09Insect Evolutionary
نویسنده
چکیده
Apart from some notable exceptions, mimicry and brightly coloured aposematic patterns have been discussed by biologists mainly from three very different points of view, each making unrealistic assumptions about aspects of the other two (Mallet and Joron, 1999). The most obvious in the voluminous literature (see Komarek, 1998) is the insect natural history approach, used by both naturalists and professional biologists, which has simplistic ideas about the ways in which predators behave and of their evolutionary impact on their prey. The second is a modelling approach, that of evolutionary dynamics: this virtually ignores predator behaviour and any details of the interactions between predators and their prey. The final viewpoint is centred on the details of predator behaviour, but this is often simplistic about the evolutionary dynamics, and can make unrealistic assumptions about the psychological processes of learning and forgetting. A gradual synthesis is taking place between these viewpoints, partly in response to the inadequacy of older theory to explain the phenomenon of imperfect mimicry. In this chapter, I outline the basic ideas of mimicry theory, and show how they fail to account for the commonly imperfectly mimetic patterns of the main taxonomic group in the Holarctic that contains mimics; the hoverflies (Diptera, Syrphidae). I review the relevant information about this group, and assess a variety of new theories of imperfect mimicry, which have been put forward largely to account for the evolution of their colour patterns. I conclude that only one of these recent ideas – Sherratt’s (2002) multiple-model theory – accounts for all the facts.
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