Semantic Prototypes: Enhancing Transparency Without Black Boxes
As machine learning (ML) models and datasets increase in complexity, the demand for methods that enhance explainability and interpretability becomes paramount. Prototypes, by encapsulating essential characteristics within data, offer insights that enable tactical decision-making and enhance transpar...
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Zusammenfassung: | As machine learning (ML) models and datasets increase in complexity, the
demand for methods that enhance explainability and interpretability becomes
paramount. Prototypes, by encapsulating essential characteristics within data,
offer insights that enable tactical decision-making and enhance transparency.
Traditional prototype methods often rely on sub-symbolic raw data and opaque
latent spaces, reducing explainability and increasing the risk of
misinterpretations. This paper presents a novel framework that utilizes
semantic descriptions to define prototypes and provide clear explanations,
effectively addressing the shortcomings of conventional methods. Our approach
leverages concept-based descriptions to cluster data on the semantic level,
ensuring that prototypes not only represent underlying properties intuitively
but are also straightforward to interpret. Our method simplifies the
interpretative process and effectively bridges the gap between complex data
structures and human cognitive processes, thereby enhancing transparency and
fostering trust. Our approach outperforms existing widely-used prototype
methods in facilitating human understanding and informativeness, as validated
through a user survey. |
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DOI: | 10.48550/arxiv.2407.15871 |