A Typology-Based Approach for Assessing Qualities and Determinants of Adoption of Sustainable Water Use Technologies in Coping with Context Diversity: The Case of Mechanized Raised-Bed Technology in Egypt
Abstract
:1. Introduction
2. Materials and Methods
2.1. Study Areas and Data Collection
2.2. Analytical Framework
2.3. Methods for Identifying Livelihood Typology of Smallholder Farming Systems
2.4. Methods for Adoption Assessment
2.4.1. Dependent Variables
2.4.2. Inferential Statistical Models
- Chi-squared test for overall statistical significance of the regression model (Hosmer–Lemeshow test);
- Probability of correct prediction, and;
- Receiver Operating Characteristic (ROC) statistics.
2.4.3. Explanatory Variables
3. Results and Discussion
3.1. Identified Agricultural Livelihood System (ALS) Types
3.1.1. Factors Explaining the Differences in ALS Types
3.1.2. ALS Types
3.2. Determinants of MRBT Adoption
3.2.1. Adoption Responses versus ALS Types
3.2.2. Determinants of MRBT Adoption (Yes/No Adoption)
3.2.3. Determinants of MRBT AQ
- (1)
- Common determinants for MRBT adoption (one variable): The common determinant of MRBT adoption quality was household equipment (H_EQUIPMENT)(significantly negative).
- (2)
- ALS type-specific determinants for MRBT adoption, with two types in this category:
- -
- Type 1 (three variables): Determinants of this type included the share of non-agricultural income (H_INCOME_NAGR) and number of rooms in house (H_NROOMS) that were further narrowed for ALS type 1. The effect of household sheep (H_SHEEP) (significantly positive) was common for the whole population and ALS types 2 and 3.
- -
- Type 2 (two variables): The strong positive effects of effectiveness of Water Use Association (WUA) (H_WUA_EFFECTIVE) on MRBT AQ were found only in ALS type 1. Without the ALS type-specific adoption analyses, this determinant—being meaningful for policy and management practice—would not have been realized. The negative effect of agricultural market association effectiveness (H_AMA_EFFECTIVE) on MRBT adoption quality was found only in ALS type 2, which is quite unusual and needs further interpretation with additional information.
- (3)
- Determinants for MRBT adoption found only in the whole-population analysis (three variables): The determinants of this category included distance from house to farm (H_DISTANCE_FARM), number of house floors (H_NFLOORS) (both significantly negative), and membership in agricultural market association (H_AMA_MEMBER) (significantly positive).
3.3. Evaluation of Added Values of the ALS Typology-Based Method Compared to Traditional Approach
- Confirmed widespread role of common determinants of MRBT adoption across ALS types;
- Household groups subjected to the effects of MRBT adoption that were found in whole-sample analysis;
- Discovered new causal effects that the traditional approach could not. The effects of effectiveness of agricultural institutions, such as WUA and AMA, can only be realized with ALS type-specific analyses rather than the whole-sample analysis;
- By complementary use of whole-sample analysis, the ALS typology-based approach utilized the large size of the whole sample to increase statistical power, thus off-setting the problem of weak statistical power for small ALS groups.
4. Conclusions and Recommendations
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
- Swelam, A. Raised-Bed Planting in Egypt: An Affordable Tech nology to Rationalize Water Use and Enhance Water Productivity; ICARDA: Amman, Jordan, 2016; pp. 1–4. [Google Scholar]
- Amer, M.H.; Hafez, S.A.A.E.; Ghany, M.B.A.E. Water Saving In Irrigated Agriculture in Egypt—Case Studies and Lessons Learned; LAMBERT Academic Publishing: Beau Bassin, Mauritius, 2017; pp. 1–220. [Google Scholar]
- Smith, J.; Deck, L.; McCarl, B.; Kirshen, P.; Malley, J.; Abdrabo, M. Potential Impacts of Climate Change on the Egyptian Economy; United Nations Development Programme (UNDP): Cairo, Egypt, 2013; p. 143. [Google Scholar]
- El-Marsafawy, M.S.; Swelam, A.; Ghanem, A. Evolution of crop water productivity in the Nile Delta over three decades (1985–2015). Water 2018, 10, 1168. [Google Scholar] [CrossRef]
- Karrou, M.; Oweis, T.; Benli, B.; Swelam, A. Improving Water and Land Productivities in Irrigated Systems. Community-Based Optimization of the Management of Scarce Water Resources in Agriculture in CWANA; ICARDA: Aleppo, Syria, 2011. [Google Scholar]
- Roth, C.H.; Fischer, R.A.; Meisner, C.A. Evaluation and Performance of Permanent Raised Bed Cropping Systems in Asia, Australia and Mexico; ACIAR: Griffith, Australia, 2005; pp. 1–212. [Google Scholar]
- Irrigation water management: In Irrigation Methods. Available online: http://www.fao.org/3/S8684E/S8684E00.htm#Contents (accessed on 1 May 2019).
