Exploring How We Reason with Analogy Across Different Formats

Published on November 18, 2022

Analogical reasoning is like navigating through a vast and intricate maze of words and ideas. In this study, scientists used eye-tracking technology to observe how adults integrate information when solving different types of analogies with varying levels of complexity. They wanted to understand if people follow similar search strategies for different analogy formats and if they adapt their approach based on the difficulty of the task. The researchers compared their findings to existing knowledge in the field and employed machine learning techniques to analyze the data. Surprisingly, the results showed that participants not only focused on semantically related distractors, but also on unrelated ones depending on the trial’s difficulty. By examining which transitions between concepts were most effective in discriminating between analogy tasks, the study sheds light on the underlying processes of analogical reasoning. To delve deeper and explore the intricacies of this fascinating cognitive phenomenon, check out the full article!

Abstract
Starting with the hypothesis that analogical reasoning consists of a search of semantic space, we used eye-tracking to study the time course of information integration in adults in various formats of analogies. The two main questions we asked were whether adults would follow the same search strategies for different types of analogical problems and levels of complexity and how they would adapt their search to the difficulty of the task. We compared these results to predictions from the literature. Machine learning techniques, in particular support vector machines (SVMs), processed the data to find out which sets of transitions best predicted the output of a trial (error or correct) or the type of analogy (simple or complex). Results revealed common search patterns, but with local adaptations to the specifics of each type of problem, both in terms of looking-time durations and the number and types of saccades. In general, participants organized their search around source-domain relations that they generalized to the target domain. However, somewhat surprisingly, over the course of the entire trial, their search included, not only semantically related distractors, but also unrelated distractors, depending on the difficulty of the trial. An SVM analysis revealed which types of transitions are able to discriminate between analogy tasks. We discuss these results in light of existing models of analogical reasoning.

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