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Shift-share analysis

A shift-share analysis, used in regional science, political economy, and urban studies, determines what portions of regional economic growth or decline can be attributed to national, economic industry, and regional factors. The analysis helps identify industries where a regional economy has competitive advantages over the larger economy. A shift-share analysis takes the change over time of an economic variable, such as employment, within industries of a regional economy, and divides that change into various components. A traditional shift-share analysis splits regional changes into just three components, but other models have evolved that expand the decomposition into additional components.

Overview edit

A shift-share analysis attempts to identify the sources of regional economic changes. The region can be a town, city, country, statistical area, state, or any other region of the country. The analysis examines changes in an economic variable, such as migration, a demographic statistic, firm growth, or firm formations, although employment is most commonly used.[1][2] The shift-share analysis is performed on a set of economic industries, like those defined by the North American Industry Classification System (NAICS). The analysis separates the regional economic changes within each industry into different categories. Although there are different versions of a shift-share analysis, they all identify national, industry, and regional factors that influence the variable changes.

Traditional model edit

The traditional form of the shift-share analysis was developed by Daniel Creamer in the early 1940s, and was later formalized by Edgar S. Dunn in 1960.[2] Also known as the comparative static model, it examines changes in the economic variable between two years. Changes are calculated for each industry in the analysis, both regionally and nationally. Each regional change is decomposed into three components.[3]

  1. National growth effect is the portion of the change attributed to the total growth of the national economy. It equals the theoretical change in the regional variable had it increased by the same percentage as the national economy.
  2. Industry mix effect is the portion of the change attributed to the performance of the specific economic industry. It equals the theoretical change in the regional variable had it increased by the same percentage as the industry nationwide, minus the national growth effect.
  3. Local share effect is the portion of the change attributed to regional influences, and is the component of primary concern to regional analysts.[3] It equals the actual change in the regional variable, minus the previous two effects.

Formula edit

The regional change in the variable e within industry i between the two years t and t+n is defined as the sum of the three shift-share effects: national growth effect (NSi), industry mix effect (IMi), and local share effect (RSi).[4]

 

The beginning and ending values of the economic variable within a particular industry are eit and eit+n, respectively. Each of the three effects is defined as a percentage of the beginning value of the economic variable.[4]

 
 
 

The total percent change in the economic variable nationwide for all industries combined is G, while the national and regional industry-specific percent changes are Gi and gi, respectively.

These three equations substituted into the first equation yield the following expression (from where the decomposition starts), which simply says that the regional economic variable (for industry i) grows at the speed of the regional industry-specific percent change. Note that usually (in case of slow growth) 0 < gi < 1 and that gi refers to the whole period from t to t+n.

 

Example edit

As an example, a shift-share analysis might be utilized to examine changes in the construction industry of a state's economy over the past decade, using employment as the economic variable studied. Total national employment may have increased 5% over the decade, while national construction employment increased 8%. However, state construction employment decreased 2%, from 100,000 to 98,000 employees, for a net loss of 2,000 employees.

The national growth effect is equal to the beginning 100,000 employees, times the total national growth rate of 5%, for an increase in 5,000 employees. The shift-share analysis implies that state construction would have increased by 5,000 employees, had it followed the same trend as the overall national economy.

The industry mix effect is equal to the original 100,000 employees times the growth in the industry nationwide, which was 8%, minus the total national growth of 5%. This results in an increase in 3,000 employees (100,000 employees times 3%, which is the 8% industry growth minus the 5% total growth). The analysis implies that the state construction would have increased by another 3,000 employees had it followed the industry trends, because the construction industry nationwide performed better than the national economy overall.

The local share effect in this example is equal to the beginning 100,000 employees times the state construction employment growth rate of −2% (it is negative because of the loss of employees), minus the national construction growth rate of 8%. This results in 100,000 employees times -10%, for a loss of 10,000 employees. However, the actual employment loss was only 2,000 employees, but that equals the sum of the three effects (5,000 gain + 3,000 gain + 10,000 loss). The analysis implies that local factors lead to a decrease in 10,000 employees in the state construction industry, because the growth in both the national economy and the construction industry should have increased state construction employment by 8,000 employees (the 5,000 national share effect plus the 3,000 industry mix effect).

