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    Home»AI Tools»[2408.11515] Quantifying Behavioral Dissimilarity Between Mathematical Expressions
    AI Tools

    [2408.11515] Quantifying Behavioral Dissimilarity Between Mathematical Expressions

    AwaisBy AwaisNovember 26, 2025No Comments2 Mins Read0 Views
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    [Submitted on 21 Aug 2024 (v1), last revised 24 Nov 2025 (this version, v2)]

    View a PDF of the paper titled Quantifying Behavioral Dissimilarity Between Mathematical Expressions, by Sebastian Me\v{z}nar and 2 other authors

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    Abstract:Quantifying the similarity between mathematical expressions is a fundamental problem in computational mathematics, symbolic reasoning, and scientific discovery. While behavioral notions of similarity have previously been explored in the context of software and program analysis, existing measures for mathematical expressions rely primarily on syntactic form, assessing similarity through symbolic structure rather than actual behavior. Yet syntactically distinct expressions can exhibit nearly identical outputs, while structurally similar ones may behave very differently-especially when the expressions contain free parameters that define families of functions. To address these limitations, we introduce Behavior-aware Expression Dissimilarity (BED), a principled framework for quantifying behavioral distance between mathematical expressions with free parameters. BED represents expressions as joint probability distributions over their input-output pairs and applies the Wasserstein distance to measure behavioral dissimilarity. A computationally efficient stochastic approximation is proposed and shown to be consistent, robust, and capable of inducing a smoother, more meaningful structure over the space of expressions than syntax-based measures. The approach provides a foundation for behavior-based comparison, clustering, and learning of mathematical expressions, with potential direct applications in equation discovery, symbolic regression, and neuro-symbolic modeling.

    Submission history

    From: Sebastian Mežnar [view email]
    [v1]
    Wed, 21 Aug 2024 10:48:04 UTC (8,665 KB)
    [v2]
    Mon, 24 Nov 2025 13:56:56 UTC (7,379 KB)

    Behavioral Dissimilarity Expressions Mathematical Quantifying
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