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Content Types (Data Mining)

In Microsoft SQL Server Analysis Services, you can define both the physical data type for a column in a mining structure, and a logical content type that defines how the column is used in a model.

  • The data type determines how algorithms process the data in those columns when you create mining models. Defining the data type of a column gives the algorithm information about the type of data in the columns, and how to process the data. Each data type in Analysis Services supports one or more content types for data mining.

  • The content type describes the behavior of the content that the column contains. For example, if the data values in a column tend to repeat in a specific interval, such as days of the week, you can specify the content type of that column as cyclical.

Some algorithms require specific data types and/or specific content types to be able to function correctly. For example, the Microsoft Naive Bayes algorithm cannot use continuous columns as input, and cannot predict continuous values. Therefore, such columns must either be excluded from the model, or discretized. Some content types, such as Key Sequence, are used only by a specific algorithm. For a list of the algorithms and the content types that each supports, see Data Mining Algorithms (Analysis Services - Data Mining).

The following list describes the content types that are used in data mining, and lists the data types that support each content type.

Discrete

Discrete means that the column contains a finite number of values with no continuum between values. For example, a column such as Gender is a typical discrete attribute column, in that the data represents a specific number of categories. If the column contains text, the type is automatically set to discrete. However, if the column contains discrete values that have numeric labels (for example, in a Gender column, Male might be labeled as 0 and Female as 1), you might need to change the content type to discrete.

Even if the values used for the discrete column are numeric, fractional values cannot be calculated. Telephone area codes are a good example of discrete data that is numeric but should not be used for calculations. Moreover, the values in a discrete attribute column cannot imply ordering, even if the values are numeric.

The Discrete content type can be applied to columns of all data mining data types.

Continuous

Continuous means that the column contains values that represent numeric data on a scale that allows interim values. Unlike a discrete column, which represents finite, countable data, a continuous column represents scalable measurements, and it is possible for the data to contain an infinite number of fractional values. A column of temperatures is an example of a continuous attribute column.

When a column contains continuous numeric data, and you know how the data should be distributed, you can potentially improve the accuracy of the analysis by specifying the expected distribution of values. You specify the column distribution at the level of the mining structure. Therefore, the setting applies to all models that are based on the structure. For more information, see Column Distributions (Data Mining).

The Continuous content type can be applied to columns with the following data types: Date, Double, and Long.

Discretized

Discretization is the process of putting values of a continuous set of data into buckets so that there are a limited number of possible values. You can discretize only numeric data.

Thus, the discretized content type indicates that the column contains values that represent groups, or buckets, of values that are derived from a continuous column. The buckets are treated as ordered and discrete values.

You can discretize your data manually, to ensure that you get the buckets you want, or you can use the discretization methods provided in SQL Server Analysis Services. Some algorithms perform discretization automatically. For more information, see Change the Discretization of a Column in a Mining Model.

The Discretized content type can be applied to columns with the following data types: Date, Double, Long, and Text.

Key

The key content type means that the column uniquely identifies a row. In a case table, typically the key column is a numeric or text identifier. When you set the content type to key, you are indicating that the column should not be used for analysis, only for tracking records.

Nested tables also have keys, but the usage of the nested table key is a little different. You set the content type to key in a nested table if the column is the attribute that you want to analyze. The values in the nested table key must be unique for each case but there can be duplicates across the entire set of cases.

For example, if you are analyzing the products that customers purchase, you would set content type to key for the CustomerID column in the case table, and set content type to key again for the PurchasedProducts column in the nested table.

Note

Nested tables are available only if you use data from an external data source that has been defined in an Analysis Services data source view.

This content type is supported by the following data types: Date, Double, Long, and Text.

Key Sequence

The key sequence content type can only be used in sequence clustering models. When you set content type to key sequence, it indicates that the column contains values that represent a sequence of events. The values are ordered, but do not have to be an equal distance apart.

This content type is supported by the following data types: Double, Long, Text, and Date.

Key Time

The key time content type can only be used in time series models. When you set content type to key time, it indicates that the values are ordered and represent a time scale.

This content type can be applied to columns that have the following data types: Double, Long, and Date.

Table

The table content type indicates that the column contains another data table, with one or more columns and one or more rows. For any particular row in the case table, this column can contain multiple values, all related to the parent case record. For example, if the main case table contains a listing of customers, you could have several columns that contain nested tables, such as a ProductsPurchased column, where the nested table lists products bought by this customer in the past, and a Hobbies column that lists the interests of the customer.

The data type of this column is always Table.

Cyclical

The cyclical content type means that the column contains values that represent a cyclical ordered set. For example, the numbered days of the week is a cyclical ordered set, because day number one follows day number seven.

Cyclical columns are considered both ordered and discrete in terms of content type.

This content type can be applied to columns of any Analysis Services data type except for table and Boolean. However, most algorithms treat cyclical values as discrete values and do not perform special processing.

Ordered

The Ordered content type also indicates that the column contains values that define a sequence or order. However, in this content type the values used for ordering do not imply any distance or magnitude relationship between values in the set. For example, if an ordered attribute column contains information about skill levels in rank order from one to five, there is no implied information in the distance between skill levels; a skill level of five is not necessarily five times better than a skill level of one.

Ordered attribute columns are considered to contain discrete values.

This content type can be applied to all the data mining data types in Analysis Services. However, most algorithms treat ordered values as discrete values and do not perform special processing.

Classified

In addition to the preceding content types that are in common use with all models, for some data types you can use classified columns to define content types. For more information about classified columns, see Classified Columns (Data Mining).

See Also

Tasks

Change the Properties of a Mining Structure

Reference

Content Types (DMX)

Data Types (DMX)

Concepts

Data Types (Data Mining)

Mining Structure Columns