Multi-Modal Media Retrieval via Distance Metric Learning for Potential Customer Discovery

Yang Liu, Zhonglei Gu, Tobey H. Ko, Jiming Liu
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引用次数: 3

Abstract

As social media grown to become an integral part of many people's daily life, brands are quick to launch targeted social media marketing campaign to acquire new potential customers online. To facilitate the potential customer discovery process, a costly and labor intensive manual selection process is done to build a brand portfolio consisting of multimedia data relevant to the brand. To automate this process in a cost-effective way, in this paper, we propose a novel Multi-Modal Distance Metric Learning (M2DML) method, which learns a data-dependent similarity metric from multi-modal media data, aiming at assisting the brands to retrieve appropriate media data from social networks for potential customer discovery. To comprehensively model the supervised information of multi-modal data, M2DML aims to learn both the intra-modality and inter-modality distance metrics simultaneously. To further explore the unsupervised information of the dataset, M2DML aims to preserve the manifold structure of the multi-modal data. The proposed method is then formulated as a standard eigen-decomposition problem and the closed form solution is efficiently computed. Experiments on a standard multi-modal media dataset and a self-collected dataset validate the effectiveness of the proposed method.
基于距离度量学习的潜在客户发现多模态媒体检索
随着社交媒体逐渐成为许多人日常生活中不可或缺的一部分,各大品牌迅速启动有针对性的社交媒体营销活动,以在网上获得新的潜在客户。为了促进潜在客户的发现过程,需要进行成本高昂且劳动密集的人工选择过程,以构建由与品牌相关的多媒体数据组成的品牌组合。为了以经济有效的方式自动化这一过程,本文提出了一种新的多模态距离度量学习(M2DML)方法,该方法从多模态媒体数据中学习与数据相关的相似性度量,旨在帮助品牌从社交网络中检索适当的媒体数据,以发现潜在客户。为了对多模态数据的监督信息进行全面建模,M2DML旨在同时学习模态内和模态间的距离度量。为了进一步挖掘数据集的无监督信息,M2DML旨在保留多模态数据的流形结构。然后将所提出的方法表述为标准特征分解问题,并有效地计算出封闭形式解。在标准多模态媒体数据集和自采集数据集上的实验验证了该方法的有效性。
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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