Social accounting matrix

A Social Accounting Matrix (SAM) represents flows of all economic transactions that take place within an economy (regional or national). It is at the core, a matrix representation of the National Accounts for a given country, but can be extended to include non-national accounting flows, and created for whole regions or area. SAMs refer to a single year providing a static picture of the economy.

Contents

The SAM

SAMs are square (columns equal rows) in the sense that all institutional agents (Firms,Households, Government and 'Rest of Economy' sector) are both buyers and sellers. Columns represent buyers (expenditures) and rows represent sellers (receipts). SAM's were created to identify all monetary flows from sources to recipients, within a disaggregated national account. The SAM is read from column to row, so each entry in the matrix comes from its column heading, going to the row heading. Finally columns and rows are added up, to ensure accounting consistency, and each column is added up to equal each corresponding row. In the illustration below for a basic open economy, the item C (consumption) comes from Households and is paid to Firms.

Illustrative Open Economy SAM:[1]

Firm Household Government Rest of Economy Net Investment Total (Received)
Firm C GF (X-M)K I C+GF+(X-M)K+I
Household W GH (X-M)C W+GH+(X-M)C
Government TF TH TF+TH
Rest of Economy (X-M)K (X-M)C (X-M)K+(X-M)C
Net Investment SH SG SH+SG
Total (Expended) W+TF+(X-M)K C+TH+(X-M)C+SH GF+GH+SG (X-M)C+(X-M)K I

Abbreviations: Capital letters: Taxes, Wages, iMports, eXports, Savings, Investment, Consumption, Government Transfer Subscripts: Firms, Households, Government, Consumption Goods, K: Capital Goods

History

SAM's were originally developed at the “Cambridge Growth Project” in Cambridge, UK, which developed the first SAM in 1962 (Stone and Brown 1962). They were built as a matrix representation of the National Account, and came to the World Bank with Graham Pyatt in the 1960s (Pyatt had worked for Richard Stone at the Cambridge Growth Project). Pyatt left Cambridge and “developed SAMs, mainly at the World Bank”,[2] becoming together with Erik Thorbecke, the leading proponents and developers of SAMs.[3]

"By the early 1980s, CGE models were heavily ensconced as the approach of the World Bank for development analysis. Social Accounting Matrices (SAMs) were similarly a mainstay of Bank analysis, which had been adopted as a presentational device by the CGE modelers" (Mitra-Kahn 2008: 23)

Applications

SAMs can be easily extended to include other flows in the economy, simply by adding more columns and rows, once the standard national account (SNA) flows have been set up. Often rows for ‘capital’ and ‘labor’ are included, and the economy can be disaggregated into any number of sectors. Each extra disaggregated source of funds must have an equal and opposite recipient. So the SAM simplifies the design of the economy being modeled. SAMs are currently in widespread use, and many statistical bureaus, particularly in OECD countries, create both a national account and this matrix counterpart.

SAMs form the backbone of Computable general equilibrium (CGE) Models, various types of empirical multiplier models, and the Input-output model.

Appropriately formatted SAMs depict the spending patterns of an economy, as with IMPLAN and RIMS II data, and can be used in economic impact analysis.

Benchmarking

Using a SAM includes the institutional structure assumed in the national accounts into any model. This means that variables and agents are not treated with monetary source-recipient flows in mind, but are rather grouped together in different categories according to the United Nations Standardised National Accounting (SNA) Guidelines. For example, the national accounts usually imputes the value of household investment or home-owner ‘rental’ income and treats some public sector institutional investment as direct income flows - whereas the SAM is trying to show just the explicit flows of money. Thus the data has to be untangled from its inherent SNA definitions to become money flow variables, and they then have to equal across each row and column, which is a process referred to as 'Benchmarking'.

A theoretical SAM always balances, but empirically estimated SAM’s never do in the first collation. This is due to the problem of converting national accounting data into money flows and the introduction of non-SNA data, compounded by issues of inconsistent national accounting data (which is prevalent for many developing nations, while developed nations tend to include a SAM version of the national account, generally precise[4] to within 1% of GDP). This was noted as early as 1984 by Mansur and Whalley, and numerous techniques have been devised to ‘adjust’ SAMs, as “inconsistent data estimated with error, [is] a common experience in many countries”.[5]

The traditional method of benchmarking a SAM was simply known as the "Row-and-Columns" (RoW) method where one finds an arithmetic average of the total differences between the row and column in question, and adjust each individual cell until the row and column equal.

Robinson et al. (2001) suggests an improved method for ‘adjusting’ an unbalanced SAM in order to get all the rows and columns to equal, and gives the example of a SAM created for Mozambique’s economy in 1995, where the process of gathering the data, creating the SAM and ‘adjusting’ it, is thoroughly covered by Arndt et al. (1997).[6] On inspecting the changes made to the Mozambique’s 1995 SAM[7] to achieve balance is an adjustment of US$295 million[8] which meant that $227 m US was added to the SAM net, just to balance the rows and columns. For 1995 this adjustment is equivalent to 11.65% of GDP. More disconcerting is perhaps the fact that agricultural producers (which according to FAO (1995) employed 85% of the labor force in 1994) were given a US$58 million pay raise in the SAM, meaning that 10% of agricultural income (equivalent to 5% of GDP) in the SAM was created, out of thin air. In other words, for a country where 38% of the population lived for less than $1 in the period 1994–2004 (UNICEF 2008), this SAM ‘adjustment’ added $4.40 to each person's income in the agricultural sector[9] – more than any of the later trade and tax models using this SAM could arguably hope to achieve.

References

  1. ^ See Mitra-Kahn (2008), pp. 54-56 for this SAM
  2. ^ Vanoli 2001 p. 170
  3. ^ See for example Pyatt and Thorbecke, 1976, Planning Techniques for a better future, International Labor Organization
  4. ^ Imprecision is caused by omissions in the data-sets, but I use the word ‘precise’ rather than accurate, as the process from raw micro-data to national accounting data is not a streamlined system globally, and even if there is a 1% discrepancy in the account itself, this is more than often the result of careful double-entry book-keeping and classifications, rather than accurate descriptions of economic activity, or theoretical reasoning. If data is consistently recorded the same way, there should be no issue comparing year to year, but the 1% precision is often a better indicator of the accountant, as opposed to the quality of the data.
  5. ^ Robinson, Cattaneo and El-Said 2001: p. 1
  6. ^ In Robinson et al. (2001) the reference is in fact to a 1994 SAM for Mozambique, as created by Arndt et al. 1997b, but this is somewhat misleading as IFPRI had already published Arndt et al. 1997b as a working paper (referenced here as Arndt et al. [1997]) which is the only available copy and which included Robinson as an added author. While both papers created a SAM for 1994 and 1995, the one used in Robinson et al. 2001 is in fact the 1995 SAM, not 1994 as referenced in the paper.
  7. ^ The SAM is reproduced in appendix I of Mitra-Kahn (2008), for the unbalanced, the official balanced, and the suggested improved version
  8. ^ Exchange rate used is the Bank of International Settlements (2005) average exchange rate for 1995 at 8819.75 Mozambique meticais per $1 US
  9. ^ Both figures based on 85% of the population being in agriculture

Bibliography

Further reading

  • Pyatt and Round, 1985, "Social Accounting Matrices: A Basis for Planning", The World Bank
  • Mansur, A. & Whalley, J, 1984, “Numerical specification of applied general equilibrium models: Estimation, calibration, and data”, in Scarf, H.E., and Shoven, J.B. (Eds.), 1984, Applied General Equilibrium analysis, Cambridge, UK: Cambridge University Press

See also