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Some Implementation Issues of Scanner Data. Muhanad Sammar, Anders Norberg & Can Tongur. Some Background. 3 major outlet chains in Sweden Statistics Sweden has received scanner data since 2009 First principal issue to decide how to use S.D. - PowerPoint PPT Presentation
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Some Implementation Issuesof Scanner Data
Muhanad Sammar, Anders Norberg &
Can Tongur
Some Background
• 3 major outlet chains in Sweden• Statistics Sweden has received scanner data
since 2009• First principal issue to decide how to use S.D.• The Swedish CPI Board approved the use of
scanner data in 2011 • Second principal issue how to aggregate data
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets)D. Use scanner data for auditing and quality
control
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets)D. Use scanner data for auditing and quality
control
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
Sample of 32 supermarket and local shops and 4 hypermarkets3 negatively coordinated samples of 500 products, identified by EAN for products
A. is the Swedish idea
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets)D. Use scanner data for auditing and quality
control
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary information
Index(M.C.P.)Index(S.D.)
* Index(S.D.)
small samplebig sample
Index =
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary information
Index(M.C.P.)Index(S.D.) *
Index(S.D.)
small sample
big sample
Index =
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets)D. Use scanner data for auditing and quality
control
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets) Problems; - COICOP-classification of all products - Products with deposits must be identified - New products might hide price changes
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets)D. Use scanner data for auditing and quality
control.
The First Principal Issue – How to Use Scanner Data
A. Replace the manually collected price data with scanner data for the sample of outlets and products
B. Use scanner data as auxiliary informationC. Compute index based on scanner data all
products (and outlets)D. Use scanner data for auditing and quality
control. We have seen variation between price collectors as regards quality of delivery
The Second Principal Issue – Data Aggregation• Scanner data are weekly aggregates of data
for each product and outlet in the sample
• Each week has ca. 8 500 price observations
• Weekly data requires aggregation to month
Natural choices of aggregation:i. Unweighted Geometric Mean value or ii. Quantity-Weighted Arithmetic Mean value
Motives
i. In line with rest of CPI for daily necessities
ii. In line with data
The Two Mean Values
• The geometric mean value:
• The weighted arithmetic mean value:
• We compared the two methods irrespective of their inhabited differences
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Some Statistics
• 2% Geometric > Arithmetic in base while Geometric=Arithmetic in Jan, Feb, Mar
• 3% Geometric = Arithmetic in base while Geometric > Arithmetic in Jan, Feb, Mar
• > 98% of observations (weekly prices) without variations between days
• Ca. 9% of monthly prices had variations between weeks
Figure 5.1 in the paper: Logarithmic ratios of mean prices in current month relative to base period. Unweighted geometric mean on vertical axis and quantity-weighted arithmetic mean on horizontal axis. Eight sectors are numbered for analysis purposes.
)()( ,,ABase
GBasewBasewBase PPQP
)()()( ,, wtwtABase
GBase
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At QPPPPP
Index_G
80
90
100
110
120
Index_A
80 90 100 110 120
Figure 5.2 in the paper. Monthly price indices for product groups in supermarkets and hypermarkets, based on geometric and arithmetic mean prices per month.
Indices by Different Methods
Period Unw. Geom. W. Arith. W. Geom. Unw. Arith.
January 100 99.815 99.785 100.038
February 100 99.998 99.996 100.000
March 100 100.000 100.000 100.003
April 100 99.969 99.963 100.008
Quantity weigthing seems to impact a bit…
-.80 -.65 -.50 -.35 -.20 -.05 0.10 0.25 0.40 0.55 0.70 0.85
pr i cer at i o
0
1000
2000
3000
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r
e
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Figure 5.3 in the paper. Distribution of price changes during January – April 2012 with base in December 2011. Unweighted geometric mean.
Data QualityVariation between outlets for scanner data (left) and manually collected data (right). Individual prices on vertical axis and monthly average prices per product on horizontal axis. The year 2010.
Data Quality (2)
Number of comparable product-offers is 36 102 and 38 786 respectively.
Matching categories in 2009 (%) 2010 (%)
Neither in M.C.P. or S.D. 1.5 0.6In M.C.P. but not in S.D. 4.5 5.3In S.D. but not in M.C.P. 1.5 0.9M.C.P. = S.D. 83.4 86.2M.C.P. > S.D. 4.3 3.7M.C.P < S.D. 4.8 3.3
Scanner Data (S.D.) and Manually Collected Prices (M.C.P.) in comparison. Product-offers, outlets and weeks. January – December, 2009 and 2010.
EAN code maintenance
• S.D = Vast Amounts of Data ≠ Large Samples• Data extraction = EAN code probing• Yearly EAN survival rate (base-to-base) 70-80%• Some 500 products identified and maintained• Until now, 35 of 538 products changed EAN
code during 2012 (=6.5%)• Fixed basket implication - Always up to date
with S.D.!
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