Research Article | | Peer-Reviewed

The Quest for Participating to Global Value Chain in Sub-Sahara Africa: An Analysis of Determining Factors Using a Spatial Panel Model

Received: 13 May 2024     Accepted: 21 June 2024     Published: 23 July 2024
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Abstract

This paper aims to determine the factors that influence the participation of the Sub-Saharan Africa countries in the global value chain (GVC). The paper use of a spatial panel Model to show that the variability of participation in the global value chain is explained by the total factor productivity, the dollar rate, the terms of trade, the type of economic zone and the degree of integration of countries into the Global Economy (Globalization). Empirical evidence displays a positive link between the total factor productivity growth and the participation in the global value chain. The rise of the Dollar against the Euro strengthens the participation in the global value chain. The deterioration of the terms of trade decreases participation in the global value chain. Special Economic Zones have a positive effect on the global value chain. On the other hand, a significant negative relationship between the free trade zones and participation in the GVC is observed. Finally, with the exception of the Economic Globalization Index and Political Index, all the other indexes have a positive and significant impact on participation in the GVC. The Sub-Saharan African countries have an interest in becoming more integrated into the globalization of trade, information technology and finance. They must also promote economic and political integration.

Published in Journal of Finance and Accounting (Volume 12, Issue 3)
DOI 10.11648/j.jfa.20241203.11
Page(s) 58-66
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.

