Created
May 10, 2019 11:41
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import numpy as np | |
import cPickle as pickle | |
import joblib | |
from moseq.train import ARHMM, train_model | |
from moseq.train.util import whiten_all | |
from collections import OrderedDict | |
from syllables import analysis | |
# Load the data | |
with open("/data/efs/drugs/alldoses/dataset.pkl","r") as f: | |
dataset = pickle.load(f) | |
mouse_names = dataset.keys() | |
# Load the labels | |
with open('/data/efs/drugs/alldoses/syllablelabels-kappa=18036000-niter=1000-nstates=160.pkl','r') as f: | |
syllable_labels = pickle.load(f) | |
syllable_labels = analysis.relabel_by_usage(syllable_labels) | |
# Load the labels into our dataset array | |
split_points = np.cumsum([len(v['data']) for v in dataset.values()])[:-1] | |
split_syllable_labels = np.array_split(syllable_labels,split_points) | |
for mouse_name,_syllable_labels in zip(mouse_names,split_syllable_labels): | |
dataset[mouse_name]['syllable_labels'] = _syllable_labels | |
# Make a dictionary data structure that the ARHMM expects | |
data_dict = OrderedDict((k,v['data']) for k,v in dataset.items()) | |
# Whiten the data | |
data_dict = whiten_all(data_dict) | |
# Build AR matrices from labels and data. | |
# either scott linderman or matt johnson have code for this | |
# I went diving, and didn't find it. |
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