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Myanmar Enterprise Monitoring System
(MEMS) Implementation Update
2nd Steering Committee Meeting
Nay Pyi Taw, 28 September 2017
I. Outline
Outline
• Background, context and survey questionnaire
• Sampling and survey locations
• 2017 survey planning and implementation
• Preliminary findings
• Next steps
• Topics for in-depth studies
II. Background, context and survey
questionnaire
Background and context
• The Myanmar Enterprise Monitoring System (MEMS) is a CSO (MoPF) project, supported
by Denmark under the Inclusive and Sustainable Growth Programme (2016-2020), with
technical assistance from UNU-WIDER and the University of Copenhagen
• Overall aims of MEMS
– Develop a nationally representative enterprise monitoring system
– Strengthen evidence based policy, supporting GoM in its efforts to develop and implement effective
development policies
• Four pillars
– Quantitative and qualitative survey based data generation
– Training and capacity building of CSO staff
– Collaborative research, involving both national and international researchers, producing descriptive
data reports and in-depth research studies
– Production and dissemination of policy briefs
Survey structure
Section Description Notes
Main
questionnaire
Business information, supplier and buyer relations, production
characteristics, technology, costs, investment, finances, credit,
employment, management practices, networks, economic constraints
and potentials
Sample
2,496
firms
Economic
Accounts
Financial information
Not
ready
Employee
questionnaire
Workforce characteristics, education, tenure, occupation, wage
Not
ready
III. Sampling and survey locations
Sampling
• Data frame: Municipal lists of 71,226 manufacturing enterprises
• 28% of registered firms are listed as “rice mills” (MSIC sector 1063)
• Stratified the population of firms into (i) rice mills and (ii) other
manufacturing
• Frame of 51,443 other manufacturing firms and 19,783 rice mills
• Sample size determined based on the state with the lowest number of firms
• Random township selection
• Random enterprise within township selection
List of townships (and firms to be interviewed within 35
townships)
State Township Township Township Township Township
1 Kachin 10201 (31) 10404 (63)
2 Kayah 20204 (69)
3 Kayin 30301 (39) 30302 (22)
4 Chin 40102 (6)
5 Sagaing 50202 (39) 50501 (57) 50803 (96)
6 Tanintharyi 60201 (97)
7 Bago 70102 (43) 70205 (81) 70306 (39)
8 Magway 80202 (89) 80301 (17) 80306 (35)
9 Mandalay 90302 (49) 90503 (146) 90604 (72)
10 Mon 100102 (130)
11 Rakhine 110402 (29) 110502 (50)
12 Yangon 120105 (72) 120106 (116) 120204 (88) 120214 (22)
13 Shan 130104 (14) 130404 (73) 130409 (22) 130904 (36) 131001 (10)
14 Ayeyarwady 140105 (81) 140401 (45) 140603 (33)
15 Nay Pyi Taw 150202 (85)
Sample overview
State SAMPLE Rice Mills Informal Total
Kachin 94 10 26 130
Kayah 69 4 18 91
Kayin 61 4 16 81
Chin 6 7 3 16
Sagaing 192 15 51 258
Tanintharyi 97 9 26 132
Bago 163 18 45 226
Magway 141 9 37 187
Mandalay 267 9 69 345
Mon 130 9 34 173
Rakhine 79 14 23 116
Yangon 298 11 77 386
Shan 155 12 41 208
Ayeyarwady 159 22 45 226
Nay Pyi Taw 85 6 22 113
Total 1996 159 533 2688
Actually surveyed
State Planned Surveyed
Percent
surveyed
Difference
Surveyed-
Planned (%)
Kachin 130 122 4.9 -4.2
Kayah 91 75 3.0 -8.3
Kayin 81 77 3.1 -2.1
Chin 16 13 0.5 -1.6
Sagaing 258 252 10.1 -3.1
Tanintharyi 132 118 4.7 -7.3
Bago 226 192 7.7 -17.7
Magway 187 174 7.0 -6.8
Mandalay 345 339 13.6 -3.1
Mon 173 164 6.6 -4.7
Rakhine 116 116 4.6 0.0
Yangon 386 358 14.3 -14.6
Shan 208 181 7.3 -14.1
Ayeyarwady 226 226 9.0 0.0
Nay Pyi Taw 113 89 3.6 -12.5
Total (%) 100 100
Total (observations) 2,688 2,496 192
IV. 2017 survey planning and
implementation activities
Main activities carried out
• 28 December 2016: Tender documents submitted
• 24 February 2017: Contract awarded and survey design initiated