Copyright

Copyright © The Author(s), 2024. Published by Science Publishing Group

Keywords

Global Value Chain, Spatial Panel, Special Economic Zone, Globalization

1. Introduction
The rapid growth of international trade and the deepening of vertical specialization have pushed the global economy and Sub-Saharan Africa's economy in particular into the era of global value chains (GVCs). These are characterized by the international fragmentation of production and trade in intermediate inputs. The development of GVCs provides an opportunity for African countries to integrate into global supply, production and distribution networks. The concept of GVCs dates back to the late 1970s with the work on the 'Production Chain' by Bair . The basic idea was to trace all the inputs and transformations that lead to a final good by describing all the processes . The GVC participation measure reflects the share of a country's exports that crosses at least two borders. This participation is calculated as the share of GVC exports in total international exports. The GVC of exports includes transactions in which a country's exports contain value added that it has previously imported from abroad (upstream participation in GVCs), as well as transactions in which a country's exports are not fully absorbed by the importing country and are exported to third countries (downstream participation in GVCs) . Developing countries, and in particular those in Sub-Saharan Africa, are increasingly facing competition and barriers to international trade, as well as pressures to introduce new technologies into production systems. Similarly, most Sub-Saharan African countries are ill- prepared to compete in national and regional markets . Sub-Saharan African countries mainly export commodities with little or no processing and which contribute to the production of more sophisticated goods. This was supposed to facilitate their participation in global value chains. However, African products face strong competition in the international market. At the same time, with the advent of EPAs (Economic Partnership Agreements), African national and regional markets are increasingly open to foreign competition. This strong competition, relative to these goods, is thus at the origin of the weak control of prices by Sub-Saharan African countries, making these countries 'price takers'. In addition, there is a lack of advanced technology to improve productivity in order to achieve economies of scale in Sub-Saharan African countries, but also to improve the quality of exported products. Together with a strong currency and high factor prices, these factors skew the participation of Sub-Saharan African countries in global value chains. Faced with this problem, the question arises: what are the levers that will enable the countries of sub-Saharan Africa to actively participate in this new trade organization, the global value chain? To identify the different the levers that can facilitate the participation of Sub-Saharan African countries in global value chains, a spatial panel model will be used.
2. Theorical Framework and Choice of Model
Using the approach of Elhorst , four competing models will be estimated (i) spatial autoregressive (SAR) model containing the endogenous interaction effect 𝑊𝑌𝑡(ii) the Spatial Error Model (SEM) containing the interaction effect (correlated effect) among the error terms 𝑊𝑢𝑡(iii) the combined spatial autoregressive model (SAC) containing both 𝑊𝑌𝑡 and 𝑊𝑢𝑡(iv) the Spatial Durbin model (SDM) containing both 𝑊𝑌𝑡 and 𝑊𝑋𝑡The parameters of these models were all shown to be identified and free of overfitting. From the residuals of the OLS model, the Lagrange multiplier tests show the presence of endogenous autocorrelation, i.e. ρ ≠ 0 and λ = 0 (left-hand side of figure 1, Appendix II). We then estimate the SDM model. With a likelihood ratio test (θ = 0), we can choose between the SAR model and the SDM model. A likelihood ratio test allows us to choose the SDM model. The latter has a higher explanatory power than the SAR model (lower AIC). For reasons of parsimony, the choice of a SAC model could be considered. Its explanatory power (AIC and BIC close to the SDM model). The interpretation of these models is easier but is limited to direct effects. The SAC model (endogenous and residual autocorrelation) estimates a weak and non-indicative endogenous autocorrelation compared to the residual autocorrelation. This result is not easy to interpret because of the bias related to the non- inclusion of exogenous interactions. The results of the SDM and SEM models converge. Indeed, the signs of the coefficients of the variables of both models are the same. The SEM model can be interpreted as the OLS model.
3. Methodological Framework
The paper adopts the Spatial panel data analysis. This is an area of econometrics that is experiencing increasing methodological progress. Recent contributions include, among others . In this paper, we focus only on a balanced panel. In a spatial panel framework, observations are associated with a particular position in space. The data are observed by country.
Spatial Panel Data Models
Spatial panel data models capture spatial interactions in space and time. Spatial autocorrelation is taken into account in several ways: by lagged spatial variables, endogenous or exogenous, or by spatial autocorrelation of errors. The following model incorporates three potential spatial terms:
𝑦𝑖𝑡=𝜌∑𝑖≠𝑗𝑤𝑖𝑗𝑦𝑗𝑡+𝛽𝑥𝑖𝑡+ ∑𝑖≠𝑗𝑤𝑖𝑗𝑥𝑗𝑡𝜃+𝛼+𝑢𝑖𝑡(1)
𝑢𝑖𝑡=𝛾∑𝑖≠𝑗𝑤𝑖𝑗𝑢𝑗𝑡+𝜀𝑖𝑡(2)