- Beecher, H.G.; Dunn, B.W.; Thompson, J.A.; Humphreys, E.; Mathews, S.K.; Timsina, J. Effect of raised beds, irrigation and nitrogen management on growth, water use and yield of rice in south-eastern Australia. Aust. J. Exp. Agric. 2006, 46, 1363–1372. [Google Scholar] [CrossRef]
- He, J.; Li, H.; McHugh, A.D.; Ma, Z.; Cao, X.; Wang, Q.; Zhang, X.; Zhang, X. Spring wheat performance and water use efficiency on permanent raised beds in arid northwest China. Soil Res. 2008, 46, 659–666. [Google Scholar] [CrossRef]
- He, J.; Li, H.; McHugh, A.D.; Wang, Q.; Lu, Z.; Li, W.; Zhang, Y. Permanent raised beds improved crop performance and water use on the North China Plain. J. Soil Water Conserv. 2015, 70, 54–62. [Google Scholar] [CrossRef]
- Limon-Ortega, A.; Govaerts, B.; Deckers, J.; Sayre, K.D. Soil aggregate and microbial biomass in a permanent bed wheat–maize planting system after 12 years. Field Crops Res. 2006, 97, 302–309. [Google Scholar] [CrossRef]
- Govaerts, B.; Sayre, K.D.; Lichter, K.; Dendooven, L.; Deckers, J. Influence of permanent raised bed planting and residue management on physical and chemical soil quality in rain fed maize/wheat systems. Plant Soil 2007, 291, 39–54. [Google Scholar] [CrossRef]
- Shukla, S.K.; Solomon, S.; Sharma, L.; Jaiswal, V.P.; Pathak, A.D.; Singh, P. Green technologies for improving cane sugar productivity and sustaining soil fertility in sugarcane-based cropping system. Sugar Tech 2019, 21, 186–196. [Google Scholar] [CrossRef]
- Ezezika, O.C.; Daar, A.S.; Barber, K.; Mabeya, J.; Thomas, F.; Deadman, J.; Wang, D.; Singer, P.A. Factors influencing agbiotech adoption and development in sub-Saharan Africa. Nat. Biotechnol. 2012, 30, 38–40. [Google Scholar] [CrossRef] [PubMed]
- Taj, S.; Ali, A.; Akmal, N.; Yaqoob, S.; Ali, M. Raised bed technology for wheat crop in irrigated areas of Punjab, Pakistan. Pakistan J. Agric. Res. 2013, 26, 79–86. [Google Scholar]
- Miah, M.M.; Hossain, S.; Duxbury, J.M.; Lauren, J.G. Adoption of raised bed technology in some selected locations of Rajshahi district of Bangladesh. Bangladesh J. Agric. Res. 2015, 40, 551–566. [Google Scholar] [CrossRef]
- Econometric Analysis of Factors Affecting Wheat Farmers’ Adoption of Raised-Bed Farming Technology: A Case Study of Sharkia Governorate in Egypt. Available online: https://hdl.handle.net/20.500.11766/6411 (accessed on 10 April 2019).
- AbdAllah, E.; Swelam, A.; Dessalegn, B.; Dhehibi, B. Econometric analysis of factors affecting farmers’ adoption of water saving technologies: A case study of raised-bed technology in egypt. Egypt. J. Agric. Econ. 2018, 28, 1571–1584. [Google Scholar]
- Thiombiano, B.A.; Le, Q.B. Smallholder Agricultural Livelihood Type-specific Behaviour Analyses for Better Targeting Adoption of Sustainable Land Management: A Demonstrative Case Analysis in Pontieba, Southwestern Burkina Faso; International Center for Agricultural Research in Dry Areas (ICARDA): Amman, Jordan, 2016; pp. 1–38. [Google Scholar]
- Thiombiano, B.A.; Le, Q.B. Farm type-specific adoption behaviour in sustainable soil nutrient management: The case of smallholder farms in Ioba province, Burkina Faso. In Multi-Functional Farming Systems in a Changing World, Proceedings of the 5th International Symposium for Farming Systems Design (FSD5), Montpellier, France, 7−10 September 2015; Gritti, E.S., Wery, J., Eds.; European Society of Economy (ESA) and Agropolis International: Monpellier, France; pp. 219–220.
