Michael R. Lin’s research while affiliated with Arizona State University and other places

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Publications (2)


Figure 1. A schematic illustrating the process of updating the characteristic parameters of an individual ant at a specific time-step. The turning angle ∆θ p t+1 is selected from a Laplace distribution with a location parameter of 0 and a scale parameter of 1 ω as described in Eq (2.1). Additionally, the speed s p t+1 is chosen from an exponential distribution with an average of λ p t according to Eq (2.3), and the speed jump Λ p is selected from a truncated exponential distribution with an average of a −1 as outlined in Eq (2.2).
Initialization, movement, and contact parameters: The baseline values provided were applied consistently across all replicates and figures, unless specified otherwise.
Mechanistic modeling of alarm signaling in seed-harvester ants
  • Article
  • Full-text available

March 2024

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18 Reads

Mathematical Biosciences & Engineering

Michael R. Lin

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Asma Azizi

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[...]

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Fabio Milner

Ant colonies demonstrate a finely tuned alarm response to potential threats, offering a uniquely manageable empirical setting for exploring adaptive information diffusion within groups. To effectively address potential dangers, a social group must swiftly communicate the threat throughout the collective while conserving energy in the event that the threat is unfounded. Through a combination of modeling, simulation, and empirical observations of alarm spread and damping patterns, we identified the behavioral rules governing this adaptive response. Experimental trials involving alarmed ant workers (Pogonomyrmex californicus) released into a tranquil group of nestmates revealed a consistent pattern of rapid alarm propagation followed by a comparatively extended decay period [1]. The experiments in [1] showed that individual ants exhibiting alarm behavior increased their movement speed, with variations in response to alarm stimuli, particularly during the peak of the reaction. We used the data in [1] to investigate whether these observed characteristics alone could account for the swift mobility increase and gradual decay of alarm excitement. Our self-propelled particle model incorporated a switch-like mechanism for ants' response to alarm signals and individual variations in the intensity of speed increased after encountering these signals. This study aligned with the established hypothesis that individual ants possess cognitive abilities to process and disseminate information, contributing to collective cognition within the colony (see [2] and the references therein). The elements examined in this research support this hypothesis by reproducing statistical features of the empirical speed distribution across various parameter values.

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Figure 4. The average b AS per second estimated by RFML model (grey line) and the average velocity per second obtained by ABCTracker from experiments (black line) (1 pixel/frame = 4.1 mm s −1 ).
Figure 5. Spatial characteristics of alarm recruitment. Variation in unalarmed ants b AS during the time of approaching their alarmed neighbours. Each point indicates one unalarmed ant. The y-axis shows the variation in b AS during the time the two ants were near each other, and the x-axis shows the minimum distance between the two ants during that time. Unalarmed ants which came closer to alarmed neighbours varied more in their b AS (7.3 pixel = 1 mm). Circles represent observations; curve represents expectations in exponential decay model equation (3.1).
Figure 7. A right-skewed distribution of individual alarm responsiveness. The Lilliefors-corrected K-S test on the alarm responsiveness, indicates observed frequencies are not significantly different from expectations in a geometric distribution (D = 0.33, d.f. = 46, p = 0.12). Bars represent the proportion of observations; curve represents expectations in a geometric distribution.
Decoding alarm signal propagation of seed-harvester ants using automated movement tracking and supervised machine learning

January 2022

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146 Reads

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11 Citations

Alarm signal propagation through ant colonies provides an empirically tractable context for analysing information flow through a natural system, with useful insights for network dynamics in other social animals. Here, we develop a methodological approach to track alarm spread within a group of harvester ants, Pogonomyrmex californicus. We initially alarmed three ants and tracked subsequent signal transmission through the colony. Because there was no actual standing threat, the false alarm allowed us to assess amplification and adaptive damping of the collective alarm response. We trained a random forest regression model to quantify alarm behaviour of individual workers from multiple movement features. Our approach translates subjective categorical alarm scores into a reliable, continuous variable. We combined these assessments with automatically tracked proximity data to construct an alarm propagation network. This method enables analyses of spatio-temporal patterns in alarm signal propagation in a group of ants and provides an opportunity to integrate individual and collective alarm response. Using this system, alarm propagation can be manipulated and assessed to ask and answer a wide range of questions related to information and misinformation flow in social networks.

Citations (1)


... For instance, ants have been shown to exhibit lower levels of aggression when alone versus in a group owing to the need for colony defence [62] or the presence of social cues [60,63]. In a colony setting, the social environment can amplify individual defence based on the social information individuals perceive (e.g. via alarm pheromones [64,65] or non-nestmate cues [66]). Additionally, past work on social insects involved colonies containing individuals of varying ages, genetic backgrounds and/or morphology. ...

Reference:

Division of labour in colony defence in a clonal ant
Decoding alarm signal propagation of seed-harvester ants using automated movement tracking and supervised machine learning