𝑤𝑖𝑗 is an element of a spatial weighting matrix WN of dimension (N, N) in which the neighbourhood relations between the individuals in the sample are defined. The diagonal elements 𝑤𝑖𝑗 elements are all set to zero to avoid self-dependence. The weight matrix is normalized in line. We thus consider a time-fixed spatial weighting matrix.
∑𝑖≠𝑗 𝑖𝑗𝑦𝑗𝑡 denotes the spatially lagged endogenous variable and is equal to the average value of the dependent variable taken by the neighbours (in the sense of the weight matrix) of observation i. The ρ parameter captures the endogenous interaction effect. The spatial interaction is also taken into account by specifying a spatial autoregressive process in the errors.
𝑖≠𝑗 𝑤𝑖𝑗𝑢𝑗𝑡 according to which unobservable shocks affecting individual i interact with shocks affecting its neighbourhood. The 𝛾 parameter captures a correlated effect of the unobservable shocks. Finally, a contextual (or exogenous interaction) effect is captured by the vector θ of dimension (k, 1). As before, it is assumed that 𝜀𝑖𝑡 i.i.d. ∼ N (0,σ2 ). With the data stacked for each period t, the model can be written in the following form:
𝑦𝑖𝑡=𝜌𝑊𝑁𝑦𝑡+𝛽𝑥𝑡+𝑊𝑁𝑥𝑡𝜃+𝛼+𝑢𝑡(3)
𝑢𝑡=𝛾𝑊𝑁𝑢𝑡+𝜀𝑡(4)
where 𝑦𝑡 is the (N, 1)-dimensional vector of observations of the explained variable for period t, 𝑥𝑡 is the matrix (N, k) of observations on the explanatory variables for period t. With the data stacked for all individuals, the model is written in matrix form as follows:
𝑦= (𝐼𝑇⊗𝑊𝑁) +𝑥𝛽+ (𝐼𝑇⊗𝑊𝑁) +𝛼(5)
𝑢= (𝐼𝑇⊗𝑊𝑁) +𝜀(6)
where ⊗ denotes the Kronecker product and (IT ⊗WN) is a matrix of dimension (NT, NT).
4. Material and Method
The model we present links the global value chain, productivity, trade, financial, political globalization etc., the presence of Special Economic Zones and other control variables. The basic specification is given by:
𝐶𝑉𝑀𝑖𝑡=𝛼0+𝛼1𝑃𝑇𝐹𝑖𝑡+𝛼2𝐼𝑀𝐶𝑖𝑡+𝛼3𝐼𝑀𝐹𝑖𝑡+𝛼4𝐼𝑀𝑃𝑖𝑡+𝛼5𝐼𝑀𝐸𝐶𝑖𝑡+𝛼6𝐼𝑀𝐼𝑁𝐹𝑂𝑅𝑖𝑡+𝛼7𝑍𝐸𝑆𝑖𝑡+𝛼8𝑇𝐸𝑖𝑡+𝛼10𝑇𝐶𝐸𝐹𝑖𝑡+𝜀𝑖𝑡(7)
where the 𝛼𝑖 are the unknown parameters to be estimated and 𝜀𝑖𝑡 is an error term for which we first assume that 𝜀𝑖𝑡 i.i.d. ∼ N (0, 𝜎2). Taking into account spatial spillover effects requires estimating the specification augmented with a spatial autoregressive term:
𝐶𝑉𝑀𝑖𝑡=𝛼0+𝜌∑𝑖≠𝑗𝑤𝑖𝑗𝐶𝑉𝑀𝑗𝑡+𝛼0+𝛼1𝑃𝑇𝐹𝑖𝑡+𝛼2𝐼𝑀𝐶𝑖𝑡+𝛼3𝐼𝑀𝐹𝑖𝑡+𝛼4𝐼𝑀𝑃𝑖𝑡+𝛼5𝐼𝑀𝐸𝐶𝑖𝑡+𝛼6𝐼𝑀𝐼𝑁𝐹𝑂𝑅𝑖𝑡+𝛼7𝑍𝐸𝑆𝑖𝑡+𝛼8𝑇𝐸𝑖𝑡+𝛼9𝑇𝐶𝐸𝐹𝑖𝑡+𝛼10𝑢𝑖𝑡+𝛼11𝑑𝑖𝑡+𝜀𝑖𝑡(8)
We consider an alternative specification corresponding to a spatial autoregressive model in the errors:
𝐶𝑉𝑀𝑖𝑡=𝛼0+𝛼1𝑃𝑇𝐹𝑖𝑡+𝛼2𝐼𝑀𝐶𝑖𝑡+𝛼3𝐼𝑀𝐹𝑖𝑡+𝛼4𝐼𝑀𝑃𝑖𝑡+𝛼5𝐼𝑀𝐸𝐶𝑖𝑡+𝛼6𝐼𝑀𝐼𝑁𝐹𝑂𝑅𝑖𝑡+𝛼7𝑍𝐸𝑆𝑖𝑡+𝛼8𝑇𝐸𝑖𝑡+𝛼9𝑇𝐶𝐸𝐹𝑖𝑡𝛼10𝑢𝑖𝑡+𝛼11𝑑𝑖𝑡+𝜀𝑖𝑡(9)
𝜀𝑖𝑡=𝛽𝑖+𝜃∑𝑖≠𝑗𝑤𝑖𝑗𝜀𝑗𝑡+P𝑖𝑡(10)
Or
𝜀𝑖𝑡=𝜃∑𝑖≠𝑗𝑤𝑖𝑗𝜀𝑗𝑡+P𝑖𝑡(11)
The GVC participation index (value of output crossing more than one border). It is the sum of the foreign and domestic value of imported inputs that are re-exported and the value of domestic production re-exported by bilateral partners;
𝑃𝑇𝐹𝑖𝑡 Total Factor Productivity;
𝐼𝑀𝐶𝑖𝑡 Trade Globalization Index;
𝐼𝑀𝐹𝑖𝑡 Financial Globalization Index;
𝐼𝑀𝑃𝑖𝑡 Political Globalization Index;
𝐼𝑀𝐸𝐶𝑖𝑡 Economic Globalization Index;
𝐼𝑀𝐼𝑁𝐹𝑂𝑅𝑖𝑡 Information Globalization Index;
𝑍𝐸𝑆𝑖𝑡 Special Economic Zone;
𝑇𝐸𝑖𝑡 Terms of trade in volume;
𝑇𝐶𝐸𝐹𝑖𝑡 Real Effective Exchange Rate.
4.1. Construction of the Weight Matrix
To establish the spatial correlation between countries, we defined the neighbourhood relationships between countries. This relationship is estimated using the geographical coordinates of the countries (latitude and longitude). In our panel, we have 44 countries, there are 44 (44 - 1) /2 different country pairs. That is 946 pairs of countries. The difficulty is that it is not possible to identify the correlation relationships between the 44 countries without making assumptions about the structure of this spatial correlation. For the 44 countries, this amounts to defining a square matrix of size M (44,44) whose diagonal elements are zero (you cannot be your own neighbour).
4.2. Data Collection, Data Measurement and Data Presentation
Five data sources are used. For the global value chain, UNCTAD's Eora database is used, providing global coverage (189 countries and the rest of the world) and a time series from 1990 to 2019. For the globalization variables, we used the revised version of the Globalization Index of the Swiss Institute of Economics. For the Special Economic Zone variable, we use the database developed under the WTO Trade Policy Review Mechanism. The Penn World Table database is used to extract the Total Factor Productivity and the terms of trade. The CEPII database is used for the Real Effective Exchange Rate. The GVC database contains the main measures of value added and global value chains used in the WDR 2020. The cross-country input-output tables (ICIOs) used to calculate the measures are WIOD, OECD-TIVA and EORA (see Timmer et al. ; Lenzen et al. respectively). Data are in millions of current US dollars (Annex 1). All measures included in the dataset and other relevant measures of trade in value added and GVC participation can be calculated using icio, a new Stata command for calculating trade value added and GVC analysis, developed by Federico Belotti, Alessandro Borin and Michele Mancini . For the globalization variables, we present and describe the revised version of the KOF Globalization Index of the Swiss Institute of Economics. The base is composed of composite indices measuring globalization for each country of the world in its economic dimension noted as EMI (trade regulation, trade agreements, trade taxes and tariffs), financial noted as FDIIN (foreign direct investment, portfolio investment, international reserves, international debt), informational noted as FTIIN (internet access, high-tech exports), and political noted as international organization, international treaty, treaty diversifying partners).