- Thiombiano, B.A.; Le, Q.B. Linking Farm and Soil Nutrient Balances with Economic Performance of Main Agricultural Livelihood System Types in a Semi-arid Region of Burkina Faso; International Center for Agricultural Research in the Dry Areas (ICARDA): Amman, Jordan, 2016; pp. 1–38. [Google Scholar]
- Thiombiano, B.A.; Le, Q.B. Maize and Livestock Production Efficiencies and Their Drivers in Heterogeneous Smallholder Systems in Southwestern Burkina Faso; International Center for Agricultural Research in the Dry Areas (ICARDA): Amman, Jordan, 2016; pp. 1–31. [Google Scholar]
- Dhehibi, B. Adaptation Technologies in Agriculture: Adoption and Impact Assessment of Raised Bed Farming System Technology (RFST) in Egypt; International Center for Agricultural Research in the Dry Areas (ICARDA): Amman, Jordan, 2018; pp. 1–62. [Google Scholar]
- Le, Q.B.; Dhehibi, B. Methodology for Assessing Adoption, Efficiency, and Impacts of Mechanized Raised-Bed Technology; International Center for Agricultural Research in the Dry Areas (ICARDA): Cairo, Egypt, 2018; pp. 1–28. [Google Scholar]
- Ashley, C.; Carney, D. Sustainable Livelihoods: Lessons From Early Experience; DFID: London, UK, 1999; pp. 1–55. [Google Scholar]
- Speranza, C.I.; Wiesmann, U.; Rist, S. An indicator framework for assessing livelihood resilience in the context of social–ecological dynamics. Glob. Environ. Change 2014, 28, 109–119. [Google Scholar] [CrossRef]
- McGarigal, K.; Cushman, S.; Stafford, S. Multivariate Statistics for Wildlife and Ecology Research; Springer Verlag: New York, NY, USA, 2000; pp. 1–283. [Google Scholar]
- Kintigh, K.W.; Ammerman, A. Heuristic approaches to spatial analysis in archaeology. Am. Antiq. 1982, 47, 31–63. [Google Scholar] [CrossRef]
- Apon, A.; Robinson, F.; Brewer, D.; Dowdy, L.; Hoffman, D.; Lu, B. Initial Starting Point Analysis for K-Means Clustering: A Case Study; Clemson University TigerPrints: Clemson, South Carolina, USA, 2006. [Google Scholar]
- Rakhlin, A.; Caponnetto, A. Stability of K-means clustering. In Advances in Neural Information Processing Systems 19, Proceedings of theNeural Information Processing Systems (NIPS) 2006, Vancouver, BC, Canada, 4–7 December 2006; Schölkopf, B., Platt, J.C., Hoffman, T., Eds.; Available online: https://papers.nips.cc/paper/3116-stability-of-k-means-clustering (accessed on 15 January 2019).
- Hosmer, D.W.; Lemeshow, S. Applied Logistic Regression, 2nd ed.; JohnWiley & Sons: New York, NY, USA, 2000; pp. 1–383. [Google Scholar]
- LaValley, M.P. Logistic regression. Circulation 2008, 117, 2395–2399. [Google Scholar] [CrossRef] [PubMed]
- Pepe, M.S.; Janes, H.; Longton, G.; Leisenring, W.; Newcomb, P. Limitations of the odds ratio in gauging the performance of a diagnostic, prognostic, or screening marker. Am. J. Epidemiol. 2004, 159, 882–890. [Google Scholar] [CrossRef] [PubMed]
- DeFries, R.S.; Rudel, T.; Uriarte, M.; Hansen, M. Deforestation driven by urban population growth and agricultural trade in the twenty-first century. Nat. Geosci. 2010, 3, 178–181. [Google Scholar] [CrossRef]
- SPSS Tests. Multicolinearity Test Example. Available online: https://www.spsstests.com/2015/03/multicollinearity-test-example-using.html (accessed on 12 December 2018).
- Thorndike, R.L. Who Belongs in the Family? Psychometrika 1953, 18, 267–276. [Google Scholar] [CrossRef]
No. | Variable | Definition |
---|---|---|
Human assets | ||
1 | H_AGE_HEAD | Age of the household head (years) |
2 | H_AGE_MEAN | Average age of household members (years) |
3 | H_EDU_HEAD | Education level of the household head (1 = illiterate, 2 = can read and write, 3 = secondary school, 4 = higher education) |
4 | H_HH_SIZE | Household size (no. of household members) |
5 | H_LABOR | Number of workers based on age (15–64 years old) |
