Can Network Theory-based Targeting Increase Technology Adoption?

Last registered on August 06, 2018

Pre-Trial

Trial Information

General Information

Title
Can Network Theory-based Targeting Increase Technology Adoption?
RCT ID
AEARCTR-0002017
Initial registration date
August 03, 2018

Initial registration date is when the trial was registered.

It corresponds to when the registration was submitted to the Registry to be reviewed for publication.

First published
August 06, 2018, 12:17 AM EDT

First published corresponds to when the trial was first made public on the Registry after being reviewed.

Locations

Primary Investigator

Affiliation
Northwestern University

Other Primary Investigator(s)

PI Affiliation
Yale University
PI Affiliation
College of William and Mary
PI Affiliation
UC-Berkely

Additional Trial Information

Status
Completed
Start date
2010-12-01
End date
2014-11-01
Secondary IDs
Abstract
In order to induce farmers to adopt a productive new agricultural technology, we apply simple and complex contagion diffusion models on rich social network data from 200 villages in Malawi to identify seed farmers to target and train on the new technology. A randomized controlled trial compares these theory-driven network targeting approaches to simpler strategies that either rely on a government extension worker or an easily measurable proxy for the social network (geographic distance between households) to identify seed farmers. Both reduced form and structural estimates suggest a learning environment in which most farmers need to learn about the technology from multiple people before they adopt themselves.
External Link(s)

Registration Citation

Citation
Beaman, Lori et al. 2018. "Can Network Theory-based Targeting Increase Technology Adoption?." AEA RCT Registry. August 06. https://doi.org/10.1257/rct.2017-1.0
Former Citation
Beaman, Lori et al. 2018. "Can Network Theory-based Targeting Increase Technology Adoption?." AEA RCT Registry. August 06. https://www.socialscienceregistry.org/trials/2017/history/32687
Sponsors & Partners

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Experimental Details

Interventions

Intervention(s)
The PIs conducted a randomized field experiment to evaluate the use of network-based diffusion theory to select optimal farmers to train in the use of pit planting, a new agricultural technology to the area, so that knowledge and adoption of it are best spread through communities. The Malawian Ministry of Agriculture's current method of introducing and spreading new technologies was for an extension agent to select a "seed" farmer to train in the technology, and later encouraging the farmer to discuss it with neighbors. The PIs used the status quo method as a benchmark to test three different methods of selecting seed farmers using network-based diffusion theory.

The PIs chose to test threshold diffusion models, in which individuals adopt a new technology if they are connected to a tipping-point number of other adopters. Different formulations of the model yield different predictions of the best seed farmer in a given social network. The PIs focus on two versions of the threshold model. The first, a "simple contagion" model, only requires that an individual be connected to one other adopter to be induced to adopt also. In a simple contagion learning environment, seed farmers with the fewest redundant connections would be the most effective. The second, a "complex contagion" model, requires connections to multiple adopters to induce an individual to adopt as well. In a complex contagion learning environment, some level of redundant connections is desirable so that a threshold number of connected adopters is met.

The field experiment included four treatment arms. Two hundred Malawian villages were randomly assigned to have two seed farmers selected according to a simple contagion model, a complex contagion model, a second complex contagion model where geographic proximity is used as a proxy for connectedness (the "geo" model) , and the benchmark method of relying on extension agents to choose seed farmers. Optimal seeds in the threshold model villages were chosen using a social network census completed prior to the intervention for every sample village. The seed farmers were then trained to use pit planting to cultivate their fields.

