Income Inequality by District

Data as of 2022

Gini coefficient by administrative district from 2019 to 2022.

0 viewsΒ·0 downloads

Table

Gini Coefficient

How is this data produced?

The primary Gini coefficient at state-level is computed based on the distribution of households' gross monthly income, where:

  • Gini coefficient values are bounded within 0 and 1, with higher values indicating greater income inequality.
  • A value of 0 indicates perfect equality (i.e. that every household has the same income).
  • A value of 1 indicates total inequality (i.e. that 1 household earns all the income while all others earn nothing).

Because the computation of the Gini coefficient relies on household income data, Malaysia's Gini coefficient statistics are produced and published together with statistics on household income derived from the Household Income and Expenditure Survey (HIES), which is conducted at least twice within any 5-year period. For full details on the methodology, especially the computation of the PLI and its evolution and nuances, please refer to the technical notes.

What caveats I should bear in mind when using this data?

District-level data is only published from 2019 (relative to state-level data which is available from 1970) as prior HIES samples were not sufficient to support district-level granularity.

Publication(s) using this data

The Household Income Survey Report, 2022, the latest edition of the household income statistics published by DOSM. OpenDOSM also features a dashboard on household income which enables you to explore Malaysia's household income data interactively.

Metadata

Dataset description

Gini coefficient by administrative district from 2019 to 2022.

Variable definitions
  • State
  • District
  • Date
  • Gini Coefficient
Last updated:

28 Jul 2023, 12:00

Next update:

N/A

Data source(s)
  • Department of Statistics Malaysia
License

This data is made open under the Creative Commons Attribution 4.0 International License (CC BY 4.0). A copy of the license is available Here.

Download

Data
Full Dataset (CSV)

Full Dataset (CSV)

Recommended for individuals seeking an Excel-friendly format.

0

Full Dataset (Parquet)

Full Dataset (Parquet)

Recommended for data scientists seeking to work with data via code.

0

Code

Connect directly to the data with Python.

# If not already installed, do: pip install pandas fastparquet import pandas as pd URL_DATA = 'https://storage.dosm.gov.my/hies/hh_inequality_district.parquet' df = pd.read_parquet(URL_DATA) if 'date' in df.columns: df['date'] = pd.to_datetime(df['date']) print(df)

Sample OpenAPI query

The following code is an example of how to make an API query to retrieve the data catalogue mentioned above. You can use different programming languages by switching the code accordingly. For a complete guide on possible query parameters and syntax, please refer to the official Open API Documentation.

import requests import pprint url = "https://api.data.gov.my/data-catalogue?id=hh_inequality_district&limit=3" response_json = requests.get(url=url).json() pprint.pprint(response_json)
jata negara

Department of Statistics Malaysia

Β© 2024 Public Sector Open Data