SlideShare a Scribd company logo
1 of 16
Download to read offline
Using spatial econometric techniques to detect
collusive behavior in procurement auction data
Mats Bergman, Johan Lundberg, Sofia Lundberg, Johan Stake
Summary
• Test to see if bidding behavior can be captured by spatial econometric techniques
due to non-independent bidding between cartel members
• Use data from known Swedish asphalt cartel during the 1990s
• Test if bids between lowest bid in cartel and the rest of the cartel bids can be
observed econometrically
• Find significant results of non-independence between cartel members bids using
spatial econometrics, which dissapears during the time after the cartel
• Problems with one specification which returns significant results in the case after
the cartel was dissipated
Background
• Procurement auctions used frequently for public contracts in the EU (1994
directive)
• First-price sealed bid auctions theoretically assigns to bidder with lowest marginal
cost – assuming there is no collusion!
• Swedish Competition Authority conducted dawn raids in October 2001 at several
asphalt paving companies
• Trials lasted for over 40 days and in 2007 nine companies were convicted to pay
over 1.2 billion dollars in fines
Previous work
• Jakobsson and Eklöf (2003) analyzed the same asphalt cartel using a reduced form model
describing non-independent bidding
• Collusion in public contracts has been analyzed in fields such as:
• frozen seafood (Koyak & Werden, 1993)
• school milk (Pesendorfer, 1995; Porter & Zona, 1999)
• highway constructions (Porter & Zona, 1993)
• highway repair (Bajari & Ye, 2003)
• Detecting collusion difficult – most papers econometrically confirm the cartel
• Following Bajari & Ye, non-collusive bidding should fulfill;
1. Conditional independency – independent bids when controlling for production cost effects
2. Exchangability - bids independent of other bidders
• We contribute to this literature by using spatial econometric techniques to test for
collusive behavior
Econometric setup
• A specific number of bidders create a cartel with intention to collude in
procurement auctions
• Consider a set of contracts C, for which two types of bidders bid, A and B;
A
B
C
Cartel – bids are non-independent
No cartel – bids are independent
Bids between types A and B
are independent
Econometric setup
• So, define bid b for contract c by bidder i belonging to group A; 𝑏𝑖,𝑐
𝐴
• One firm, i, in the cartel (type A) bids a low bid; 𝑏𝑖,𝑐
𝐴
• While the rest of the cartel members, j, bid high; 𝑏𝑗,𝑐
𝐴
𝑓𝑜𝑟 𝑖 ≠ 𝑗
• With C contracts and on average 𝐴 + 𝐵 bidders, we define a weight matrix W;
𝐶 × (𝐴 + 𝐵) × 𝐶 × 𝐴 + 𝐵
with elements such that 𝑤𝑖 𝑐
𝐴,𝑗 𝑐
𝐴 > 0 and;
𝑤𝑖 𝑐
𝐵,𝑗 𝑐
𝐵 = 𝑤𝑖 𝑐
𝐵,𝑗 𝑐
𝐴 = 𝑤𝑖 𝑐
𝐴,𝑗 𝑐
𝐵 = 𝑤𝑖 𝑐
𝐴,𝑖 𝑐
𝐴 = 𝑤𝑖 𝑐
𝐵,𝑖 𝑐
𝐵 = 0
Econometric setup
• A simple test for collusion among bidders of type A could then be performed;
𝑏 = 𝜌𝑾𝑏 + 𝑿𝜷 + 𝜀
𝑏 = 𝑣𝑒𝑐𝑡𝑜𝑟 𝑜𝑓 𝑎𝑙𝑙 𝑏𝑖𝑑𝑠
𝑿 = 𝑚𝑎𝑡𝑟𝑖𝑥 𝑜𝑓 𝑟𝑒𝑙𝑒𝑣𝑎𝑛𝑡 𝑐𝑜𝑣𝑎𝑟𝑖𝑎𝑡𝑒𝑠
𝜀 = 𝑒𝑟𝑟𝑜𝑟 𝑐𝑜𝑚𝑝𝑜𝑛𝑒𝑛𝑡
• 𝜌 and 𝛽 are the coeffients to be estimated
• If the bids are non-independent: 𝜌 ≠ 0
• Note also that 𝜌 < 1 is consistent with a Nash equilibrium
Econometric setup
• It is not obvious what value we should assign 𝑤𝑖 𝑐
𝐴,𝑗 𝑐
𝐴. Theory gives no guidance in
this matter – how should we express the degree of dependence between
different cartel members?
• Two approaches of defining the weight matrix are used;
• 𝑏𝑖,𝑐
𝐴
is regressed on the sum of cartel members bids (Row standardized)
• 𝑏𝑖,𝑐
𝐴
is regressed on the average of cartel members bids (Non-row standardized)
• We also test to exclude the lowest cartel bid from the regression, which, using
both weight matrixes above should produce even stronger effects.
• Since our regression equation is a spatial lag model which becomes biased and
inconsistent with OLS, we apply an IV estimator using 𝑾𝑿 as instruments for 𝑾𝒃
• 𝑾 should also preferably be exogenous, which is the case here.
Data
• Data consists of observations from the Swedish Road Administration, all
procurements from 1992 up to and including 2009
• We gathered data on region, year, procurement procedure, bids, number of
bidders, quantity (where applicable)
• Exclude combinatorial bids, since this might influence bidding behavior
• Vast majority of procurements use a simplified procurement procedure, since
many contracts below the threshold value (5.1 million euros in 2014)
• Bids are measured as bid per square meter of asphalt
Table 1: Descriptive statistics
Mean Std. dev. Min Max
Whole sample (1992-2009)
Bid per square kilometer 𝑏 4.889 23.226 0.013 308.222
Volume 𝑉𝑜𝑙𝑢𝑚𝑒𝑐 59.546 101.418 0.133 1,397.753
Competition 𝐶𝑜𝑚𝑝𝑐 5.433 1.522 1 10
Population density 𝐷𝑒𝑛𝑠𝑐 55.871 56.945 3.289 200.471
Number of procurements 568
