PyCharm test commit

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Bartosz Ogonowski 2020-03-22 14:21:40 +01:00
parent dd227938f4
commit c0c541dced

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code.py
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from collections import defaultdict
import math
import pickle
def calc_class_logprob(expected_path):
paranormal_classcount=0
skeptic_classcount=0
with open(expected_path) as f:
for line in f:
if 'P' in line:
paranormal_classcount += 1
if 'S' in line:
skeptic_classcount += 1
paranormal_prob = paranormal_classcount / (paranormal_classcount + skeptic_classcount)
skeptic_prob = skeptic_classcount / (paranormal_classcount + skeptic_classcount)
return math.log(paranormal_prob), math.log(skeptic_prob)
def calc_word_count(in_path, expected_path):
word_counts = {'paranormal':defaultdict(int), 'skeptic': defaultdict(int)}
with open(in_path) as in_file, open(expected_path) as expected_file:
for line, exp in zip(in_file, expected_file):
class_ = exp.rstrip('\n').replace(' ','')
text, timestamp = line.rstrip('\n').split('\t')
tokens = text.lower().split(' ')
for token in tokens:
if class_ == 'P':
word_counts['paranormal'][token] += 1
elif class_ == 'S':
word_counts['skeptic'][token] += 1
return word_counts
def calc_word_logprobs(word_counts):
total_skeptic = sum(word_counts['skeptic'].values()) + len(word_counts['skeptic'].keys())
total_paranormal = sum(word_counts['paranormal'].values()) + len(word_counts['paranormal'].keys())
word_logprobs= {'paranormal': {}, 'skeptic': {}}
for class_ in word_counts.keys(): # sceptic paranormal
for token, tokens in word_counts[class_].items():
if class_ == 'skeptic':
word_prob = (tokens+1)/total_skeptic
else:
word_prob = (tokens+1)/total_paranormal
word_logprobs[class_][token] = math.log(word_prob)
return word_logprobs
def main():
paranomal_class_logprob, skeptic_class_logprob = calc_class_logprob("F:/UAM/SEMESTR_I_MGR/SYSTEMY_INTELIGENTNE/ic4g/train/expected.tsv")
word_counts=calc_word_count("F:/UAM/SEMESTR_I_MGR/SYSTEMY_INTELIGENTNE/ic4g/train/in.tsv","F:/UAM/SEMESTR_I_MGR/SYSTEMY_INTELIGENTNE/ic4g/train/expected.tsv")
word_logprobs = calc_word_logprobs(word_counts)
pickle.dump([paranomal_class_logprob, skeptic_class_logprob, word_logprobs], open('naive_base_model.pkl','wb'))
main()