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Frontiers of Agricultural Science and Engineering

ISSN 2095-7505

ISSN 2095-977X(Online)

CN 10-1204/S

Postal Subscription Code 80-906

Front. Agr. Sci. Eng.    2022, Vol. 9 Issue (4) : 642-654    https://doi.org/10.15302/J-FASE-2021423
RESEARCH ARTICLE
CHALLENGES AND CAPACITY GAPS IN SMALLHOLDER ACCESS TO DIGITAL EXTENSION AND ADVISORY SERVICES IN KENYA AND UGANDA
Monica K. KANSIIME1(), Idah MUGAMBI1, Harrison RWARE1, Christine ALOKIT2, Caroline ALIAMO2, Feng ZHANG3, Jakob LATZKO4, Puyun YANG4, Daniel KARANJA1, Dannie ROMNEY1
1. CAB International Africa, P.O. Box 633-00621, Nairobi, Kenya
2. CAB International, Lugard Avenue, Entebbe, Uganda
3. CABI East Asia, Beijing 100081, China
4. Food and Agriculture Organization of the United Nations (FAO), Research and Extension Unit (OINR), Office of Innovation, 00153 Rome, Italy
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Abstract

● Seventy-eight percent of farmers accessed extension and advisory services from electronic sources dominated by radio.

● Low digital literacy and high cost of internet and digital devices were key barriers to digital extension and advisory services use.

● Farmers need information to make decisions, e.g., fertilizers, seeds or pesticides to use.

● Integrating digital and face-to-face methods can enhance inclusive scaling of extension activities.

An assessment of the challenges and capacity gaps in smallholder access to digital extension and advisory services (EAS) was made by surveying 197 female and 239 male farmers in Kenya and Uganda. Non-digital extension approaches remain dominant but at least 78% of farmers accessed EAS from electronic sources dominated by radio. This is attributed to the fact that ownership of radios was more widespread than of other digital devices. Challenges that particularly limit the use of digital services included low digital literacy and prohibitive cost of internet and mobile devices. Female and elderly farmers were more likely to report these challenges than their counterparts. Logistic regression model results show that ownership of digital devices, participation in post-production activities, and access to extension were enablers of digital EAS use. Farmers mentioned gaps in obtaining information on crop pest/disease diagnosis and management, fertilizer application, pesticide safety and quality seed. Given the diversity in smallholder technological capabilities and information needs, the recommendations made include integration of digital communication within multimode advisory services that use different but linked communication channels, continued farmer digital innovation capacity enhancement, and participatory design approaches that deliver relevant and actionable information for inclusive scaling of extension activities.