This dataset provides an indicator of whether a country has a special economic zone (SEZ) in place. As SEZs have many possible forms, the database provides information on three types of SEZs, a) an export processing zone (export processing zones are duty free on intermediates used in the production of exports), b) export and import processing zones that also waive duties on imports that are sold domestically, and c) a final classification that covers incentives beyond duty exemptions (e.g. preferential taxation or lower regulations). The data covers 125 WTO members.
5. Results
The variability of African countries' participation in the global value chain is explained at 48% and 38%, respectively, in the two models (SDM and SEM) by total factor productivity, the dollar exchange rate, the terms of trade, the type of economic zone and the degree of the country's integration into globalization. As the coefficients are all significant, the SDM model shows a positive link between TFP growth and participation in the global value chain. Indeed, an increase in total factor productivity of 1% leads to an increase in participation in the global value chain of 0.672%. This is in line with the results of several authors, including Grossman and Rossi-Hansberg who formalize an analogy between offshoring and productivity. The rise of the dollar against the euro also strengthens participation in the global value chain. However, the coefficient remains low (2.98e-05) compared to the other variables.
Price terms of trade have a negative impact on participation in the global value chain. The deterioration of the terms of trade (decrease in domestic export prices relative to foreign export prices) by 1% decreases the participation in the global value chain by 0.110%. The explanation is that the value of domestic exports for a given volume declines and so does participation in the global value chain. As regards special economic zones (SEZs), their positive impact on the GVC (1.176%). The presence of a SEZ in Sub-Saharan Africa increases participation in the GVC. This is because these are geographical areas where a specific economic activity is encouraged through policies or other forms of support not available to the rest of the economy. This support includes a more streamlined business environment, better infrastructure, tax/duties exemptions for inputs. The SEZ is a catalyst for industrialization by encouraging foreign and domestic investment in the zones, increasing productivity spillovers from zone firms to firms outside the zone and participating in the global value chain. This result confirms that of Gebrewolde . A recurrent finding is the negative relationship between free trade zones (FTAs and MTAs) and GVC participation. The presence of a FEZ and a MEZ decreases participation in the GVC by 1.042% and 0.786% respectively. This result is consistent with that of Davies and François . Indeed, there is some consistency with the role of FTAs as a shortcut to overcome regulatory burdens. In other words, bad performers are more likely to turn to such solutions. With regard to globalization, with the exception of the Economic Globalization Index (EMI) and the Political Globalization Index (PGI), all other indices favour participation in the GVC. The participation of Sub-Saharan African countries in the GVC falls by 7.604% when the EMI falls by one point. Trade deregulation and the dismantling of taxes and tariffs has had a negative impact on exports and de facto on the participation of Sub-Saharan African countries in the GVC. This is the case for the IMP, whose increase leads to a decrease in participation in the GVC by 0.0522%, as it restricts exports. On the other hand, the impact of the trade, finance and information globalization indices is positive and respectively 3.852%, 3.950% and 0.129%.
6. Conclusion and Policy Recommendation
The paper determined the factors that influence the participation of sub- Saharan African countries in the global value chain. Using a spatial panel, it was shown that the variability of participation in the global value chain is explained by total factor productivity, the dollar exchange rate, the terms of trade, the type of economic zone and the degree of integration of countries into globalization.
The results of the SDM model show a positive relationship between TFP growth and participation in the global value chain. The rise of the dollar against the euro also strengthens participation in the global value chain, but the coefficient remains low. Unlike the other indicators, the terms of trade have a negative impact on participation in the global value chain. Indeed, the deterioration of the terms of trade (lower prices of domestic exports compared to foreign exports) decreases participation in the global value chain. With regard to special economic zones, they act as catalysts for industrialization, encourage foreign and domestic investment in the zones, and direct productivity growth from firms in the zones to firms outside the zones and participating in the global value chain. On the other hand, there is a negative relationship between free trade zones (FTAs and EMZs) and participation in the GVC. Finally, for globalization, with the exception of the Economic Globalization Index (EGI) and Political Globalization Index (PGI), all other indices have a positive impact on participation in the GVC.
The Sub-Saharan African countries have an interest in becoming more integrated into the globalization of trade, information technology and finance. They must also pay particular attention in promoting economic and political integration.
Abbreviations

