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Version:
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#!/usr/bin/env python
# -*- coding: utf-8 -*-
#
# Copyright (C) 2010 Radim Rehurek <radimrehurek@seznam.cz>
# Licensed under the GNU LGPL v2.1 - http://www.gnu.org/licenses/lgpl.html
"""
Automated tests for checking transformation algorithms (the models package).
"""
import numpy as np
class TestBaseTopicModel:
def test_print_topic(self):
topics = self.model.show_topics(formatted=True)
for topic_no, topic in topics:
self.assertTrue(isinstance(topic_no, int))
self.assertTrue(isinstance(topic, str))
def test_print_topics(self):
topics = self.model.print_topics()
for topic_no, topic in topics:
self.assertTrue(isinstance(topic_no, int))
self.assertTrue(isinstance(topic, str))
def test_show_topic(self):
topic = self.model.show_topic(1)
for k, v in topic:
self.assertTrue(isinstance(k, str))
self.assertTrue(isinstance(v, (np.floating, float)))
def test_show_topics(self):
topics = self.model.show_topics(formatted=False)
for topic_no, topic in topics:
self.assertTrue(isinstance(topic_no, int))
self.assertTrue(isinstance(topic, list))
for k, v in topic:
self.assertTrue(isinstance(k, str))
self.assertTrue(isinstance(v, (np.floating, float)))
def test_get_topics(self):
topics = self.model.get_topics()
vocab_size = len(self.model.id2word)
for topic in topics:
self.assertTrue(isinstance(topic, np.ndarray))
# Note: started moving to np.float32 as default
# self.assertEqual(topic.dtype, np.float64)
self.assertEqual(vocab_size, topic.shape[0])
self.assertAlmostEqual(np.sum(topic), 1.0, 5)