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Hierarchical Multi-label Classification

Multi-label classification is a standard machine learning problem in which an object can be associated with multiple labels. A hierarchical multi-label classification (HMC) problem is defined as a multi-label classification problem in which classes are hierarchically organized as a tree or as a directed acyclic graph (DAG), and in which every prediction must be coherent, i.e., respect the hierarchy constraint. The hierarchy constraint states that a datapoint belonging to a given class must also belong to all its ancestors in the hierarchy.

Papers

Showing 2130 of 48 papers

TitleStatusHype
Hierarchical Multi-Label Classification of Scientific DocumentsCode1
A Capsule Network for Hierarchical Multi-Label Image Classification0
Semi-supervised Predictive Clustering Trees for (Hierarchical) Multi-label Classification0
Hierarchy exploitation to detect missing annotations on hierarchical multi-label classification0
All Mistakes Are Not Equal: Comprehensive Hierarchy Aware Multi-label Predictions (CHAMP)0
Semantic Probabilistic Layers for Neuro-Symbolic LearningCode1
Decision Making for Hierarchical Multi-label Classification with Multidimensional Local Precision Rate0
Evaluating Extreme Hierarchical Multi-label Classification0
Feature extraction using Spectral Clustering for Gene Function Prediction using Hierarchical Multi-label ClassificationCode0
A Top-down Supervised Learning Approach to Hierarchical Multi-label Classification in Networks0
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