Open Access

Determinants of the Utilization of Digital Technologies by Smallholder Farmers in Eastern Cape Province, South Africa

,  and   
Sep 30, 2024

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Fig. 1.

Study siteSource: Municipalities of South Africa, 2023.
Study siteSource: Municipalities of South Africa, 2023.

Fig. 2.

Innovation of diffusion modelSource: Rogers, 1995.
Innovation of diffusion modelSource: Rogers, 1995.

Factors affecting the adoption and utilization of digital technologies

Construct Factors Author(s)
Demographic Age (Shang et al., 2021) (Michels, von Hobe and Musshoff, 2020) (Khan et al., 2022) (Groher, Heitkämper and Umstätter, 2020) (Michels et al., 2020)
Gender (Drewry et al., 2019) (Groher, Heitkämper and Umstätter, 2020)
Marital status (Kaur, Walia and Singh, 2022) (Reisdorf, 2011) (Vimalkumar, Singh and Sharma, 2021)
Educational levels (competences) (Shang et al., 2021) (Drewry et al., 2019) (Carrer et al., 2022) (Khan et al., 2022) (Michels et al., 2020) (Giua, Materia and Camanzi, 2022a)
Tenure (Shang et al., 2021)
Farming experience (Shang et al., 2021) (Carrer et al., 2022)

Social Social influence (Giua, Materia and Camanzi, 2022a) (Sood, Bhardwaj and Sharma, 2022)
Farm succession (Shang et al., 2021)

Economic Employment status (Rodriguez Castelan et al., 2021)
Income (Shang et al., 2021) (Drewry et al., 2019)
Source of income (Shang et al., 2021)

Farm characteristics Enterprise (Shang et al., 2021)
Farm size (Drewry et al., 2019) (Carrer et al., 2022) (Khan et al., 2022) (Michels et al., 2020)
Labour (Shang et al., 2021)

Institutional Extension (Musyoki et al., 2022)
Farmer groups (Giua, Materia and Camanzi, 2022a)
Distance to market (Musyoki et al., 2022)

Technology characteristics Technology attributes, performance expectation, complexity (Giua, Materia and Camanzi, 2022a)
(Shang et al., 2021)

Descriptive statistics

Question Answer %

1 2 3
Used any digital technologies Yes 55.36
No 44.64

Types digital technologies used Digital sensors 1.55
ICT (smartphones) 31.01
Radio 27.91
Smartphone and radio 39.53

Extent of digital technologies use To some extent 47.29
Large extent 22.48
Very large extent 30.23

Duration of use (years) 1–4s 65.12
5–10 29.46
11–15 3.88
Above 15 years 1.55

Are digital technologies beneficial Yes 89.06
No 10.94

How are digital technologies beneficial Assists in accessing farming information 25.44
Assist in seeking farming advices 20.18
Improve communication between farmers and extension officers 16.67
Assist in tracking market prices 4.39
Assist farmers in looking for market to sell the produce 5.26
Help to get information related to climate change /follow daily weather reports 26.32
Communication between extension officers & farmers and also to look for market 1.75

Would you continue to use digital technologies Yes 83.59
No 16.41

Why would you continue to use digital technologies Helps to track market and market prices 3.77
Helps to learn about improved seeds and get educated about different cropping systems 30.19
Helps to get climate change information 27.36
Digital technologies improve farming skills and knowledge 33.02
Promote better production and marketing 5.66

Extent of willingness to continue using digital technologies Not at all 5.36
To some extent 25.89
Large extent 41.07
To a very large extent 27.68

Why would you not continue to use digital technologies Not beneficial to farmers' need 44.44
Expensive 11.11
Poor network coverage 5.56
Expensive data and poor network coverage 33.33
Expensive data bundles 5.56

Do you recommend digital technologies yes 85.04
No 14.96

Reason for recommending digital technologies Digital technologies improve and make farming activities easy and interesting 17.39
Digital technologies bridge the gap between extension officers & farmers and promote information dissemination 25.22
Helps to access farm loans 5.22
Provide farmers with knowledge and information about agriculture 43.48
Not recommending it because it is expensive 6.96
Improve farmers' marketing skills 1.74

Factors affecting the utilization of digital technologies by smallholder farmers in Port St Johns and Ingquza Hill Local Municipalities