• 14-15 March: Sampling course training (Nay Pyi Taw, 2 UNU-WIDER, 15 CSO)
• 17 March: Official launch at CSO
• 27-28 April: Training of trainers (Nay Pyi Taw, 2 UNU-WIDER, 14 CSO: supervisors
from state and region offices)
• Enumerator training
– 15-16 May and 29-30 May: Nay Pyi Taw, 90 CSO staff, including supervisors and enumerators
from head office, states and regions
Main activities carried out
• Pilot-testing of the questionnaire
1. 25 and 26 April
• Yangon and Mandalay, 3 UNU-WIDER, 5 CSO
2. 9 May
• Nay Pyi Taw, 2 UNU-WIDER, 7 CSO
3. 1 June
• Pyay, 90 CSO supervisors and enumerators
• Early June: Questionnaire agreed
Main activities carried out (continued)
• Sampling based on continuously updated municipal lists of
enterprises
– Mid-May: Final sampling
• Survey implementation (76 enumerators from CSO)
– 12 June: Survey start
– 19-23 June: Spot checks (Mandalay and Yangon, 1 UNU-WIDER, 8 CSO)
• To monitor and assess survey implementation (joint)
– 9 July: Survey completed
Main activities carried out (continued)
• Data entry training
– 17-18 July: Nay Pyi Taw, 76 enumerators from CSO
• Data entry/preliminary cleaning
– 24 July – 2 September: Nay Pyi Taw, 76 enumerators from CSO
• Detailed data verification
– To assess compliance and data accuracy
– 28 August – 14 September: 6 regions, 7 townships, 2 UNU-WIDER, 3 CSO
• Preparing for the Steering Committee meeting on 28 September 2017
Follow-up in process
• Resolve ambiguities
• Discuss how some questions were interpreted
– E.g. registered (formal) firm definition; temporary and family labour; license
fees counted as taxes
• Compare paper and electronic version
• Contact respondents
• Missing information
• Perhaps not entered
• Assess if possible to fill-in by additional visits or phone calls
V. Preliminary findings
Topics
• Sample structure
– industry, size, legal ownership
• Productivity
• Sales
• Competition
• Constraints
• Credit
Industries
0
5
10
15
20
25
30
35
40
45
50
Types of firms
0
10
20
30
40
50
60
70
80
Family
business
Private firm Partnership Limited
company
Percent
Size of firms (World Bank definition)
0
200
400
600
800
1,000
1,200
1,400
1,600
1,800
2,000
Micro (<10) Small (11-50) Medium (51-
300)
Large (>300)
Numberoffirms
Total
0
50
100
150
200
250
300
350
400
Micro (<10) Small (11-50) Medium (51-300)
Informal
Productivity and wages
0
102030
Labourproductivity(ln)
0 200000 400000 600000 800000
Monthly wage
Micro Small
Medium Large
0
102030
50000 100000 150000 200000 250000 300000
Monthly wage
Micro Small
Medium Large
Customers
0
10
20
30
40
50
60
70
80
Micro Small Medium Food Textiles Wood Informal Total
Same township Other township Other region Export
Competition
0
1
2
3
4
5
6
7
8
0
5
10
15
20
25
30
Micro Small Medium Food Textiles Wood
Severe Moderate Insignificant No competition Number
Starting up new projects
0 0.1 0.2 0.3 0.4 0.5
Negative attitude of local…
Complicated regulations
Lack of suitable machinery
Difficulty in finding land
Lack of skilled labor
Lack of technical know-how
Lack of raw material
Lack of market outlet
Lack of capital
Firm size and formality
Total Informal Medium Small Micro
0 0.1 0.2 0.3 0.4 0.5
Negative attitude of local…
Complicated regulations
Lack of suitable machinery
Difficulty in finding land
Lack of skilled labor
Lack of technical know-how
Lack of raw material
Lack of market outlet
Lack of capital
Selected sectors
Wood Textiles Food
Perceived constraints; Selected sectors
0% 20% 40% 60% 80% 100%
Shortage of capital
Cannot afford skilled labor
Lack of technical know-how
Limited/reduced demand
Too much competition
Lack of marketing or transport
Lack of modern machinery
Lack of raw material
Lack of energy
Inadequate premises/land
Interference by government
Food Textiles Wood
Number of formal loan applicants
Yes No
Applied for a loan 194 2,223
(8) (92)
Yes No
Problems getting the loan 75 119
(39) (61)
Problem, why? Did not apply, why?
