基于异构网络嵌入的高效多模态查询(扩展摘要)

T. Nguyen, Chi Thang Duong, Hongzhi Yin, M. Weidlich, S. T. Mai, K. Aberer, Quoc Viet Hung Nguyen
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引用次数: 0

摘要

最近的信息检索系统通过将多模态查询视为一组独立的单模态查询来回答多模态查询。然而,根据所选择的操作方式,这种方法是低效的或无效的。它要么需要对数据进行多次传递,要么导致不准确,因为在相关性评估中忽略了数据模式之间的关系。为了缓解这些挑战,我们提出了一个旨在回答真正的多模态查询的IR系统。它依赖于异构网络嵌入,因此在表示查询和需要对其进行评估的数据时,可以合并来自不同模式的特征。使用各种真实世界和合成数据集的实验评估表明,与基线技术相比,我们的方法返回的相关信息量是基线技术的两倍,同时扩展到大型多模态数据库。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient and Effective Multi-Modal Queries through Heterogeneous Network Embedding (Extended Abstract)
Recent information retrieval (IR) systems answer a multi-modal query by considering it as a set of separate uni-modal queries. However, depending on the chosen operationalisation, such an approach is inefficient or ineffective. It either requires multiple passes over the data or leads to inaccuracies since the relations between data modalities are neglected in the relevance assessment. To mitigate these challenges, we present an IR system that has been designed to answer genuine multi-modal queries. It relies on a heterogeneous network embedding, so that features from diverse modalities can be incorporated when representing both, a query and the data over which it shall be evaluated. An experimental evaluation using diverse real-world and synthetic datasets illustrates that our approach returns twice the amount of relevant information compared to baseline techniques, while scaling to large multi-modal databases.
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