CLAIOct 25, 2019

Is it a Fruit, an Apple or a Granny Smith? Predicting the Basic Level in a Concept Hierarchy

arXiv:1910.12619v15 citations
Originality Synthesis-oriented
AI Analysis

This work addresses improving user interfaces for applications like knowledge graphs and ontologies by predicting basic level concepts, but it is incremental as it builds on existing cognitive psychology theory and focuses on domain-specific performance.

The paper tackles the problem of automatically identifying the 'basic level' in concept hierarchies, which is the abstraction level where humans perform tasks most efficiently, by testing lexical, structural, and frequency features on WordNet. The result shows that basic level concepts can be accurately identified within a single domain, with concepts difficult for humans to label also being harder to classify automatically.

The "basic level", according to experiments in cognitive psychology, is the level of abstraction in a hierarchy of concepts at which humans perform tasks quicker and with greater accuracy than at other levels. We argue that applications that use concept hierarchies - such as knowledge graphs, ontologies or taxonomies - could significantly improve their user interfaces if they `knew' which concepts are the basic level concepts. This paper examines to what extent the basic level can be learned from data. We test the utility of three types of concept features, that were inspired by the basic level theory: lexical features, structural features and frequency features. We evaluate our approach on WordNet, and create a training set of manually labelled examples that includes concepts from different domains. Our findings include that the basic level concepts can be accurately identified within one domain. Concepts that are difficult to label for humans are also harder to classify automatically. Our experiments provide insight into how classification performance across domains could be improved, which is necessary for identification of basic level concepts on a larger scale.

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