Digital Inclusion- Census _DBDA
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Transcript of Digital Inclusion- Census _DBDA
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Digital Inclusion in India: Census
Presented By
Biswajeet .DAvinash. G
Ravi. P Sushil .M
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Introduction• Census is a process to collect ,analyze, evaluate
and publish the statistical data about the population .
• It includes the till date information about different household assets ,demographic, social and economic data .
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Background..
• Census 2011 was collected for the first time for household level data on Computer, Internet and Mobile
• Digital India Program• No known study …beyond anecdotal /
journalistic articles using descriptive statistics
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Census : Data Lake A data lake is a massive, easily accessible,
centralized repository of large volumes of structured and unstructured data.
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Objective To demonstrate the use of analytical tools for
drawing insights from publicly available dataset(Census Data) that can be used for :
Social/Public policy evaluation Formulation.
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Project Scope
To perform a comparative study using analytical techniques and predict the nature and extent of digital inclusion in India upto village level and to identify common factors (both infrastructural and social economic indicators) at village levels of a state that affects the inclusion based on 2011 census data.
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Need of Census…
• It provides valuable information for planning
and formulation policies for Central and the State Governments
• Used by National and International Agencies, Scholars, business people, industrialists, and Statisticians.
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The location of the specific datasets
Population Enumeration Data
House listing and Housing Data
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(1) Houselisting and Household Census Data
Data (actual numbers )only up
to district level
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Functionalities
• What are the common characteristics of villages having similar (high/ medium/low) levels of digital inclusion?
• Take penetration of computers as the sum of computers with internet and computers without internet
• Do villages that are better off in terms of infrastructure facilities and socio-economic indicators have higher levels of digital inclusion?
• Since the number of villages are large , selected visualizations with general trend and outliers
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Analytics Life Cycle
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Steps Performed ….
Formatting
Cleaning
Sampling
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(1a) Houselisting and Household Census Data (District Level)
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Houselisting and Household Census Data
The alternative is to use the data given in percentage separately for district / sub-
district and village/ward level. The advantage is that it has almost all the
columns of the previous 14 tables and can be used for the advance analytics part
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(c) Houselisting and Household Census Data (percentage at village level)
Data is organized state-wise Within each state, village or ward data is available district-wise and the individual excel sheets need to be merged for further analysis
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Performing Analytics
From the Master Dataset out of 90 features Select the best features using Principal Component Analysis.
Microsoft Office Excel Worksheet
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PCA - Features
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Train & Test Datasets
• Train Set – 1084 observations , 7 features• Test Set - 770 observations, 8 features
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Findings
Features selected - Dimensionality reduction Technique using Principal Component Analysis(PCA) .
• Trends and Patterns observed on the census data - Tableau Desktop.
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Decision Tree
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Variable Importance Plot
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Best Model Analysis
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Accuracy % in R
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Trend – Household Amenities
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Pattern - HouseHold Assets