Observations 2,801
1992 – 2000
Bid per square kilometer 𝑏 5.222 24.918 0.026 308.222
Volume 𝑉𝑜𝑙𝑢𝑚𝑒𝑐 45.644 57.734 0.133 607.613
Competition 𝐶𝑜𝑚𝑝𝑐 5.691 1.489 1 10
Population density 𝐷𝑒𝑛𝑠𝑐 67.217 57.690 3.317 195.275
Number of procurements 422
Observations 2,207
2004 – 2009
Bid per square kilometer 𝑏 3.651 15.340 0.013 144.582
Volume 𝑉𝑜𝑙𝑢𝑚𝑒𝑐 11.120 181.038 0.170 1,397.753
Competition 𝐶𝑜𝑚𝑝𝑐 4.475 1.235 1 7
Population density 𝐷𝑒𝑛𝑠𝑐 13.716 25.911 3.289 200.471
Number of procurements 146
Observations 594
Empirical model
• The empirical model for this study is defined as;
𝑏 = 𝛼 𝑡 + 𝜌𝑾𝑏 + 𝑓 𝐶𝑜𝑚𝑝, 𝑉𝑜𝑙𝑢𝑚𝑒, 𝑞 𝑟, 𝑡 + 𝜀
Where,
𝛼 𝑡 capture time effects,
𝐶𝑜𝑚𝑝 measures competition (number of bidders per contract),
𝑉𝑜𝑙𝑢𝑚𝑒 is the quantity of the contract, and
𝑞 𝑟 is a control for regional disparaties (SRAs 7 regions)
Row standardized weights matrix, 𝐖2. Period 1992-2000. Row standardized weights matrix, 𝐖2. Period 2004 – 2009.
(1) (2) (3) (4) (1) (2) (3) (4)
𝜌 - - 0,434
(3,67)
0,400
(3,31)
- - 0,630
(0,43)
0,379
(0,50)
𝜌 (ln) 0,084
(2,65)
0,102
(3,29)
- - -0,253
(-0,83)
-0,135
(-1,52)
- -
𝛽𝑐𝑜𝑚𝑝 - - -4,794
(-0,55)
- - - 5,382
(0,31)
-
𝛽𝑐𝑜𝑚𝑝2 - - 0,570
(0,71)
- - - -0,231
(-0,11)
-
𝛽ln(𝑐𝑜𝑚𝑝) 1,521
(3,90)
- - - -2,204
(-0,47)
- - -
𝛽 𝑑𝑒𝑛𝑠 - - - 2,904
(1,07)
- - - 47,126
(0,55)
𝛽 𝑑𝑒𝑛𝑠2 - - - -0,008
(-1,13)
- - - -0,565
(0,57)
𝛽ln(𝑑𝑒𝑛𝑠) - -8,979
(-4,94)
- - - -21,497
(-1,92)
- -
𝛽𝑠𝑞𝑟𝑡 - - -0,176
(-6,18)
-0,177
(-6,14)
- - -0,034
(-1,21)
-0,044
(-2,39)
𝛽𝑠𝑞𝑟𝑡2 - - 0,000
(5,73)
0,000
(5,69)
- - 0,000
(1,27)
0,000
(2,37)
𝛽ln(𝑠𝑞𝑟𝑡) -0,861
(-33,86)
-0,817
(-34,95)
- - -0,904
(-6,45)
-0,849
(-18,53)
- -
Results
Non-row standardized weights matrix, 𝐖𝟐. Period 1992-2000. Non-row standardized weights matrix,𝐖𝟐. Period 2004 – 2009.
(1) (2) (3) (4) (1) (2) (3) (4)
𝜌 - - 0,154
(5,64)
0,160
(7,13)
- - 0,204
(0,32)
0,523
(1,48)
𝜌 (ln) 0,050
(4,92)
0,054
(6,19)
- - -0,101
(-1,19)
-0,070
(-2,42)
- -
𝛽𝑐𝑜𝑚𝑝 - - -8,023
(-0,86)
- - - 0,355
(0,02)
-
𝛽𝑐𝑜𝑚𝑝2 - - 0,606
(0,64)
- - - 0,623
(0,29)
-
𝛽ln(𝑐𝑜𝑚𝑝) 2,567
(5,83)
- - - -0,550
(-0,39)
- - -
𝛽 𝑑𝑒𝑛𝑠 - - - 3,279
(1,36)
- - - 47,405
(0,53)
𝛽 𝑑𝑒𝑛𝑠2 - - - -0,009
(-1,37)
- - - -0,571
(-0,55)
𝛽ln(𝑑𝑒𝑛𝑠) - -9,160
(-5,18)
- - - -20,118
(-1,80)
- -
𝛽𝑠𝑞𝑟𝑡 - - -0,147
(-5,79)
-0,151
(-7,76)
- - -0,042
(-2,25)
-0,036
(-2,54)
𝛽𝑠𝑞𝑟𝑡2 - - 0,000
(5,04)
0,000
(6,96)
- - 0,000
(2,37)
0,000
(2,62)
𝛽ln(𝑠𝑞𝑟𝑡) -0,838
(-33,77)
-0,782
(-38,88)
- - -0,883
(-10,82)
-0,854
(-23,85)
- -
Results
Row standardized weights matrix, 𝐖𝟏. Period 1992-2000. Row standardized weights matrix, 𝐖𝟏. Period 2004 – 2009.
(1) (2) (3) (4) (1) (2) (3) (4)
𝜌 - - 0,326
(2,54)
0,341
(2,96)
- - 0,154
(0,12)
0,823
(0,82)
𝜌 (ln) 0,120
(3,75)
0,088
(3,01)
- - -2,828
(-0,37)
-0,220
(-2,68)
- -
𝛽𝑐𝑜𝑚𝑝 - - -13,111
(-0,89)
- - - 14,804
(0,77)
-
𝛽𝑐𝑜𝑚𝑝2 - - 1,214
(0,88)
- - - -1,165
(-0,50)
-
𝛽ln(𝑐𝑜𝑚𝑝) 2,134
(4,46)
- - - -21,727
(-0,34)
- - -
𝛽 𝑑𝑒𝑛𝑠 - - - 3,442
(1,10)
- - - 49,184
(0,54)
𝛽 𝑑𝑒𝑛𝑠2 - - - -0,010
(-1,17)
- - - -0,598
(-0,57)
𝛽ln(𝑑𝑒𝑛𝑠) - -9,132
(-4,89)
- - - -21,090
(-1,90)
- -
𝛽𝑠𝑞𝑟𝑡 - - -0,209
(-7,89)
-0,206
(-8,49)
- - -0,043
(-3,55)
-0,047
(-4,18)
𝛽𝑠𝑞𝑟𝑡2 - - 0,000
(6,54)
0,000
(7,20)
- - 0,000
(3,59)
0,000
(4,00)
𝛽ln(𝑠𝑞𝑟𝑡) -0,871
(-44,04)
-0,842
(-45,97)
- - -1,373
(-0,86)
-0,834
(-28,51)
- -
Results – excluding lowest cartel bid
Non-row standardized weights matrix, 𝐖𝟏. Period 1992-2000. Non-row standardized weights matrix, 𝐖𝟏. Period 2004 – 2009.
(1) (2) (3) (4) (1) (2) (3) (4)
𝜌 - - 0,165
(3,62)
0,162
(4,86)
- - 0,110
(0,16)
0,381
(0,80)
𝜌 (ln) 0,062
(4,55)
0,062
(5,22)
- - -0,013
(-0,08)
-0,129
(-3,47)
- -
𝛽𝑐𝑜𝑚𝑝 - - -12,590
(-0,70)
- - - 1,558
(0,06)
-
𝛽𝑐𝑜𝑚𝑝2 - - 0,871
(0,49)
- - - 0,480
(0,16)
-
𝛽ln(𝑐𝑜𝑚𝑝) 2,649
(6,29)
- - - 1,655
(0,79)
- - -
𝛽 𝑑𝑒𝑛𝑠 - - - 4,028
(1,32)
- - - 48,540
(0,56)
𝛽 𝑑𝑒𝑛𝑠2 - - - -0,011
(-1,36)
- - - -0,589
(-0,59)
𝛽ln(𝑑𝑒𝑛𝑠) - -9,084
(-4,92)
- - - -18,081
(-1,65)
- -
𝛽𝑠𝑞𝑟𝑡 - - -0,185
(-6,78)
-0,199
(-10,07)
- - -0,047
(-3,87)
-0,049
(-4,71)
𝛽𝑠𝑞𝑟𝑡2 - - 0,000
(5,25)
0,000
(8,13)
- - 0,000
(3,80)
0,000
(4,43)
𝛽ln(𝑠𝑞𝑟𝑡) -0,875
(-43,06)
-0,825
(-49,52)
- - -0,795
(-12,68)
-0,836
(-30,55)
- -
Results – excluding lowest cartel bid
Results
• Relatively clear and unambigious results – spatial econometrics show sign of
collusion
• 𝜌 is significant and therefore implies non-independence in the cartel period, and
produces no significant effect in the latter period (using a row standardized
weight matrix and all cartel bids included)
• Other estimation also follow this, but the estimation using log of population
density and log of volume consequently implies non-independent bids
• Possible explanations?
• Opens up for possibilities to use spatial econometrics to scan procurement data
by testing different cartel specifications (hopefully!)

