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neural_dater.py
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from helper import *
import tensorflow as tf
"""
Abbreviations used in variable names:
et: event-time
de: dependency parse
Recommendation: View with tab-size 8
"""
class DCT_NN(object):
def padData(self, data, seq_len):
"""
Pads the data in a batch | Used as a helper function by pad_dynamic
Parameters
----------
data: batch to be padded
seq_len: maximum number of words in the batch
Returns
-------
Padded data and mask
"""
temp = np.zeros((len(data), seq_len), np.int32)
mask = np.zeros((len(data), seq_len), np.float32)
for i, ele in enumerate(data):
temp[i, :len(ele)] = ele[:seq_len]
mask[i, :len(ele)] = np.ones(len(ele[:seq_len]), np.float32)
return temp, mask
def getOneHot(self, data, num_class):
"""
Generates the one-hot representation
Parameters
----------
data: Batch to be padded
num_class: Total number of relations
Returns
-------
One-hot representation of batch
"""
temp = np.zeros((len(data), num_class), np.int32)
for i, ele in enumerate(data):
temp[i, ele] = 1
return temp
def getBatches(self, data, shuffle = True):
"""
Generates batches of multiple bags
Parameters
----------
data: Data to be used for creating batches.
shuffle: Decides whether to shuffle the data or not.
Returns
-------
Generator for creating batches.
"""
if shuffle: random.shuffle(data)
num_batches = len(data) // self.p.batch_size
for i in range(num_batches):
start_idx = i * self.p.batch_size
yield data[start_idx : start_idx + self.p.batch_size]
def updateEdges(self, data, merge_edges=False):
"""
Merges edge labels or Ignores Edge labels based on cmd arguments
Parameters
----------
data: full dataset
merge_edges: Whether to merge Event Time graph edge labels or not
Returns
-------
data: Updated dataset
"""
for dtype in ['train', 'test', 'valid']:
for i, edges in enumerate(data[dtype]['ETEdges']):
for j in range(len(edges)-1, -1, -1):
edge = edges[j]
lbl = self.id2ce[edge[2]]
if lbl not in self.n_et2id: del data[dtype]['ETEdges'][i][j]
else: data[dtype]['ETEdges'][i][j] = (edge[0], edge[1], self.n_et2id[lbl])
if merge_edges:
for i, edges in enumerate(data[dtype]['ETEdges']):
for j, edge in enumerate(edges):
if edge[2] == self.n_et2id['BEFORE']: data[dtype]['ETEdges'][i][j] = (edge[1], edge[0], self.n_et2id['AFTER'])
elif edge[2] == self.n_et2id['INCLUDES']: data[dtype]['ETEdges'][i][j] = (edge[1], edge[0], self.n_et2id['IS_INCLUDED'])
# Remove dependency edges with negative source/destination ids
for i, edges in enumerate(data[dtype]['DepEdges']):
for j in range(len(edges)-1, -1, -1):
edge = edges[j]
if edge[0] < 0 or edge[1] < 0:
del data[dtype]['DepEdges'][i][j]
if merge_edges: self.num_etLabel -= 2
return data
def rm_hdeg_docs(self, data):
"""
Remove documents with very large number of edges in Event-Time Graph
Parameters
----------
data: full dataset
Returns
-------
data: Updated dataset
"""
rm_idx = {}
for dtype in ['train', 'test', 'valid']:
rm_idx[dtype] = set()
for i,vec in enumerate(data[dtype]['ETIdx']):
if len(vec) > self.p.th_maxet:
rm_idx[dtype].add(i)
for i,vec in enumerate(data[dtype]['ET']):
if len(vec)> self.p.th_seq_len:
rm_idx[dtype].add(i)
for i, etIdx in enumerate(data[dtype]['ETIdx']):
if len(etIdx) == 0:
rm_idx[dtype].add(i)
return rm_idx
def load_data(self):
"""
Reads the data from pickle file
Parameters
----------
self.p.dataset: The path of the dataset to be loaded
Returns
-------
self.voc2id: Mapping of word to its unique identifier
self.Id2voc: Inverse of self.voc2id
self.e2id: Mapping of event time graph edge label to its unique identifier
self.n_et2id: New Mapping of event time graph edge label to its unique identifier
self.num_etLabel: Number of edge labels in event-time graph
self.de2id: Mapping of dependency graph edge label to its unique identifier
