| Literature DB >> 25983380 |
Nicholas E Scott-Samuel1, Gavin Holmes2, Roland Baddeley1, Innes C Cuthill3.
Abstract
One of the most widely applicable benefits of aggregation is a per capita reduction in predation risk. Many factors can contribute to this but, for moving groups, an increased difficulty in tracking and targeting one individual amongst many has received particular attention. This "confusion effect" has been proposed to result from a bottleneck in information processing, a hypothesis supported by both modelling and experiment. If the competition for limited attention is localised to the particular part of the visual field where the target is located, prey density is likely to be the key factor rather than group numbers per se. Furthermore, unpredictability of prey movement may enhance confusion, but both factors have received insufficient attention from empiricists: undoubtedly because of the difficulty of experimental manipulation in natural systems. We used a computer-based target tracking task with human subjects to manipulate effects of number and density independently, in factorial combination with motion path predictability. Density, rather than number, drove the confusion effect in our experiment and acted synergistically with the unpredictability of the direction of motion. The experimental paradigm we present offers the potential for isolating other factors affecting predation success on group-living prey, and forging links with the psychological literature on object tracking and visual search.Entities:
Keywords: Aggregation; Confusion effect; Group living; Object tracking; Predation risk; Visual search
Year: 2015 PMID: 25983380 PMCID: PMC4425808 DOI: 10.1007/s00265-015-1885-1
Source DB: PubMed Journal: Behav Ecol Sociobiol ISSN: 0340-5443 Impact factor: 2.980
Fig. 1Example of the display a subject saw at the end of a trial after the objects stopped moving, prior to identifying the target by mouse click. The treatment shown here is 40 objects in a 268 × 268 pixel display, an intermediate density. The black square marks the initial location of the mouse-driven cursor. At the start of the trial, only the target to be tracked was framed in black and white and all objects started moving. This border remained for the first 1 s of the trial, and then was removed for the remaining 4 s
Fig. 2Proportion of trials where the target was successfully tracked, plotted against unpredictability of object motion. The nine panels represent the factorial combination of number of objects (20, 40, 80) and display area (190, 268, 380). The error bars are 95 % confidence intervals, with the between-subject variation removed (appropriate for a repeated-measures design). The smooth curves are logistic regressions. Colour codes density: panels sharing the same colour are the same density. The same colour code is used in Fig. 3
Fig. 3The slope (with 95 % c.i.s) of the relationship between proportion of targets successfully tracked and the unpredictability of target motion, plotted against object density. The slopes are based on logistic regressions, as in Fig. 2. The deleterious effect of unpredictability on target tracking (the magnitude of the negative slope) increases with object density, then declines at the highest density, as indicated by the plotted quadratic curve. The colours of the points correspond to those used in Fig. 2