6 | H_DEPEND_RATIO | Dependency ratio (no. of dependents/no. of workers) |
Natural assets | ||
7 | P_FARM_SIZE | Farm size, i.e., area of household farm (ha) |
8 | H_AREA_PERS | Farm area per capita (ha/household member) |
9 | P_SOIL_SALINITY | Severity of soil salinity perceived by the household (1 = low, 2 = moderate, 3 = high) |
10 | P_WATER_TABLE | Severity of water table raising perceived by the household (1 = low, 2 = moderate, 3 = high) |
11 | H_LIVESTOCK | Value of household’s livestock (EGP) |
12 | H_LIVESTOCK_PERS | Value of livestock per capita (EGP/household member) |
13 | H_POULTRY | Value of household’s poultry (EGP) |
14 | H_SMALL_RUMINANT | Value of household’s small ruminants (EGP) |
15 | H_CATTLE | Value of household’s cattle (EGP) |
Financial assets | ||
16 | H_INCOME | Annual income of household (EGP/year) |
17 | H_INCOME_PERS | Annual income per capita (EGP/household member year) |
18 | H_AGR_INCOME | Share of agricultural income (%) |
19 | H_NAGR_INCOME | Share of non-agricultural income (%) |
20 | H_LOAN_ACCESS | Household’s accessibility to loans, approximated by total loan value (EGP) |
Physical assets | ||
21 | P_DISTANCE_HOUSE | Distance from household farm to house (m) |
22 | P_DISTANCE_TOWN | Distance from household farm to nearest urban center (m) |
23 | H_NFLOORS | Number of house floors |
24 | H_NROOMS | Number of house rooms |
25 | H_EQUIPMENTS | Value of household’s equipment (EGP) |
Social assets | ||
26 | H_AC_EFFECTIVE | Effectiveness of agricultural cooperatives for the household as perceived (0 = ineffective, 1 = do not know (likely little effective), 2 = fairly effective, 3 = effective) |
27 | H_WUA_EFFECTIVE | Effectiveness of water use associations (WUA) for the household as perceived (four levels as for H_AC_EFFECTIVE) |
28 | H_AMA_EFFECTIVE | Effectiveness of agricultural market association for the household as perceived (four levels as for H_AC_EFFECTIVE) |
29 | H_AMA_MEMBER | Membership of agricultural market/marketing association (1 = have a membership, 0 = otherwise) |
30 | H_SDA_EFFECTIVE | Effectiveness of service development association for the household as perceived (four levels as for H_AC_EFFECTIVE) |
Adoption Quality Attribute | Definition | Unit (Range) |
---|---|---|
MRM_PRACTICE | Existence of MRBT practice | 0 = traditional farm, 1 = MRBT practiced |
MRB_MA | Self-reflection of MRBT’s benefit in improving household’s machinery ability | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
MRB_KT | Self-reflection of MRBT’s benefit in improving household’s knowledge and technology | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
MRB_AC | Self-reflection of MRBT’s benefit in reducing household’s cost of adoption | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
MRB_YD | Self-reflection of MRBT’s benefit in improving farm’s crop yield | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
MRB_WS | Self-reflection of MRBT’s benefit in improving farm’s water saving | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
MRB_MKA | Self-reflection of MRBT’s benefit in improving household’s market ability | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
MRB_MKP | Self-reflection of MRBT’s benefit in improving market price received | 0 = no difference created by MRBT, 1 = do not know (not clear), 2 = better |
AQ | Adoption quality index (AQ) of MRBT, i.e., a product of MRBT implementation with the sum of score reflecting MRBT’s benefits (see Equations (1) and (2)) | Score between 0 and 14 |
No. | Variable | Definition | Hypothesized Effect |
---|---|---|---|
Human asset | |||
1 | H_AGE_HEAD | Age of the household head (years) | − |
2 | H_AGE_MEAN | Average age of household members (years) | - |