Keywords advisory service      agricultural extension      digital extension      digital literacy     
Corresponding Author(s): Monica K. KANSIIME   
Just Accepted Date: 09 September 2021   Online First Date: 09 October 2021    Issue Date: 07 November 2022
 Cite this article:   
Monica K. KANSIIME,Idah MUGAMBI,Harrison RWARE, et al. CHALLENGES AND CAPACITY GAPS IN SMALLHOLDER ACCESS TO DIGITAL EXTENSION AND ADVISORY SERVICES IN KENYA AND UGANDA[J]. Front. Agr. Sci. Eng. , 2022, 9(4): 642-654.
 URL:  
https://academic.hep.com.cn/fase/EN/10.15302/J-FASE-2021423
https://academic.hep.com.cn/fase/EN/Y2022/V9/I4/642
Local government area and enumeration sub-counties Biophysical characteristics Production activities Sampled households
Kenya
 Baringo County   - Eldama Ravin (rural)   - Koibatek (peri-urban) Semiarid, receiving an average of 745 mm of rainfall per year Livestock farming is dominant and crop farming under irrigation schemes 56
 Kirinyaga county   - Kirinyaga East, West (rural)   - Mwea (peri-urban) The annual rainfall is 996 mm Rice production at Mwea irrigation scheme. Coffee and tea grown in the cooler areas 55
 Nakuru county   - Mangu (rural)   - Rongai (peri-urban) The rainfall is around 762 mm per year Main crops include: maize, beans, potato and wheat. Horticultural crops are fruits, vegetables and flowers 64
 Tharaka Nithi county   - Igamba ngombe (rural)   - Tharaka (peri-urban) Rainfall is around 853 mm per year, and poorly distributed on lower areas Cultivation of tea, coffee, maize, cowpeas, pigeon peas, tobacco and other food crops 53
Uganda
 Kiryandongo district   - Kigumba (rural)   - Kiryandongo town council (peri-urban) Average rainfall of 1259 mm with high variability Smallholder agriculture mainly cereal crops and sunflower. About 6.2% of the total farmland is under large scale commercial farming 53
 Luwero district   - Butuntumula (rural)   - Luwero (peri-urban) Average rainfall of 1,270 mm Small to large scale farming but majority are smallholders. Banana-coffee farming system 49
 Lyantonde district   - Mpumude (rural)   - Lyantonde town council (peri-urban) Average rainfall range of 915 mm Mainly smallholders with agro-pastoral practices 54
 Tororo district   - Merikit (rural),   - Tororo Municipality (peri-urban) Average rainfall range of 1215− 1328 mm Small-scale subsistence mainly annual crops 52
Total 436
Tab.1  Main biophysical characteristics and production activities of study locations and sample sizes
Descriptive Kenya Uganda Overall
Mean Std. Dev. Mean Std. Dev. Mean Std. Dev.
Respondent sex (male = 1) 0.56 0.50 0.54 0.50 0.55 0.50
Respondent age (years) 44.89 15.52 45.04 15.36 44.96 15.43
Household size 5.16 2.14 7.21*** 3.28 6.14 2.93
Location (peri-urban = 1) 0.48 0.50 0.56** 0.50 0.52 0.50
Farm size (ha) 1.19 1.36 2.36*** 5.35 1.75 3.86
Tropical livestock units 2.52 0.48 2.28*** 0.26 2.39 0.27
Education level
  Primary 0.36 0.48 0.47** 0.50 0.41 0.49
  Secondary/vocational 0.41 0.49 0.38 0.49 0.39 0.49
  Tertiary 0.22 0.41 0.09*** 0.29 0.16 0.37
  None 0.02 0.13 0.06** 0.24 0.04 0.19
Ownership of digital devices (yes = 1)
  Radio 0.92 0.28 0.62*** 0.49 0.77 0.42
  TV 0.70 0.46 0.30*** 0.46 0.51 0.50
  Feature phone 0.69 0.46 0.86*** 0.35 0.77 0.42
  Smart phone 0.64 0.48 0.19*** 0.39 0.43 0.50
Farm orientation (commercial = 1) 0.17 0.37 0.05*** 0.21 0.11 0.31
Primary activity
  Farming 0.91 0.29 0.90 0.30 0.90 0.30
  Business 0.02 0.13 0.02 0.15 0.02 0.14
  Salaried employment 0.05 0.21 0.06 0.24 0.06 0.23
  Other 0.03 0.16 0.01 0.12 0.02 0.12
Agribusiness activities (yes = 1)
  Produce aggregation/transportation 0.43 0.47 0.10*** 0.23 0.29 0.40
  Produce selling 0.78 0.42 0.25*** 0.43 0.52 0.50
  Value addition and processing 0.03 0.16 0.04 0.20 0.03 0.18
  Service delivery 0.06 0.23 0.07 0.25 0.06 0.24
  Input sales 0.03 0.17 0.00** 0.00 0.02 0.13
Tab.2  Socio-economic and demographic characteristics of respondents in Kenya and Uganda
Variable Kenya Uganda Total
Farmer accessed extension services 96 79*** 88
Farmer did not access any extension advice 4 21*** 12
Source of extension advice