Names and regions edit

Shift-share analysts sometimes use different labels for the three effects, although the calculations are the same. National growth effect may be referred to as national share.[4][5] Industry mix effect may be referred to as proportional shift.[5] Local share effect may be referred to as differential shift,[3] regional shift,[4] or competitive share.[6]

In most shift-share analyses, the regional economy is compared to the national economy. However, the techniques may be used to compare any two regions (e.g., comparing a county to its state).[7]

Dynamic model edit

In 1988, Richard Barff and Prentice Knight, III, published the dynamic model shift-share analysis.[8] In contrast to the comparative static model, which only considers two years in its analysis (the beginning and ending years), the dynamic model utilizes every year in the study period. Although it requires much more data to perform the calculations, the dynamic model takes into account continuous changes in the three shift-share effects, so the results are less affected by the choice of starting and ending years.[8] The dynamic model is most useful when there are large differences between regional and national growth rates, or large changes in the regional industrial mix.[8]

The dynamic model uses the same techniques as the comparative static model, including the same three shift-share effects. However, in the dynamic model, a time-series of traditional shift-share calculations are performed, comparing each year to the previous year. The annual shift-share effects are then totaled together for the entire study period, resulting in the dynamic model's shift-share effects.[8]

Formula edit

The regional change in the variable e within industry i between the two years t and t+n is defined as the sum of the three shift-share effects: national growth effect (NSi), industry mix effect (IMi), and local share effect (RSi).[8]

 

If the study period ranges from year t to year t+n, then traditional shift-share effects are calculated for every year k, where k spans from t+1 to t+n.[8] The dynamic model shift-share effects are then calculated as the sum of the annual effects.[8]

 
 
 

The growth rates used in the calculations are annual rates, not growth from the beginning year in the study period, so the percent change from year k-1 to k in the economic variable nationwide for all industries combined is Gk, while the national and regional industry-specific percent changes are Gik and gik, respectively.[8]

Esteban-Marquillas Model edit

In 1972, J.M. Esteban-Marquillas extended the traditional model to address criticism that the regional share effect is correlated to the regional industrial mix.[9] In the Esteban-Marquillas model, the regional share effect itself is decomposed into two components, isolating a regional shift component that is not correlated to the industrial mix.[9] The model introduced a then-new concept to shift-share analyses, a homothetic level of the economic variable within an industry. This is the theoretical value of the variable within an industry assuming the region has the same industrial mix as the nation.[9]

In the Esteban-Marquillas model, the calculations of the national share and industrial mix effects are unchanged. However, the regional share effect in the traditional model is separated into two effects: a new regional share effect that is not dependent on the industrial mix, and an allocation effect that is. The allocation effect indicates the extent to which the region is specialized in those industries where it enjoys a competitive advantage.[9]

Formula edit

The regional change in the variable e within industry i between the two years t and t+n is defined as the sum of the four shift-share effects: national growth effect (NSi), industry mix effect (IMi), regional share effect (RSi), and allocation effect (ALi).

 

The beginning and ending values of the economic variable within a particular industry are eit and eit+n, respectively. The beginning value of the regional homothetic variable within a particular industry is hit.[9] It is based on the regional and national values of the economic variable across all industries, et and Et respectively, and the industry-specific national value Eit.

 

Each of the four shift-share effects is defined as a percentage of either the beginning value of the economic variable, the homothetic variable, or the difference of the two.[9]

 
 
 
 

The total percent change in the economic variable nationwide for all industries combined is G, while the national and regional industry-specific percent changes are Gi and gi, respectively.

Arcelus Model edit

In 1984, Francisco Arcelus built upon Esteban-Marquillas' use of the homothetic variables and extended the traditional model even further.[10] He used this method to decompose the national share and industrial mix effects into expected and differential components. The expected component is based on the homothetic level of the variable, and is the effect not attributed to the regional specializations. The differential component is the remaining effect, which is attributable to the regional industrial mix.[10]

Arcelus claimed that, even with the Esteban-Marquillas extension, the regional share effect is still related to the regional industry mix, and that the static model assumes all regional industries operate on a national market basis, focusing too heavily on the export markets and ignoring the local markets.[10] In order to address these issues, Arcelus used a different method for separating the regional share effect, resulting in a regional growth effect and a regional industry mix effect. Both of these are decomposed into expected and differential components using the homothetic variable.[10]