3 | H_EDU_HEAD | Education level of the household head (unit: See Table 1) | + |
4 | H_HH_SIZE | Household size (no. of household members) | -/+ |
5 | H_LABOR | Number of workers based on age (15–64 years old) | - |
6 | H_DEPEND_RATIO | Dependency ratio (no. of dependents/no. of workers) | -/+ |
Natural asset | |||
7 | P_FARM_SIZE | Farm size, i.e., area of household farm (ha) | + |
8 | H_AREA_PERS | Farm area per capita (ha/person) | + |
9 | P_SOIL_SALINITY | Severity of soil salinity (unit: See Table 1) | + |
10 | P_WATER_TABLE | Severity of water table raising (unit: See Table 1) | + |
11 | H_LIVESTOCK_PERS | Value of livestock per capita (EGP/person) | +/- |
12 | H_POULTRY | Value of household’s poultry (EGP) | +/- |
13 | H_GOAT | Value of household’s goats (EGP) | +/- |
14 | H_SHEEP | Value of household’s sheep (EGP) | +/- |
15 | H_BUFFALO | Value of household’s buffaloes (EGP) | - |
16 | H_COW | Value of household’s cows (EGP) | +/- |
Financial asset | |||
17 | H_INCOME | Annual income of the household (EGP/year) | +/- |
18 | H_INCOME_PERS | Annual income per capita (EGP/person/year) | +/- |
19 | H_INCOME_AGR | Annual income from agriculture (EGP/year) | +/- |
20 | H_INCOME_NAGR | Annual income from non-agricultural sources (EGP/year) | +/- |
21 | H_LOAN_ACCESS | Household’s accessibility to loans (EGP) | + |
Physical asset | |||
22 | P_DISTANCE_HOUSE | Distance from household farm to house (m) | - |
23 | P_DISTANCE_TOWN | Distance from household farm to nearest urban center (m) | - |
24 | H_NFLOORS | Number of house floors | +/- |
25 | H_NROOMS | Number of house rooms | +/- |
26 | H_EQUIPMENTS | Value of household’s equipment (EGP) | +/- |
Social asset | |||
27 | H_AC_EFFECTIVE | Effectiveness of agricultural cooperatives (unit: See Table 1) | + |
28 | H_WUA_EFFECTIVE | Effectiveness of Water Use Association (WUA) (unit: See Table 1) | + |
29 | H_AMA_EFFECTIVE | Effectiveness of agricultural market/marketing association (unit: See Table 1) | + |
30 | H_AMA_MEMBER | Membership of agricultural market/marketing association (unit: See Table 1) | + |
31 | H_SDA_EFFECTIVE | Effectiveness of service development association (unit: See Table 1) | + |
Variable | PC1 (Market—13.4%) | PC2 (Agr. Income—11.7%) | PC3 (Livestock—11.3%) | PC4 (Labor—9.5%) | PC5 (Age—7.2%) | PC6 (Non-Agri. Income—6.5%) | PC7 (House Quality—6.4%) | PC8 (Access-to-Farm—4.3%) | PC9 (Less Access-to-Loans—3.9%) |
---|---|---|---|---|---|---|---|---|---|
H_AGE_HEAD | 0.052 | 0.220 | 0.119 | 0.652 | 0.554 | 0.063 | 0.085 | 0.075 | 0.150 |
H_AGE_MEAN | −0.010 | 0.122 | 0.042 | 0.027 | 0.889 | −0.010 | −0.038 | 0.069 | 0.076 |
H_EDU_HEAD | 0.369 | −0.078 | −0.139 | −0.358 | −0.225 | 0.134 | 0.334 | −0.280 | −0.032 |
H_HH_SIZE | 0.188 | 0.213 | 0.150 | 0.856 | −0.191 | 0.071 | 0.129 | −0.039 | 0.074 |
H_LABOR | 0.222 | 0.009 | 0.142 | 0.806 | 0.268 | 0.050 | 0.171 | −0.084 | −0.098 |
H_DEPEND_RATIO | −0.142 | 0.164 | −0.047 | 0.017 | −0.807 | 0.038 | −0.073 | 0.050 | 0.212 |
P_FARM_SIZE | 0.153 | 0.157 | 0.462 | −0.039 | 0.145 | 0.000 | 0.128 | 0.021 | 0.562 |
H_AREA_PERS | −0.060 | −0.021 | 0.351 | −0.666 | 0.349 | −0.028 | −0.004 | 0.019 | 0.423 |
P_SOIL_SALINITY | 0.526 | 0.556 | 0.238 | 0.006 | 0.091 | −0.162 | 0.092 | 0.091 | −0.066 |
P_WATER_TABLE | 0.708 | 0.170 | 0.136 | −0.162 | 0.004 | −0.143 | −0.011 | 0.260 | −0.207 |
H_LIVESTOCK | 0.151 | 0.212 | 0.906 | 0.201 | 0.010 | −0.021 | 0.033 | 0.106 | −0.019 |
H_LIVESTOCK_PERS | 0.029 | 0.001 | 0.823 | −0.238 | 0.136 | −0.014 | −0.059 | 0.077 | 0.001 |
H_POULTRY | 0.266 | 0.356 | 0.342 | 0.141 | 0.013 | 0.166 | 0.154 | −0.053 | −0.086 |
H_SMALL_RUMINANT | 0.167 | 0.450 | 0.552 | 0.149 | −0.093 | 0.041 | 0.088 | −0.041 | 0.032 |
H_CATTLE | 0.116 | 0.106 | 0.892 | 0.187 | 0.036 | −0.045 | 0.006 | 0.138 | −0.025 |