  Digital extension 92 63*** 78
  Conventional extension 75 60*** 67
  Both digital and conventional 96 79*** 88
Conventional extension
  Friends/family 52 48 50
  Local community 41 36 39
  Extension 26 54*** 38
  Agricultural input dealer 43 23*** 35
  Farmer cooperative 16 20 18
  Worship places 10 2** 6
  Print materials 4 4 4
Digital extension and devices
  Radio 84 76*** 80
  Television 58 36*** 47
  Smartphone 23 5*** 14
  Feature phone 9 5 7
  Computer 5 1** 3
  Community radio 1 3 2
Tab.3  Sources of agricultural advice as mentioned by farmers in Kenya and Uganda (%)
Variable Kenya Uganda Remote areas Townships/peri-urban
Female Male Female Male Female Male Female Male
Access to digital EAS 90 93 46 77*** 69 85*** 76 91***
Digital devices used to access EAS
  TV 46 60** 20 25 31 40 42 55*
  Radio 76 78 32 61*** 56 72** 58 71**
  Mobile phone 22 35** 2 9** 14 22 13 30***
Tab.4  Access to digital EAS by female and male farmers by country and location (%)
Information type TV Radio Feature phone Smart phone
Managing crop pests and diseases 59 54 17 47
Managing livestock vectors and diseases 57 57 39 45
Weather information 53 48 28 30
Livestock production 36 31 0 9
Where to buy seed, fertilizers, pesticides etc. 29 37 11 30
What type of seed to use 27 34 17 28
Market pricing information 22 21 22 17
Crop agronomy (GAPs) 19 17 6 6
Credit services 9 15 0 6
Alerts on agricultural activities e.g., time of planting 8 12 17 11
Purchase and sale of produce 8 6 6 17
Processing and value addition 2 2 0 6
Tab.5  Information accessed from digital devices by farmers in Kenya (%)
Information type TV Radio Feature phone Smart phone
Managing crop pests and diseases 72 63 40 50
Managing livestock pests and diseases 46 27 20 67
What type of seed to use 46 42 40 0
Alerts on agricultural activities e.g., time of planting 41 38 20 0
Crop agronomy (GAPs) 35 22 60 0
Livestock production 33 18 20 33
Where to buy seed, fertilizers, pesticides etc. 24 42 0 50
Weather information 22 43 0 17
Market pricing information 20 20 0 33
Processing and value addition 13 8 20 0
Purchase and sale of produce 11 9 0 0
Credit services 2 2 0 0
Tab.6  Information accessed from digital devices by farmers in Uganda (%)
Reason Kenya Uganda Total
I am not aware of these services 21 59 52
The services are too expensive 37 42 41
I do not know how to use these types of services 16 44 38
I do not own a phone/radio to access these services 16 42 37
These types of services are not available in my area 16 24 23
I do not have the time to use them 16 23 22
I have trouble reading the content 26 18 20
The services are not available on my phone network 11 18 16
There is no network coverage in my area 0 17 13
The content is not in a language I understand 11 10 10
The content is not relevant to me 16 1 4
Tab.7  Reasons for not using digital extension devices (%)
Explanatory variable Kenya Uganda
Odds ratio Std. Err. Odds ratio Std. Err.
Location (remote = 0) 2.06 1.60 0.99 0.40
Respondent gender (female = 0) 0.60 0.53 3.19** 1.42
Respondent age (chronological are in years) 1.00 0.03 0.98 0.01
Education level: primary 132** 321 0.64 0.48
Education level: secondary/vocational 11.53 27.11 1.21 1.00
Education level: tertiary 3.73 8.94 1.50 1.88
Household size (# of household members) 0.95 0.24 1.08 0.08
Radio ownership (yes = 1) 5.34 62.9 8.55 3.68
TV ownership (yes = 1) 23.1*** 23.4 5.55*** 3.10
Feature phone ownership (yes = 1) 58.4** 4.79 0.72 0.44
Smart phone ownership (yes = 1) 7.26** 7.44 1.48 1.00
Farm size (hectares) 0.98 0.13 1.01 0.04
Tropical livestock units 1.25 0.34 0.94 0.05
Farm orientation (commercial = 1) 0.92 0.90 1.00
Farmer engages in non-farm production (yes = 1) 0.06** 0.08 1.16 0.57
Extension service access (other sources) 7.05** 5.76 2.48** 1.04
Constant 0.01** 0.02 0.22** 0.31
Observations 228 208
Chi-square 67.03 91.55
Probability 0.000 0.000
Pseudo R 2 0.512 0.344
Tab.8  Logistic regression results of access to digital EAS by farmers
Fig.1  Information that is difficult for smallholders to access in Kenya and Uganda.
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