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I have this table:

CREATE TABLE [Entree]
(
    [RowId] [int] IDENTITY(1,1) NOT NULL,
    [Name] [nvarchar](250) NOT NULL,
    [Description] [nvarchar](250) NULL,
    [FK_InspirationSource] [int] NOT NULL,
    [Type] [int] NOT NULL,
    [PriceRangeType] [int] NOT NULL,
    [SoldCount] [int] NOT NULL,
    [HolidaySpecial] [bit] NULL,
    [DiscountApplicable] [bit] NULL,
    [DateCreated] [datetime] NULL,
    [LastModified] [datetime] NULL,
    [Enabled] [tinyint] NOT NULL,
    [BirthDate] [smalldatetime] NULL,
    [IG_Int1] [int] NULL,
    [IG_Int2] [int] NULL,
    [IG_Int3] [int] NULL,
    [IG_Int4] [int] NULL,
    [IG_Int5] [int] NULL,
    [IG_Int6] [int] NULL,
    [IG_Int7] [int] NULL,
    [IG_Int8] [int] NULL

and in C# code, corresponds to a Entree object with the respectable fields. IG_Int s specify bunch of other properties of the entree in cooking process.

Now, we want to have Derived_Entree objects. In the code, DerivedEntree is an Entree too. So DerivedEntree : Entree.

DerivedEntree has more columns. ParentEntreeId (FK to Entree), ExtraProcessingStep.

So for example, an entree would be "Snail Ravioli" and Derived Entree would be "Broiled snail ravioli".

If there were a separate table, it would be

CREATE TABLE [DerivedEntree]
(
    [RowId] [int] IDENTITY(1,1) NOT NULL,
    [FK_Entree] [int] NOT NULL,
    [ExtraProcessingStep] [int] NOT NULL
)

and add FK_DerivedEntree in Entree table.

So whenever a new entree is entered, a row is inserted to the Entree table, and when a new DerivedEntree is entered, it is inserted to both tables. This is to satisfy the requirement that every Entree has to have a unique Id (which will be a RowId in Entree table)

Instead of adding a separate table, another option is to add those two columns (FK_Entree and ExtraProcessingStep) to the Entree tables and store them there.

What is a more standard practice? I thought about adding additional table because of FK_Entree but perhaps having a foreign key to itself is a common practice?

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  • There are a few questions in the "Linked" section of the duplicate that may be helpful as well. Bottom line is there's a tradeoff between data normalization cleanliness and query cleanliness (more complex structure= more complex joins). You can alleviate the join complexity, however, by adding views.
    – D Stanley
    Apr 1, 2015 at 20:04
  • @DStanley Hi Stanley, thanks for the reply. I thought this question might be more specific because this is a case where a table already exists and is used. I was wondering if adding a column fk_ to itself is a common/valid practice vs adding a new table. Apr 1, 2015 at 21:45
  • Sure - a foreign key to itself is a common practice when dealing with heirarchical data.
    – D Stanley
    Apr 1, 2015 at 21:57

1 Answer 1

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Melissa, this question is not answerable and depends heavily on your desired usage of the system.

Here are your two main design options:

http://en.wikipedia.org/wiki/Snowflake_schema

The snowflake schema is similar to the star schema. However, in the snowflake schema, dimensions are normalized into multiple related tables, whereas the star schema's dimensions are denormalized with each dimension represented by a single table. A complex snowflake shape emerges when the dimensions of a snowflake schema are elaborate, having multiple levels of relationships, and the child tables have multiple parent tables ("forks in the road").

http://en.wikipedia.org/wiki/Star_schema

The star schema separates business process data into facts, which hold the measurable, quantitative data about a business, and dimensions which are descriptive attributes related to fact data. Examples of fact data include sales price, sale quantity, and time, distance, speed, and weight measurements. Related dimension attribute examples include product models, product colors, product sizes, geographic locations, and salesperson names.

A star schema that has many dimensions is sometimes called a centipede schema.[3] Having dimensions of only a few attributes, while simpler to maintain, results in queries with many table joins and makes the star schema less easy to use.

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