self.num_deLabel: Number of edge labels in dependency graph
self.num_class: Total number of years to be predicted
self.wrd_list: Words in vocabulary
self.data: Contains all split of the data train/valid/test
"""
data = pickle.load(open(self.p.dataset, 'rb'))
self.voc2id = data['voc2id']
self.et2id = data['et2id']
self.id2ce = dict([(v,k) for k,v in self.et2id.items()])
self.de2id = data['de2id']
self.n_et2id = {
'AFTER': 0,
'IS_INCLUDED': 1,
'SIMULTANEOUS': 2,
'DURING': 2,
'BEFORE': 3,
'INCLUDES': 4,
}
self.num_etLabel = len(self.n_et2id)
self.num_deLabel = len(self.de2id)
data = self.updateEdges(data, self.p.merge_edges) # Merge edge labels
rm_idx = self.rm_hdeg_docs(data) # Indexes to be removed
print('Number of classes {}'.format(len(np.unique(data['train']['Y']))))
self.num_class = self.p.num_class
self.logger.info('Removing Train:{}, Test:{}, Valid:{}'.format(len(rm_idx['train']), len(rm_idx['test']), len(rm_idx['valid'])))
# Get Word List
self.wrd_list = list(self.voc2id.items()) # Get vocabulary
self.wrd_list.sort(key=lambda x: x[1]) # Sort vocabulary based on ids
self.wrd_list, _ = zip(*self.wrd_list)
self.data_list = {}
key_list = ['X', 'Y', 'ETIdx', 'ETEdges', 'DepEdges']
for dtype in ['train', 'test', 'valid']:
if self.p.use_et_labels == False:
for i, edges in enumerate(data[dtype]['ETEdges']): # if you want to ignore level information in event time graph
for j, edge in enumerate(edges): data[dtype]['ETEdges'][i][j] = (edge[0], edge[1], 0)
self.num_etLabel = 1
if self.p.use_de_labels == False:
for i, edges in enumerate(data[dtype]['DepEdges']): # if you want to ignore level information in dependency graph
for j, edge in enumerate(edges): data[dtype]['DepEdges'][i][j] = (edge[0], edge[1], 0)
self.num_deLabel = 1
data[dtype]['Y'] = self.getOneHot(data[dtype]['Y'], self.num_class) # Representing labels by one hot notation
self.data_list[dtype] = []
for i in range(len(data[dtype]['X'])):
if i in rm_idx[dtype]: continue
self.data_list[dtype].append([data[dtype][key][i] for key in key_list]) # data_list contains all the fields for train test and valid documents
self.logger.info('Document count [{}]: {}'.format(dtype, len(self.data_list[dtype])))
self.data = data
def get_adj(self, edgeList, batch_size, max_nodes, max_labels):
"""
Loads adjacency matrix in sparse matrix format, required for feeding to Tensorflow
Parameters
----------
edgeList: List of list of edges
batch_size: Number of bags in a batch
max_nodes: Maximum number of nodes in the graph
max_labels: Maximum number of edge labels in the graph
Returns
-------
adj_mat Contains dependency/event-time graph for each sentence in the batch
"""
adj_main = []
for edges in edgeList:
ind, vals, adj = ddict(list), ddict(list), {}
for src, dest, lbl in edges:
ind [lbl].append((dest, src))
vals[lbl].append(1.0)
for lbl in range(max_labels):
if lbl not in ind: adj[lbl] = sp.coo_matrix((max_nodes, max_nodes))
else: adj[lbl] = sp.coo_matrix((vals[lbl], zip(*ind[lbl])), shape=(max_nodes, max_nodes))
adj_main.append(adj)
return adj_main
def add_placeholders(self):
"""
Defines the placeholder required for the model
"""
self.input_x = tf.placeholder(tf.int32, shape=[None, None], name='input_data') # Words in a document (batch_size x max_words)
self.input_y = tf.placeholder(tf.int32, shape=[None, None], name='input_labels') # Actual document creation year of the document
self.x_len = tf.placeholder(tf.int32, shape=[None], name='input_len') # Number of words in each document in a batch
self.et_idx = tf.placeholder(tf.int32, shape=[None, None], name='et_idx') # Index of tokens which are events/time_expressions
self.et_mask = tf.placeholder(tf.float32, shape=[None, None], name='et_mask')
# Array of batch_size number of dictionaries, where each dictionary is mapping of label to sparse_placeholder [Temporal graph]
self.de_adj_mat = [{lbl: tf.sparse_placeholder(tf.float32, shape=[None, None]) for lbl in range(self.num_deLabel)} for _ in range(self.p.batch_size)]
