Kabak: Report Data Preparation

From Visual Analytics for Business Intelligence
Revision as of 16:58, 22 November 2016 by Audrey.jee.2012 (talk | contribs)
(diff) ← Older revision | Latest revision (diff) | Newer revision → (diff)
Jump to navigation Jump to search


OVERVIEW

DATA PREPARATION

ANALYSIS


Initial Dataset

DATASET DESCRIPTION DATA USED

Average Monthly Household Electricity Consumption
by Postal Code (Public Housing) & Dwelling Type, 1H & 2H 2015

Link (1H): https://www.ema.gov.sg/cmsmedia/Publications_and_Statistics/Statistics/23RSU.xls

Link (2H): https://www.ema.gov.sg/cmsmedia/Publications_and_Statistics/Statistics/25RSU.xls

  • Average monthly household electricity consumption (kwh)
    • By month
    • By postal code
    • By public housing type
  • Total Average household electricity consumption (kwh)
    • By postal code
    • By public housing type
  • 9379 rows of raw data X 12 sheets = 112,548 rows of raw data

Average Monthly Household Electricity Consumption by Postal Code (Private Apartments), 2015

Link: https://www.ema.gov.sg/cmsmedia/Publications_and_Statistics/Statistics/2RSU.xls

  • Average monthly household electricity consumption (kwh)
    • By month
    • By postal code
  • Total Average household electricity consumption (kwh)
    • By postal code
  • 9911 rows of raw data

Basic Demographics Characteristics (2015)

Link: http://www.singstat.gov.sg/docs/default-source/default-document-library/publications/publications_and_papers/GHS/ghs2015/excel/t7-9.xls

  • Resident Population by Planning Area/Subzone
    • By age group
    • By sex
    • By ethnicity
    • By type of dwelling
  • T7 Age group
    • 378 rows of raw data
  • T8 Ethnicity
    • 378 rows of raw data


Data Cleaning

METHOD DESCRIPTION
  • Data cleaning: Household electricity consumption data
    • Stack data to consolidate data table in to 2 columns (Postal Code, Housing Type)
    • Remove rows with missing data
Kabakdatacleaning1.png
  • Data cleaning: Household electricity consumption data
    • Concatenate all 12 months data into one consolidated data table
    • By the end of this phase of data cleaning, we have a total of 177,053 rows
Kabakdatacleaning2.png
  • Data cleaning: Household electricity consumption data
    • Merging Private Housing Data with Public Housing Data
    • Final consolidated data consist of 241,766 rows
Kabakdatacleaning3.png
GEOCODING.PNG
  • Data cleaning: Age, Gender, Ethnicity
    • Delete rows that are empty & blank so at to merge the tables into one data sheet
Kabakdatacleaning4.png
  • Data cleaning: Age, Gender, Ethnicity
    • Consolidate data through Stacking
Kabakdatacleaning5.png