Description Arguments Value Examples
Train 1-dimensional Convolution Network using keras on the given dataset
data |
the sentiment140 train dataset with |
max_words |
Maximum number of words to consider using word frequency measure. |
maxlen |
Maximum length of a sequence. |
embedding_dim |
Output dimension of the embedding layer. |
epochs |
Number of epochs to run the training for. |
batch_size |
Batch Size for model fitting. |
validation_split |
Split ratio for validation |
conv1d_filters |
Number of filters i.e. output dimension for convolution layers. |
conv1d_kernel_size |
Window size for convolution layers. |
conv1d_pool_size |
Pool size for max pooling. |
seed |
Seed for shuffling training data. |
model_save_path |
File path location for saving model. |
plot of the training operation showing train vs validation loss and accuracy.
1 2 3 4 5 | ## Not run:
data(sentiment140_train)
train_conv_1d(model_save_path = "./train_no_glove_conv_1d.h5")
## End(Not run)
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