More Related Content

Similar to Bergman lundberg lundberg stake ippc2014

Bricklayer: Resource Composition on the Spot Market
Bricklayer: Resource Composition on the Spot MarketBricklayer: Resource Composition on the Spot Market
Bricklayer: Resource Composition on the Spot MarketWalterWong22
 
LFM Pedersen Calibration - Cappelli
LFM Pedersen Calibration - CappelliLFM Pedersen Calibration - Cappelli
LFM Pedersen Calibration - CappelliJoel Cappelli
 
Economics cvp analysis
Economics cvp analysisEconomics cvp analysis
Economics cvp analysisReenaR8
 
FWD report by priyanshu kumar ,960868480
FWD report by priyanshu kumar ,960868480FWD report by priyanshu kumar ,960868480
FWD report by priyanshu kumar ,960868480PRIYANSHU KUMAR
 
Competition and market strategies in the Swiss fixed telephony market - ITS 2015
Competition and market strategies in the Swiss fixed telephony market - ITS 2015Competition and market strategies in the Swiss fixed telephony market - ITS 2015
Competition and market strategies in the Swiss fixed telephony market - ITS 2015Roberto Balmer
 
FORECASTING METHODS.pptx
FORECASTING METHODS.pptxFORECASTING METHODS.pptx
FORECASTING METHODS.pptxkiranpalepu5
 
09-Digital Communication_Channel_Coding.pptx
09-Digital Communication_Channel_Coding.pptx09-Digital Communication_Channel_Coding.pptx
09-Digital Communication_Channel_Coding.pptxKhanSwat3
 
A feasible solution algorithm for a primitive vehicle routing problem
A feasible solution algorithm for a primitive vehicle routing problemA feasible solution algorithm for a primitive vehicle routing problem
A feasible solution algorithm for a primitive vehicle routing problemCem Recai Çırak
 
Optimization of CNC Machining
Optimization of CNC MachiningOptimization of CNC Machining
Optimization of CNC Machiningvivatechijri
 
Returns to scale and density in passenger train operations in the presence of...
Returns to scale and density in passenger train operations in the presence of...Returns to scale and density in passenger train operations in the presence of...
Returns to scale and density in passenger train operations in the presence of...Institute for Transport Studies (ITS)
 
Analysis of effectiveness of modern information and communication technologie...
Analysis of effectiveness of modern information and communication technologie...Analysis of effectiveness of modern information and communication technologie...
Analysis of effectiveness of modern information and communication technologie...IFPRIMaSSP
 
Grds international conference on pure and applied science (6)
Grds international conference on pure and applied science (6)Grds international conference on pure and applied science (6)
Grds international conference on pure and applied science (6)Global R & D Services
 
Optimization of Turning Parameters Using Taguchi Method
Optimization of Turning Parameters Using Taguchi MethodOptimization of Turning Parameters Using Taguchi Method
Optimization of Turning Parameters Using Taguchi MethodIJMER
 
20151216 convergence of quasi dynamic assignment models
20151216 convergence of quasi dynamic assignment models 20151216 convergence of quasi dynamic assignment models
20151216 convergence of quasi dynamic assignment models Luuk Brederode
 

Similar to Bergman lundberg lundberg stake ippc2014 (20)