# Array of batch_size number of dictionaries, where each dictionary is mapping of label to sparse_placeholder [Syntactic graph]
self.et_adj_mat = [{lbl: tf.sparse_placeholder(tf.float32, shape=[None, None]) for lbl in range(self.num_etLabel)} for _ in range(self.p.batch_size)]
self.seq_len = tf.placeholder(tf.int32, shape=(), name='seq_len') # Maximum number of words in documents of a batch
self.max_et = tf.placeholder(tf.int32, shape=(), name='max_et') # Maximum number of events/time_expressions in documents of a batch
self.dropout = tf.placeholder_with_default(self.p.dropout, shape=(), name='dropout') # Dropout used in GCN Layer
self.rec_dropout = tf.placeholder_with_default(self.p.rec_dropout, shape=(), name='rec_dropout') # Dropout used in Bi-LSTM
def pad_dynamic(self, X, et_idx):
"""
Pads each batch during runtime.
Parameters
----------
X: For each sentence in the batch, list of words
et_idx: Indices of event-time tokens in the sentence
Returns
-------
x_pad Padded words
x_len Number of words in each sentence
et_pad padded event-time token indices
et_mask Mask for et_pad
seq_len Maximum sentence length in the batch
max_et maximum number of event-time tokens in the batch
"""
seq_len, max_et = 0, 0
x_len = np.zeros((len(X)), np.int32)
for i, x in enumerate(X):
seq_len = max(seq_len, len(x))
x_len[i] = len(x)
for et in et_idx: max_et = max(max_et, len(et))
x_pad, _ = self.padData(X, seq_len)
et_pad, et_mask = self.padData(et_idx, max_et)
return x_pad, x_len, et_pad, et_mask, seq_len, max_et
def create_feed_dict(self, batch, wLabels=True, dtype='train'):
"""
Creates a feed dictionary for the batch
Parameters
----------
batch: contains a batch of bags
wLabels: Whether batch contains labels or not
split: Indicates the split of the data - train/valid/test
Returns
-------
feed_dict Feed dictionary to be fed during sess.run
"""
X, Y, et_idx, ETEdges, DepEdges = zip(*batch)
x_pad, x_len, et_pad, et_mask, seq_len, max_et = self.pad_dynamic(X, et_idx)
feed_dict = {}
feed_dict[self.input_x] = np.array(x_pad)
feed_dict[self.x_len] = np.array(x_len)
if wLabels: feed_dict[self.input_y] = np.array(Y)
feed_dict[self.et_idx] = np.array(et_pad)
feed_dict[self.et_mask] = np.array(et_mask)
feed_dict[self.seq_len] = seq_len
feed_dict[self.max_et] = max_et
et_adj = self.get_adj(ETEdges, self.p.batch_size, max_et+1, self.num_etLabel) # max_et + 1(DCT)
de_adj = self.get_adj(DepEdges, self.p.batch_size, seq_len, self.num_deLabel)
for i in range(self.p.batch_size):
for lbl in range(self.num_etLabel):
feed_dict[self.et_adj_mat[i][lbl]] = tf.SparseTensorValue( indices = np.array([et_adj[i][lbl].row, et_adj[i][lbl].col]).T,
values = et_adj[i][lbl].data,
dense_shape = et_adj[i][lbl].shape)
for lbl in range(self.num_deLabel):
feed_dict[self.de_adj_mat[i][lbl]] = tf.SparseTensorValue( indices = np.array([de_adj[i][lbl].row, de_adj[i][lbl].col]).T,
values = de_adj[i][lbl].data,
dense_shape = de_adj[i][lbl].shape)
if dtype != 'train':
feed_dict[self.dropout] = 1.0
feed_dict[self.rec_dropout] = 1.0
return feed_dict
def GCNLayer(self, gcn_in, in_dim, gcn_dim, batch_size, max_nodes, max_labels, adj, num_layers=1, name="GCN"):
"""
GCN Layer Implementation
Parameters
----------
gcn_in: Input to GCN Layer
in_dim: Dimension of input to GCN Layer
gcn_dim: Hidden state dimension of GCN
batch_size: Batch size
max_nodes: Maximum number of nodes in graph
max_labels: Maximum number of edge labels
adj: Adjacency matrix indices
num_layers: Number of GCN Layers
name Name of the layer (used for creating variables, keep it different for different layers)
Returns
-------
out List of output of different GCN layers with first element as input itself, i.e., [gcn_in, gcn_layer1_out, gcn_layer2_out ...]
