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(Some) Performance Indicators for Centralized Public Procurement

(Some) Performance Indicators for Centralized Public Procurement. Gian Luigi Albano , Ph.D . Head of R esearch Consip S.p.A. - the National Central Purchasing Body, Italy Email: gianluigi.albano@consip.it www.gianluigialbano.com. Istanbul, 28 May 2014. Roadmap.

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(Some) Performance Indicators for Centralized Public Procurement

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  1. (Some) Performance Indicators for Centralized Public Procurement Gian Luigi Albano, Ph.D. Head of Research Consip S.p.A. - the National Central Purchasing Body, Italy Email: gianluigi.albano@consip.it www.gianluigialbano.com Istanbul, 28 May 2014

  2. Roadmap • (Some of ) The economiceffects of demandaggregation • Value for money (throughdifferentchannels) • Inclusion of SMEs • Market dynamics • Transactioncosts

  3. (Some) Relevant performance indicators Perfomance indicator(s) Economic dimension Value for money Savings Degree of success Inclusion of SMEs Concentration/ entry-exit indexes Market dynamics

  4. Measuringsavings Twomainproblems : Reference price(s) Heterogeneity

  5. The savingsestimationmethodology by the ItalianInstitute of Statistics (ISTAT) (1/2) • Step 1. Derive prices of comparableproducts/servicespurchasedthrough and outside of Consip frame contracts(FCs) • Comparablepricesare derived by usinga 3-step procedure: • Public bodies are asked to provide the prices of a given set of productspurchasedthroughand/or outside of Consip FCs (pconsip and pno-consiprespectively); • The monetaryvalue of productsfeatureswhich are specific to purchases made eitherthrough or outside of Consip FCs (βconsipand βno-consip) isevaluated; • The reportedpurchasingpricesare cleaned of the value of productfeatureswhich are specific to Consip or non-Consip purchasingcontracts, thatis: • πconsip= pconsip– βconsip and πno-consip= pconsip– βno-consip • πconsip& πno-consip are prices of comparableproductspurchasedthrough and outside of Consip’sFCsrespectively

  6. The savingsestimationmethodology by the ItalianInstitute of Statistics (ISTAT) (2/2) • Step 2. Estimate the value of realizedsavings from purchasingthroughConsip’sFCs • Savings are obtainedas the percentagedifferencebetween the pricesof comparableproductspurchased under and outside Consip contracts, thatis, by computing • 1- πconsip/πno-consip

  7. The Methodology in a simplepicture Results Distributing the Surveyto collect information on the leveland composition of public expenditure on a defined set of products Non-responsebias Relevance of the results: the higher the non-response rate the lower the informative power of the analysis EstimationProcess Averageprices of comparableproductspurchasedthrough and outside of Consip’sFCs Organizing the Dataset to create the variables to be used in the regression estimates • RegressionEstimatesto relate purchasingprices to products’ characetristics RobustnessCheck Response rate Estimatedsavings = % Differencebetween the estimatedprices of comparableproductspurchasedthrough and outside of Consip’sFCs

  8. The 2012 Survey Distribution of the questionnaire A sample of 1.216 Central and Local Public bodieswereasked to participate in an informative surveywhichaimedatcollectingdetailed information on the level and composition of public expenditure with respect to the following set of products, amongwhich: office furnitures, car rentalsand car purchases, meal vouchers, fuel, paperreams, gas, photocopiersrentals, PCs, telephone and data networks, servers, lightingservices, Microsoft Office software, laser printers, mobile and landlinetelephoneservices Level of participation The 2012 surveyeditionwascharacterized by a satisfyingresponse rate of over 30% Potentiallimitations Alow response rate can give rise to sampling bias if the nonresponse is unequal among the participants regarding observed or unobserved characteristics

  9. The estimationprocess • Organizingthe Dataset • The collected data wereelaboratedand organized in order to: • create homogeneousvariablesdescribingproductscharacteristicsacrossdifferentpublic bodies; • constructclusters of public bodiesaccordingto theirgeographical and institutionalcharacteristics; • create time-dimensionalvariables on the basis of invoicedates to account for possiblepricefluctuationsof typicallyseasonalproducts (e.g., gas); • identifywhether or notproducts/service hadbeenpurchasedthroughConsip’sFCs • Regressionestimates • The impact of products-specificfeatureson priceswasestimatedso as to derive purchasingprices of comparableproductsboughtthrough and outside of Consip FCs; • Robustnesscheck • The preferredspecification model isfinallyselectedaccording to standard goodness of fitindicators

  10. RegressionEstimates: Model Specification and Selection • The estimatedmodels take the followingform: • where: • pis the purchasingprice of eachproductasreported by the administration; • Xzrepresents the set of eachproduct’scharacteristicswhich are thought to affectitspurchasingprice, with z=1,…,n; • bzisthe monetizedvalueof eachproduct’scharacteristics, with ßconsipand ßno-consipbeing the monetaryvalueof productfeatureswhich are specific to purchaseseither under and outsideConsip’sFCs, respectively; • εis a residual component, including the influence of unobservedfactors on purchasingprices Prices of comparableproductspurchasedthrough and outside of Consip’sFCscontracts are obtainedas the differencebetween the purchasingprice p and the valueof thosefeatureswhich are specific to purchaseseitherthroughor outsideof Consip’sFCs(ßconsip and ßno-consip): • πconsip=pconsip– ßconsip • πno-consip= pconsip– ßno-consip