Cost function
Cost functionCost function
Cost function
 
Bricklayer: Resource Composition on the Spot Market
Bricklayer: Resource Composition on the Spot MarketBricklayer: Resource Composition on the Spot Market
Bricklayer: Resource Composition on the Spot Market
 
draft
draftdraft
draft
 
LFM Pedersen Calibration - Cappelli
LFM Pedersen Calibration - CappelliLFM Pedersen Calibration - Cappelli
LFM Pedersen Calibration - Cappelli
 
Economics cvp analysis
Economics cvp analysisEconomics cvp analysis
Economics cvp analysis
 
Crude Oil Levy
Crude Oil LevyCrude Oil Levy
Crude Oil Levy
 
FWD report by priyanshu kumar ,960868480
FWD report by priyanshu kumar ,960868480FWD report by priyanshu kumar ,960868480
FWD report by priyanshu kumar ,960868480
 
Out-of-Market Efficiencies in Competition Enforcement – ROSENBOOM – December ...
Out-of-Market Efficiencies in Competition Enforcement – ROSENBOOM – December ...Out-of-Market Efficiencies in Competition Enforcement – ROSENBOOM – December ...
Out-of-Market Efficiencies in Competition Enforcement – ROSENBOOM – December ...
 
Competition and market strategies in the Swiss fixed telephony market - ITS 2015
Competition and market strategies in the Swiss fixed telephony market - ITS 2015Competition and market strategies in the Swiss fixed telephony market - ITS 2015
Competition and market strategies in the Swiss fixed telephony market - ITS 2015
 
FORECASTING METHODS.pptx
FORECASTING METHODS.pptxFORECASTING METHODS.pptx
FORECASTING METHODS.pptx
 
09-Digital Communication_Channel_Coding.pptx
09-Digital Communication_Channel_Coding.pptx09-Digital Communication_Channel_Coding.pptx
09-Digital Communication_Channel_Coding.pptx
 
A feasible solution algorithm for a primitive vehicle routing problem
A feasible solution algorithm for a primitive vehicle routing problemA feasible solution algorithm for a primitive vehicle routing problem
A feasible solution algorithm for a primitive vehicle routing problem
 
Optimization of CNC Machining
Optimization of CNC MachiningOptimization of CNC Machining
Optimization of CNC Machining
 
Case study of s&amp;p 500
Case study of s&amp;p 500Case study of s&amp;p 500
Case study of s&amp;p 500
 
Returns to scale and density in passenger train operations in the presence of...
Returns to scale and density in passenger train operations in the presence of...Returns to scale and density in passenger train operations in the presence of...
Returns to scale and density in passenger train operations in the presence of...
 
Analysis of effectiveness of modern information and communication technologie...
Analysis of effectiveness of modern information and communication technologie...Analysis of effectiveness of modern information and communication technologie...
Analysis of effectiveness of modern information and communication technologie...
 
Taguchi
Taguchi Taguchi
Taguchi
 
Grds international conference on pure and applied science (6)
Grds international conference on pure and applied science (6)Grds international conference on pure and applied science (6)
Grds international conference on pure and applied science (6)
 
Optimization of Turning Parameters Using Taguchi Method
Optimization of Turning Parameters Using Taguchi MethodOptimization of Turning Parameters Using Taguchi Method
Optimization of Turning Parameters Using Taguchi Method
 
20151216 convergence of quasi dynamic assignment models
20151216 convergence of quasi dynamic assignment models 20151216 convergence of quasi dynamic assignment models
20151216 convergence of quasi dynamic assignment models
 

More from Dr. Paul Davis

Nephin 8 months in pictures
Nephin   8 months in picturesNephin   8 months in pictures
Nephin 8 months in picturesDr. Paul Davis
 
Yakovlev et al. presentation at ippc (aug 2014)
Yakovlev et al.   presentation at ippc (aug 2014)Yakovlev et al.   presentation at ippc (aug 2014)
Yakovlev et al. presentation at ippc (aug 2014)Dr. Paul Davis
 
When practice met kraljic 130814
When practice met kraljic 130814When practice met kraljic 130814
When practice met kraljic 130814Dr. Paul Davis
 
The municipal partnering initiative 0810 longer
The municipal partnering initiative 0810 longerThe municipal partnering initiative 0810 longer
The municipal partnering initiative 0810 longerDr. Paul Davis
 
Strategies in pp essig140814
Strategies in pp essig140814Strategies in pp essig140814
Strategies in pp essig140814Dr. Paul Davis
 
Stake sm es in pp ippc 2014 dublin
Stake   sm es in pp ippc 2014 dublinStake   sm es in pp ippc 2014 dublin
Stake sm es in pp ippc 2014 dublinDr. Paul Davis
 
Salazar d is_publicprocurement_dev_tool
Salazar d is_publicprocurement_dev_toolSalazar d is_publicprocurement_dev_tool
Salazar d is_publicprocurement_dev_toolDr. Paul Davis
 
Richo improving effectiveness in bid protest mechanism ippc 6 dublin
Richo improving effectiveness in bid protest mechanism ippc 6 dublinRicho improving effectiveness in bid protest mechanism ippc 6 dublin
Richo improving effectiveness in bid protest mechanism ippc 6 dublinDr. Paul Davis
 
Rationalising ippc6 clean
Rationalising ippc6 cleanRationalising ippc6 clean
Rationalising ippc6 cleanDr. Paul Davis
 
Rabiu m shuaib nura jibo
Rabiu m shuaib nura jiboRabiu m shuaib nura jibo
Rabiu m shuaib nura jiboDr. Paul Davis
 
Procurement efficiency jp
Procurement efficiency jpProcurement efficiency jp
Procurement efficiency jpDr. Paul Davis
 
Presentation slide-sakane:8-14 parallel-track_1_at_hg19
Presentation slide-sakane:8-14 parallel-track_1_at_hg19Presentation slide-sakane:8-14 parallel-track_1_at_hg19
Presentation slide-sakane:8-14 parallel-track_1_at_hg19Dr. Paul Davis
 
Presentation dublin 2014 la cour oelykke final
Presentation dublin 2014 la cour   oelykke finalPresentation dublin 2014 la cour   oelykke final
Presentation dublin 2014 la cour oelykke finalDr. Paul Davis
 
Presentatie sophie dublin def
Presentatie sophie dublin defPresentatie sophie dublin def
Presentatie sophie dublin defDr. Paul Davis
 

More from Dr. Paul Davis (20)