H_INCOME | 0.136 | 0.722 | 0.105 | 0.120 | −0.022 | 0.578 | 0.122 | −0.022 | −0.029 |
H_INCOME_PERS | 0.074 | 0.623 | 0.046 | −0.043 | 0.041 | 0.703 | 0.079 | −0.032 | −0.063 |
H_AGR_INCOME | 0.187 | 0.858 | 0.173 | 0.118 | 0.008 | −0.062 | 0.011 | 0.047 | 0.008 |
H_NAGR_INCOME | 0.047 | −0.117 | −0.082 | 0.068 | −0.054 | 0.897 | −0.025 | 0.022 | −0.069 |
H_LOAN_ACCESS | 0.028 | 0.063 | 0.128 | 0.025 | 0.123 | 0.074 | −0.074 | −0.008 | −0.605 |
P_DISTANCE_HOUSE | 0.005 | −0.089 | 0.155 | −0.167 | −0.028 | −0.050 | 0.259 | 0.782 | −0.051 |
P_DISTANCE_TOWN | 0.882 | 0.230 | 0.084 | 0.059 | 0.018 | 0.047 | −0.139 | 0.075 | −0.104 |
H_NFLOORS | −0.156 | 0.107 | 0.026 | 0.146 | 0.037 | 0.009 | 0.856 | 0.084 | 0.080 |
H_NROOMS | −0.272 | 0.137 | 0.058 | 0.123 | 0.036 | 0.000 | 0.839 | 0.092 | 0.098 |
H_EQUIPMENTS | 0.309 | 0.330 | 0.196 | 0.237 | 0.156 | 0.128 | −0.109 | 0.458 | 0.231 |
H_AC_EFFECTIVE | 0.488 | 0.098 | 0.078 | 0.209 | 0.088 | 0.354 | −0.166 | 0.439 | 0.119 |
H_WUA_EFFECTIVE | 0.216 | 0.841 | 0.082 | 0.079 | 0.017 | −0.022 | 0.076 | −0.004 | 0.054 |
H_AMA_EFFECTIVE | 0.744 | 0.128 | 0.147 | 0.156 | 0.043 | 0.220 | −0.116 | −0.102 | 0.152 |
H_SDA_EFFECTIVE | 0.609 | 0.121 | 0.014 | 0.121 | 0.026 | 0.010 | −0.025 | 0.022 | 0.007 |
H_AMA_MEMBER | 0.774 | 0.090 | 0.133 | 0.175 | 0.063 | 0.054 | −0.228 | −0.095 | 0.166 |
Livelihood Asset Category | Key Variable (Abbreviation) | |||
---|---|---|---|---|
ALS Type I (n = 196) (Poor and Non-Agriculture-Based Income) | ALS Type II (n = 96) (Medium and Balanced Crop–Livestock–Non-Farm Income) | ALS Type III (n = 61) (Medium, Less Dependent Pressure, Livestock/Cattle-Based Income) | ||
Human | H_AGE_MEAN | 31 ± 1 | 31 ± 1 | 34 ± 2 |
H_DEPENRATIO | 0.39 ± 0.07 | 0.40 ± 0.10 | 0.30 ± 0.07 | |
Natural | H_AREA_PERS (m2/person) | 1442 ± 213 | 1176 ± 116 | 2170 ± 519 |
H_LIVESTOCK (100 EGP) | 41 ± 14 | 878 ± 44 | 16,445 ± 74 | |
Financial | H_INCOME_PERS (100 EGP/person) | 19 ± 6 | 34 ± 10 | 35 ± 11 |
H_AGR_INCOME (%) | 3 ± 2 | 29 ± 9 | 35 ± 12 | |
H_NAGR_INCOME (%) | 23 ± 6 | 18 ± 8 | 11 ± 7 | |
Physical | P_DISTANCE_HOUSE (m) | 830 ± 138 | 1278 ± 241 | 1236 ± 324 |
P_DISTANCE_TOWN (m) | 3421 ± 539 | 5798 ± 685 | 5444 ± 802 | |
Social | H_AMA_EFFECTIVE 1 | 1 | 3 | 1 |
H_AMA_MEMBER 1 | 0 | 1 | 1 |
Adoption Variable | Category | ALS Type 1 | ALS Type 2 | ALS Type 3 | Whole Sample |
---|---|---|---|---|---|
MRBT practice (MRB_PRACTICE) | 0 = Traditional farm | 98 | 45 | 32 | 175 |
1 = MRBT practiced farm | 98 | 51 | 29 | 178 | |
% MRBT practiced | 50 | 53 | 48 | 50 | |
Self-reflection of MRBT’s benefit on household’s machinery ability (MRB_MA) | 0 = No difference | 3 | 2 | 0 | 5 |
1 = Do not know | 62 | 27 | 18 | 107 | |
2 = Better | 131 | 67 | 43 | 241 | |
% Better | 67 | 70 | 70 | 68 | |
Self-reflection of MRBT’s benefit on improved knowledge and technology (MRB_KT) | 0 = No difference | 22 | 8 | 4 | 34 |
1 = Do not know | 169 | 77 | 53 | 299 | |
2 = Better | 5 | 11 | 4 | 20 | |
% Better | 3 | 11 | 7 | 6 | |
Self-reflection of MRBT’s benefit on adoption cost (MRB_AC) | 0 = No difference | 8 | 10 | 6 | 24 |
1 = Do not know | 72 | 32 | 20 | 124 | |
2 = Better | 116 | 54 | 35 | 205 | |
% Better | 59 | 56 | 57 | 58 | |
Self-reflection of MRBT’s benefit on crop yield (MRB_YD) | 0 = No difference | 1 | 1 | 1 | 3 |
1 = Do not know | 64 | 28 | 18 | 110 | |
2 = Better | 131 | 67 | 42 | 240 | |
% Better | 67 | 70 | 69 | 68 | |
Self-reflection of MRBT’s benefit on water saving (MRB_WS) | 0 = No difference | 1 | 2 | 1 | 4 |
1 = Do not know | 65 | 28 | 18 | 111 | |
2 = Better | 130 | 66 | 42 | 238 | |
% Better | 66 | 69 | 69 | 67 | |
Self-reflection of MRBT’s benefit on household’s marketability (MRB_MKA) | 0 = No difference | 22 | 8 | 4 | 34 |