"""
out = []
out.append(gcn_in)
for layer in range(num_layers):
gcn_in = out[-1] # out contains the output of all the GCN layers, intitally contains input to first GCN Layer
if len(out) > 1: in_dim = gcn_dim # After first iteration the in_dim = gcn_dim
with tf.name_scope('%s-%d' % (name,layer)):
act_sum = tf.zeros([batch_size, max_nodes, gcn_dim])
for lbl in range(max_labels):
with tf.variable_scope('label-%d_name-%s_layer-%d' % (lbl, name, layer)) as scope:
w_in = tf.get_variable('w_in', [in_dim, gcn_dim], initializer=tf.contrib.layers.xavier_initializer(), regularizer=self.regularizer)
b_in = tf.get_variable('b_in', [1, gcn_dim], initializer=tf.constant_initializer(0.0), regularizer=self.regularizer)
w_out = tf.get_variable('w_out', [in_dim, gcn_dim], initializer=tf.contrib.layers.xavier_initializer(), regularizer=self.regularizer)
b_out = tf.get_variable('b_out', [1, gcn_dim], initializer=tf.constant_initializer(0.0), regularizer=self.regularizer)
w_loop = tf.get_variable('w_loop', [in_dim, gcn_dim], initializer=tf.contrib.layers.xavier_initializer(), regularizer=self.regularizer)
if self.p.wGate:
w_gin = tf.get_variable('w_gin', [in_dim, 1], initializer=tf.contrib.layers.xavier_initializer(), regularizer=self.regularizer)
b_gin = tf.get_variable('b_gin', [1], initializer=tf.constant_initializer(0.0), regularizer=self.regularizer)
w_gout = tf.get_variable('w_gout', [in_dim, 1], initializer=tf.contrib.layers.xavier_initializer(), regularizer=self.regularizer)
b_gout = tf.get_variable('b_gout', [1], initializer=tf.constant_initializer(0.0), regularizer=self.regularizer)
w_gloop = tf.get_variable('w_gloop',[in_dim, 1], initializer=tf.contrib.layers.xavier_initializer(), regularizer=self.regularizer)
with tf.name_scope('in_arcs-%s_name-%s_layer-%d' % (lbl, name, layer)):
inp_in = tf.tensordot(gcn_in, w_in, axes=[2,0]) + tf.expand_dims(b_in, axis=0)
in_t = tf.stack([tf.sparse_tensor_dense_matmul(adj[i][lbl], inp_in[i]) for i in range(batch_size)])
if self.p.dropout != 1.0: in_t = tf.nn.dropout(in_t, keep_prob=self.p.dropout)
if self.p.wGate:
inp_gin = tf.tensordot(gcn_in, w_gin, axes=[2,0]) + tf.expand_dims(b_gin, axis=0)
in_gate = tf.stack([tf.sparse_tensor_dense_matmul(adj[i][lbl], inp_gin[i]) for i in range(batch_size)])
in_gsig = tf.sigmoid(in_gate)
in_act = in_t * in_gsig
else:
in_act = in_t
with tf.name_scope('out_arcs-%s_name-%s_layer-%d' % (lbl, name, layer)):
inp_out = tf.tensordot(gcn_in, w_out, axes=[2,0]) + tf.expand_dims(b_out, axis=0)
out_t = tf.stack([tf.sparse_tensor_dense_matmul(tf.sparse_transpose(adj[i][lbl]), inp_out[i]) for i in range(batch_size)])
