# Module containing several functions to compute SPIKE-Synchronization profiles # and distances # Copyright 2014-2015, Mario Mulansky # Distributed under the BSD License from __future__ import absolute_import import numpy as np from functools import partial import pyspike from pyspike import DiscreteFunc from pyspike.generic import _generic_profile_multi, _generic_distance_matrix ############################################################ # spike_sync_profile ############################################################ def spike_sync_profile(spike_train1, spike_train2, max_tau=None): """ Computes the spike-synchronization profile S_sync(t) of the two given spike trains. Returns the profile as a DiscreteFunction object. The S_sync values are either 1 or 0, indicating the presence or absence of a coincidence. :param spike_train1: First spike train. :type spike_train1: :class:`pyspike.SpikeTrain` :param spike_train2: Second spike train. :type spike_train2: :class:`pyspike.SpikeTrain` :param max_tau: Maximum coincidence window size. If 0 or `None`, the coincidence window has no upper bound. :returns: The spike-distance profile :math:`S_{sync}(t)`. :rtype: :class:`pyspike.function.DiscreteFunction` """ # 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!" # cython implementation try: from .cython.cython_profiles import coincidence_profile_cython \ as coincidence_profile_impl except ImportError: if not(pyspike.disable_backend_warning): print("Warning: spike_distance_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 coincidence_python \ as coincidence_profile_impl if max_tau is None: max_tau = 0.0 times, coincidences, multiplicity \ = coincidence_profile_impl(spike_train1.spikes, spike_train2.spikes, spike_train1.t_start, spike_train1.t_end, max_tau) return DiscreteFunc(times, coincidences, multiplicity) ############################################################ # _spike_sync_values ############################################################ def _spike_sync_values(spike_train1, spike_train2, interval, max_tau): """" Internal function. Computes the summed coincidences and multiplicity for spike synchronization of the two given spike trains. Do not call this function directly, use `spike_sync` or `spike_sync_multi` instead. """ if interval is None: # distance over the whole interval is requested: use specific function # for optimal performance try: from .cython.cython_distances import coincidence_value_cython \ as coincidence_value_impl if max_tau is None: max_tau = 0.0 c, mp = coincidence_value_impl(spike_train1.spikes, spike_train2.spikes, spike_train1.t_start, spike_train1.t_end, max_tau) return c, mp except ImportError: # Cython backend not available: fall back to profile averaging return spike_sync_profile(spike_train1, spike_train2, max_tau).integral(interval) else: # some specific interval is provided: use profile return spike_sync_profile(spike_train1, spike_train2, max_tau).integral(interval) ############################################################ # spike_sync ############################################################ def spike_sync(spike_train1, spike_train2, interval=None, max_tau=None): """ Computes the spike synchronization value SYNC of the given spike trains. The spike synchronization value is the computed as the total number of coincidences divided by the total number of spikes: .. math:: SYNC = \sum_n C_n / N. :param spike_train1: First spike train. :type spike_train1: :class:`pyspike.SpikeTrain` :param spike_train2: Second spike train. :type spike_train2: :class:`pyspike.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. :param max_tau: Maximum coincidence window size. If 0 or `None`, the coincidence window has no upper bound. :returns: The spike synchronization value. :rtype: `double` """ c, mp = _spike_sync_values(spike_train1, spike_train2, interval, max_tau) return 1.0*c/mp ############################################################ # spike_sync_profile_multi ############################################################ def spike_sync_profile_multi(spike_trains, indices=None, max_tau=None): """ Computes the multi-variate spike synchronization profile for a set of spike trains. For each spike in the set of spike trains, the multi-variate profile is defined as the number of coincidences divided by the number of spike trains pairs involving the spike train of containing this spike, which is the number of spike trains minus one (N-1). :param spike_trains: list of :class:`pyspike.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 max_tau: Maximum coincidence window size. If 0 or `None`, the coincidence window has no upper bound. :returns: The multi-variate spike sync profile :math:`(t)` :rtype: :class:`pyspike.function.DiscreteFunction` """ prof_func = partial(spike_sync_profile, max_tau=max_tau) average_prof, M = _generic_profile_multi(spike_trains, prof_func, indices) # average_dist.mul_scalar(1.0/M) # no normalization here! return average_prof ############################################################ # spike_sync_multi ############################################################ def spike_sync_multi(spike_trains, indices=None, interval=None, max_tau=None): """ Computes the multi-variate spike synchronization value for a set of spike trains. :param spike_trains: list of :class:`pyspike.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. :param max_tau: Maximum coincidence window size. If 0 or `None`, the coincidence window has no upper bound. :returns: The multi-variate spike synchronization value SYNC. :rtype: double """ if indices is None: indices = np.arange(len(spike_trains)) indices = np.array(indices) # check validity of indices assert (indices < len(spike_trains)).all() and (indices >= 0).all(), \ "Invalid index list." # generate a list of possible index pairs pairs = [(indices[i], j) for i in range(len(indices)) for j in indices[i+1:]] coincidence = 0.0 mp = 0.0 for (i, j) in pairs: c, m = _spike_sync_values(spike_trains[i], spike_trains[j], interval, max_tau) coincidence += c mp += m return coincidence/mp ############################################################ # spike_sync_matrix ############################################################ def spike_sync_matrix(spike_trains, indices=None, interval=None, max_tau=None): """ Computes the overall spike-synchronization value of all pairs of spike-trains. :param spike_trains: list of :class:`pyspike.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. :param max_tau: Maximum coincidence window size. If 0 or `None`, the coincidence window has no upper bound. :returns: 2D array with the pair wise time spike synchronization values :math:`SYNC_{ij}` :rtype: np.array """ dist_func = partial(spike_sync, max_tau=max_tau) return _generic_distance_matrix(spike_trains, dist_func, indices, interval)