Design and analysis of best-worst scaling studies in agricultural research
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Date
2026
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Department of Agricultural Statistics, College of Agriculture, Vellayani
Abstract
The research study entitled “Design and analysis of Best-Worst Scaling studies
in agricultural research” was undertaken at College of Agriculture, Vellayani, during
2023-2025. The primary objective of the study was to develop a comprehensive web
application for designing suitable questionnaires and analysing data for Best-Worst
Scaling (BWS) experiments in agriculture, guided by insights obtained from a
bibliometric analysis of agricultural studies employing the BWS approach.
In agriculture, effective decision-making depends on understanding the
preferences and priorities of various stakeholders, including farmers, consumers,
researchers, and policymakers. Traditional preference elicitation techniques often fall
short in capturing subtle distinctions among choices. BWS offers a robust alternative
for quantifying stakeholder preferences across domains such as technology adoption,
agricultural policies, consumer behaviour, and resource prioritisation.
A bibliometric analysis of agricultural BWS literature from 2011 to 2025 was
conducted to identify how BWS has been applied, the experimental situations where the
three cases of BWS are adopted, commonly used design methodologies, and the
analytical approaches used. These findings provided clarity on current practices and
guided what features and analytical capabilities needed to be prioritised in the system
development for this research.
Despite its growing use, researchers often face challenges in designing BWS
questionnaires and analysing the resulting data, particularly when dealing with multiple
attributes, complex profiles, or multi-profile choice sets. Manual generation of choice
sets can be time-consuming and prone to errors, while advanced analytical models
require considerable statistical expertise. These challenges underscore the need for an
accessible and efficient tool to streamline both stages of BWS research.
To address this gap, the web application, named PEAR-BWS (Preference
Evaluation in Agricultural Research using Best-Worst Scaling), was developed using
the R Shiny framework. It consists of two core modules, Questionnaire Generation and
Statistical Analysis, offering an integrated environment for generating BWS
questionnaires and analysing response data, without the need for programming skills.
The Questionnaire Generation module enables users to build BWS-based choice sets
for all three BWS cases (Object, Profile, and Multi-profile), ensuring balanced
representation of items and profiles. The Statistical Analysis module integrates multiple
analytical approaches, including Count Analysis, Multinomial Logit, Paired, Marginal,
Marginal Sequential, Hierarchical Bayesian estimation, and Latent Class Analysis
models. All questionnaire structures and analysis results generated from both modules
can be downloaded as Word documents, facilitating direct use in research reporting,
thesis writing, publication work, and field data collection.
To demonstrate its analytical capabilities, three hypothetical model datasets
were constructed for the three BWS cases, reflecting realistic response structures and
consistent scoring (1 for best, -1 for worst, and 0 for others). An online survey conducted
among students from different agricultural universities evaluated the usability and
performance of the application. The feedback indicated a high level of user satisfaction,
highlighting its efficiency and practical relevance.
Overall, the study presents PEAR-BWS as a comprehensive and user-friendly
tool that simplifies the design and analysis of BWS experiments, thereby enhancing
accessibility and promoting evidence-based decision-making in agricultural research.
The work provides a foundation that can be further expanded in the future by integrating
more analytical methods with enhanced visualisation and direct data collection
functionality within the web application.
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Keywords
Agricultural Statistics
Citation
176702