Protection of Prior Learning in Complex Consumer Learning Environments

Juliano Laran, Marcus Cunha, Chris Janiszewski
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引用次数: 17

Abstract

As a product category evolves, consumers have the opportunity to learn a series of feature-benefit associations. Initially, consumers learn that some features predict a critical benefit, whereas other features do not. Subsequently, consumers have the opportunity to assess if previously predictive features, or novel features, predict new product benefits. Surprisingly, later learning is characterized by attenuated learning about previously predictive features relative to novel features. This tendency to ignore previously predictive features is consistent with a desire to protect prior learning. (c) 2007 by JOURNAL OF CONSUMER RESEARCH, Inc..
在复杂的消费者学习环境中对先前学习的保护
随着产品类别的发展,消费者有机会了解到一系列的功能-效益关联。最初,消费者了解到一些功能可以预测关键的好处,而其他功能则不能。随后,消费者有机会评估先前的预测功能或新功能是否预测新产品的好处。令人惊讶的是,后期学习的特点是对先前预测特征的学习相对于对新特征的学习减弱。这种忽略先前预测特征的倾向与保护先前学习的愿望是一致的。(c) 2007年,《消费者研究杂志》。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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