Database normalization is the process of structuring a relational database in accordance with a series of so-called normal forms in order to reduce data redundancy and improve data integrity. It was first proposed by British computer scientist Edgar F. Codd as part of his relational model.
Normalization entails organizing the columns (attributes) and tables (relations) of a database to ensure that their dependencies are properly enforced by database integrity constraints. It is accomplished by applying some formal rules either by a process of synthesis (creating a new database design) or decomposition (improving an existing database design).
A basic objective of the first normal form defined by Codd in 1970 was to permit data to be queried and manipulated using a "universal data sub-language" grounded in first-order logic.[1] An example of such a language is SQL, though it is one that Codd regarded as seriously flawed.[2]
The objectives of normalisation beyond 1NF (first normal form) were stated by Codd as:
- To free the collection of relations from undesirable insertion, update and deletion dependencies.
- To reduce the need for restructuring the collection of relations, as new types of data are introduced, and thus increase the life span of application programs.
- To make the relational model more informative to users.
- To make the collection of relations neutral to the query statistics, where these statistics are liable to change as time goes by.
– E.F. Codd, "Further Normalisation of the Data Base Relational Model"[3]
When an attempt is made to modify (update, insert into, or delete from) a relation, the following undesirable side effects may arise in relations that have not been sufficiently normalized:
A fully normalized database allows its structure to be extended to accommodate new types of data without changing existing structure too much. As a result, applications interacting with the database are minimally affected.
Normalized relations, and the relationship between one normalized relation and another, mirror real-world concepts and their interrelationships.
Codd introduced the concept of normalization and what is now known as the first normal form (1NF) in 1970.[4] Codd went on to define the second normal form (2NF) and third normal form (3NF) in 1971,[5] and Codd and Raymond F. Boyce defined the Boyce–Codd normal form (BCNF) in 1974.[6]
Informally, a relational database relation is often described as "normalized" if it meets third normal form.[7] Most 3NF relations are free of insertion, updation, and deletion anomalies.
The normal forms (from least normalized to most normalized) are:
Constraint (informal description in parentheses) |
UNF (1970) |
1NF (1970) |
2NF (1971) |
3NF (1971) |
EKNF (1982) |
BCNF (1974) |
4NF (1977) |
ETNF (2012) |
5NF (1979) |
DKNF (1981) |
6NF (2003) |
---|---|---|---|---|---|---|---|---|---|---|---|
Unique rows (no duplicate records)[4] | |||||||||||
Scalar columns (columns cannot contain relations or composite values)[5] | |||||||||||
Every non-prime attribute has a full functional dependency on a candidate key (attributes depend on the whole of every key)[5] | |||||||||||
Every non-trivial functional dependency either begins with a superkey or ends with a prime attribute (attributes depend only on candidate keys)[5] | |||||||||||
Every non-trivial functional dependency either begins with a superkey or ends with an elementary prime attribute (a stricter form of 3NF) | N/A | ||||||||||
Every non-trivial functional dependency begins with a superkey (a stricter form of 3NF) | N/A | ||||||||||
Every non-trivial multivalued dependency begins with a superkey | N/A | ||||||||||
Every join dependency has a superkey component[8] | N/A | ||||||||||
Every join dependency has only superkey components | N/A | ||||||||||
Every constraint is a consequence of domain constraints and key constraints | |||||||||||
Every join dependency is trivial |
Normalization is a database design technique, which is used to design a relational database table up to higher normal form.[9] The process is progressive, and a higher level of database normalization cannot be achieved unless the previous levels have been satisfied.[10]
That means that, having data in unnormalized form (the least normalized) and aiming to achieve the highest level of normalization, the first step would be to ensure compliance to first normal form, the second step would be to ensure second normal form is satisfied, and so forth in order mentioned above, until the data conform to sixth normal form.
However, it is worth noting that normal forms beyond 4NF are mainly of academic interest, as the problems they exist to solve rarely appear in practice.[11]
The data in the following example were intentionally designed to contradict most of the normal forms. In practice it is often possible to skip some of the normalization steps because the data is already normalized to some extent. Fixing a violation of one normal form also often fixes a violation of a higher normal form. In the example, one table has been chosen for normalization at each step, meaning that at the end, some tables might not be sufficiently normalized.