Collateral/Cosigners unacceptable 13 (18) No need for a loan 449 (21)
Insufficient profitability 10 (14) Do not want debt 738 (35)
Complicated regulations 30 (41) Application procedures to complex 425 (20)
Incomplete loan application 12 (16) Interest rates too high 64 (3)
Other 9 (12) Collateral requirements unattainable 201 (9)
Already have too much debt 46 (2)
Other 196 (9)
Note: Percentages in parentheses
Credit constrained
Investing firms
Non-investors
.45
.5
.55
.6
.65
1 2 3 4
Size (log)
• 47% labelled as credit
constrained
• Investing firms often
more financially
constrained or rationed
Credit, formality and tax payers
Formal
Informal
.48
.5
.52
.54
1 2 3 4
Size (log)
Tax payers
Tax evaders
.46
.48
.5
.52
.54
.56
Shareoffirmsconstrained
1 2 3 4
Size (log)
Credit and gender
Male firms
Female firms
.42
.44
.46
.48
.5
.52
1 2 3 4
Size (log)
• Male owned enterprises
more constrained in
credit markets !!!
• Also conditional on
other attributes? Yes.
VI. Next steps
• CSO to follow-up on data
– In particular to compare paper and electronic versions and resolve ambiguities
– Estimated time to do this is six weeks. Clean data expected mid-November.
• When data ready, proceed to prepare descriptive report
• Conference/launch in 2018: decide on timing
• 2018 activities:
– Spring: Design of qualitative studies, randomized intervention and experiment in the field
– Spring: Training and implementation
– Fall: Survey design for the survey of the same enterprises in 2019 as in 2017
– Fall: Training, testing for 2019 survey
2017-2018 activities
VII. Topics for in-depth studies
Proposals
1. Credit
– Understanding who is credit constrained
– Estimating credit gap
2. Industrial zones
– Performance of firms in and outside industrial zones
3. Unions
– The role of unions and income distribution
www.wider.unu.edu
Helsinki, Finland

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2nd steering group on UNU-WIDER Myanmar project

  • 1. Myanmar Enterprise Monitoring System (MEMS) Implementation Update 2nd Steering Committee Meeting Nay Pyi Taw, 28 September 2017
  • 3. Outline • Background, context and survey questionnaire • Sampling and survey locations • 2017 survey planning and implementation • Preliminary findings • Next steps • Topics for in-depth studies
  • 4. II. Background, context and survey questionnaire
  • 5. Background and context • The Myanmar Enterprise Monitoring System (MEMS) is a CSO (MoPF) project, supported by Denmark under the Inclusive and Sustainable Growth Programme (2016-2020), with technical assistance from UNU-WIDER and the University of Copenhagen • Overall aims of MEMS – Develop a nationally representative enterprise monitoring system – Strengthen evidence based policy, supporting GoM in its efforts to develop and implement effective development policies • Four pillars – Quantitative and qualitative survey based data generation – Training and capacity building of CSO staff – Collaborative research, involving both national and international researchers, producing descriptive data reports and in-depth research studies – Production and dissemination of policy briefs
  • 6. Survey structure Section Description Notes Main questionnaire Business information, supplier and buyer relations, production characteristics, technology, costs, investment, finances, credit, employment, management practices, networks, economic constraints and potentials Sample 2,496 firms Economic Accounts Financial information Not ready Employee questionnaire Workforce characteristics, education, tenure, occupation, wage Not ready
  • 7. III. Sampling and survey locations
  • 8. Sampling • Data frame: Municipal lists of 71,226 manufacturing enterprises • 28% of registered firms are listed as “rice mills” (MSIC sector 1063) • Stratified the population of firms into (i) rice mills and (ii) other manufacturing • Frame of 51,443 other manufacturing firms and 19,783 rice mills • Sample size determined based on the state with the lowest number of firms • Random township selection • Random enterprise within township selection
