add run.py
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run.py
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144
run.py
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import pandas as pd
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import numpy as np
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import csv
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import os
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import re
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import random
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from collections import Counter, defaultdict
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import nltk
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import math
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from tqdm import tqdm
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directory = "train/in.tsv.xz"
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directory_dev_0 = "dev-0/in.tsv.xz"
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directory_test_A = "test-A/in.tsv.xz"
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class Model():
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def __init__(self, vocab_size=30_000, UNK_token= '<UNK>', n=3):
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if (n <= 1 or n % 2 == 0):
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raise "change N value !!!"
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self.n = n
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self.vocab_size = vocab_size
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self.UNK_token = UNK_token
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def train(self, corpus:list) -> None:
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if(self.n > 1):
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self.n_grams = list(nltk.ngrams(corpus, n=self.n))
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else:
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self.n_grams = corpus
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self.counter = Counter(self.n_grams)
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self.words_counter = Counter(corpus)
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self.all_quantities = Counter([gram[:math.floor(self.n/2)]+gram[math.ceil(self.n/2):] for gram in self.n_grams])
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self.all_grams = defaultdict(set)
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for gram in tqdm(self.n_grams):
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previous_words = tuple(gram[:math.floor(self.n/2)])
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next_words = tuple(gram[math.ceil(self.n/2):])
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word = gram[math.floor(self.n/2)]
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self.all_grams[(previous_words, next_words)].add(word)
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def get_conditional_prob_for_word(self, left_text: list, right_text: list, word: str) -> float:
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previous_words = tuple(left_text[-math.floor(self.n/2):])
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next_words = tuple(right_text[:math.floor(self.n/2)])
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quantity = self.counter[previous_words + tuple([word]) + next_words]
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all_quantity = self.all_quantities[previous_words + next_words]
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if (all_quantity <= 0):
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return 0
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return quantity/all_quantity
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def get_prob_for_text(self, text: list) -> float:
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prob = 1
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for gram in list(nltk.ngrams(text, self.n)):
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prob *= self.get_conditional_prob_for_word(gram[:math.floor(self.n/2)], gram[math.ceil(self.n/2):], gram[math.floor(self.n/2)])
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return prob
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def most_probable_words(self, left_text: list, right_text: list) -> str:
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previous_words = tuple(left_text[-math.floor(self.n/2):])
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next_words = tuple(right_text[:math.floor(self.n/2)])
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all_words = self.all_grams[(previous_words, next_words)]
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best_words = []
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for word in all_words:
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probability = self.get_conditional_prob_for_word(list(previous_words), list(next_words), word)
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best_words.append((word, probability))
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return sorted(best_words, key=(lambda l: l[1]), reverse=True)[:20]
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def generate_text(self, text_beggining:list, text_ending:list, greedy: bool) -> list:
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words = self.most_probable_words(text_beggining, text_ending)
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return words
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dataframeList = pd.read_csv(directory, sep='\t', header=None, names=['FileId', 'Year', 'LeftContext', 'RightContext'], quoting=csv.QUOTE_NONE, chunksize=10000)
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expectedList = pd.read_csv(directory, sep='\t', header=None, names=['Word'], quoting=csv.QUOTE_NONE, chunksize=10000)
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DATASET = ""
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for number, (dataframe, expected) in enumerate(zip(dataframeList, expectedList)):
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dataframe = dataframe.replace(r'\\r|\\n|\n|\\t', ' ', regex=True)
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left_text = dataframe['LeftContext'].to_list()
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right_text = dataframe['RightContext'].to_list()
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word = expected['Word'].to_list()
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lines = zip(left_text, word, right_text)
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lines = list(map(lambda l: " ".join(l), lines))
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DATASET = DATASET + " ".join(lines)
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FINAL_DATASET = re.split(r"\s+", DATASET)
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print(FINAL_DATASET[:100])
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model_3gram = Model(n = 3)
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model_3gram.train(FINAL_DATASET)
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model = model_3gram
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def convert_predictions(line):
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sum_predictions = np.sum([pred[1] for pred in line])
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result = ""
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all_pred = 0
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for word, pred in line:
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new_pred = math.floor(pred / sum_predictions * 100) / 100
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if(new_pred == 1.0):
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new_pred = 0.99
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all_pred = all_pred + new_pred
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result = result + word + ":" + str(new_pred) + " "
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if(round(all_pred, 2) < 1):
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result = result + ":" + str(round(1 - all_pred, 2))
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else:
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result = result + ":" + str(0.01)
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return result
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# PREDICTION FOR DEV-0
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dataframe = pd.read_csv(directory_dev_0, sep='\t', header=None, names=['FileId', 'Year', 'LeftContext', 'RightContext'], quoting=csv.QUOTE_NONE)
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dataframe = dataframe.replace(r'\\r|\\n|\n|\\t', ' ', regex=True)
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left_text = dataframe['LeftContext'].apply(lambda l: re.split(r"\s+", l)).to_list()
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right_text = dataframe['RightContext'].apply(lambda l: re.split(r"\s+", l)).to_list()
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lines = zip(left_text, right_text)
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lines = list(map(lambda l: model.generate_text(l[0], l[1], False), tqdm(lines)))
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print(lines[:100])
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with open("dev-0/out.tsv", "w", encoding="UTF-8") as file:
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result = "\n".join(list(map(lambda l: convert_predictions(l), tqdm(lines))))
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file.write(result)
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file.close()
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# PREDICTION FOR TEST-A
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dataframe = pd.read_csv(directory_test_A, sep='\t', header=None, names=['FileId', 'Year', 'LeftContext', 'RightContext'], quoting=csv.QUOTE_NONE)
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dataframe = dataframe.replace(r'\\r|\\n|\n|\\t', ' ', regex=True)
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left_text = dataframe['LeftContext'].apply(lambda l: re.split(r"\s+", l)).to_list()
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right_text = dataframe['RightContext'].apply(lambda l: re.split(r"\s+", l)).to_list()
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lines = zip(left_text, right_text)
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lines = list(map(lambda l: model.generate_text(l[0], l[1], False), tqdm(lines)))
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print(lines[:100])
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with open("test-A/out.tsv", "w", encoding="UTF-8") as file:
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result = "\n".join(list(map(lambda l: convert_predictions(l), tqdm(lines))))
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file.write(result)
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file.close()
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