Let a database table exist with the following structure:[10]
Title | Author | Author Nationality | Format | Price | Subject | Pages | Thickness | Publisher | Publisher Country | Genre ID | Genre Name | |||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Beginning MySQL Database Design and Optimization | Chad Russell | American | Hardcover | 49.99 |
|
520 | Thick | Apress | USA | 1 | Tutorial |
For this example it is assumed that each book has only one author.
A table that conforms to the relational model has a primary key which uniquely identifies a row. Two books could have the same title, but an ISBN uniquely identifies a book, so it can be used as the primary key:
ISBN | Title | Author | Author Nationality | Format | Price | Subject | Pages | Thickness | Publisher | Publisher Country | Genre ID | Genre Name | |||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
1590593324 | Beginning MySQL Database Design and Optimization | Chad Russell | American | Hardcover | 49.99 |
|
520 | Thick | Apress | USA | 1 | Tutorial |
In the first normal form each field contains a single value. A field may not contain a set of values or a nested record.
Subject contains a set of subject values, meaning it does not comply.
To solve the problem, the subjects are extracted into a separate Subject table:[10]
ISBN | Title | Author | Author Nationality | Format | Price | Pages | Thickness | Publisher | Publisher Country | Genre ID | Genre Name |
---|---|---|---|---|---|---|---|---|---|---|---|
1590593324 | Beginning MySQL Database Design and Optimization | Chad Russell | American | Hardcover | 49.99 | 520 | Thick | Apress | USA | 1 | Tutorial |
ISBN | Subject name |
---|---|
1590593324 | MySQL |
1590593324 | Database |
1590593324 | Design |
In Subject, ISBN is a foreign key: It refers to the primary key in Book, and makes the relationship between these two tables explicit.
Instead of one table in unnormalized form, there are now two tables conforming to the 1NF.
The Book table below has a composite key of {Title, Format} (indicated by the underlining), which will not satisfy 2NF if some subset of that key is a determinant. At this point in our design the key is not finalised as the primary key, so it is called a candidate key. Consider the following table:
Title | Format | Author | Author Nationality | Price | Pages | Thickness | Publisher | Publisher Country | Genre ID | Genre Name |
---|---|---|---|---|---|---|---|---|---|---|
Beginning MySQL Database Design and Optimization | Hardcover | Chad Russell | American | 49.99 | 520 | Thick | Apress | USA | 1 | Tutorial |
Beginning MySQL Database Design and Optimization | E-book | Chad Russell | American | 22.34 | 520 | Thick | Apress | USA | 1 | Tutorial |
The Relational Model for Database Management: Version 2 | E-book | E.F.Codd | British | 13.88 | 538 | Thick | Addison-Wesley | USA | 2 | Popular science |
The Relational Model for Database Management: Version 2 | Paperback | E.F.Codd | British | 39.99 | 538 | Thick | Addison-Wesley | USA | 2 | Popular science |
All of the attributes that are not part of the candidate key depend on Title, but only Price also depends on Format. To conform to 2NF and remove duplicates, every non-candidate-key attribute must depend on the whole candidate key, not just part of it.
