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Maximum entropy models for unimodal time series: case studies of universe 25 and St. Matthew island
Conference proceeding   Peer reviewed

Maximum entropy models for unimodal time series: case studies of universe 25 and St. Matthew island

Sabin Roman
Discovery science: 28th international conference, DS 2025, Ljubljana, Slovenia, September 23–25, 2025, proceedings, pp.32-44
Lecture notes in computer science, 16090 LNCS
28th international conference on discovery science 2025, 28 (Ljubljana, Slovenia, 23/09/2025–25/09/2025)
2025
Scopus ID: 2-s2.0-105020016310
Web of Science ID: WOS:001677685700003

Abstract

Maximum entropy Population collapse Time series
We present a maximum entropy modeling framework for unimodal time series: signals that begin at a reference level, rise to a single peak, and return. Such patterns are commonly observed in ecological collapse, population dynamics, and resource depletion. Traditional dynamical models are often inapplicable in these settings due to limited or sparse data, frequently consisting of only a single historical trajectory. In addition, standard fitting approaches can introduce structural bias, particularly near the mode, where most interpretive focus lies. Using the maximum entropy principle, we derive a least-biased functional form constrained only by minimal prior knowledge, such as the starting point and estimated end. This leads to analytically tractable and interpretable models. We apply this method to the collapse of the Universe 25 mouse population and the reindeer crash on St. Matthew Island. These case studies demonstrate the robustness and flexibility of the approach in fitting diverse unimodal time series with minimal assumptions. We also conduct a cross-comparison against established models, including the Richards, Skewnormal, and Generalized Gamma functions. While models typically fit their own generated data best, the maximum entropy models consistently achieve the lowest off-diagonal root-mean-square losses, indicating superior generalization. These results suggest that maximum entropy methods provide a unifying and efficient alternative to mechanistic models when data is limited and generalization is essential. © The Author(s), under exclusive license to Springer Nature Switzerland AG 2025.

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