1 = Do not know | 169 | 77 | 53 | 299 | |
2 = Better | 5 | 11 | 4 | 20 | |
% Better | 3 | 11 | 7 | 6 | |
Self-reflection of MRBT’s benefit on market price received (MRB_MKP) | 0 = No difference | 22 | 9 | 4 | 35 |
1 = Do not know | 171 | 76 | 53 | 300 | |
2 = Better | 3 | 11 | 4 | 18 | |
% Better | 2 | 11 | 7 | 5 | |
MRBT adoption quality (AQ) index (mean value) | 5.1 | 5.6 | 4.9 | 5.2 |
Explanatory Variable | Weigh/Affecting Coefficient (βi) | |||
---|---|---|---|---|
Whole Population (n = 353) | ALS Type 1 (n = 196) | ALS Type 2 (n = 96) | ALS Type 3 (n = 61) | |
Intercept | 4.16723 ** | −3.112025 | 2.795705 | 535.074263 |
H_AGE_HEAD | 0.036484 | −0.023694 | 0.259528 * | 3.670878 |
H_AGE_MEAN | −0.059180 * | −0.036237 | −0.277310 * | −4.258127 |
H_EDU_HEAD | 0.336165 * | 0.100004 | 0.533685 | −0.345585 |
H_HH_SIZE | 0.085064 | 0.205301 | −1.837035 | 4.877359 |
H_LABOR | −0.485084 | −0.648082 | 0.896835 | −18.400223 |
H_DEPRATIO | −1.352001 | −2.185917 | 1.739649 | −92.624210 |
P_FARM_SIZE | 0.556649 | 2.511402 * | 9.995974 | −83.072594 |
H_FARM_PERS | 1.223084 | −1.811349 | −50.953806 | 97.441248 |
P_SALINITY | −0.127766 | −0.666194 | 0.595789 | −50.489758 |
P_WATER_TABLE | −0.632814 * | −0.360940 | −0.221991 | −100.267632 |
H_LIVESTOCK_PERS | −0.000019 | 0.001005 | 0.000280 | −0.000676 |
H_POULTRY | 0.000093 | 0.000037 | −0.000050 | 0.002230 |
H_GOAT | −0.000005 | −0.000424 | −0.000120 | −0.000134 |
H_SHEEP | 0.000077 *** | −0.000061 | 0.000052 | 0.000307 |
H_BUFFALO | 0.000003 | −0.000199 | −0.000097 | −0.001048 |
H_COW | 0.000008 | −0.000178 | −0.000045 | −0.000071 |
H_INCOME | 0.000036 * | 0.000096 *** | 0.000022 | −0.003875 |
H_INCOME_PERS | −0.000019 | −0.000204 * | 0.000010 | 0.008142 |
H_INCOME_AGR | −0.000046 ** | −0.000466 | −0.000042 | 0.002547 |
H_LOAN_ACCESS | −0.000004 | −0.001434 | 0.000007 | −0.006201 |
P_DISTANCE_FARM | −0.000488 ** | −0.000632 | −0.000619 | −0.012088 |
P_DISTANCE_TOWN | 0.000060 | 0.000016 | 0.000078 | 0.009058 |
H_NFLOORS | −0.647272 ** | −0.928635 * | −0.618283 | 8.672878 |
H_NROOMS | 0.300600 *** | 0.434100 *** | 0.343082 * | −4.747966 |
H_EQUIPMENT | −0.000137 *** | −0.000144 *** | −0.000197 *** | −0.005918 |
H_AC_EFFECTIVE | 0.220648 | 0.215050 | 1.478817 | 13.781440 |
H_WUA_EFFECTIVE | −0.192171 | 9.892515 | −0.885360 | 48.918104 |
H_AMA_EFFECTIVE | −0.107161 | 0.271273 | −1.004542 | 15.627895 |
H_AMA_MEMBER | 1.743556 *** | 1.116570 | 3.589761 ** | −20.984578 |
H_SDA_EFFECTIVE | 0.097971 | −0.087460 | −0.045027 | 27.589114 |
Model performance | ||||
Hosmer–Lemeshow test | Chi-square = 8.478, df = 8, p = 0.388 | Chi-square = 12.455 df = 8, p = 0.132 | Chi-square = 20.574, df = 8, p = 0.08 | Chi-square = 0.000 df = 8, p = 1.000 |
Correct prediction | 75.6% | 77.0% | 80.2% | 100% |
Area under ROC | 0.85 (p < 0.001) | 0.69 (p < 0.001) | 0.70 (p < 0.001) | 0.61 (p < 0.001) |
Explanatory Variable | Weight/Affecting Coefficient (βi) | |||
---|---|---|---|---|
Whole Sample Population (n = 353) | ALS Type 1 (n = 196) | ALS Type 2 (n = 96) | ALS Type 3 (n = 61) | |
Intercept | 12.031138 *** | 8.0533050 *** | 12.697623 ** | 21.784745 *** |
H_AGE_HEAD | −0.042868 | −0.0820910 | 0.023392 | 0.104024 |
H_AGE_MEAN | 0.003843 | 0.0293595 | −0.036492 | −0.182747 |
H_HH_SIZE | 0.699425 | 0.6011159 | 0.097752 | −1.990863 |
H_FARM_PERS | 1.098808 | 2.4674827 | 9.241878 | 2.672397 |
P_SALINITY | −0.082025 | −0.6731696 | −0.135969 | −0.678263 |
P_WATER_TABLE | −0.700973 | −0.4258870 | −0.662324 | −1.458162 |
H_POULTRY | 0.000067 | 0.0001706 | −0.000077 | −0.000006 |
H_GOAT | 0.000004 | −0.0001065 | −0.000116 | 0.000025 |
H_SHEEP | 0.000124 *** | 0.0000202 | 0.000163 ** | 0.000099 ** |
H_BUFFALO | −0.000003 | 0.0000396 | −0.000048 | −0.000019 |
H_COW | 0.000004 | 0.0000136 | −0.000007 | −0.000020 |
