Formalising Concepts as Grounded Abstractions
Stephen Clark, Alexander Lerchner, Tamara von Glehn, Olivier Tieleman,, Richard Tanburn, Misha Dashevskiy, Matko Bosnjak

TL;DR
This paper proposes a formal framework for concepts using grounded abstractions, combining lattice theory with deep learning to facilitate concept discovery from perceptual data.
Contribution
It introduces a novel approach to formalize concepts by integrating representation learning with lattice-theoretic models of conceptual spaces.
Findings
Defines a conceptual lattice on top of deep learning representations
Shows how lattice operations can aid in concept discovery
Bridges formal concept analysis with modern deep learning methods
Abstract
The notion of concept has been studied for centuries, by philosophers, linguists, cognitive scientists, and researchers in artificial intelligence (Margolis & Laurence, 1999). There is a large literature on formal, mathematical models of concepts, including a whole sub-field of AI -- Formal Concept Analysis -- devoted to this topic (Ganter & Obiedkov, 2016). Recently, researchers in machine learning have begun to investigate how methods from representation learning can be used to induce concepts from raw perceptual data (Higgins, Sonnerat, et al., 2018). The goal of this report is to provide a formal account of concepts which is compatible with this latest work in deep learning. The main technical goal of this report is to show how techniques from representation learning can be married with a lattice-theoretic formulation of conceptual spaces. The mathematics of partial orders and…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Image Retrieval and Classification Techniques · Neural Networks and Applications
MethodsAttentive Walk-Aggregating Graph Neural Network