To normalize this table, make {Title} a (simple) candidate key (the primary key) so that every non-candidate-key attribute depends on the whole candidate key, and remove Price into a separate table so that its dependency on Format can be preserved:
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Now, both the Book and Price tables conform to 2NF. Satisfying 3NFThe Book table still has a transitive functional dependency ({Author Nationality} is dependent on {Author}, which is dependent on {Title}). Similar violations exist for publisher ({Publisher Country} is dependent on {Publisher}, which is dependent on {Title}) and for genre ({Genre Name} is dependent on {Genre ID}, which is dependent on {Title}). Hence, the Book table is not in 3NF. To make it in 3NF, let's use the following table structure, thereby eliminating the transitive functional dependencies by placing {Author Nationality}, {Publisher Country}, and {Genre Name} in their own respective tables:
Satisfying EKNFThe elementary key normal form (EKNF) falls strictly between 3NF and BCNF and is not much discussed in the literature. It is intended "to capture the salient qualities of both 3NF and BCNF" while avoiding the problems of both (namely, that 3NF is "too forgiving" and BCNF is "prone to computational complexity"). Since it is rarely mentioned in literature, it is not included in this example. Satisfying 4NFAssume the database is owned by a book retailer franchise that has several franchisees that own shops in different locations. And therefore the retailer decided to add a table that contains data about availability of the books at different locations:
As this table structure consists of a compound primary key, it doesn't contain any non-key attributes and it's already in BCNF (and therefore also satisfies all the previous normal forms). However, assuming that all available books are offered in each area, the Title is not unambiguously bound to a certain Location and therefore the table doesn't satisfy 4NF. That means that, to satisfy the fourth normal form, this table needs to be decomposed as well:
Now, every record is unambiguously identified by a superkey, therefore 4NF is satisfied. Satisfying ETNFSuppose the franchisees can also order books from different suppliers. Let the relation also be subject to the following constraint:
This table is in 4NF, but the Supplier ID is equal to the join of its projections: {{Supplier ID, Title}, {Title, Franchisee ID}, {Franchisee ID, Supplier ID}}. No component of that join dependency is a superkey (the sole superkey being the entire heading), so the table does not satisfy the ETNF and can be further decomposed:[12]
The decomposition produces ETNF compliance. Satisfying 5NFTo spot a table not satisfying the 5NF, it is usually necessary to examine the data thoroughly. Suppose the table from 4NF example with a little modification in data and let's examine if it satisfies 5NF:
Decomposing this table lowers redundancies, resulting in the following two tables:
The query joining these tables would return the following data:
The JOIN returns three more rows than it should; adding another table to clarify the relation results in three separate tables:
What will the JOIN return now? It actually is not possible to join these three tables. That means it wasn't possible to decompose the Franchisee - Book - Location without data loss, therefore the table already satisfies 5NF. C.J. Date has argued that only a database in 5NF is truly "normalized".[13] Satisfying DKNFLet's have a look at the Book table from previous examples and see if it satisfies the domain-key normal form:
Logically, Thickness is determined by number of pages. That means it depends on Pages which is not a key. Let's set an example convention saying a book up to 350 pages is considered "slim" and a book over 350 pages is considered "thick". This convention is technically a constraint but it is neither a domain constraint nor a key constraint; therefore we cannot rely on domain constraints and key constraints to keep the data integrity. In other words – nothing prevents us from putting, for example, "Thick" for a book with only 50 pages – and this makes the table violate DKNF. To solve this, a table holding enumeration that defines the Thickness is created, and that column is removed from the original table:
That way, the domain integrity violation has been eliminated, and the table is in DKNF. Satisfying 6NFA simple and intuitive definition of the sixth normal form is that "a table is in 6NF when the row contains the Primary Key, and at most one other attribute".[14] That means, for example, the Publisher table designed while creating the 1NF:
needs to be further decomposed into two tables:
The obvious drawback of 6NF is the proliferation of tables required to represent the information on a single entity. If a table in 5NF has one primary key column and N attributes, representing the same information in 6NF will require N tables; multi-field updates to a single conceptual record will require updates to multiple tables; and inserts and deletes will similarly require operations across multiple tables. For this reason, in databases intended to serve online transaction processing (OLTP) needs, 6NF should not be used. However, in data warehouses, which do not permit interactive updates and which are specialized for fast query on large data volumes, certain DBMSs use an internal 6NF representation – known as a columnar data store. In situations where the number of unique values of a column is far less than the number of rows in the table, column-oriented storage allow significant savings in space through data compression. Columnar storage also allows fast execution of range queries (e.g., show all records where a particular column is between X and Y, or less than X.) In all these cases, however, the database designer does not have to perform 6NF normalization manually by creating separate tables. Some DBMSs that are specialized for warehousing, such as Sybase IQ, use columnar storage by default, but the designer still sees only a single multi-column table. Other DBMSs, such as Microsoft SQL Server 2012 and later, let you specify a "columnstore index" for a particular table.[15] See also
Notes and references
Further reading
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