if self.p.dropout != 1.0: out_t = tf.nn.dropout(out_t, keep_prob=self.p.dropout)
if self.p.wGate:
inp_gout = tf.tensordot(gcn_in, w_gout, axes=[2,0]) + tf.expand_dims(b_gout, axis=0)
out_gate = tf.stack([tf.sparse_tensor_dense_matmul(tf.sparse_transpose(adj[i][lbl]), inp_gout[i]) for i in range(batch_size)])
out_gsig = tf.sigmoid(out_gate)
out_act = out_t * out_gsig
else:
out_act = out_t
with tf.name_scope('self_loop'):
inp_loop = tf.tensordot(gcn_in, w_loop, axes=[2,0])
if self.p.dropout != 1.0: inp_loop = tf.nn.dropout(inp_loop, keep_prob=self.p.dropout)
if self.p.wGate:
inp_gloop = tf.tensordot(gcn_in, w_gloop, axes=[2,0])
loop_gsig = tf.sigmoid(inp_gloop)
loop_act = inp_loop * loop_gsig
else:
loop_act = inp_loop
act_sum += in_act + out_act + loop_act
gcn_out = tf.nn.relu(act_sum)
out.append(gcn_out)
return out
def gather(self, data, pl_idx, pl_mask, max_len, name=None):
"""
Lookup equivalent for tensors with dim > 2 (Can be simplified using tf.batch_gather)
Parameters
----------
data: Tensor in which lookup has to be performed
pl_idx: The indices to be taken
pl_mask: For handling padding in pl_idx
max_len: Maximum length of indices
Returns
-------
et_vecs * mask_vec: Extracted vectors at given indices
"""
idx1 = tf.range(self.p.batch_size, dtype=tf.int32)
idx1 = tf.reshape(idx1, [-1, 1])
idx1_ = tf.reshape(tf.tile(idx1, [1, max_len]) , [-1, 1])
idx_reshape = tf.reshape(pl_idx, [-1, 1])
indices = tf.concat((idx1_, idx_reshape), axis=1)
et_vecs = tf.gather_nd(data, indices)
et_vecs = tf.reshape(et_vecs, [self.p.batch_size, self.max_et, -1])
mask_vec = tf.expand_dims(pl_mask, axis=2)
return et_vecs * mask_vec
def add_model(self):
"""
Creates the Computational Graph
Parameters
----------
Returns
-------
nn_out: Logits for each bag in the batch
"""
nn_in = self.input_x
with tf.variable_scope('Embeddings') as scope:
embed_init = getEmbeddings(self.p.embed_loc, self.wrd_list, self.p.embed_dim)
embed_init = np.vstack( (np.zeros(self.p.embed_dim, np.float32), embed_init))
embeddings = tf.get_variable('embeddings', initializer=embed_init, trainable=True, regularizer=self.regularizer)
embeds = tf.nn.embedding_lookup(embeddings, self.input_x)
with tf.variable_scope('Bi-LSTM') as scope:
fw_cell = tf.contrib.rnn.DropoutWrapper(tf.nn.rnn_cell.LSTMCell(self.p.lstm_dim), output_keep_prob=self.rec_dropout)
bk_cell = tf.contrib.rnn.DropoutWrapper(tf.nn.rnn_cell.LSTMCell(self.p.lstm_dim), output_keep_prob=self.rec_dropout)
val, state = tf.nn.bidirectional_dynamic_rnn(fw_cell, bk_cell, embeds, sequence_length=self.x_len, dtype=tf.float32)
lstm_out = tf.concat((val[0], val[1]), axis=2)
de_in = lstm_out
