# Module containing several functions to compute the ISI profiles and distances # Copyright 2014-2015, Mario Mulansky # Distributed under the BSD License from __future__ import absolute_import import pyspike from pyspike import PieceWiseConstFunc from pyspike.generic import _generic_profile_multi, _generic_distance_multi, \ _generic_distance_matrix ############################################################ # isi_profile ############################################################ def isi_profile(*args, **kwargs): """ Computes the isi-distance profile :math:`I(t)` of the given spike trains. Returns the profile as a PieceWiseConstFunc object. The ISI-values are defined positive :math:`I(t)>=0`. Valid call structures:: isi_profile(st1, st2) # returns the bi-variate profile isi_profile(st1, st2, st3) # multi-variate profile of 3 spike trains spike_trains = [st1, st2, st3, st4] # list of spike trains isi_profile(spike_trains) # profile of the list of spike trains isi_profile(spike_trains, indices=[0, 1]) # use only the spike trains # given by the indices The multivariate ISI distance profile for a set of spike trains is defined as the average ISI-profile of all pairs of spike-trains: .. math:: = \\frac{2}{N(N-1)} \\sum_{} I^{i,j}, where the sum goes over all pairs :returns: The isi-distance profile :math:`I(t)` :rtype: :class:`.PieceWiseConstFunc` """ if len(args) == 1: return isi_profile_multi(args[0], **kwargs) elif len(args) == 2: return isi_profile_bi(args[0], args[1]) else: return isi_profile_multi(args) ############################################################ # isi_profile_bi ############################################################ def isi_profile_bi(spike_train1, spike_train2): """ Specific function to compute a bivariate ISI-profile. This is a deprecated function and should not be called directly. Use :func:`.isi_profile` to compute ISI-profiles. :param spike_train1: First spike train. :type spike_train1: :class:`.SpikeTrain` :param spike_train2: Second spike train. :type spike_train2: :class:`.SpikeTrain` :returns: The isi-distance profile :math:`I(t)` :rtype: :class:`.PieceWiseConstFunc` """ # check whether the spike trains are defined for the same interval assert spike_train1.t_start == spike_train2.t_start, \ "Given spike trains are not defined on the same interval!" assert spike_train1.t_end == spike_train2.t_end, \ "Given spike trains are not defined on the same interval!" # load cython implementation try: from .cython.cython_profiles import isi_profile_cython \ as isi_profile_impl except ImportError: if not(pyspike.disable_backend_warning): print("Warning: isi_profile_cython not found. Make sure that \ PySpike is installed by running\n 'python setup.py build_ext --inplace'!\n \ Falling back to slow python backend.") # use python backend from .cython.python_backend import isi_distance_python \ as isi_profile_impl times, values = isi_profile_impl(spike_train1.get_spikes_non_empty(), spike_train2.get_spikes_non_empty(), spike_train1.t_start, spike_train1.t_end) return PieceWiseConstFunc(times, values) ############################################################ # isi_profile_multi ############################################################ def isi_profile_multi(spike_trains, indices=None): """ Specific function to compute the multivariate ISI-profile for a set of spike trains. This is a deprecated function and should not be called directly. Use :func:`.isi_profile` to compute ISI-profiles. :param spike_trains: list of :class:`.SpikeTrain` :param indices: list of indices defining which spike trains to use, if None all given spike trains are used (default=None) :type state: list or None :returns: The averaged isi profile :math:`` :rtype: :class:`.PieceWiseConstFunc` """ average_dist, M = _generic_profile_multi(spike_trains, isi_profile_bi, indices) average_dist.mul_scalar(1.0/M) # normalize return average_dist ############################################################ # isi_distance ############################################################ def isi_distance(*args, **kwargs): """ Computes the ISI-distance :math:`D_I` of the given spike trains. The isi-distance is the integral over the isi distance profile :math:`I(t)`: .. math:: D_I = \\int_{T_0}^{T_1} I(t) dt. In the multivariate case it is the integral over the multivariate ISI-profile, i.e. the average profile over all spike train pairs: .. math:: D_I = \\int_0^T \\frac{2}{N(N-1)} \\sum_{} I^{i,j}, where the sum goes over all pairs Valid call structures:: isi_distance(st1, st2) # returns the bi-variate distance isi_distance(st1, st2, st3) # multi-variate distance of 3 spike trains spike_trains = [st1, st2, st3, st4] # list of spike trains isi_distance(spike_trains) # distance of the list of spike trains isi_distance(spike_trains, indices=[0, 1]) # use only the spike trains # given by the indices :returns: The isi-distance :math:`D_I`. :rtype: double """ if len(args) == 1: return isi_distance_multi(args[0], **kwargs) elif len(args) == 2: return isi_distance_bi(args[0], args[1], **kwargs) else: return isi_distance_multi(args, **kwargs) ############################################################ # _isi_distance_bi ############################################################ def isi_distance_bi(spike_train1, spike_train2, interval=None): """ Specific function to compute the bivariate ISI-distance. This is a deprecated function and should not be called directly. Use :func:`.isi_distance` to compute ISI-distances. :param spike_train1: First spike train. :type spike_train1: :class:`.SpikeTrain` :param spike_train2: Second spike train. :type spike_train2: :class:`.SpikeTrain` :param interval: averaging interval given as a pair of floats (T0, T1), if None the average over the whole function is computed. :type interval: Pair of floats or None. :returns: The isi-distance :math:`D_I`. :rtype: double """ if interval is None: # distance over the whole interval is requested: use specific function # for optimal performance try: from .cython.cython_distances import isi_distance_cython \ as isi_distance_impl return isi_distance_impl(spike_train1.get_spikes_non_empty(), spike_train2.get_spikes_non_empty(), spike_train1.t_start, spike_train1.t_end) except ImportError: # Cython backend not available: fall back to profile averaging return isi_profile_bi(spike_train1, spike_train2).avrg(interval) else: # some specific interval is provided: use profile return isi_profile_bi(spike_train1, spike_train2).avrg(interval) ############################################################ # isi_distance_multi ############################################################ def isi_distance_multi(spike_trains, indices=None, interval=None): """ Specific function to compute the multivariate ISI-distance. This is a deprecfated function and should not be called directly. Use :func:`.isi_distance` to compute ISI-distances. :param spike_trains: list of :class:`.SpikeTrain` :param indices: list of indices defining which spike trains to use, if None all given spike trains are used (default=None) :param interval: averaging interval given as a pair of floats, if None the average over the whole function is computed. :type interval: Pair of floats or None. :returns: The time-averaged multivariate ISI distance :math:`D_I` :rtype: double """ return _generic_distance_multi(spike_trains, isi_distance_bi, indices, interval) ############################################################ # isi_distance_matrix ############################################################ def isi_distance_matrix(spike_trains, indices=None, interval=None): """ Computes the time averaged isi-distance of all pairs of spike-trains. :param spike_trains: list of :class:`.SpikeTrain` :param indices: list of indices defining which spike trains to use, if None all given spike trains are used (default=None) :type indices: list or None :param interval: averaging interval given as a pair of floats, if None the average over the whole function is computed. :type interval: Pair of floats or None. :returns: 2D array with the pair wise time average isi distances :math:`D_{I}^{ij}` :rtype: np.array """ return _generic_distance_matrix(spike_trains, isi_distance_bi, indices=indices, interval=interval)