Formula edit

The regional change in the variable e within industry i between the two years t and t+n is defined as the sum of the eight shift-share effects: expected national growth effect (NSEi), differential national growth effect (NSDi), expected industry mix effect (IMEi), differential industry mix effect (IMDi), expected regional growth effect (RGEi), differential regional growth effect (RGDi), expected regional industry mix effect (RIEi), and differential regional industry mix effect (RIDi).[10]

 

The eight effects are related to the three traditional shift-share effects from the comparative static model.[10]

 
 
 

The homothetic variable is calculated the same as in the Esteban-Marquillas model. The beginning value of the regional homothetic variable within a particular industry is hit. It is based on the regional and national values of the economic variable across all industries, et and Et respectively, and the industry-specific national value Eit.[10]

 

Each of the eight shift-share effects is defined as a percentage of either the beginning value of the economic variable, the homothetic variable, or the difference of the two.[10]

 
 
 
 
 
 
 
 

The total percent changes in the economic variable nationally and regionally for all industries combined are G and g respectively, while the national and regional industry-specific percent changes are Gi and gi, respectively.

References edit

  1. ^ Cheng, Shaoming (2 February 2010). "Business cycle, industrial composition, or regional advantage? A decomposition analysis of new firm formation in the United States". The Annals of Regional Science. 47 (1): 147–167. doi:10.1007/s00168-009-0361-0.
  2. ^ a b Shi, Chun-Yun; Yang Yang (2008). "A Review of Shift-Share Analysis and its Application in Tourism". International Journal of Management Perspectives. 1 (1): 21–30.
  3. ^ a b c Leigh, Nancey Green (2013). Planning Local Economic Development. Sage Publications. pp. 174–175. ISBN 9781452242590.
  4. ^ a b c d Stevens, Benjamin; Craig Moore (1980). "A critical review of the literature on shift-share as a forecasting technique". Journal of Regional Science. 20 (4): 419. doi:10.1111/j.1467-9787.1980.tb00660.x.
  5. ^ a b Knudesn, Daniel C. (2000). "Shift-share analysis: further examination of models for the description of economic change". Socio-Economic Planning Sciences. 34.
  6. ^ "Georgia Statistics System". University of Georgia. Retrieved 24 October 2013.
  7. ^ Michael LaFaive; James M. Hohman (31 August 2009). "The Michigan Economic Development Corporation: A Review and Analysis". Mackinac Center. Retrieved 5 December 2013.
  8. ^ a b c d e f g h Barff, Richard; Prentice L. Knight III (April 1988). "Dynamic Shift-Share Analysis". Growth and Change. 19 (2): 1–10. doi:10.1111/j.1468-2257.1988.tb00465.x.
  9. ^ a b c d e f Esteban-Marquillas, J.M. (1972). "A reinterpretation of shift-share analysis". Regional and Urban Economics. 2 (3): 249–261. doi:10.1016/0034-3331(72)90033-4.
  10. ^ a b c d e f g h Arcelus, Francisco (January 1984). "An extension of shift-share analysis". Growth and Change. 15 (1).