de_in_dim = self.p.lstm_dim*2 # Concatenated output of forward and backward LSTM (Bi-LSTM)
de_out = self.GCNLayer( gcn_in = de_in, in_dim = de_in_dim, gcn_dim = self.p.de_gcn_dim,
batch_size = self.p.batch_size, max_nodes = self.seq_len, max_labels = self.num_deLabel,
adj = self.de_adj_mat, num_layers = self.p.de_layers, name = "GCN_DE")
ce_in_dim = self.p.de_gcn_dim
ce_in = de_out[-1] # GCNLayer returns list containing output of all layers; last entry is its final output
et_vecs = self.gather(ce_in, self.et_idx, self.et_mask, self.max_et, name='ET_pick')
with tf.name_scope('DCT_init'):
dct_sum = tf.reduce_sum(et_vecs, axis=1)
dct_cnt = tf.reduce_sum(self.et_mask, axis=1)
dct_init = tf.expand_dims(dct_sum / tf.expand_dims(dct_cnt,axis=1), axis=1)
et_con = tf.concat( [dct_init, et_vecs], axis=1)
ce_out = self.GCNLayer( gcn_in = et_con, in_dim = ce_in_dim, gcn_dim = self.p.et_gcn_dim,
batch_size = self.p.batch_size, max_nodes = self.max_et+1, max_labels = self.num_etLabel,
adj = self.et_adj_mat, num_layers = self.p.et_layers, name = "GCN_CE")
dct_vec = ce_out[-1][:,0]
con_mean = tf.reduce_mean(ce_in, axis=1) # Context Embedding
dct_final = tf.concat([dct_vec, con_mean], axis=1) # Concatenating contextual and temporal embedding
fc_in_dim = self.p.et_gcn_dim + ce_in_dim
with tf.variable_scope('FC1') as scope:
w = tf.get_variable('w', [fc_in_dim, self.num_class], initializer=tf.truncated_normal_initializer(), regularizer=self.regularizer)
b = tf.get_variable('b', [self.num_class], initializer=tf.constant_initializer(0.0), regularizer=self.regularizer)
nn_out = tf.matmul(dct_final, w) + b
'''
# debug_nn([dct_final], self.create_feed_dict(self.data_list['train'][0:self.p.batch_size]))
'''
return nn_out
def add_loss(self, nn_out):
"""
Computes loss based on logits and actual labels
Parameters
----------
nn_out: Logits for each bag in the batch
Returns
-------
loss: Computes loss based on prediction and actual labels
"""
with tf.name_scope('Loss_op'):
loss = tf.reduce_mean(tf.nn.softmax_cross_entropy_with_logits_v2(logits=nn_out, labels=self.input_y))
if self.regularizer != None: loss += tf.contrib.layers.apply_regularization(self.regularizer, tf.get_collection(tf.GraphKeys.REGULARIZATION_LOSSES))
return loss
def add_optimizer(self, loss):
"""
Add optimizer for training variables
Parameters
----------
loss: Computed loss
Returns
-------
train_op: Training optimizer
"""
with tf.name_scope('Optimizer'):
optimizer = tf.train.AdamOptimizer(self.p.lr)
train_op = optimizer.minimize(loss)
return train_op
def __init__(self, params):
"""
Constructor for the main function. Loads data and creates computation graph.