H_INCOME_AGR | −0.000007 | −0.0001021 | −0.000011 | 0.000006 |
H_INCOME_NAGR | 0.000055 *** | 0.0000649 *** | 0.000054 | −0.000081 |
P_DISTANCE_FARM | −0.000617 ** | −0.0005894 | −0.000283 | −0.000984 |
P_DISTANCE_TOWN | −0.000068 | −0.0001804 | 0.000445 | −0.000059 |
H_NFLOORS | −0.815685 ** | −0.8750639 | −0.855526 | −0.549728 |
H_NROOMS | 0.376476 *** | 0.4222141 ** | 0.388385 | 0.125627 |
H_EQUIPMENT | −0.000205 *** | −0.0001949 *** | −0.000210 *** | −0.000253 *** |
H_AC_EFFECTIVE | 0.485688 | 0.4837751 | 0.785828 | 0.217742 |
H_WUA_EFFECTIVE | −0.175095 | 4.2093391 ** | −1.467264 | 0.155717 |
H_AMA_EFFECTIVE | −0.509836 | 0.6123337 | −1.508532 * | −1.035367 |
H_AMA_MEMBER | 3.463651 *** | 1.6777887 | 3.459019 | 4.216389 |
H_SDA_EFFECTIVE | 0.099145 | −0.4385565 | −0.095141 | 1.003309 |
Model performance | ||||
F-test | F = 6.404 df = 23 p < 0.001 | F = 4.275 df = 23 p < 0.001 | F = 1.872 df = 23 p < 0.05 | F = 3.209 df = 23 p < 0.001 |
Goodness-of-fit | R = 0.56 R2 = 0.31 adjusted-R2 = 0.26 | R = 0.60 R2 = 0.36 adjusted-R2 = 0.28 | R = 0.61 R2 = 0.37 adjusted-R2 = 0.17 | R = 0.82 R2 = 0.67 adjusted-R2 = 0.46 |
Approach | Category of Determinants | Number of Determinants | Added Value | Limitation-Alternative | |
---|---|---|---|---|---|
MRBT Adoption (yes/no) | MRBT Adoption Quality (AQ Index) | ||||
Traditional approach: Use of sample-whole analysis only (business-as-usual) | Total determinants for MRBT adoption | 10 | 7 | Utilize large size of whole sample to increase statistical power | Findings do not necessarily reflect widespread effects |
ALS typology-based approach: Complementary use of both ALS type-specific and whole-sample analyses (this study) | Common determinants across ALS types | 2 | 1 | Confirm widespread effects | Inferential statistical models for small ALS groups have poor performance, probably for two reasons:
|
ALS type-specific determinants—category 1 | 4 | 3 | Identify concrete household groups subjected to the effects found in whole-sample analysis | ||
ALS type-specific determinants—category 2 | 3 | 2 | Discover new causal effects that cannot be done by traditional approach | ||
Determinants found only in whole-sample analysis | 5 | 3 | Utilize large size of whole sample to increase statistical power, thus off-setting the problem for the small ALS group | ||
Total determinants for MRBT adoption | 14 | 9 | Capture more quantity and comprehension of causalities in MRBT adoption |
© 2019 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
Share and Cite
Le, Q.B.; Dhehibi, B. A Typology-Based Approach for Assessing Qualities and Determinants of Adoption of Sustainable Water Use Technologies in Coping with Context Diversity: The Case of Mechanized Raised-Bed Technology in Egypt. Sustainability 2019, 11, 5428. https://doi.org/10.3390/su11195428
Le QB, Dhehibi B. A Typology-Based Approach for Assessing Qualities and Determinants of Adoption of Sustainable Water Use Technologies in Coping with Context Diversity: The Case of Mechanized Raised-Bed Technology in Egypt. Sustainability. 2019; 11(19):5428. https://doi.org/10.3390/su11195428
Chicago/Turabian StyleLe, Quang Bao, and Boubaker Dhehibi. 2019. "A Typology-Based Approach for Assessing Qualities and Determinants of Adoption of Sustainable Water Use Technologies in Coping with Context Diversity: The Case of Mechanized Raised-Bed Technology in Egypt" Sustainability 11, no. 19: 5428. https://doi.org/10.3390/su11195428
APA StyleLe, Q. B., & Dhehibi, B. (2019). A Typology-Based Approach for Assessing Qualities and Determinants of Adoption of Sustainable Water Use Technologies in Coping with Context Diversity: The Case of Mechanized Raised-Bed Technology in Egypt. Sustainability, 11(19), 5428. https://doi.org/10.3390/su11195428