A perspective on sampling practices - matching marketer's needs to the changing Indian market scenario and growth of agglomerates and 1 million+ population towns, case for town class for quotas as opposed to actual towns
5. Ideally, how many homogenous
cells the country (universe) should be
divided in to for capturing the
diversity (sampling & weighting) and fully
understand it (infer)?
As a researcher my three key challenges been:
- To know the actual size of the universe, and size of the cell and the
number of members in the final homogenous cell
- To draw appropriate random sample from that cell
- To project/correct the findings back to the population
- Then, infer it with/without enough local knowledge
Map Visual: http://www.economist.com/content/indian-summary
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6. Can be any number, but a valid
argument can be:
33,600 cells of Urban India =
35S/UT * 8TC * 5SEC * 6Age * 2Gender * 2Language
37,800 Cells of Rural India =
35S/UT * 3VC * 3DT * 5SEC * 6Age * 2Gender * 2Language
But realistically, that’s utopian and
may be unnecessary…
Map Visual: http://www.economist.com/content/indian-summary
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7. Some more points to ponder
Most of the mass product and service marketers (who are
research savvy) have a pan India reach – a distribution
network that reaches out to many towns and villages, if not
complete India
More than 50% business of these marketers’ business probably
come from beyond the top 8 to 10 cities
Consumption growths are also higher on cities beyond the top 8
to 10 cities
All mindshare creation effort (advertising/promotion) by
mass marketers today is pan India (spends on geo-locations is
possible only if advertiser is very heavy on print, else TV is
all pan India)
Then, why are regular market research studies (tracking)
limited to just 8 to 10 cities for most of the product/service
categories?
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8. Some of the sampling practices
Big budget nation representative studies
NSSO: 88 Geographical Regions – Stratified random Sampling
NCAER (CMCR): Stratified Random Sampling
IRS: Probability proportionate to size (PPA) - Sample allocated
proportionate to 12 years+ Universe of a geographic unit
National Family Health Survey
Regular Market Research/ Smaller studies/ Monthly
Tracking
Judgmental, Quota Sampling by Target Group
Sometimes post survey correction weighting on 1 or 2 variables
with universe estimates from IRS
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9. Big Question 1:
What is better, natural (gen. pop.)
proportion of users & intenders vs.
TG wise quotas?
Quota sampling sessions in schools always start with “it is not a advisable method, avoid as much as you
can?
Why do we need quota… no reason other than to have “an analyzable base for a segment”?
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10. Big Question 2:
Why 100 to 200 sample per town?
How can 100 sample be representative for a 3million+ population town?
Even after collecting 200 odd sample with what confidence one will analyze the data at an Individual
town level to take inferences, especially in India where there is a lot of diversity?
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11. Is there a more practical way
of dividing India?
Before that let’s understand India a little more…
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12. Urbanization in India
Percentage of urban population is good enough indicator for clubbing
of towns together as high level homogenous groups with varied access
to infrastructure, social development and consumerism
However all 100,000+ population towns can’t be similar
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13. Let’s not forget about the growth
of 1million+ towns
As per 2011 census there are 47 towns# (1 million+ population
towns) accounting for 116 million population accounting for around
30% of all Indian Urban population
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# Source: http://en.wikipedia.org/wiki/List_of_most_populous_cities_in_India
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14. Emerging agglomerates of India
The emergence of small agglomerates such as these is changing
the urban setting in respect of rural access to services. Goods
and service facilities are coming nearer to the consumer, and
services of new kinds are emerging, inducing a diversification of
jobs, notably in construction, food supply and processing, and
groceries.
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15. Territorial network is bringing urban
agglomerations closer to towns
In some much-urbanized regions, such as Tamil Nadu, the average maximum
distance to the nearest city is already only 6 km and will drop to 5.6 km in
2011. For 2011, we can expect 12.3 km for Madhya Pradesh (13.7 km in 2001),
9.2 km for Gujarat (10.2 km in 2001), and 8.1 km for Andhra Pradesh (8.8 km
in 2001).
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16. Is town class a substitute to town
selection for smaller and regular
studies?
Possibly yes… but not the way Indian Census divides it… various studies
provide us enough clue for right course of action.
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17. Way forward for typical small sample study
Smaller studies can still remained urban focused
yet bring in relatively better national
representation with even 2000 odd sample, if a at a
segment level roughly 377 (95% confidence level &
5% error margin) sample is collected then we can
collect sample for 6 town classes instead of 6 to 8
towns
We must not mix up all the 1,000,000 population
towns as one and try to group them in 3 sub-groups
30 lakh+ (3mn+) (Top 10 Towns, if required they should be
studied individually)
10lakh to 30lakh (1 to 3million) (37 more towns)
5lakh to 10lakh (0.5 to 1 million) (45 more towns)
1 to 5 lakh towns (404 more towns)
Below 1lakh population towns (7531 more towns)
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18. An easier, practical and manageable way
for national representative sampling would
be:
2,880 cells of Urban India =
4Z * 6TC * 5SEC * 6Age * 2Gender * 2Language
1,440 Cells of Rural India =
4Z * 3VC * 5SEC * 6Age * 2Gender * 2Language
Or depending on objective & budget we
can reduce the no. of cells further…
Map Visual: http://www.economist.com/content/indian-summary
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