tables A strong entity set reduces to a table with the same attributes.
  • 59. Composite and Multivalued Attributes Composite attributes are flattened out by creating a separate attribute for each component attribute E.g. given entity set custome r with composite attribute name with component attributes first-name and last-name the table corresponding to the entity set has two attributes name.first-name and name.last-name A multivalued attribute M of an entity E is represented by a separate table EM Table EM has attributes corresponding to the primary key of E and an attribute corresponding to multivalued attribute M E.g. Multivalued attribute dependent-names of employee is represented by a table employee-dependent-names ( employee-id, dname ) Each value of the multivalued attribute maps to a separate row of the table EM E.g., an employee entity with primary key John and dependents Johnson and Johndotir maps to two rows: (John, Johnson) and (John, Johndotir)
  • 60. Representing Weak Entity Sets A weak entity set becomes a table that includes a column for the primary key of the identifying strong entity set
  • 61. Representing Relationship Sets as Tables A many-to-many relationship set is represented as a table with columns for the primary keys of the two participating entity sets, and any descriptive attributes of the relationship set. E.g.: table for relationship set borrower
  • 62. Redundancy of Tables Many-to-one and one-to-many relationship sets that are total on the many-side can be represented by adding an extra attribute to the many side, containing the primary key of the one side E.g.: Instead of creating a table for relationship account-branch , add an attribute branch to the entity set account
  • 63. Redundancy of Tables (Cont.) For one-to-one relationship sets, either side can be chosen to act as the “many” side That is, extra attribute can be added to either of the tables corresponding to the two entity sets If participation is partial on the many side, replacing a table by an extra attribute in the relation corresponding to the “many” side could result in null values The table corresponding to a relationship set linking a weak entity set to its identifying strong entity set is redundant. E.g. The payment table already contains the information that would appear in the loan-payment table (i.e., the columns loan-number and payment-number ).
  • 64. Representing Specialization as Tables Method 1: Form a table for the higher level entity Form a table for each lower level entity set, include primary key of higher level entity set and local attributes table table attributes person name, street, city customer name, credit-rating employee name, salary Drawback: getting information about, e.g., employee requires accessing two tables
  • 65. Representing Specialization as Tables (Cont.) Method 2: Form a table for each entity set with all local and inherited attributes table table attributes person name, street, city customer name, street, city, credit-rating employee name, street, city, salary If specialization is total, table for generalized entity ( person ) not required to store information Can be defined as a “view” relation containing union of specialization tables But explicit table may still be needed for foreign key constraints Drawback: street and city may be stored redundantly for persons who are both customers and employees
  • 66. Relations Corresponding to Aggregation To represent aggregation, create a table containing primary key of the aggregated relationship, the primary key of the associated entity set Any descriptive attributes
  • 67. Relations Corresponding to Aggregation (Cont.) E.g. to represent aggregation manages between relationship works-on and entity set manager , create a table manages ( employee-id, branch-name, title, manager-name ) Table works-on is redundant provided we are willing to store null values for attribute manager - name in table manages
  • 69. E-R Diagram for Exercise 2.10
  • 70. E-R Diagram for Exercise 2.15
  • 71. E-R Diagram for Exercise 2.22
  • 72. E-R Diagram for Exercise 2.15
  • 73. Existence Dependencies If the existence of entity x depends on the existence of entity y , then x is said to be existence dependent on y . y is a dominant entity (in example below, loan ) x is a subordinate entity (in example below, payment ) If a loan entity is deleted, then all its associated payment entities must be deleted also. loan-payment payment loan