What Makes Objects Similar: A Unified Multi-Metric Learning Approach
نویسندگان
چکیده
Linkages are essentially determined by similarity measures that may be derived from multiple perspectives. For example, spatial linkages are usually generated based on localities of heterogeneous data, whereas semantic linkages can come from various properties, such as different physical meanings behind social relations. Many existing metric learning models focus on spatial linkages, but leave the rich semantic factors unconsidered. Similarities based on these models are usually overdetermined on linkages. We propose a Unified Multi-Metric Learning (UML) framework to exploit multiple types of metrics. In UML, a type of combination operator is introduced for distance characterization frommultiple perspectives, and thus can introduce flexibilities for representing and utilizing both spatial and semantic linkages. Besides, we propose a uniform solver for UML which is guaranteed to converge. Extensive experiments on diverse applications exhibit the superior classification performance and comprehensibility of UML. Visualization results also validate its ability on physical meanings discovery.
منابع مشابه
Future study of Description System Architecture Approaches with Emphasis on Strategic Management
Systems Architecture is a generic discipline to handle objects (existing or to be created) called systems, in a way that supports reasoning about the structural properties of these objects. Systems Architecture is a response to the conceptual and practical difficulties of the description and the design of complex systems. Systems Architecture is a generic discipline to handle objects (existin...
متن کاملAn Effective Approach for Robust Metric Learning in the Presence of Label Noise
Many algorithms in machine learning, pattern recognition, and data mining are based on a similarity/distance measure. For example, the kNN classifier and clustering algorithms such as k-means require a similarity/distance function. Also, in Content-Based Information Retrieval (CBIR) systems, we need to rank the retrieved objects based on the similarity to the query. As generic measures such as ...
متن کاملMulti-Adaptive Learning Objects Repository Structure Towards Unified E-learning
This paper presents a new structure for Multi-Adaptive Learning Object Repository (MALOR) that is oriented towards unified Web-based educational systems. The urge for considering adaptability in the current e-learning systems has been outlined and emphasized in many different researches, due to the negative effect of “one-size-fits-all” approach that is currently implemented in the development ...
متن کاملAn Iterative Fusion Approach to Graph-Based Semi-Supervised Learning from Multiple Views
Often, a data object described by many features can be naturally decomposed into multiple “views”, where each view consists of a subset of features. For example, a video clip may have a video view and an audio view. Given a set of training data objects with multiple views, where some objects are labeled and the others are not, semi-supervised learning with graphs from multi-views tries to learn...
متن کاملComparative evaluation of four multi-label classification algorithms in classifying learning objects
The classification of learning objects (LOs) enables users to search for, access, and reuse them as needed. It makes e-learning as effective and efficient as possible. In this article the multilabel learning approach is represented for classifying and ranking multi-labelled LOs, whereas each LO might be associated with multiple labels as opposed to a single-label approach. A comprehensive overv...
متن کامل