shift, share, analysis, shift, share, analysis, used, regional, science, political, economy, urban, studies, determines, what, portions, regional, economic, growth, decline, attributed, national, economic, industry, regional, factors, analysis, helps, identify. A shift share analysis used in regional science political economy and urban studies determines what portions of regional economic growth or decline can be attributed to national economic industry and regional factors The analysis helps identify industries where a regional economy has competitive advantages over the larger economy A shift share analysis takes the change over time of an economic variable such as employment within industries of a regional economy and divides that change into various components A traditional shift share analysis splits regional changes into just three components but other models have evolved that expand the decomposition into additional components Contents 1 Overview 2 Traditional model 2 1 Formula 2 2 Example 2 3 Names and regions 3 Dynamic model 3 1 Formula 4 Esteban Marquillas Model 4 1 Formula 5 Arcelus Model 5 1 Formula 6 ReferencesOverview editA shift share analysis attempts to identify the sources of regional economic changes The region can be a town city country statistical area state or any other region of the country The analysis examines changes in an economic variable such as migration a demographic statistic firm growth or firm formations although employment is most commonly used 1 2 The shift share analysis is performed on a set of economic industries like those defined by the North American Industry Classification System NAICS The analysis separates the regional economic changes within each industry into different categories Although there are different versions of a shift share analysis they all identify national industry and regional factors that influence the variable changes Traditional model editThe traditional form of the shift share analysis was developed by Daniel Creamer in the early 1940s and was later formalized by Edgar S Dunn in 1960 2 Also known as the comparative static model it examines changes in the economic variable between two years Changes are calculated for each industry in the analysis both regionally and nationally Each regional change is decomposed into three components 3 National growth effect is the portion of the change attributed to the total growth of the national economy It equals the theoretical change in the regional variable had it increased by the same percentage as the national economy Industry mix effect is the portion of the change attributed to the performance of the specific economic industry It equals the theoretical change in the regional variable had it increased by the same percentage as the industry nationwide minus the national growth effect Local share effect is the portion of the change attributed to regional influences and is the component of primary concern to regional analysts 3 It equals the actual change in the regional variable minus the previous two effects Formula edit The regional change in the variable e within industry i between the two years t and t n is defined as the sum of the three shift share effects national growth effect NSi industry mix effect IMi and local share effect RSi 4 e i t n e i t N S i I M i R S i displaystyle e i t n e i t NS i IM i RS i nbsp The beginning and ending values of the economic variable within a particular industry are eit and eit n respectively Each of the three effects is defined as a percentage of the beginning value of the economic variable 4 N S i e i t G displaystyle NS i e i t times G nbsp I M i e i t G i G displaystyle IM i e i t times G i G nbsp R S i e i t g i G i displaystyle RS i e i t times g i G i nbsp The total percent change in the economic variable nationwide for all industries combined is G while the national and regional industry specific percent changes are Gi and gi respectively These three equations substituted into the first equation yield the following expression from where the decomposition starts which simply says that the regional economic variable for industry i grows at the speed of the regional industry specific percent change Note that usually in case of slow growth 0 lt gi lt 1 and that gi refers to the whole period from t to t n e i t n e i t 1 g i displaystyle e i t n e i t times 1 g i nbsp Example edit As an example a shift share analysis might be utilized to examine changes in the construction industry of a state s economy over the past decade using employment as the economic variable studied Total national employment may have increased 5 over the decade while national construction employment increased 8 However state construction employment decreased 2 from 100 000 to 98 000 employees for a net loss of 2 000 employees The national growth effect is equal to the beginning 100 000 employees times the total national growth rate of 5 for an increase in 5 000 employees The shift share analysis implies that state construction would have increased by 5 000 employees had it followed the same trend as the overall national economy The industry mix effect is equal to the original 100 000 employees times the growth in the industry nationwide which was 8 minus the total national growth of 5 This results in an increase in 3 000 employees 100 000 employees times 3 which is the 8 industry growth minus the 5 total growth The analysis implies that the state construction would have increased by another 3 000 employees had it followed the industry trends because the construction industry nationwide performed better than the national economy overall The local