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Author SHA1 Message Date
90adf994db Update for the new version 2022-04-28 22:06:42 +02:00
7 changed files with 19056 additions and 11629 deletions

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4
gonito.yaml Normal file
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@ -0,0 +1,4 @@
description: tfidf with linear regression
tags:
- linear-regression
- tf-idf

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@ -57,8 +57,8 @@ model.add(Bidirectional(LSTM(LSTM_SIZE, dropout = DROPOUT_LSTM)))
model.add(Dropout(DROPOUT_REGULAR))
model.add(Dense(1, activation='linear'))
#model_checkpoint = sorted(os.listdir(checkpoints))[-1]
model.load_weights('checkpoints/saved-model-000018-0.03.hdf5','rb')
model_checkpoint = sorted(os.listdir(checkpoints))[-1]
model.load_weights('checkpoints/saved-model-000006-0.02.hdf5','rb')
scaler = pickle.load(open('minmaxscaler.pickle', 'rb'))

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@ -38,22 +38,22 @@ FILE='2'
train_text = [a.rstrip('\n') for a in open('../train/in.tsv','r')]
train_year = [float(a.rstrip('\n')) for a in open(f'../train/expected{FILE}.tsv','r')]
maxlen = 500
#tokenizer = Tokenizer(num_words=vocab_size)
#tokenizer.fit_on_texts(train_text)
#train_text_tokenized = tokenizer.texts_to_sequences(train_text)
#train_text_tokenized = pad_sequences(train_text_tokenized, padding='post', maxlen=maxlen)
#pickle.dump(train_text_tokenized, open('train_text_30k_for_keras.pickle', 'wb'))
#pickle.dump(tokenizer, open('tokenizer.pickle', 'wb'))
tokenizer = Tokenizer(num_words=vocab_size)
tokenizer.fit_on_texts(train_text)
train_text_tokenized = tokenizer.texts_to_sequences(train_text)
maxlen = 500
train_text_tokenized = pad_sequences(train_text_tokenized, padding='post', maxlen=maxlen)
pickle.dump(train_text_tokenized, open('train_text_30k_for_keras.pickle', 'wb'))
pickle.dump(tokenizer, open('tokenizer.pickle', 'wb'))
train_text_tokenized= pickle.load(open('train_text_30k_for_keras.pickle', 'rb'))
#eval_text_tokenized = [a.rstrip('\n') for a in open('../dev-0/in.tsv', 'r')]
#eval_text_tokenized = tokenizer.texts_to_sequences(eval_text_tokenized)
#eval_text_tokenized = pad_sequences(eval_text_tokenized, padding='post', maxlen=maxlen)
#pickle.dump(eval_text_tokenized, open('eval_text_30k_for_keras.pickle', 'wb'))
eval_text_tokenized = [a.rstrip('\n') for a in open('../dev-0/in.tsv', 'r')]
eval_text_tokenized = tokenizer.texts_to_sequences(eval_text_tokenized)
eval_text_tokenized = pad_sequences(eval_text_tokenized, padding='post', maxlen=maxlen)
pickle.dump(eval_text_tokenized, open('eval_text_30k_for_keras.pickle', 'wb'))
eval_text_tokenized = pickle.load(open('eval_text_30k_for_keras.pickle', 'rb'))
eval_year = [float(a.rstrip()) for a in open(f'../dev-0/expected{FILE}.tsv','r')]
@ -84,5 +84,5 @@ eval_year_scaled = scaler.transform(eval_year)
filepath = "./" + checkpoints + "/saved-model-{epoch:06d}-{val_loss:.2f}.hdf5"
checkpoint = ModelCheckpoint(filepath, monitor='val_loss', verbose=1, save_best_only=True)
es = EarlyStopping(monitor='val_loss', patience = 70)
model.compile(optimizer=tf.keras.optimizers.Adam(learning_rate=0.000001), loss='mse', metrics=['mse'])
history = model.fit(train_text_tokenized, train_year_scaled, batch_size=BATCH_SIZE, epochs=100, verbose=1, validation_data = (eval_text_tokenized, eval_year_scaled), callbacks = [es, checkpoint])
model.compile(optimizer=tf.keras.optimizers.Adam(learning_rate=0.0001), loss='mse', metrics=['mse'])
history = model.fit(train_text_tokenized, train_year_scaled, batch_size=BATCH_SIZE, epochs=5000, verbose=1, validation_data = (eval_text_tokenized, eval_year_scaled), callbacks = [es, checkpoint])

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@ -65,7 +65,7 @@ class RegressorHead(torch.nn.Module):
regressor_head = RegressorHead().to(device)
optimizer = torch.optim.Adam(list(roberta.parameters()) + list(regressor_head.parameters()), lr=1e-8)
optimizer = torch.optim.Adam(list(roberta.parameters()) + list(regressor_head.parameters()), lr=1e-6)
criterion = torch.nn.MSELoss(reduction='sum').to(device)
BATCH_SIZE = 1
@ -118,8 +118,7 @@ def eval_short():
loss = 0.0
loss_clipped = 0.0
loss_scaled = 0.0
eval_num = 10000
for batch, year in tqdm(get_train_batch(dev_in[:eval_num],dev_year_scaled[:eval_num])):
for batch, year in tqdm(get_train_batch(dev_in[:1000],dev_year_scaled[:1000])):
x = regressor_head(batch.to(device)).squeeze()
x_clipped = torch.clamp(x,0.0,1.0)
@ -131,8 +130,8 @@ def eval_short():
loss_scaled += criterion_eval(x, year).item()
loss += criterion_eval(original_x, original_year).item()
loss_clipped += criterion_eval(original_x_clipped, original_year).item()
print('valid loss scaled: ' + str(np.sqrt(loss_scaled/eval_num)))
print('valid loss: ' + str(np.sqrt(loss/eval_num)))
print('valid loss scaled: ' + str(np.sqrt(loss_scaled/1000)))
print('valid loss: ' + str(np.sqrt(loss/1000)))
print('valid loss clipped: ' + str(np.sqrt(loss_clipped/len(dev_year))))

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@ -10,18 +10,20 @@ import random
import pickle
import sys
import lzma
def tokenizer_space(text):
return text.split(' ')
type = sys.argv[1] # 1 or 2
type = sys.argv[1] # 1 or 2
def run():
# LOADING DATA
train_text = [a.rstrip('\n') for a in open('../train/in.tsv','r')]
dev_text = [a.rstrip('\n') for a in open('../dev-0/in.tsv','r')]
test_text = [a.rstrip('\n') for a in open('../test-A/in.tsv','r')]
train_text = [a.rstrip('\n') for a in lzma.open('../train/in.tsv.xz', 'rt')]
dev_text = [a.rstrip('\n') for a in lzma.open('../dev-0/in.tsv.xz', 'rt')]
test_text = [a.rstrip('\n') for a in lzma.open('../test-A/in.tsv.xz', 'rt')]
global lowest
train_year = [float(a.rstrip('\n')) for a in open(f'../train/expected{type}.tsv','r')]