Parameters
----------
params: Hyperparameters of the model
Returns
-------
"""
self.p = params
pprint(vars(params))
self.logger = get_logger(self.p.name, self.p.log_dir, self.p.config_dir)
self.logger.info(vars(self.p))
self.p.batch_size = self.p.batch_size
if self.p.l2 == 0.0: self.regularizer = None
else: self.regularizer = tf.contrib.layers.l2_regularizer(scale=self.p.l2)
self.load_data()
self.add_placeholders()
nn_out = self.add_model()
self.loss = self.add_loss(nn_out) # Compute the loss
self.train_op = self.add_optimizer(self.loss) # Update the parameters
self.logits = tf.nn.softmax(nn_out)
y_pred = tf.argmax(self.logits, 1) # Predictions by the model
corr_pred = tf.equal(tf.argmax(self.input_y, 1), y_pred)
self.corr_pred = tf.reduce_sum(tf.cast(corr_pred, 'int32'))
self.merged_summ = tf.summary.merge_all()
self.summ_writer = None
def predict(self, sess, data, wLabels=True, shuffle=False):
"""
Evaluate model on valid/test data
Parameters
----------
sess: Session of tensorflow
data: Data to evaluate on
wLabels: Does data include labels or not
shuffle: Shuffle data while before creates batches
Returns
-------
losses: Loss over the entire data
accuracies: Overall Accuracy
y: Actual label
y_pred: Predicted labels
logit_list: Logit list for each bag in the data
"""
losses, y_pred, y, logit_list = [], [], [], [], []
total_correct, total_cnt = 0, 0
for step, batch in enumerate(self.getBatches(data, shuffle)):
if not wLabels:
feed = self.create_feed_dict(batch, wLabels, dtype='test')
logits, correct = sess.run([self.logits, self.corr_pred] , feed_dict = feed)
else:
feed = self.create_feed_dict(batch, dtype='test')
loss, logits, correct = sess.run([self.loss, self.logits, self.corr_pred], feed_dict = feed)
losses.append(loss)
total_correct += correct
total_cnt += len(batch)
pred_ind = logits.argmax(axis=1)
logit_list += logits.tolist()
y_pred += pred_ind.tolist()
_, Y, _, _, _ = zip(*batch)
y += np.array(Y).argmax(axis=1).tolist()
if step % 5 == 0:
self.logger.info('Evaluating Test/Valid ({}/{}):\t{:.5}\t{:.5}\t{}'.format(step, len(data)//self.p.batch_size, total_correct/total_cnt, np.mean(losses), self.p.name))
accuracy = float(total_correct)/total_cnt * 100.0
self.logger.info('Accuracy: {}'.format(accuracy))
if wLabels: return np.mean(losses), accuracy, y, y_pred, logit_list
else: return 0, accuracy, y, y_pred, logit_list
def run_epoch(self, sess, data, epoch, shuffle=True):
"""
Runs one epoch of training
Parameters
----------
sess: Session of tensorflow
data: Data to train on
epoch: Epoch number
shuffle: Shuffle data while before creates batches
Returns
-------
losses: Loss over the entire data
Accuracy: Overall accuracy
"""
drop_rate = self.p.dropout
losses = []
total_correct, total_cnt = 0, 0
for step, batch in enumerate(self.getBatches(data, shuffle)):
feed = self.create_feed_dict(batch)
loss, correct, _= sess.run([self.loss, self.corr_pred, self.train_op], feed_dict=feed)
if(np.isnan(loss)):
print(et_cnt)
pdb.set_trace()
total_cnt += len(batch)
total_correct += correct
losses.append(loss)
if step % 5 == 0:
self.logger.info('E:{} Train Accuracy ({}/{}):\t{:.5}\t{:.5}\t{}\t{:.5}'.format(epoch, step, len(data)//self.p.batch_size, total_correct/total_cnt, np.mean(losses), self.p.name, self.best_val_acc))
accuracy = float(total_correct)/total_cnt * 100.0
self.logger.info('Training Loss:{}, Accuracy: {}'.format(np.mean(losses), accuracy))
return np.mean(losses), accuracy
def fit(self, sess):
"""
Trains the model and finally evaluates on test
Parameters
----------
sess: Tensorflow session object
Returns
-------
"""
self.summ_writer = tf.summary.FileWriter("tf_board/DCT_NN/" + self.p.name, sess.graph)
self.best_val_acc, self.best_train_acc = 0.0, 0.0
saver = tf.train.Saver()
save_dir = 'checkpoints/' + self.p.name + '/'
if not os.path.exists(save_dir): os.makedirs(save_dir)
save_path = os.path.join(save_dir, 'best_validation')
if self.p.restore: saver.restore(sess, save_path)
# Train Model
for epoch in range(self.p.max_epochs):
self.logger.info('Epoch: {}'.format(epoch))
train_loss, train_acc = self.run_epoch(sess, self.data_list['train'], epoch)
