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Quantitative Biology 2015
The geometry of Tempotronlike problemsAbstract: In the discrete Tempotron learning problem a neuron receives time varying inputs and for a set of such input sequences ($\mathcal S_-$ set) the neuron must be sub-threshold for all times while for some other sequences ($\mathcal S_+$ set) the neuron must be super threshold for at least one time. Here we present a graphical treatment of a slight reformulation of the tempotron problem. We show that the problem's general form is equivalent to the question if a polytope, specified by a set of inequalities, is contained in the union of a set of equally defined polytopes. Using recent results from computational geometry, we show that the problem is W[1]-hard. This phrasing gives some new insights into the nature of gradient based learning algorithms. A sampling based approach can, under certain circumstances provide an approximation in polynomial time. Other problems, related to hierarchical neural networks may share some topological structure.
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