AIC

Akaike Information Criterion

BIC

Bayesian Information Criterion

EGI

Economic Globalization Index

EPAs

Economic Partnership Agreements

FTAs

Free Trade Zones

GIP

Political Globalization Index

GVC

Global Value Chain

ICIO

Inter-Country Input-output

OECD-TIVA

OECD’s Trade in Value Added Database (TiVA)

OECD

Organization for Economic Co-operation and Development

OLS

Ordinary Least Squares

SAC

Spatial Autoregressive Combined Model

SAR

spatial Autoregressive

SDM

Spatial Durbin model

SEM

Spatial Error Model

SEZ

Special Economic Zone

SSA

Sub-Saharan African

TPF

Total Factor Productivity

WIOD

World Input-Output Database

WTO

World Trade Organization

Author Contributions
Adama Gueye: Preparation, creation and/or presentation of the published work, specifically writing the initial draft (including substantive translation); Presentation of the published work, specifically visualization
Allé Nar Diop: Development or design of methodology; creation of models; Application of statistical, mathematical, computational, or other formal techniques to analyze or synthesize study data; scrub data and maintain research data
Mohamed Ben Omar Ndiaye: Conducting a research and investigation process, data/evidence collection; Provision of study materials, materials, computing resources, or other analysis tools; MANAGEMENT activities to annotate, Preparation, creation and/or presentation of the published work; Management and coordination responsibility for the research activity planning and execution
Conflicts of Interest
The authors declare no conflicts of interest.
Appendix
Appendix I. Model Data
Table 1. Descriptive statistics of variables.