  • 9. List of townships (and firms to be interviewed within 35 townships) State Township Township Township Township Township 1 Kachin 10201 (31) 10404 (63) 2 Kayah 20204 (69) 3 Kayin 30301 (39) 30302 (22) 4 Chin 40102 (6) 5 Sagaing 50202 (39) 50501 (57) 50803 (96) 6 Tanintharyi 60201 (97) 7 Bago 70102 (43) 70205 (81) 70306 (39) 8 Magway 80202 (89) 80301 (17) 80306 (35) 9 Mandalay 90302 (49) 90503 (146) 90604 (72) 10 Mon 100102 (130) 11 Rakhine 110402 (29) 110502 (50) 12 Yangon 120105 (72) 120106 (116) 120204 (88) 120214 (22) 13 Shan 130104 (14) 130404 (73) 130409 (22) 130904 (36) 131001 (10) 14 Ayeyarwady 140105 (81) 140401 (45) 140603 (33) 15 Nay Pyi Taw 150202 (85)
  • 10. Sample overview State SAMPLE Rice Mills Informal Total Kachin 94 10 26 130 Kayah 69 4 18 91 Kayin 61 4 16 81 Chin 6 7 3 16 Sagaing 192 15 51 258 Tanintharyi 97 9 26 132 Bago 163 18 45 226 Magway 141 9 37 187 Mandalay 267 9 69 345 Mon 130 9 34 173 Rakhine 79 14 23 116 Yangon 298 11 77 386 Shan 155 12 41 208 Ayeyarwady 159 22 45 226 Nay Pyi Taw 85 6 22 113 Total 1996 159 533 2688
  • 11. Actually surveyed State Planned Surveyed Percent surveyed Difference Surveyed- Planned (%) Kachin 130 122 4.9 -4.2 Kayah 91 75 3.0 -8.3 Kayin 81 77 3.1 -2.1 Chin 16 13 0.5 -1.6 Sagaing 258 252 10.1 -3.1 Tanintharyi 132 118 4.7 -7.3 Bago 226 192 7.7 -17.7 Magway 187 174 7.0 -6.8 Mandalay 345 339 13.6 -3.1 Mon 173 164 6.6 -4.7 Rakhine 116 116 4.6 0.0 Yangon 386 358 14.3 -14.6 Shan 208 181 7.3 -14.1 Ayeyarwady 226 226 9.0 0.0 Nay Pyi Taw 113 89 3.6 -12.5 Total (%) 100 100 Total (observations) 2,688 2,496 192
  • 12. IV. 2017 survey planning and implementation activities
  • 13. Main activities carried out • 28 December 2016: Tender documents submitted • 24 February 2017: Contract awarded and survey design initiated • 14-15 March: Sampling course training (Nay Pyi Taw, 2 UNU-WIDER, 15 CSO) • 17 March: Official launch at CSO • 27-28 April: Training of trainers (Nay Pyi Taw, 2 UNU-WIDER, 14 CSO: supervisors from state and region offices) • Enumerator training – 15-16 May and 29-30 May: Nay Pyi Taw, 90 CSO staff, including supervisors and enumerators from head office, states and regions
  • 14. Main activities carried out • Pilot-testing of the questionnaire 1. 25 and 26 April • Yangon and Mandalay, 3 UNU-WIDER, 5 CSO 2. 9 May • Nay Pyi Taw, 2 UNU-WIDER, 7 CSO 3. 1 June • Pyay, 90 CSO supervisors and enumerators • Early June: Questionnaire agreed
  • 15. Main activities carried out (continued) • Sampling based on continuously updated municipal lists of enterprises – Mid-May: Final sampling • Survey implementation (76 enumerators from CSO) – 12 June: Survey start – 19-23 June: Spot checks (Mandalay and Yangon, 1 UNU-WIDER, 8 CSO) • To monitor and assess survey implementation (joint) – 9 July: Survey completed
  • 16. Main activities carried out (continued) • Data entry training – 17-18 July: Nay Pyi Taw, 76 enumerators from CSO • Data entry/preliminary cleaning – 24 July – 2 September: Nay Pyi Taw, 76 enumerators from CSO • Detailed data verification – To assess compliance and data accuracy – 28 August – 14 September: 6 regions, 7 townships, 2 UNU-WIDER, 3 CSO • Preparing for the Steering Committee meeting on 28 September 2017
  • 17. Follow-up in process • Resolve ambiguities • Discuss how some questions were interpreted – E.g. registered (formal) firm definition; temporary and family labour; license fees counted as taxes • Compare paper and electronic version • Contact respondents • Missing information • Perhaps not entered • Assess if possible to fill-in by additional visits or phone calls
  • 19. Topics • Sample structure – industry, size, legal ownership • Productivity • Sales • Competition • Constraints • Credit
