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AI-Facilitated Glocal Saliency Maps Similarity Comparison as a Relaxed Approach under Compressed Decision Cycles

Contribution type: article

Title: AI-Facilitated Glocal Saliency Maps Similarity Comparison as a Relaxed Approach under Compressed Decision Cycles

Authors:

Steve Chan, VTIRL, VT/DE-CAIR, United States

Keywords: Monotonic/Non-Monotonic Transition Zone (MNTZ), Shapley Additive Explanations (SHAP), Saliency Maps, Glocal, Compressed Decision Cycles, Artificial Intelligence.

Abstract:

Glocal context is a recognized notion that has been demonstrated to achieve enhanced performance over local and global context (individually). For this paper, this notion is applied to Saliency Maps (SM). In theory, Glocal Saliency Maps (GSMs) should exhibit superior performance over Local Saliency Maps (LSMs) or Global Saliency Maps (GSMs) (when treated separately). Generally speaking, this is indeed the case. Hence, an architectural paradigm was experimented with to enhance the glocal method pipeline at key areas, such as at the Convolutional Autoencoder, Locality-Constrained Linear Coding (LLC), and Multi-layer Cellular Automata (MLCA). In many instances, the precision, recall, and F1 scores exhibited better performance; hence, some promise was shown. Accordingly, this pathway may constitute a more relaxed approach than utilizing Saliency Map Graphs (SMGs) and Graph Isomorphism (GI), which can entail high computational complexity and unknown execution times that may not be suitable under conditions of Compressed Decision Cycles (CDC).

Publication Date: November 16, 2025

Presented during:

Dates: November 16, 2025 to November 20, 2025

Location: Nice / Saint-Laurent-du-Var, France

Venue:

Novotel Nice Airport Cap 3000

40 Avenue de Verdun
06700 SAINT LAURENT DU VAR
France

Hotel website

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