share effect in this example is equal to the beginning 100 000 employees times the state construction employment growth rate of 2 it is negative because of the loss of employees minus the national construction growth rate of 8 This results in 100 000 employees times 10 for a loss of 10 000 employees However the actual employment loss was only 2 000 employees but that equals the sum of the three effects 5 000 gain 3 000 gain 10 000 loss The analysis implies that local factors lead to a decrease in 10 000 employees in the state construction industry because the growth in both the national economy and the construction industry should have increased state construction employment by 8 000 employees the 5 000 national share effect plus the 3 000 industry mix effect Names and regions edit Shift share analysts sometimes use different labels for the three effects although the calculations are the same National growth effect may be referred to as national share 4 5 Industry mix effect may be referred to as proportional shift 5 Local share effect may be referred to as differential shift 3 regional shift 4 or competitive share 6 In most shift share analyses the regional economy is compared to the national economy However the techniques may be used to compare any two regions e g comparing a county to its state 7 Dynamic model editIn 1988 Richard Barff and Prentice Knight III published the dynamic model shift share analysis 8 In contrast to the comparative static model which only considers two years in its analysis the beginning and ending years the dynamic model utilizes every year in the study period Although it requires much more data to perform the calculations the dynamic model takes into account continuous changes in the three shift share effects so the results are less affected by the choice of starting and ending years 8 The dynamic model is most useful when there are large differences between regional and national growth rates or large changes in the regional industrial mix 8 The dynamic model uses the same techniques as the comparative static model including the same three shift share effects However in the dynamic model a time series of traditional shift share calculations are performed comparing each year to the previous year The annual shift share effects are then totaled together for the entire study period resulting in the dynamic model s shift share effects 8 Formula edit The regional change in the variable e within industry i between the two years t and t n is defined as the sum of the three shift share effects national growth effect NSi industry mix effect IMi and local share effect RSi 8 e i t n e i t N S i I M i R S i displaystyle e i t n e i t NS i IM i RS i nbsp If the study period ranges from year t to year t n then traditional shift share effects are calculated for every year k where k spans from t 1 to t n 8 The dynamic model shift share effects are then calculated as the sum of the annual effects 8 N S i k t 1 t n e i k 1 G k displaystyle NS i sum k t 1 t n left e i k 1 left G k right right nbsp I M i k t 1 t n e i k 1 G i k G k displaystyle IM i sum k t 1 t n left e i k 1 left G i k G k right right nbsp R S i k t 1 t n e i k 1 g i k G i k displaystyle RS i sum k t 1 t n left e i k 1 left g i k G i k right right nbsp The growth rates used in the calculations are annual rates not growth from the beginning year in the study period so the percent change from year k 1 to k in the economic variable nationwide for all industries combined is Gk while the national and regional industry specific percent changes are Gik and gik respectively 8 Esteban Marquillas Model editIn 1972 J M Esteban Marquillas extended the traditional model to address criticism that the regional share effect is correlated to the regional industrial mix 9 In the Esteban Marquillas model the regional share effect itself is decomposed into two components isolating a regional shift component that is not correlated to the industrial mix 9 The model introduced a then new concept to shift share analyses a homothetic level of the economic variable within an industry This is the theoretical value of the variable within an industry assuming the region has the same industrial mix as the nation 9 In the Esteban Marquillas model the calculations of the national share and industrial mix effects are unchanged However the regional share effect in the traditional model is separated into two effects a new regional share effect that is not dependent on the industrial mix and an allocation effect that is The allocation effect indicates the extent to which the region is specialized in those industries where it enjoys a competitive advantage 9 Formula edit The regional change in the variable e within industry i between the two years t and t n is defined as the sum of the four shift share effects national growth effect NSi industry mix effect IMi regional share effect RSi and allocation effect ALi e i t n e i t N S i I M i R S i A L i displaystyle e i t n e i t NS i IM i RS i AL i nbsp The beginning and ending values of the economic variable within a particular industry are eit and eit n respectively The beginning value of the regional homothetic variable within a particular industry is hit 9 It is based on the regional and national values of the economic variable across all industries et and Et respectively and the industry specific national value Eit h i t e t E i t E t displaystyle h i t e t times E i t over E t nbsp Each of the four shift share effects is defined as a percentage of either the beginning value of the economic variable the homothetic variable or the difference of the two 9 N S i e i t G displaystyle