Title: Aurlie Lemmens, Erasmus University Rotterdam
1Testing for Inter-Country Differences in
Diffusion Using Penalized Splines
- Aurélie Lemmens, Erasmus University Rotterdam
- Stefan Stremersch, Erasmus University Rotterdam
Emory University - Christophe Croux, K.U. Leuven
2Testing for Inter-Country Differences
Country 1
Country 2
3Testing for Inter-Country Differences
Country 1
Country 2
4Testing for Inter-Country Differences
Country 2
Country 1
5Testing for Inter-Country Differences
Country 2
Country 1
6Why Is It Important?
- Managerial/Marketing Relevance
- Global versus local strategy
- Expectations national benchmarks
- Innovative countries (demand)
- Public Policy Making
- Do European countries differ in innovativeness?
- Especially regarding some products,
- E.g. the digital divide
7Previous Research
- Lack of formal testing, rather indirect evidence
- E.g., Dekimpe et al. 1998, Gatignon et al. 1989,
Helsen et al. 1993, Tellis et al. 2003,
Stremersch and Tellis 2004, Van den Bulte and
Stremersch 2004, Desiraju et al. 2004. - Few exceptions (Mahajan and Muller 1994, Talukdar
et al. 2002) - Differences in Bass (1969) parameters, BUT
- Not able to tell whether entire processes differ
across two specific countries - Not able to tell from which point processes start
to diverge/converge - S-shaped processes only
- Sensitive to data window
- Only reliable estimates after inflection point
- Significance of difference between parameters is
dependent upon time window.
8Methodology Penalized Splines
- Recently developed in statistics (Coull et al.
2001, Ruppert et al. 2003, Durban et al. 2005) - Semi-parametric approach (Van Heerde et al. 2001)
- Flexible shape (movies, non-durables, sales data)
- Overall and point-wise (at each time) test
- Early and on-going diagnostics (before inflection
point) - Multi-country, multi-product approach
- Control for (un)observed product effects
- Draw typical diffusion / sales curves for
countries or regions - Increases statistical power and avoid
multiple-testing issues
9Penalized Splines
10Model Factor-by-Curve Interaction
sales per capita/penetration of a new product
i in a given country j belonging to region r
at time t
Treatment can be the country or the region,
11Typical Diffusion Curve in j or r
Country curves
12Random Product Deviations
13Country-Specific Curves
Country Product
Product deviations
Country curve
14Estimation
- The model can be written as a linear mixed model
- after rearranging the different terms
- Best linear unbiased predictor (BLUP)
- Easy to implement (e.g. PROC MIXED in SAS or lme
in S/R) - Can use all inference theory (e.g. hypothesis
testing)
15Data
- High-Tech Data
- Yearly
- Personal computers (for the period 1981-1992),
internet users (1990-2003), mobile phone users
(1987-1999), CD players (1984-1993), digital
cameras (1998-2004), DVD (1998-2004), microwave
ovens (1977-1993), and VCR (1977-1990). - 15 European countries in 3 regions
- the Nordic (Denmark, Finland, Norway and Sweden),
- the Mid-West (Austria, Belgium, Germany, Ireland,
Netherlands, Switzerland and United Kingdom) - the Mediterranean (France, Italy, Portugal and
Spain).
16Data
- Pharmaceuticals
- Monthly, Kg active substance sold
- 4 Lipid modifying agents fluvastatin
(1993-2005), cerivastatin (1997-2005),
atorvastatin (1996-2005) and rosuvastatin
(2003-2005) - 5 Drugs used in erectile dysfunction alprostadil
(1995-2005), sildenafil (1998-2005), tadalafil
(2003-2005), vardenafil (2003-2005) and
apomorphine (2001-2005). - 25 European countries in 4 regions
- the Nordic (as before).
- the Mid-West (as before Luxembourg)
- the Mediterranean (as before Greece)
- the Eastern Europe (Czech Republic, Estonia,
Hungary, Latvia, Lebanon, Lithuania, Poland,
Slovakia)
17Research Questions
- Are there significant differences in overall
diffusion across countries? - When does diffusion start to converge/diverge
across countries? - How to obtain typical, country- or
region-specific diffusion curves, - for cross-national or cross-regional comparisons?
- as country or region benchmarks for future
innovations?
18Question 1 Are there significant differences in
overall diffusion across countries?
19Testing for Inter-Country Differences
20Testing for Inter-Country Differences
21Question 2 When does diffusion start to
converge/diverge across countries?
22Example (1) the Viagra Case
- Introduction of Sildenafil (Viagra) in 1998 in
most European countries - On-going procedure we model diffusion in UK and
Italy after - 1 year (12 observations each)
- 2 years (24 observations each)
- 3 years (36 observations each)
- 4 years (48 observations each)
- 5 years (60 observations each)
- 6 years (72 observations each)
- Confidence bounds provide us information each
year whether both countries national sales
differ at each point in time.
23Example (1) the Viagra Case
Time (months)
24Example (1) the Viagra Case
Time (months)
Time (months)
Time (months)
25Question 3 How to obtain typical, country- or
region-specific diffusion curves?
- for cross-national or cross-regional comparisons?
- as country- or region-benchmarks for future
innovations?
26Country-Specific Curves High-Tech
27Region-Specific Curves High-Tech
28Region-Specific Curves Lipid Mod.
Eastern Mediterranean Mid-West Nordic
Time (months)
29Using Country-Specific Curves
- As pre-launch expectation for each country (or
region) - Summarize the information conveyed by previous
diffusion data of related products. - Average market potential for a given product
class. - Relevant set of homogeneous products.
- As benchmark for assessing of local management
- Real-time diagnostics/management.
- Allows for sequential adaptation of the marketing
mix. - Guessing by analogy strategy (Bass et al.
2001).
30Example (2) the Rosuvastatin Case
- Introduction of Rosuvastatin, a lipid modifying
agent, in February 2003. - At that point in time, three other products from
the same category of drugs, are available - Atorvastatin (Lipitor, 1996)
- Cerivastatin (Baycol, Lipobay, 1997)
- Fluvastatin (Lescol, 1993)
- Estimate country-specific curves using all data
up to January 2003. - Allows for early diffusion data.
31Some countries perform averagely
Time (months)
32Some outperform the local benchmark
Time (months)
33Some perform worse than expected
Time (months)
34Conclusion
- The procedure allows us to
- Test whether countries exhibit significant
differences in overall diffusion, - Test (in real time) when those differences in
diffusion occur, - Construct typical diffusion curves (i) for
cross-national comparisons, and (ii) as local
benchmarks for a new product. - It works with any diffusion or sales pattern,
S-shaped or not. - It is very simple to implement.
- It can be easily extended to test for other
treatment effects (e.g. product, vintage) and can
be used in many other marketing fields.
35Thanks
36Mobile phones subscribers in UK
- - - - Srinivasan and Mason (1986)
- Penalized spline
Penetration
37Testing for Inter-Region Differences