Abstract

Since the introduction of Discrete Choice Analysis, countless efforts have been made to enhance the efficiency of data collection through choice experiments and to improve the behavioural realism of choice models. One example development in data collection are best-worst discrete choice experiments (BWDCE), which have the benefit of obtaining a larger number of observations per respondent, allowing for reliably estimating choice models even with smaller samples. In SWDCE, respondents are asked to alternatingly select the ‘best’/‘worst’ alternatives, until the choice set is exhausted. The use of BWDCE raises the question of decision-rule consistency through the stages of the experiment. We challenge the notion that the same fully compensatory decision rule is utilised throughout the experiment. We hypothesize that respondents may utilise one decision rule for selecting the ‘best’ and another for selecting the ‘worst’ alternatives. To test our hypothesis, we developed a model that combines the SBWMNL model for modelling best-worst data and the μRRM model that can account for variations in decision rules. Our results show that decision-rule heterogeneity does seem to be present in BWDCE: it is more likely that ‘best’ choices are made using a fully compensatory decision rule (maximising utility), whereas ‘worst’ choices are more likely made using a non-compensatory decision rule (minimising regret). Such behaviour is largely similar to how image theory describes the decision-making process in complex situations. Our findings give choice modellers new insight into the behaviour of respondents in best-worst experiments and allows them to represent their behaviour more accurately.

Highlights

  • Since the introduction of Discrete Choice Analysis (DCA), it has seen numerous extensions to the data collection process, survey design and modelling approaches, with the goal of developing a more realistic representation of users’ behaviour and to collect data more efficiently

  • Best Worst Discrete Choice Experiments (BWDCE) are a type of best-worst scaling (Case 3 of best-worst scaling (Flynn, 2010)) that is most similar to traditional Stated Choice (SC) experiments as it includes a set of alternatives, described by their respective attributes; respondents are asked to select the alternative they see as best/worst

  • Best-worst data collection techniques have become popular in recent years, due to their ability to capture a larger number of observations in smaller samples, enabling discrete choice analyses to be carried out for smaller populations/samples and allowing researchers with a smaller budget to obtain sufficient observations for discrete choice model estimation

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Summary

Introduction

Since the introduction of Discrete Choice Analysis (DCA), it has seen numerous extensions to the data collection process, survey design and modelling approaches, with the goal of developing a more realistic representation of users’ behaviour and to collect data more efficiently. BWDCE evolved from ranking experiments – where respondents are shown the alternatives and asked to rank them based on their preference – in order to reduce the mental burden of respondents and increase the efficiency of the data collection process (in the sense that from each choice set, multiple observations are obtained), by (1) asking them to select the best/worst alternative in a choice set and (2) removing said alternative. This process iterates until the choice set is exhausted and an implied ranking of the alternatives is obtained. Using a data collection technique where respondents are asked to alternatingly select best and worst options, raises the question of whether both decisions are made in the same way: is the decision-making process identical for selecting best and worst alternatives and if not, what kind of implications does that have on the model outcome?

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