Database files in IFs: Difference between revisions
JakeDubbert (talk | contribs) No edit summary |
JakeDubbert (talk | contribs) No edit summary |
||
Line 60: | Line 60: | ||
'''Extended Source Defenition: '''Additional information about the variable if needed | '''Extended Source Defenition: '''Additional information about the variable if needed | ||
ex. Likely to ensure hygenic separation of human excreta from human contact. They include: 1) Flush/pour flush to (piped sewer system septic tank or pit latrine) 2) Ventilated improved pit (VIP) | ex. Likely to ensure hygenic separation of human excreta from human contact. They include: 1) Flush/pour flush to (piped sewer system septic tank or pit latrine) 2) Ventilated improved pit (VIP) latrine | ||
'''Units: '''Specification of the units the variable is measured by | '''Units: '''Specification of the units the variable is measured by | ||
Line 74: | Line 74: | ||
'''Source: '''Website name the data source is from | '''Source: '''Website name the data source is from | ||
ex. WSS JMP WHO/UNICEF JMP | ex. WSS JMP WHO/UNICEF JMP OR World Bank | ||
'''Original Source: '''URL of data source | '''Original Source: '''URL of data source | ||
Line 82: | Line 82: | ||
'''Notes: '''Any additional notes and the initials of the person that pulled the data | '''Notes: '''Any additional notes and the initials of the person that pulled the data | ||
ex. EB | ex. Created individual index;EB | ||
'''Last IFs Update: '''Automatically generated | '''Last IFs Update: '''Automatically generated | ||
Line 90: | Line 90: | ||
ex. POP | ex. POP | ||
'''Disaggregation: '''Tells the model how to disaggregate country values to subnational bodies when the model is broken out into its subnational form (Automatically | '''Disaggregation: '''Tells the model how to disaggregate country values to subnational bodies when the model is broken out into its subnational form (Automatically generated). | ||
ex. GDP | ex. GDP |
Revision as of 22:06, 6 November 2017
IFs Historical Database Files
IFs uses Microsoft Access files to store data and data dictionary (meta-data). All data files are in the “C:/My Documents/Users/Public/IFs/Data” folder. Data and related files are listed below:
- IFsHistSeries.Mdb is the largest and most frequently used IFs data file containing more than three thousand data tables each containing 186 rows (one row of data per country) and several columns (one column per year). The figure below shows data from an IFsHistSeries table
- DataDict.Mdb is the data dictionary file with a table containing one row of meta-data (e.g., definition, unit, source, last date of update) for each of the data tables in IFsHistSeries.Mdb
- IFs.Mdb is the Microsoft Access file that contains several IFs data tables. One of these table - "Country Translation" - is requied for automated IFs data import/update. Country Translation table maintains (and updates) a concordance list between country names used by IFs and data sources
- IFsWVSCohort.Mdb is the file that contains data from waves of World Value Survey, a global survey of cultural values conducted by University of Michigan.
- IFsDataImport.Mdb, is an MS Access database that holds the data series imported using IFs software's automated single series 'import' interface.
- IFsDataImportBatch.Mdb, is the Access database that houses the data series imported using IFs software's automated batch import interface.
IFs Data Table Naming Convention
Names of all data tables in IFsHistSeries.MDB start with the prefix “Series”. The “Series” prefix is followed by an issue area prefix, e.g., “Ag” for agriculture or “Ed” for education. This second tier of prefix might be followed by additional prefixes (e.g., "EdSec" for secondary education) or might be absent altogether (e.g., in some of the earlier imports).
Data series names might also contain a suffix, the usual purpose of which is to differentiate among the sources for the same/similar series.
No spaces or symbols (other than %) are allowed in series name.
IFs DataDict Columns
The Datadict.mdb file serves as a reference for all series in the IFsHistSeries.mdb file. Every series in IFsHistSeries has an entry in DataDict containing all of the metadata on that series. The Data Dictionary lists each variable, the groups to which it belongs (e.g., Agriculture, Economics) its subgroup (e.g., Trade, Consumption), and additional identifying information. This information includes whether or not the data is a series (Yes/No), CoVaTrA, Cohort. It also includes a definition of the variable, and a column for an extended definition provided by the data source. The data dictionary has columns identifying the years for which a series has data, the source of the data, the original source (e.g. a series may have been pulled from the FAO website, but may have originated as World Bank research.) and the source name of the series, and an identifier for which team member last updated the series and when. It also includes instructions on how data should be aggregated or disaggregated for provincial models (e.g., by population or GDP distribution). Some additional information is supplied that is used by the model such as whether a datum of 0 should be treated as a null or as a zero, if a series is used in the preprocessor, if it is compared to other forecasts, the number of decimal places to read, and any formulas applied to the data.
DataDict Inputs
The following describes each column in the DataDict and provides an example of each.
Variable: Name of variable you assign (Automatically generated from import)
ex. WSSJMPSanitationRural%Improved
Table: Automatically generated
ex. SeriesWSSJMPSanitationRural%Improved
Group: Group or category you assign to the variable (Automatically generated from import)
ex. Infrastructure, Water, Health
Subgroup: Subroup you assign to the variable (Automatically generated from import)
ex. Sanitation
Series: Yes
CoVaTra: No
Cohort: No
Definition: Specific definition of the variable that will be displayed in IFs
ex. Proportion of Rural population served with Improved Sanitation (%)
Extended Source Defenition: Additional information about the variable if needed
ex. Likely to ensure hygenic separation of human excreta from human contact. They include: 1) Flush/pour flush to (piped sewer system septic tank or pit latrine) 2) Ventilated improved pit (VIP) latrine
Units: Specification of the units the variable is measured by
ex. Percent
Currency:
Years: Years that data set covers (Automatically generated but make sure its accurate)
ex. 2000-2015
Source: Website name the data source is from
ex. WSS JMP WHO/UNICEF JMP OR World Bank
Original Source: URL of data source
Notes: Any additional notes and the initials of the person that pulled the data
ex. Created individual index;EB
Last IFs Update: Automatically generated
Aggregation: Tells the model how to aggregate country values to groups within the model. Will automatically generate if classified during import.
ex. POP
Disaggregation: Tells the model how to disaggregate country values to subnational bodies when the model is broken out into its subnational form (Automatically generated).
ex. GDP
Treat Nulls as 0's: If checked, will treat nulls in the data set as zeroes
Proprietary: Leave blank
Name in Source: Information on how the data was pulled so someone can replicate exactly
ex. Sum of Rural Latrines, Septic Tanks, Sewer Connections
Used in Preprocessor: If checked, data set is used in preprocessor
Used in Preprocessor File Name: File name that is used in preprocessor. If Used in Preprocessor is checked, this should be filled
Compare Other Forcasts: Leave blank
Code in Source: Only used in batch pulls
Decimal Places: Decimal places for data in data series
ex. 4
Country Concordance: Country concordance used to import data into IFs. (Will automatically generate)
ex. IFs Country
Formula: Option during import to manipulate the data
ex. *100