Nephin 8 months in pictures
Nephin   8 months in picturesNephin   8 months in pictures
Nephin 8 months in pictures
 
Yakovlev et al. presentation at ippc (aug 2014)
Yakovlev et al.   presentation at ippc (aug 2014)Yakovlev et al.   presentation at ippc (aug 2014)
Yakovlev et al. presentation at ippc (aug 2014)
 
When practice met kraljic 130814
When practice met kraljic 130814When practice met kraljic 130814
When practice met kraljic 130814
 
Vortrag ippc
Vortrag ippcVortrag ippc
Vortrag ippc
 
The municipal partnering initiative 0810 longer
The municipal partnering initiative 0810 longerThe municipal partnering initiative 0810 longer
The municipal partnering initiative 0810 longer
 
Sutthi sun ippc 6
Sutthi sun ippc 6Sutthi sun ippc 6
Sutthi sun ippc 6
 
Strategies in pp essig140814
Strategies in pp essig140814Strategies in pp essig140814
Strategies in pp essig140814
 
Stake sm es in pp ippc 2014 dublin
Stake   sm es in pp ippc 2014 dublinStake   sm es in pp ippc 2014 dublin
Stake sm es in pp ippc 2014 dublin
 
Salazar d is_publicprocurement_dev_tool
Salazar d is_publicprocurement_dev_toolSalazar d is_publicprocurement_dev_tool
Salazar d is_publicprocurement_dev_tool
 
Richo improving effectiveness in bid protest mechanism ippc 6 dublin
Richo improving effectiveness in bid protest mechanism ippc 6 dublinRicho improving effectiveness in bid protest mechanism ippc 6 dublin
Richo improving effectiveness in bid protest mechanism ippc 6 dublin
 
Rationalising ippc6 clean
Rationalising ippc6 cleanRationalising ippc6 clean
Rationalising ippc6 clean
 
Rabiu m shuaib nura jibo
Rabiu m shuaib nura jiboRabiu m shuaib nura jibo
Rabiu m shuaib nura jibo
 
Procurement efficiency jp
Procurement efficiency jpProcurement efficiency jp
Procurement efficiency jp
 
Presentation
PresentationPresentation
Presentation
 
Presentation slide-sakane:8-14 parallel-track_1_at_hg19
Presentation slide-sakane:8-14 parallel-track_1_at_hg19Presentation slide-sakane:8-14 parallel-track_1_at_hg19
Presentation slide-sakane:8-14 parallel-track_1_at_hg19
 
Presentation ruyi wan
Presentation ruyi wanPresentation ruyi wan
Presentation ruyi wan
 
Presentation dublin 2014 la cour oelykke final
Presentation dublin 2014 la cour   oelykke finalPresentation dublin 2014 la cour   oelykke final
Presentation dublin 2014 la cour oelykke final
 
Presentatie sophie dublin def
Presentatie sophie dublin defPresentatie sophie dublin def
Presentatie sophie dublin def
 
Presentacion
PresentacionPresentacion
Presentacion
 
Ppt ippc 2014
Ppt ippc 2014Ppt ippc 2014
Ppt ippc 2014
 

Recently uploaded

A.I. Bot Summit 3 Opening Keynote - Perry Belcher
A.I. Bot Summit 3 Opening Keynote - Perry BelcherA.I. Bot Summit 3 Opening Keynote - Perry Belcher
A.I. Bot Summit 3 Opening Keynote - Perry BelcherPerry Belcher
 
Banana Powder Manufacturing Plant Project Report 2024 Edition.pptx
Banana Powder Manufacturing Plant Project Report 2024 Edition.pptxBanana Powder Manufacturing Plant Project Report 2024 Edition.pptx
Banana Powder Manufacturing Plant Project Report 2024 Edition.pptxgeorgebrinton95
 
CATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDF
CATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDFCATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDF
CATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDFOrient Homes
 
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / NcrCall Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncrdollysharma2066
 
rishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdfrishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdfmuskan1121w
 
VIP Kolkata Call Girl Howrah 👉 8250192130 Available With Room
VIP Kolkata Call Girl Howrah 👉 8250192130  Available With RoomVIP Kolkata Call Girl Howrah 👉 8250192130  Available With Room
VIP Kolkata Call Girl Howrah 👉 8250192130 Available With Roomdivyansh0kumar0
 
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service DewasVip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewasmakika9823
 
Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...
Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...
Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...lizamodels9
 
Call Girls Miyapur 7001305949 all area service COD available Any Time
Call Girls Miyapur 7001305949 all area service COD available Any TimeCall Girls Miyapur 7001305949 all area service COD available Any Time
Call Girls Miyapur 7001305949 all area service COD available Any Timedelhimodelshub1
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth MarketingShawn Pang
 
Marketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet CreationsMarketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet Creationsnakalysalcedo61
 
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...lizamodels9
 
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,noida100girls
 
Investment analysis and portfolio management
Investment analysis and portfolio managementInvestment analysis and portfolio management
Investment analysis and portfolio managementJunaidKhan750825
 
Catalogue ONG NUOC PPR DE NHAT .pdf
Catalogue ONG NUOC PPR DE NHAT      .pdfCatalogue ONG NUOC PPR DE NHAT      .pdf
Catalogue ONG NUOC PPR DE NHAT .pdfOrient Homes
 
BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,noida100girls
 
Progress Report - Oracle Database Analyst Summit
Progress  Report - Oracle Database Analyst SummitProgress  Report - Oracle Database Analyst Summit
Progress Report - Oracle Database Analyst SummitHolger Mueller
 
Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756
Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756
Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756dollysharma2066
 
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...lizamodels9
 
NewBase 22 April 2024 Energy News issue - 1718 by Khaled Al Awadi (AutoRe...
NewBase  22 April  2024  Energy News issue - 1718 by Khaled Al Awadi  (AutoRe...NewBase  22 April  2024  Energy News issue - 1718 by Khaled Al Awadi  (AutoRe...
NewBase 22 April 2024 Energy News issue - 1718 by Khaled Al Awadi (AutoRe...Khaled Al Awadi
 

Recently uploaded (20)

A.I. Bot Summit 3 Opening Keynote - Perry Belcher
A.I. Bot Summit 3 Opening Keynote - Perry BelcherA.I. Bot Summit 3 Opening Keynote - Perry Belcher
A.I. Bot Summit 3 Opening Keynote - Perry Belcher
 
