Hyperdimensional computing (HDC) is a computational paradigm that leverages the mathematical properties of high-dimensional vector spaces to manipulate data as symbolic entities using a set of neurally plausible operations. Although HDC has demonstrated remarkable success in cognitive tasks, its potential in complex applications such as multi-label classificati has yet to be explored. In this research paper, we introduce three approaches to multi-label classification that strike a balance between computational efficiency and accuracy, based on the complexity of the problem. The first approach we propose is Power Set HD, a transformation method that is ideal for small-scale multi-label classification with label cardinality less than four and...
A significant challenge to make learning techniques more suitable for general purpose use in AI is t...
Different from the traditional classification tasks which assume mutual exclusion of labels, hierarc...
The 39th SGAI International Conference on Artificial Intelligence (AI 2019), Cambridge, United Kingd...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Abstract. In this article we describe the approach we applied for the JRS 2012 Data Mining Competiti...
Multi-label classification (MLC) is the task of predicting a set of labels for a given input instanc...
Abstract. Multi-label classification is a central problem in many appli-cation domains. In this pape...
Real-world data sets are highly complicated. They can contain a lot of features, and may involve mul...
We consider the problem of multi-label classification, where the labels lie in a hierarchy. However,...
The data-driven management of real-life systems based on a trained model, which in turn is based on ...
Many modern applications deal with multi-label data such as functional categorizations of genes, ima...
We consider a hypercube view to perceive the label space of multi-label classification problems geom...
A significant challenge to make learning techniques more suitable for general purpose use in AI is t...
We propose a novel hypercube view that per-ceives the label space of multi-label classifi-cation pro...
An important problem in multi-label classification is to capture label patterns or underlying struct...
A significant challenge to make learning techniques more suitable for general purpose use in AI is t...
Different from the traditional classification tasks which assume mutual exclusion of labels, hierarc...
The 39th SGAI International Conference on Artificial Intelligence (AI 2019), Cambridge, United Kingd...
Multi-label classification is relevant to many domains, such as text, image and other media, and bio...
Abstract. In this article we describe the approach we applied for the JRS 2012 Data Mining Competiti...
Multi-label classification (MLC) is the task of predicting a set of labels for a given input instanc...
Abstract. Multi-label classification is a central problem in many appli-cation domains. In this pape...
Real-world data sets are highly complicated. They can contain a lot of features, and may involve mul...
We consider the problem of multi-label classification, where the labels lie in a hierarchy. However,...
The data-driven management of real-life systems based on a trained model, which in turn is based on ...
Many modern applications deal with multi-label data such as functional categorizations of genes, ima...
We consider a hypercube view to perceive the label space of multi-label classification problems geom...
A significant challenge to make learning techniques more suitable for general purpose use in AI is t...
We propose a novel hypercube view that per-ceives the label space of multi-label classifi-cation pro...
An important problem in multi-label classification is to capture label patterns or underlying struct...
A significant challenge to make learning techniques more suitable for general purpose use in AI is t...
Different from the traditional classification tasks which assume mutual exclusion of labels, hierarc...
The 39th SGAI International Conference on Artificial Intelligence (AI 2019), Cambridge, United Kingd...