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生成式可解释视觉设计:使用解耦进行视觉联合分析

Generative Interpretable Visual Design: Using Disentanglement for Visual Conjoint Analysis

Journal of Marketing Research · 2024
被引 15 · 同刊同年前 9%
人大 AFT50UTD24ABS 4*

中文导读

提出一种方法,从产品图像数据中自动发现并量化可解释的视觉特征,利用变分自编码器实现解耦,以品牌和价格等易得特征作为代理监督信号,无需领域知识即可生成新设计并评估消费者偏好。

Abstract

This article develops a method to automatically discover and quantify human-interpretable visual characteristics directly from product image data. The method is generative and can create new visual designs spanning the space of visual characteristics. It builds on disentanglement methods in deep learning using variational autoencoders, which aim to discover underlying statistically independent and interpretable visual characteristics of an object. The impossibility theorem in the deep learning literature indicates that supervision with ground truth characteristics would be required to obtain unique disentangled representations. However, these are typically unknown in real-world applications, and are in fact exactly the characteristics that need to be discovered. Extant machine learning methods are unsuitable since they require ground truth labels for each visual characteristic. In contrast, this method postulates the use of readily available product characteristics (such as brand and price) as proxy supervisory signals to enable disentanglement. This method discovers and quantifies human-interpretable and statistically independent characteristics without any specific domain knowledge on the product category. It is applied to a dataset of watches to automatically discover interpretable visual product characteristics, obtain consumer preferences over visual designs, and generate new ideal point designs targeted to specific consumer segments.

市场营销消费者偏好深度学习产品设计