the Lower Delta
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Sequential multimodal sensory integration drives foraging decisions in leaf-cutting ants: Volatiles, contact cues and phytochemistry
Identifying the sensory cues that enable insects to find host plants, and understanding the neurobiology underlying their selection, provide solid foundations for developing state-of-the-art pest management strategies. Our work was aimed at identifying the main sensory cues attracting the leaf-cutting ant Acromyrmex ambiguus to alternative host plants in commercial willow plantations in the Lower Delta of the Parana River (Argentina), with a focus on native plant species. Eight plant species...
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Global Convergence of Adaptive Sensing for Principal Eigenvector Estimation
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A Near-Optimal Offline Algorithm for Dynamic All-Pairs Shortest Paths in Planar Digraphs
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