replay_trajectory_classification.likelihoods.spiking_likelihood_kde.estimate_position_density# estimate_position_density(place_bin_centers: ndarray, positions: ndarray, position_std: float | ndarray, block_size: int = 100) → ndarray[source]# Estimates a kernel density estimate over position bins using Euclidean distances. Parameters: place_bin_centers (np.ndarray, shape (n_position_bins, n_position_dims)) positions (np.ndarray, shape (n_time, n_position_dims)) position_std (float or array_like, shape (n_position_dims,)) block_size (int) Returns: position_density Return type: np.ndarray, shape (n_position_bins,)