Variables

Obs

Mean

Std. Dev.

Min

Max

gexp

25742

125,74

941,808

0,002

23061,060

dc

1775

107,47

815,461

-183,800

21938,570

dva

1775

107,43

815,042

-183,793

21937,710

vax

1775

107,26

813,409

-183,761

21914,580

ref

1775

0,17

2,014

-0,038

67,038

ddc

1775

0,05

0,597

-0,587

22,598

fc

1775

18,27

146,791

-1,079

4484,197

fva

1775

18,26

146,669

-1,079

4481,509

fdc

1775

0,01

0,134

-0,111

5,833

gvc

1775

49,60

426,293

-0,551

12490,320

gvcb

1775

18,31

147,341

-1,079

4496,438

gvcf

1775

31,29

295,354

-51,182

8654,460

Ecog

1775

51,07

18,52

4,32

98,63

Tradeg

1775

50,46

20,18

3,96

99,55

Fing

1775

51,75

21,66

3,07

100,00

Politg

1775

47,29

26,37

1,00

98,34

epz

1775

0,408

0,492

0

1

empz

1775

0,127

0,333

0

1

sez

1775

0,155

0,362

0

1

ctfp

1775

0,644

0,251

0,099

1,732

rtfpna

1775

1,008

0,192

0,424

2,200

pwt_xr

1775

286,073

1075,392

0,000

11865,210

EXCH_TERM

1775

1,018

0,098

0,586

1,313

Table 2. Participation in the value chain by sector (variables related to exports).