Banana Powder Manufacturing Plant Project Report 2024 Edition.pptx
Banana Powder Manufacturing Plant Project Report 2024 Edition.pptxBanana Powder Manufacturing Plant Project Report 2024 Edition.pptx
Banana Powder Manufacturing Plant Project Report 2024 Edition.pptx
 
CATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDF
CATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDFCATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDF
CATALOG cáp điện Goldcup (bảng giá) 1.4.2024.PDF
 
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / NcrCall Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
Call Girls in DELHI Cantt, ( Call Me )-8377877756-Female Escort- In Delhi / Ncr
 
rishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdfrishikeshgirls.in- Rishikesh call girl.pdf
rishikeshgirls.in- Rishikesh call girl.pdf
 
VIP Kolkata Call Girl Howrah 👉 8250192130 Available With Room
VIP Kolkata Call Girl Howrah 👉 8250192130  Available With RoomVIP Kolkata Call Girl Howrah 👉 8250192130  Available With Room
VIP Kolkata Call Girl Howrah 👉 8250192130 Available With Room
 
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service DewasVip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
Vip Dewas Call Girls #9907093804 Contact Number Escorts Service Dewas
 
Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...
Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...
Call Girls In Kishangarh Delhi ❤️8860477959 Good Looking Escorts In 24/7 Delh...
 
Call Girls Miyapur 7001305949 all area service COD available Any Time
Call Girls Miyapur 7001305949 all area service COD available Any TimeCall Girls Miyapur 7001305949 all area service COD available Any Time
Call Girls Miyapur 7001305949 all area service COD available Any Time
 
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
Tech Startup Growth Hacking 101  - Basics on Growth MarketingTech Startup Growth Hacking 101  - Basics on Growth Marketing
Tech Startup Growth Hacking 101 - Basics on Growth Marketing
 
Marketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet CreationsMarketing Management Business Plan_My Sweet Creations
Marketing Management Business Plan_My Sweet Creations
 
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
Lowrate Call Girls In Sector 18 Noida ❤️8860477959 Escorts 100% Genuine Servi...
 
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In Greater Noida ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
 
Investment analysis and portfolio management
Investment analysis and portfolio managementInvestment analysis and portfolio management
Investment analysis and portfolio management
 
Catalogue ONG NUOC PPR DE NHAT .pdf
Catalogue ONG NUOC PPR DE NHAT      .pdfCatalogue ONG NUOC PPR DE NHAT      .pdf
Catalogue ONG NUOC PPR DE NHAT .pdf
 
BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
BEST Call Girls In BELLMONT HOTEL ✨ 9773824855 ✨ Escorts Service In Delhi Ncr,
 
Progress Report - Oracle Database Analyst Summit
Progress  Report - Oracle Database Analyst SummitProgress  Report - Oracle Database Analyst Summit
Progress Report - Oracle Database Analyst Summit
 
Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756
Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756
Call Girls In ⇛⇛Chhatarpur⇚⇚. Brings Offer Delhi Contact Us 8377877756
 
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
Call Girls In Connaught Place Delhi ❤️88604**77959_Russian 100% Genuine Escor...
 
NewBase 22 April 2024 Energy News issue - 1718 by Khaled Al Awadi (AutoRe...
NewBase  22 April  2024  Energy News issue - 1718 by Khaled Al Awadi  (AutoRe...NewBase  22 April  2024  Energy News issue - 1718 by Khaled Al Awadi  (AutoRe...
NewBase 22 April 2024 Energy News issue - 1718 by Khaled Al Awadi (AutoRe...
 