  • 21. Types of firms 0 10 20 30 40 50 60 70 80 Family business Private firm Partnership Limited company Percent
  • 22. Size of firms (World Bank definition) 0 200 400 600 800 1,000 1,200 1,400 1,600 1,800 2,000 Micro (<10) Small (11-50) Medium (51- 300) Large (>300) Numberoffirms Total 0 50 100 150 200 250 300 350 400 Micro (<10) Small (11-50) Medium (51-300) Informal
  • 23. Productivity and wages 0 102030 Labourproductivity(ln) 0 200000 400000 600000 800000 Monthly wage Micro Small Medium Large 0 102030 50000 100000 150000 200000 250000 300000 Monthly wage Micro Small Medium Large
  • 24. Customers 0 10 20 30 40 50 60 70 80 Micro Small Medium Food Textiles Wood Informal Total Same township Other township Other region Export
  • 25. Competition 0 1 2 3 4 5 6 7 8 0 5 10 15 20 25 30 Micro Small Medium Food Textiles Wood Severe Moderate Insignificant No competition Number
  • 26. Starting up new projects 0 0.1 0.2 0.3 0.4 0.5 Negative attitude of local… Complicated regulations Lack of suitable machinery Difficulty in finding land Lack of skilled labor Lack of technical know-how Lack of raw material Lack of market outlet Lack of capital Firm size and formality Total Informal Medium Small Micro 0 0.1 0.2 0.3 0.4 0.5 Negative attitude of local… Complicated regulations Lack of suitable machinery Difficulty in finding land Lack of skilled labor Lack of technical know-how Lack of raw material Lack of market outlet Lack of capital Selected sectors Wood Textiles Food
  • 27. Perceived constraints; Selected sectors 0% 20% 40% 60% 80% 100% Shortage of capital Cannot afford skilled labor Lack of technical know-how Limited/reduced demand Too much competition Lack of marketing or transport Lack of modern machinery Lack of raw material Lack of energy Inadequate premises/land Interference by government Food Textiles Wood
  • 28. Number of formal loan applicants Yes No Applied for a loan 194 2,223 (8) (92) Yes No Problems getting the loan 75 119 (39) (61) Problem, why? Did not apply, why? Collateral/Cosigners unacceptable 13 (18) No need for a loan 449 (21) Insufficient profitability 10 (14) Do not want debt 738 (35) Complicated regulations 30 (41) Application procedures to complex 425 (20) Incomplete loan application 12 (16) Interest rates too high 64 (3) Other 9 (12) Collateral requirements unattainable 201 (9) Already have too much debt 46 (2) Other 196 (9) Note: Percentages in parentheses
  • 29. Credit constrained Investing firms Non-investors .45 .5 .55 .6 .65 1 2 3 4 Size (log) • 47% labelled as credit constrained • Investing firms often more financially constrained or rationed
  • 30. Credit, formality and tax payers Formal Informal .48 .5 .52 .54 1 2 3 4 Size (log) Tax payers Tax evaders .46 .48 .5 .52 .54 .56 Shareoffirmsconstrained 1 2 3 4 Size (log)
  • 31. Credit and gender Male firms Female firms .42 .44 .46 .48 .5 .52 1 2 3 4 Size (log) • Male owned enterprises more constrained in credit markets !!! • Also conditional on other attributes? Yes.
  • 33. • CSO to follow-up on data – In particular to compare paper and electronic versions and resolve ambiguities – Estimated time to do this is six weeks. Clean data expected mid-November. • When data ready, proceed to prepare descriptive report • Conference/launch in 2018: decide on timing • 2018 activities: – Spring: Design of qualitative studies, randomized intervention and experiment in the field – Spring: Training and implementation – Fall: Survey design for the survey of the same enterprises in 2019 as in 2017 – Fall: Training, testing for 2019 survey 2017-2018 activities
  • 34. VII. Topics for in-depth studies
  • 35. Proposals 1. Credit – Understanding who is credit constrained – Estimating credit gap 2. Industrial zones – Performance of firms in and outside industrial zones 3. Unions – The role of unions and income distribution