Sectors

vax

dc

fc

dva

fva

gvc

gvcb

gvcf

Agriculture

90,76

90,80

9,20

90,80

9,20

35,47

9,20

26,27

Construction

73,50

73,52

26,48

73,51

26,48

42,62

26,49

16,14

Education, Health and Other Services

86,12

86,14

13,86

86,13

13,86

28,68

13,87

14,82

Electronics and Machinery

60,60

60,64

39,36

60,63

39,36

52,71

39,37

13,35

Financial and Corporate Intermediation

84,53

84,55

15,45

84,55

15,45

38,81

15,45

23,36

Fishing

68,38

68,41

31,59

68,41

31,59

48,25

31,59

16,65

Food and Beverages

76,62

76,65

23,35

76,65

23,35

37,79

23,35

14,43

Hotels and Restaurants

86,35

86,37

13,63

86,36

13,63

31,15

13,64

17,51

Maintenance and Repair

76,30

76,32

23,68

76,31

23,68

45,10

23,69

21,41

Metal Products

67,65

67,70

32,30

67,70

32,29

55,34

32,30

23,04

Mining and Quarrying

84,74

84,80

15,20

84,80

15,20

45,51

15,20

30,30

Other products Manufacturer

67,42

67,44

32,56

67,43

32,56

45,48

32,57

12,91

Oil, Chime and Non-Metallic Minerals

58,83

58,87

41,13

58,87

41,12

55,46

41,13

14,33

Post and Telecommunications

87,63

87,65

12,35

87,65

12,35

34,44

12,35

22,09

Private Households

72,09

72,11

27,89

72,11

27,89

47,38

27,89

19,49

Public Administration

78,92

78,94

21,06

78,94

21,06

39,80

21,06

18,74

Re-export & Re-import

19,49

19,51

80,49

19,50

80,48

86,10

80,50

5,59

Retail Trade

88,97

88,99

11,01

88,98

11,01

33,09

11,02

22,08

Textiles and Wearing Apparel

71,30

71,32

28,68

71,32

28,68

44,80

28,68

16,12

Transport

82,67

82,70

17,30

82,70

17,30

37,95

17,30

20,65

Transport Equipment

55,17

55,20

44,80

55,19

44,80

55,97

44,81

11,16

Wholesale Trade

85,52

85,54

14,46

85,54

14,46

45,64

14,46

31,19

Wood and Paper

68,79

68,85

31,15

68,84

31,15

50,01

31,16

18,85

Average

73,58

73,61

26,39

73,61

26,39

45,11

26,39

18,72

Appendix II. The Approach of Elhorst
Figure 1. Elhorst's (2010) Approach to the Choice of a Spatial Econometric Model.
Appendix III. Model validation Tests
First, we present the Pesaran specification test to arbitrate between a model where the individual effects are uncorrelated and a model where such a correlation exists. This test will allow us to determine the estimation method. Then we will test for the existence of a first-order autocorrelation. Finally, we will perform the other specification tests to choose the most appropriate specification.
1) Cross-sectional independence test
To do this test, we use the Pesaran test. The test statistic is equal to 48.428 with a p-value of
0.00. The null hypothesis of country independence is rejected. There is a dependence of countries in the participation in the global value chain.
2) Woodbridge test of first-order autocorrelation of panel data errors
The test statistic F-stat=76.878 and the p-value =0. The null hypothesis of no first-order autocorrelation of errors is rejected. The errors are correlated of order 1.
Appendix IV. Estimation Results
Table 3. Econometric estimation.

Variables

OLS

BAG

SAR

SDM

SEM

PTF

0.339*

0.685***

0.734***

0.676***

0.633***

(0.182)

(0.0750)

(0.0747)

(0.0754)

(0.0763)

TCER

0.00123***

0/00313**

0.00297*

0.002.98*

0.00328**

(3.09e-05)

(1.51e-05)

(1.55e-05)

(1.55e-05)

(1.53e-05)

TE

-6.152***

-0.423***

-0.189***

-0.110***

-0.185***

(0.358)

(0.014)

(0.014)

(0.015)

(0.015)

EPZ

-0.699***

-1.163**

-1.042**

-1.846***

(0.0840)

(0.527)

(0.522)

(0.595)

ZFEM

-0.360***

-0.823***

-0.786***

-1.184***

(0.114)

(0.074)

(0.073)

(0.084)

SEZ

0.490***

1.205*

1.176*

1.582**

(0.110)

(0.680)

(0.671)

(0.765)

IMECO

12.62**

-8.143***

-7.915***

-7.604***

-8.341***

(5.168)

(2.819)

(2.884)

(2.878)

(2.864)

IMCOM

-6.060**

4.121***

4.002***

3.852***

4.221***

(2.579)

(1.409)

(1.441)

(1.438)

(1.431)

IMFIN

-6.398**

4.206***

4.101***

3.950***

4.289***

(2.590)

(1.410)

(1.443)

(1.440)

(1.433)

IMINFOR

0.414***

0.137***

0.120***

0.129***

0.178***

(0.0290)

(0.0159)

(0.0130)

(0.0136)

(0.0177)

IMPOL

0.963***

-0.0591***

-0.0542***

-0.0522***

-0.0479**

(0.0219)

(0.0178)

(0.0175)

(0.0176)

(0.0193)

Rho

0.791***

0.812***

0.810***

Phi

(0.0224)

(0.0170)

(0.0181)

Lambda

0.234**

0.954***

(0.0973)

(0.00707)

lgt_theta

-3.475***

-3.468***

(0.0889)

(0.0889)

ln_phi

4.016***

(0.173)

sigma_mu

1.2166

sigma2_e

0.0889***

0.0891***

0.0881***

0.0902***

(0.00288)

(0.00307)

(0.00303)

(0.00312)

Constant

5.071***

0.291

-0.953*

7.600***

(0.375)

(0.391)

(0.534)

(0.485)

Comments

1232

1232

1232

1232

1232

R2

0.785

0.392

0.466

0.484

0.385

LL

-3067.102

-371.874

-659.864

-649.327

-714.802

AIC

6158.204

765.749

1349.729

1334.654

1459.605

BIC

6223.983

826.046

1431.95

1433.322

1541.829

Standard errors in parentheses
*** p<0.01, ** p<0.05, * p<0.1
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    Gueyea, A., Diopb, A. N., Ndiayec, M. B. O. (2024). The Quest for Participating to Global Value Chain in Sub-Sahara Africa: An Analysis of Determining Factors Using a Spatial Panel Model. Journal of Finance and Accounting, 12(3), 58-66. https://doi.org/10.11648/j.jfa.20241203.11