  11. EstimatedSavings • Estimatedsavings from purchasing under Consip contracts are computedas the percentagedifferencebetween the prices of comparableproductspurchasedthroughand outsideof Consip’sFCsby type of purchasing body withineachgeographical area:

  12. The MePAwas launched in 2003: - to promote electronic purchasing (consistent with EU directive) - to streamline purchasing processes - to facilitate SMEs access to low-value procurement market - since July 1st 2007 compulsory for central bodies (below EU threshold) Onboarding of the supply side is of paramount importance since it affects: - the variety of supplies (and thus the level of demand) - the level of competition in the long run Inclusion of SMEs: The ItalianGovernment’s e-Marketplace (the MePA) • Identifying the most relevant factors affecting suppliers’ success is above all instrumental to tailor marketing strategies towards the supply side

  13. Policy relevant question (Main) Performance indicator for the MePA Explaining the degree of success of micro, small, medium (and large) firms on the Italian public e-marketplace How effectiveis e-procurement in opening up public procurement market?

  14. Public bodies (PBs) can use 2 different purchasing tools: The Direct Purchase (DP)allows PBs to select goods and services from e-catalogues and buy at the posted price (click-and-buy purchase) TheRequest for Quotation (RFQ) allows PBs to select a contractor through an on-line simplified price/quality competition among those firms invited to submit a tender Purchasing tools on the MePA

  15. Descriptivestatistics of DPs in the 2005-2010 sample Distribution of the number and meanvalue of DPs (€) per firm’ssize

  16. The Econometric Model (1/2) OrderedLogisticModels (OLM) approach: Appropriate sinceourdependentvariableis a categoricalone. The value per eachfirm’sclass: • Micro firms: Y=1 • Small firms: Y=2 • Medium firms: Y=3 • Large Firms: Y=4 WhereMstands for the size of the firm (1 = micro, 2 = small, 3 = medium, 4 = large), Xis the vector of explanatoryvariables, and β are the estimatedcoefficients

  17. Value of the contract Variety of the catalogues (posted by suppliers) Distanceeffect NoticeType (ICT and non - ICT) Nature of the public body (central and local) The Econometric Model (2/2) Mainexplanatoryvariables

  18. MainFindings(1/2) Highercontractvalue Highervarietycatalogues ⇒ Higherproblargerfirms ICT notice Local public authorities Non-ICT notice ⇒ Higherprobsmallerfirms Central public authorities

  19. MainFindings(2/2) Low contract value ⇒ Higherprobsmallerfirms Higherdistance High contract value ⇒ Higherproblargerfirms Lowerdistance • Moral hazard (driven by anonimity?) • Geographydoes (seem to) matter!

  20. Probabilitiesof DPs from classes of suppliers for ICT and the Centre

  21. Estimatedprobabilities for non-ICT notices and allgeographicallocationsbut the Centre

  22. Main policy implications Distanceeffect + Contractvalueeffect Reputationmechanisms for reducing moral hazard/anonimity 1 Onboarding of SMEsrequiresconsideration of severaldimensions 2

  23. Evaluating the impact on a Central Purchasing Body (CPB) on the market • The impact of a CPB’s action on the market structure and dynamic can be analyzed through indicators relying on data based on the CPB’s procurement initiatives only, typically, Framework Contracts or Agreements (FCs or FAs) • Such indicators should be computed and evaluated on the single market/category basis and used: • to compare different markets among each other • to analyze the dynamics of single markets

  24. Some Indicators (1/2) • Participation • N. of bids / N. of lots • N. of bidding firms / N. of lots (takes into account temporary groups of firms) • Concentration • Turnover of the top 3 suppliers in all the editions of the FA / Total turnover of all the editions of the FA • Participation patterns • Entry index: N. “new” firms bidding at time t / N. bidders at time t • Exit index: N. firms bidding at time t-1 but NOT at time t / N. firms bidding at time t-1

  25. 1 2 3 4 5 6 Health Sector Real Estate 7 Utilities 8 TLC 9 IT 10 Some Indicators (1/2) Example 45 12% 78 21% 78 21% 61 17% N. Bids per Lot 43 12% 35 10% 16 4% 7 2% 3 1% 1 0,3% Absolute figures indicate the absolutenumber of lots Evaluate the degree of participation in different markets or category groups Evaluate the degree of concentration of the managed turnover in different markets or category groups

  26. Dynamic market Squeezingmarket Exit index vs. Entry index mean values over (n) editions of each framework contract Expanding market Static market • Entry index:N.“new” firms bidding at time t / N. bidders at time t • Exit index:N. firms bidding at time t-1 but NOT at time t / N. firms bidding at time t-1

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