NS i e i t left G right nbsp I M i e i t G i G displaystyle IM i e i t left G i G right nbsp R S i h i t g i G i displaystyle RS i h i t left g i G i right nbsp A L i e i t h i t g i G i displaystyle AL i left e i t h i t right left g i G i right nbsp The total percent change in the economic variable nationwide for all industries combined is G while the national and regional industry specific percent changes are Gi and gi respectively Arcelus Model editIn 1984 Francisco Arcelus built upon Esteban Marquillas use of the homothetic variables and extended the traditional model even further 10 He used this method to decompose the national share and industrial mix effects into expected and differential components The expected component is based on the homothetic level of the variable and is the effect not attributed to the regional specializations The differential component is the remaining effect which is attributable to the regional industrial mix 10 Arcelus claimed that even with the Esteban Marquillas extension the regional share effect is still related to the regional industry mix and that the static model assumes all regional industries operate on a national market basis focusing too heavily on the export markets and ignoring the local markets 10 In order to address these issues Arcelus used a different method for separating the regional share effect resulting in a regional growth effect and a regional industry mix effect Both of these are decomposed into expected and differential components using the homothetic variable 10 Formula edit The regional change in the variable e within industry i between the two years t and t n is defined as the sum of the eight shift share effects expected national growth effect NSEi differential national growth effect NSDi expected industry mix effect IMEi differential industry mix effect IMDi expected regional growth effect RGEi differential regional growth effect RGDi expected regional industry mix effect RIEi and differential regional industry mix effect RIDi 10 e i t n e i t N S E i N S D i I M E i I M D i R G E i R G D i R I E i R I D i displaystyle e i t n e i t NSE i NSD i IME i IMD i RGE i RGD i RIE i RID i nbsp The eight effects are related to the three traditional shift share effects from the comparative static model 10 N S i N S E i N S D i displaystyle NS i NSE i NSD i nbsp I M i I M E i I M D i displaystyle IM i IME i IMD i nbsp R S i R G E i R G D i R I E i R I D i displaystyle RS i RGE i RGD i RIE i RID i nbsp The homothetic variable is calculated the same as in the Esteban Marquillas model The beginning value of the regional homothetic variable within a particular industry is hit It is based on the regional and national values of the economic variable across all industries et and Et respectively and the industry specific national value Eit 10 h i t e t E i t E t displaystyle h i t e t times E i t over E t nbsp Each of the eight shift share effects is defined as a percentage of either the beginning value of the economic variable the homothetic variable or the difference of the two 10 N S E i h i t G displaystyle NSE i h i t times G nbsp N S D i e i t h i t G displaystyle NSD i left e i t h i t right times G nbsp I M E i h i t G i G displaystyle IME i h i t times left G i G right nbsp I M D i e i t h i t G i G displaystyle IMD i left e i t h i t right times left G i G right nbsp R G E i h i t g G displaystyle RGE i h i t times left g G right nbsp R G D i e i t h i t g G displaystyle RGD i left e i t h i t right times left g G right nbsp R I E i h i t g i g G i G displaystyle RIE i h i t times left g i g G i G right nbsp R I D i e i t h i t g i g G i G displaystyle RID i left e i t h i t right times left g i g G i G right nbsp The total percent changes in the economic variable nationally and regionally for all industries combined are G and g respectively while the national and regional industry specific percent changes are Gi and gi respectively References edit Cheng Shaoming 2 February 2010 Business cycle industrial composition or regional advantage A decomposition analysis of new firm formation in the United States The Annals of Regional Science 47 1 147 167 doi 10 1007 s00168 009 0361 0 a b Shi Chun Yun Yang Yang 2008 A Review of Shift Share Analysis and its Application in Tourism International Journal of Management Perspectives 1 1 21 30 a b c Leigh Nancey Green 2013 Planning Local Economic Development Sage Publications pp 174 175 ISBN 9781452242590 a b c d Stevens Benjamin Craig Moore 1980 A critical review of the literature on shift share as a forecasting technique Journal of Regional Science 20 4 419 doi 10 1111 j 1467 9787 1980 tb00660 x a b Knudesn Daniel C 2000 Shift share analysis further examination of models for the description of economic change Socio Economic Planning Sciences 34 Georgia Statistics System University of Georgia Retrieved 24 October 2013 Michael LaFaive James M Hohman 31 August 2009 The Michigan Economic Development Corporation A Review and Analysis Mackinac Center Retrieved 5 December 2013 a b c d e f g h Barff Richard Prentice L Knight III April 1988 Dynamic Shift Share Analysis Growth and Change 19 2 1 10 doi 10 1111 j 1468 2257 1988 tb00465 x a b c d e f Esteban Marquillas J M 1972 A reinterpretation of shift share analysis Regional and Urban Economics 2 3 249 261 doi 10 1016 0034 3331 72 90033 4 a b c d e f g h Arcelus Francisco January 1984 An extension of shift share analysis Growth and Change 15 1 Retrieved from https en wikipedia org w index php title Shift share analysis amp oldid 980705822, wikipedia, wiki, book, books, library,

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