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    Gueyea, A.; Diopb, A. N.; Ndiayec, M. B. O. The Quest for Participating to Global Value Chain in Sub-Sahara Africa: An Analysis of Determining Factors Using a Spatial Panel Model. J. Finance Account. 2024, 12(3), 58-66. doi: 10.11648/j.jfa.20241203.11

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    AMA Style

    Gueyea A, Diopb AN, Ndiayec MBO. The Quest for Participating to Global Value Chain in Sub-Sahara Africa: An Analysis of Determining Factors Using a Spatial Panel Model. J Finance Account. 2024;12(3):58-66. doi: 10.11648/j.jfa.20241203.11

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  • @article{10.11648/j.jfa.20241203.11,
      author = {Adama Gueyea and Allé Nar Diopb and Mohamed Ben Omar Ndiayec},
      title = {The Quest for Participating to Global Value Chain in Sub-Sahara Africa: An Analysis of Determining Factors Using a Spatial Panel Model
    },
      journal = {Journal of Finance and Accounting},
      volume = {12},
      number = {3},
      pages = {58-66},
      doi = {10.11648/j.jfa.20241203.11},
      url = {https://doi.org/10.11648/j.jfa.20241203.11},
      eprint = {https://article.sciencepublishinggroup.com/pdf/10.11648.j.jfa.20241203.11},
      abstract = {This paper aims to determine the factors that influence the participation of the Sub-Saharan Africa countries in the global value chain (GVC). The paper use of a spatial panel Model to show that the variability of participation in the global value chain is explained by the total factor productivity, the dollar rate, the terms of trade, the type of economic zone and the degree of integration of countries into the Global Economy (Globalization). Empirical evidence displays a positive link between the total factor productivity growth and the participation in the global value chain. The rise of the Dollar against the Euro strengthens the participation in the global value chain. The deterioration of the terms of trade decreases participation in the global value chain. Special Economic Zones have a positive effect on the global value chain. On the other hand, a significant negative relationship between the free trade zones and participation in the GVC is observed. Finally, with the exception of the Economic Globalization Index and Political Index, all the other indexes have a positive and significant impact on participation in the GVC. The Sub-Saharan African countries have an interest in becoming more integrated into the globalization of trade, information technology and finance. They must also promote economic and political integration.
    },
     year = {2024}
    }
    

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  • TY  - JOUR
    T1  - The Quest for Participating to Global Value Chain in Sub-Sahara Africa: An Analysis of Determining Factors Using a Spatial Panel Model
    
    AU  - Adama Gueyea
    AU  - Allé Nar Diopb
    AU  - Mohamed Ben Omar Ndiayec
    Y1  - 2024/07/23
    PY  - 2024
    N1  - https://doi.org/10.11648/j.jfa.20241203.11
    DO  - 10.11648/j.jfa.20241203.11
    T2  - Journal of Finance and Accounting
    JF  - Journal of Finance and Accounting
    JO  - Journal of Finance and Accounting
    SP  - 58
    EP  - 66
    PB  - Science Publishing Group
    SN  - 2330-7323
    UR  - https://doi.org/10.11648/j.jfa.20241203.11
    AB  - This paper aims to determine the factors that influence the participation of the Sub-Saharan Africa countries in the global value chain (GVC). The paper use of a spatial panel Model to show that the variability of participation in the global value chain is explained by the total factor productivity, the dollar rate, the terms of trade, the type of economic zone and the degree of integration of countries into the Global Economy (Globalization). Empirical evidence displays a positive link between the total factor productivity growth and the participation in the global value chain. The rise of the Dollar against the Euro strengthens the participation in the global value chain. The deterioration of the terms of trade decreases participation in the global value chain. Special Economic Zones have a positive effect on the global value chain. On the other hand, a significant negative relationship between the free trade zones and participation in the GVC is observed. Finally, with the exception of the Economic Globalization Index and Political Index, all the other indexes have a positive and significant impact on participation in the GVC. The Sub-Saharan African countries have an interest in becoming more integrated into the globalization of trade, information technology and finance. They must also promote economic and political integration.
    
    VL  - 12
    IS  - 3
    ER  - 

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