The PIs found that the theory-driven selection of seed farmers led to greater diffusion of pit planting than the benchmark method, especially on the extensive margin (whether anyone adopts at all). This indicates that simply changing 'who' is trained based on network theory can increase adoption of new technologies. In addition, while the 'geo' treatment produces some gains relative to the benchmark, geographic proximity is a poor proxy for social network connectedness. Lastly, estimates suggest that a majority of people require more than one connection to an adopter to themselves adopt, indicating a complex contagion learning environment.
Intervention Start Date
2011-04-01
Intervention End Date
2012-04-30

Primary Outcomes

Primary Outcomes (end points)
Aware of Pit Planting, Conversations with other farmers about Pit Planting, Pit Planting Adoption Rate, Pit Planting Number of Adopters
Primary Outcomes (explanation)

Secondary Outcomes

Secondary Outcomes (end points)
Secondary Outcomes (explanation)

Experimental Design

Experimental Design
The PIs used a linear threshold model as the theoretical basis for the seed farmer selection and technology dissemination strategy. In this model, an individual will adopt a new technology once they are connected to a tipping-point number of adopters. In order to identify the optimal seed farmers under each model, the researchers collected social network data during a household census of all the sample villages. Using this data, they created network adjacency matrices for the households in every village. Next, they conducted hundreds of simulations of the intervention to identify which pair of individuals would be optimal seed farmers under simple and complex contagion environments. To identify the optimal seeds in a simple contagion environment, the PIs conducted simulations with the threshold number of connected adopters set at one. To identify optimal seeds in a complex contagion environment, the PIs specified the threshold number of connections as two. The simulations were run for four periods. Afterwards, the PIs used the average village-level adoption rate for each pair of possible seed farmers to determine the optimal seeds for each village for both contagion models.

Villages were then randomly assigned to one of the four treatment arms. Seed farmers for villages in the simple contagion treatment arm were selected by their effectiveness in simulations assuming a simple contagion environment. Likewise, seed farmers for villages in the complex contagion and geographic treatment arms were selected by their effectiveness in simulations assuming a complex environment. Training was the same for all seed farmers; the experimental variation only altered the theoretical basis for choosing who to train. After training the seed farmers, the PIs followed up with three rounds of households surveys over the next three years. They collected data on farming techniques, input use, yields, assets, and other characteristics from a sample of 5,600 households.
Experimental Design Details
Randomization Method
Randomization performed in office by computer
Randomization Unit
Village
Was the treatment clustered?
Yes

Experiment Characteristics

Sample size: planned number of clusters
200 villages
Sample size: planned number of observations
5600 households
Sample size (or number of clusters) by treatment arms
50 villages in simple contagion diffusion treatment group, 50 villages in complex contagion diffusion treatment group, 50 villages in geographic diffusion treatment group, 50 villages in benchmark group
Minimum detectable effect size for main outcomes (accounting for sample design and clustering)
IRB

Institutional Review Boards (IRBs)

IRB Name
Northwestern University Institutional Review Board
IRB Approval Date
Details not available
IRB Approval Number
STU00030251

Post-Trial

Post Trial Information

Study Withdrawal

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Intervention

Is the intervention completed?
Yes
Intervention Completion Date
April 30, 2012, 12:00 +00:00
Data Collection Complete
Yes
Data Collection Completion Date
December 31, 2013, 12:00 +00:00
Final Sample Size: Number of Clusters (Unit of Randomization)
200 villages
Was attrition correlated with treatment status?
Final Sample Size: Total Number of Observations
5600 households
Final Sample Size (or Number of Clusters) by Treatment Arms
50 villages in simple contagion diffusion treatment group, 50 villages in complex contagion diffusion treatment group, 50 villages in geographic diffusion treatment group, 50 villages in benchmark group
Data Publication

Data Publication

Is public data available?
No

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Program Files

Program Files
Reports, Papers & Other Materials

Relevant Paper(s)

Abstract
In order to induce farmers to adopt a productive new agricultural technology, we apply simple and complex contagion diffusion models on rich social network data from 200 villages in Malawi to identify seed farmers to target and train on the new technology. A randomized controlled trial compares these theory-driven network targeting approaches to simpler strategies that either rely on a government extension worker or an easily measurable proxy for the social network (geographic distance between households) to identify seed farmers. Both reduced form and structural estimates suggest a learning environment in which most farmers need to learn about the technology from multiple people before they adopt themselves.
Citation
L. Beaman, A. BenYishay, J. Magruder and A.M. Mobarak, "Can Network Theory based Targeting Increase Technology Adoption?" Mimeo.

Reports & Other Materials