Variable β Std. Error Pvalue Exp(B)
Gender 0.05 0.34 0.89 1.05
Age −0.28 0.16 0.09 0.76
Marital status 0.37 0.20 0.06 1.45
Education −0.91 0.25 0.00 0.40
Employment status −0.11 0.15 0.44 0.89
Income source −0.29 0.11 0.01 0.75
Monthly income −0.28 0.25 0.25 0.75
Household size −0.29 0.24 0.23 0.75
Farming activity −0.10 0.17 0.54 0.90
Tenure −0.49 0.69 0.48 0.61
Land size 1.14 0.30 0.00 3.13
Constant 2.41 1.02 0.02 11.19
Model summary
χ2 60.38 0.00
−2 Log Likelihood 259.94
Nagelkerke R2 0.31

Factors affecting the extent of digital technology utilization by smallholder farmers in Port St Johns and Ingquza Hill Local Municipalities

Variable β Std. Error Pvalue

1 2 3 4 5
Gender Male 1.37 0.78 0.08
Female*

Age 30–39 6.01 1.83 0.00
40–49 4.98 1.85 0.01
50–59 5.12 1.80 0.00
60–69 6.81 1.69 0.00
70 and above*

Marital status Single −2.64 1.52 0.08
Married −2.83 1.54 0.07
Divorced −24.33 0.00
Widower/widow*

Education No formal education −9.03 2.48 0.00
Primary education −2.33 1.36 0.09
Secondary education −2.83 1.39 0.04
Tertiary education*

Employment status Unemployed 12.39 4.98 0.01
Formal employed 11.04 5.38 0.04
Self-employed 9.24 5.44 0.09
Full-time farmer 12.16 5.23 0.02
Part-time farmer 12.00 5.82 0.04
Retiree*

Source of income Social grants −0.81 2.46 0.74
Salary/wages −2.35 3.56 0.51
Agricultural activities −2.05 2.89 0.48
Remittances −18.37 9203.61 1.00
Social grant and Agricultural activities −3.72 2.81 0.19
Retirement pension funds*
Social grant and remittances*

Income level R500–R1000 −2.28 3.04 0.45
R1001–R5000 −0.91 2.71 0.74
R5001–10000 0.45 2.60 0.86
More than R10000a

Household size 1–5 people −20.59 1.23 0.00
6–10 people −19.35 1.18 0.00
11–15 people −14.35 0.00
Above 15 people*

Farming enterprise Crop production only 2.06 0.67 0.00
Livestock production only −0.08 1.31 0.95
Mixed farming*

Land tenure Communal land −2.81 1.38 0.04
Leased*

Land size (ha) 1–5 −2.96 2.02 0.14
6–10 0.71 2.33 0.76
11–20*

Model summary
χ2 397.95 0.00
–2 Log Likelihood 150.85
Nagelkerke R2 0.68

Variables used in the logistic and ordered logistic models

Variable Explanation Measurement Expected sign
Dependent
Y (logistic regression model) Utilization of digital technologies Binary: 0 – utilisation, 1 – otherwise
Y (ordered logistic regression model) Extent of utilizing digital technologies Ordered: 0 – to some extent, 1 – large extent, 2 – very large extent

Independent
GEN Gender Nominal: 0 – male, 1 – female
AGE Age (years) Ordinal: 0 – 30–39, 1 – 40–49, 2 – 50–59, 3 – 60–69, 4 – 70 and above
MARST Marital status Nominal: 0 – married, 1 – not married
EDU Education level Ordinal: 0 – none, 1 – primary, 2 – secondary, 3 – tertiary +
EMPL Employment status Nominal: 0 – full-time farmer, 1 – part-time farmer
SOUINC Source of income Categorial: 0 – social grant, 1 – salary, 2 – agricultural activities, 4 – remittances +/−
MI Monthly income Ordinal: 0 – less than R1000, 2 – R1001–R5000, 3 – R5001–R10000, 4 – more than R10000 +
HHS Household size Ordinal: 0 – 1–5, 1 – 6–10, 2 – 11–15, 3 – 15 and above +/−
FEN Farming enterprise 0 – crop production, 1 – livestock production, 2 – mixed farming +/−
TEN Tenure Nominal: 0 – communal, 1 – leased +
FZ Farm size (ha) Ordinal: 0 – 1–5, 1 – 6–10, 2 – 11–20 +