Bergman lundberg lundberg stake ippc2014

  • 1. Using spatial econometric techniques to detect collusive behavior in procurement auction data Mats Bergman, Johan Lundberg, Sofia Lundberg, Johan Stake
  • 2. Summary • Test to see if bidding behavior can be captured by spatial econometric techniques due to non-independent bidding between cartel members • Use data from known Swedish asphalt cartel during the 1990s • Test if bids between lowest bid in cartel and the rest of the cartel bids can be observed econometrically • Find significant results of non-independence between cartel members bids using spatial econometrics, which dissapears during the time after the cartel • Problems with one specification which returns significant results in the case after the cartel was dissipated
  • 3. Background • Procurement auctions used frequently for public contracts in the EU (1994 directive) • First-price sealed bid auctions theoretically assigns to bidder with lowest marginal cost – assuming there is no collusion! • Swedish Competition Authority conducted dawn raids in October 2001 at several asphalt paving companies • Trials lasted for over 40 days and in 2007 nine companies were convicted to pay over 1.2 billion dollars in fines
  • 4. Previous work • Jakobsson and Eklöf (2003) analyzed the same asphalt cartel using a reduced form model describing non-independent bidding • Collusion in public contracts has been analyzed in fields such as: • frozen seafood (Koyak & Werden, 1993) • school milk (Pesendorfer, 1995; Porter & Zona, 1999) • highway constructions (Porter & Zona, 1993) • highway repair (Bajari & Ye, 2003) • Detecting collusion difficult – most papers econometrically confirm the cartel • Following Bajari & Ye, non-collusive bidding should fulfill; 1. Conditional independency – independent bids when controlling for production cost effects 2. Exchangability - bids independent of other bidders • We contribute to this literature by using spatial econometric techniques to test for collusive behavior
  • 5. Econometric setup • A specific number of bidders create a cartel with intention to collude in procurement auctions • Consider a set of contracts C, for which two types of bidders bid, A and B; A B C Cartel – bids are non-independent No cartel – bids are independent Bids between types A and B are independent
  • 6. Econometric setup • So, define bid b for contract c by bidder i belonging to group A; 𝑏𝑖,𝑐 𝐴 • One firm, i, in the cartel (type A) bids a low bid; 𝑏𝑖,𝑐 𝐴 • While the rest of the cartel members, j, bid high; 𝑏𝑗,𝑐 𝐴 𝑓𝑜𝑟 𝑖 ≠ 𝑗 • With C contracts and on average 𝐴 + 𝐵 bidders, we define a weight matrix W; 𝐶 × (𝐴 + 𝐵) × 𝐶 × 𝐴 + 𝐵 with elements such that 𝑤𝑖 𝑐 𝐴,𝑗 𝑐 𝐴 > 0 and; 𝑤𝑖 𝑐 𝐵,𝑗 𝑐 𝐵 = 𝑤𝑖 𝑐 𝐵,𝑗 𝑐 𝐴 = 𝑤𝑖 𝑐 𝐴,𝑗 𝑐 𝐵 = 𝑤𝑖 𝑐 𝐴,𝑖 𝑐 𝐴 = 𝑤𝑖 𝑐 𝐵,𝑖 𝑐 𝐵 = 0
  • 7. Econometric setup • A simple test for collusion among bidders of type A could then be performed; 𝑏 = 𝜌𝑾𝑏 + 𝑿𝜷 + 𝜀 𝑏 = 𝑣𝑒𝑐𝑡𝑜𝑟 𝑜𝑓 𝑎𝑙𝑙 𝑏𝑖𝑑𝑠 𝑿 = 𝑚𝑎𝑡𝑟𝑖𝑥 𝑜𝑓 𝑟𝑒𝑙𝑒𝑣𝑎𝑛𝑡 𝑐𝑜𝑣𝑎𝑟𝑖𝑎𝑡𝑒𝑠 𝜀 = 𝑒𝑟𝑟𝑜𝑟 𝑐𝑜𝑚𝑝𝑜𝑛𝑒𝑛𝑡 • 𝜌 and 𝛽 are the coeffients to be estimated • If the bids are non-independent: 𝜌 ≠ 0 • Note also that 𝜌 < 1 is consistent with a Nash equilibrium
  • 8. Econometric setup • It is not obvious what value we should assign 𝑤𝑖 𝑐 𝐴,𝑗 𝑐 𝐴. Theory gives no guidance in this matter – how should we express the degree of dependence between different cartel members? • Two approaches of defining the weight matrix are used; • 𝑏𝑖,𝑐 𝐴 is regressed on the sum of cartel members bids (Row standardized) • 𝑏𝑖,𝑐 𝐴 is regressed on the average of cartel members bids (Non-row standardized) • We also test to exclude the lowest cartel bid from the regression, which, using both weight matrixes above should produce even stronger effects. • Since our regression equation is a spatial lag model which becomes biased and inconsistent with OLS, we apply an IV estimator using 𝑾𝑿 as instruments for 𝑾𝒃 • 𝑾 should also preferably be exogenous, which is the case here.
  • 9. Data • Data consists of observations from the Swedish Road Administration, all procurements from 1992 up to and including 2009 • We gathered data on region, year, procurement procedure, bids, number of bidders, quantity (where applicable) • Exclude combinatorial bids, since this might influence bidding behavior • Vast majority of procurements use a simplified procurement procedure, since many contracts below the threshold value (5.1 million euros in 2014) • Bids are measured as bid per square meter of asphalt
