Capturing Preferences of New Users in Generative Tasks with Minimal Interactions Collaborative Filtering Using Siamese Networks and Soft Clustering

Subharag Sarkar, M. Huber
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Abstract

Prediction of user preferences is a challenge, in particular when the objective is to learn them without requiring the user to provide a profile or a significant number of interactions. Many collaborative filtering algorithms exist but all of them require the availability of huge datasets of user information and expensive computations. In this paper, a novel architecture is introduced which aims to predict a new user’s interests in the context of previous users’ interactions with minimal feedback interactions. Here, a Siamese Network is used to generate an embedding space for data from existing users. This information is then used in a Gaussian Mixture Model to generate multiple soft clusters. Based on the embedding space, system responses to the user are generated using a Conditional Generative Adversarial Network which uses a vector drawn from the Gaussian Mixture in embedding space from the Siamese Network as the conditional input. The predictive model then interacts with the new user and based on their feedback adjusts the Gaussian Mixture to find the distribution with the highest probability of generating the user’s preferred data. The approach is applied in the context of an image generation task where the goal is to learn to generate images that match the preferences of the user using only a minimal number of direct user interactions. Testing in this domain has shown promising results that exemplify the ability of the approach to capture the user’s preferences while presenting only a minimal number of image examples.
基于Siamese网络和软聚类的协同过滤在生成任务中捕获新用户的偏好
预测用户偏好是一项挑战,特别是当目标是在不需要用户提供个人资料或大量交互的情况下学习用户偏好时。目前存在许多协同过滤算法,但它们都需要大量的用户信息数据集和昂贵的计算。本文介绍了一种新的架构,该架构旨在以最小的反馈交互在先前用户交互的背景下预测新用户的兴趣。在这里,Siamese Network用于为来自现有用户的数据生成嵌入空间。这些信息随后用于高斯混合模型以生成多个软聚类。基于嵌入空间,使用条件生成对抗网络(Conditional Generative Adversarial Network)生成系统对用户的响应,该网络使用Siamese网络在嵌入空间中绘制的高斯混合向量作为条件输入。然后,预测模型与新用户交互,并根据他们的反馈调整高斯混合,以找到生成用户首选数据的最高概率的分布。该方法应用于图像生成任务的上下文中,其目标是学习仅使用最少数量的直接用户交互来生成与用户偏好匹配的图像。在这一领域的测试显示出了令人鼓舞的结果,证明了该方法在只呈现最少数量的图像示例的情况下捕获用户偏好的能力。
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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