  • 10. Table 1: Descriptive statistics Mean Std. dev. Min Max Whole sample (1992-2009) Bid per square kilometer 𝑏 4.889 23.226 0.013 308.222 Volume 𝑉𝑜𝑙𝑢𝑚𝑒𝑐 59.546 101.418 0.133 1,397.753 Competition 𝐶𝑜𝑚𝑝𝑐 5.433 1.522 1 10 Population density 𝐷𝑒𝑛𝑠𝑐 55.871 56.945 3.289 200.471 Number of procurements 568 Observations 2,801 1992 – 2000 Bid per square kilometer 𝑏 5.222 24.918 0.026 308.222 Volume 𝑉𝑜𝑙𝑢𝑚𝑒𝑐 45.644 57.734 0.133 607.613 Competition 𝐶𝑜𝑚𝑝𝑐 5.691 1.489 1 10 Population density 𝐷𝑒𝑛𝑠𝑐 67.217 57.690 3.317 195.275 Number of procurements 422 Observations 2,207 2004 – 2009 Bid per square kilometer 𝑏 3.651 15.340 0.013 144.582 Volume 𝑉𝑜𝑙𝑢𝑚𝑒𝑐 11.120 181.038 0.170 1,397.753 Competition 𝐶𝑜𝑚𝑝𝑐 4.475 1.235 1 7 Population density 𝐷𝑒𝑛𝑠𝑐 13.716 25.911 3.289 200.471 Number of procurements 146 Observations 594
  • 11. Empirical model • The empirical model for this study is defined as; 𝑏 = 𝛼 𝑡 + 𝜌𝑾𝑏 + 𝑓 𝐶𝑜𝑚𝑝, 𝑉𝑜𝑙𝑢𝑚𝑒, 𝑞 𝑟, 𝑡 + 𝜀 Where, 𝛼 𝑡 capture time effects, 𝐶𝑜𝑚𝑝 measures competition (number of bidders per contract), 𝑉𝑜𝑙𝑢𝑚𝑒 is the quantity of the contract, and 𝑞 𝑟 is a control for regional disparaties (SRAs 7 regions)
  • 12. Row standardized weights matrix, 𝐖2. Period 1992-2000. Row standardized weights matrix, 𝐖2. Period 2004 – 2009. (1) (2) (3) (4) (1) (2) (3) (4) 𝜌 - - 0,434 (3,67) 0,400 (3,31) - - 0,630 (0,43) 0,379 (0,50) 𝜌 (ln) 0,084 (2,65) 0,102 (3,29) - - -0,253 (-0,83) -0,135 (-1,52) - - 𝛽𝑐𝑜𝑚𝑝 - - -4,794 (-0,55) - - - 5,382 (0,31) - 𝛽𝑐𝑜𝑚𝑝2 - - 0,570 (0,71) - - - -0,231 (-0,11) - 𝛽ln(𝑐𝑜𝑚𝑝) 1,521 (3,90) - - - -2,204 (-0,47) - - - 𝛽 𝑑𝑒𝑛𝑠 - - - 2,904 (1,07) - - - 47,126 (0,55) 𝛽 𝑑𝑒𝑛𝑠2 - - - -0,008 (-1,13) - - - -0,565 (0,57) 𝛽ln(𝑑𝑒𝑛𝑠) - -8,979 (-4,94) - - - -21,497 (-1,92) - - 𝛽𝑠𝑞𝑟𝑡 - - -0,176 (-6,18) -0,177 (-6,14) - - -0,034 (-1,21) -0,044 (-2,39) 𝛽𝑠𝑞𝑟𝑡2 - - 0,000 (5,73) 0,000 (5,69) - - 0,000 (1,27) 0,000 (2,37) 𝛽ln(𝑠𝑞𝑟𝑡) -0,861 (-33,86) -0,817 (-34,95) - - -0,904 (-6,45) -0,849 (-18,53) - - Results
  • 13. Non-row standardized weights matrix, 𝐖𝟐. Period 1992-2000. Non-row standardized weights matrix,𝐖𝟐. Period 2004 – 2009. (1) (2) (3) (4) (1) (2) (3) (4) 𝜌 - - 0,154 (5,64) 0,160 (7,13) - - 0,204 (0,32) 0,523 (1,48) 𝜌 (ln) 0,050 (4,92) 0,054 (6,19) - - -0,101 (-1,19) -0,070 (-2,42) - - 𝛽𝑐𝑜𝑚𝑝 - - -8,023 (-0,86) - - - 0,355 (0,02) - 𝛽𝑐𝑜𝑚𝑝2 - - 0,606 (0,64) - - - 0,623 (0,29) - 𝛽ln(𝑐𝑜𝑚𝑝) 2,567 (5,83) - - - -0,550 (-0,39) - - - 𝛽 𝑑𝑒𝑛𝑠 - - - 3,279 (1,36) - - - 47,405 (0,53) 𝛽 𝑑𝑒𝑛𝑠2 - - - -0,009 (-1,37) - - - -0,571 (-0,55) 𝛽ln(𝑑𝑒𝑛𝑠) - -9,160 (-5,18) - - - -20,118 (-1,80) - - 𝛽𝑠𝑞𝑟𝑡 - - -0,147 (-5,79) -0,151 (-7,76) - - -0,042 (-2,25) -0,036 (-2,54) 𝛽𝑠𝑞𝑟𝑡2 - - 0,000 (5,04) 0,000 (6,96) - - 0,000 (2,37) 0,000 (2,62) 𝛽ln(𝑠𝑞𝑟𝑡) -0,838 (-33,77) -0,782 (-38,88) - - -0,883 (-10,82) -0,854 (-23,85) - - Results
  • 14. Row standardized weights matrix, 𝐖𝟏. Period 1992-2000. Row standardized weights matrix, 𝐖𝟏. Period 2004 – 2009. (1) (2) (3) (4) (1) (2) (3) (4) 𝜌 - - 0,326 (2,54) 0,341 (2,96) - - 0,154 (0,12) 0,823 (0,82) 𝜌 (ln) 0,120 (3,75) 0,088 (3,01) - - -2,828 (-0,37) -0,220 (-2,68) - - 𝛽𝑐𝑜𝑚𝑝 - - -13,111 (-0,89) - - - 14,804 (0,77) - 𝛽𝑐𝑜𝑚𝑝2 - - 1,214 (0,88) - - - -1,165 (-0,50) - 𝛽ln(𝑐𝑜𝑚𝑝) 2,134 (4,46) - - - -21,727 (-0,34) - - - 𝛽 𝑑𝑒𝑛𝑠 - - - 3,442 (1,10) - - - 49,184 (0,54) 𝛽 𝑑𝑒𝑛𝑠2 - - - -0,010 (-1,17) - - - -0,598 (-0,57) 𝛽ln(𝑑𝑒𝑛𝑠) - -9,132 (-4,89) - - - -21,090 (-1,90) - - 𝛽𝑠𝑞𝑟𝑡 - - -0,209 (-7,89) -0,206 (-8,49) - - -0,043 (-3,55) -0,047 (-4,18) 𝛽𝑠𝑞𝑟𝑡2 - - 0,000 (6,54) 0,000 (7,20) - - 0,000 (3,59) 0,000 (4,00) 𝛽ln(𝑠𝑞𝑟𝑡) -0,871 (-44,04) -0,842 (-45,97) - - -1,373 (-0,86) -0,834 (-28,51) - - Results – excluding lowest cartel bid
  • 15. Non-row standardized weights matrix, 𝐖𝟏. Period 1992-2000. Non-row standardized weights matrix, 𝐖𝟏. Period 2004 – 2009. (1) (2) (3) (4) (1) (2) (3) (4) 𝜌 - - 0,165 (3,62) 0,162 (4,86) - - 0,110 (0,16) 0,381 (0,80) 𝜌 (ln) 0,062 (4,55) 0,062 (5,22) - - -0,013 (-0,08) -0,129 (-3,47) - - 𝛽𝑐𝑜𝑚𝑝 - - -12,590 (-0,70) - - - 1,558 (0,06) - 𝛽𝑐𝑜𝑚𝑝2 - - 0,871 (0,49) - - - 0,480 (0,16) - 𝛽ln(𝑐𝑜𝑚𝑝) 2,649 (6,29) - - - 1,655 (0,79) - - - 𝛽 𝑑𝑒𝑛𝑠 - - - 4,028 (1,32) - - - 48,540 (0,56) 𝛽 𝑑𝑒𝑛𝑠2 - - - -0,011 (-1,36) - - - -0,589 (-0,59) 𝛽ln(𝑑𝑒𝑛𝑠) - -9,084 (-4,92) - - - -18,081 (-1,65) - - 𝛽𝑠𝑞𝑟𝑡 - - -0,185 (-6,78) -0,199 (-10,07) - - -0,047 (-3,87) -0,049 (-4,71) 𝛽𝑠𝑞𝑟𝑡2 - - 0,000 (5,25) 0,000 (8,13) - - 0,000 (3,80) 0,000 (4,43) 𝛽ln(𝑠𝑞𝑟𝑡) -0,875 (-43,06) -0,825 (-49,52) - - -0,795 (-12,68) -0,836 (-30,55) - - Results – excluding lowest cartel bid
  • 16. Results • Relatively clear and unambigious results – spatial econometrics show sign of collusion • 𝜌 is significant and therefore implies non-independence in the cartel period, and produces no significant effect in the latter period (using a row standardized weight matrix and all cartel bids included) • Other estimation also follow this, but the estimation using log of population density and log of volume consequently implies non-independent bids • Possible explanations? • Opens up for possibilities to use spatial econometrics to scan procurement data by testing different cartel specifications (hopefully!)