val_loss, val_acc, y, y_pred, logit_list = self.predict(sess, self.data_list['valid'])
if val_acc > self.best_val_acc:
self.best_val_acc = val_acc
self.best_train_acc = train_acc
saver.save(sess=sess, save_path=save_path)
self.logger.info('[Epoch {}]: Training Loss: {:.5}, Training Acc: {:.5}, Valid Loss: {:.5}, Valid Acc: {:.5} Best Acc: {:.5}\n'.format(epoch, train_loss, train_acc, val_loss, val_acc, self.best_val_acc))
# Evaluate on Test
self.logger.info('Running on Test set')
test_loss, test_pred, test_acc, y, y_pred, logit_list = self.predict(sess, self.data_list['test'])
self.logger.info('Test Acc:{}'.format(test_acc))
if __name__== "__main__":
parser = argparse.ArgumentParser(description='Main Neural Network for Time Stamping Documents')
parser.add_argument('-data', dest="dataset", required=True, help='Dataset to use')
parser.add_argument('-class', dest="num_class", required=True, type=int, help='Number of classes (years/months)')
parser.add_argument('-gpu', dest="gpu", default='0', help='GPU to use')
parser.add_argument('-name', dest="name", default='test_'+str(uuid.uuid4()),help='Name of the run')
parser.add_argument('-drop', dest="dropout", default=1.0, type=float, help='Dropout for full connected layer')
parser.add_argument('-rdrop', dest="rec_dropout", default=1.0, type=float, help='Recurrent dropout for LSTM')
parser.add_argument('-lr', dest="lr", default=0.001, type=float, help='Learning rate')
parser.add_argument('-batch', dest="batch_size", default=64, type=int, help='Batch size')
parser.add_argument('-epoch', dest="max_epochs", default=50, type=int, help='Max epochs')
parser.add_argument('-l2', dest="l2", default=0.001, type=float, help='L2 regularization')
parser.add_argument('-seed', dest="seed", default=1234, type=int, help='Seed for randomization')
parser.add_argument('-fix_emb', dest="fix_emb", action='store_true', help='fix embedding for fast training')
parser.add_argument('-lstm_dim', dest="lstm_dim", default=128, type=int, help='Hidden state dimension of Bi-LSTM')
parser.add_argument('-de_dim', dest="de_gcn_dim", default=128, type=int, help='Hidden state dimension of GCN over dependency tree')
parser.add_argument('-et_dim', dest="et_gcn_dim", default=128, type=int, help='Hidden state dimension of GCN over ET-graphs')
parser.add_argument('-fc1_dim', dest="fc1_dim", default=128, type=int, help='Hidden state dimension of FC layer')
parser.add_argument('-de_layer', dest="de_layers", default=1, type=int, help='Number of layers in GCN over dependency tree')
parser.add_argument('-et_layer', dest="et_layers", default=2, type=int, help='Number of layers in GCN over ET-graph')
parser.add_argument('-th_et', dest="th_maxet", default=300 , type=int, help='maximum et_nodes')
parser.add_argument('-th_seq', dest="th_seq_len", default=800 , type=int, help='maximum de_nodes or sequence_length')
# Include/Exclude network parts
parser.add_argument('-no-CE', dest="wCE", action='store_false', help='With or without ET graph')
parser.add_argument('-noGate', dest="wGate", action='store_false', help='Use gating in GCN')
parser.add_argument('-no-et_lbl',dest="use_et_labels", action='store_false', help='Ignore edge labels in ET-graph')
parser.add_argument('-merge', dest="merge_edges", action='store_true', help='Merge edge labels in ET-graph')
parser.add_argument('-de_lbl', dest="use_de_labels", action='store_true', help='Use edge labels in dependency tree')
parser.add_argument('-restore', dest="restore", action='store_true', help='Restore from the previously saved model')
parser.add_argument('-logdir', dest="log_dir", default='./log/', help='Log directory')
parser.add_argument('-config', dest="config_dir", default='./config/', help='Config directory')
parser.add_argument('-embed_loc',dest="embed_loc", default='./glove/glove.6B.300d_word2vec.txt', help='Log directory')
parser.add_argument('-embed_dim',dest="embed_dim", default=300, type=int, help='Dimension of embedding')
args = parser.parse_args()
if not args.restore: args.name = args.name + '_' + time.strftime("%d_%m_%Y") + '_' + time.strftime("%H:%M:%S")
tf.set_random_seed(args.seed)
random.seed(args.seed)
np.random.seed(args.seed)
set_gpu(args.gpu)
model = DCT_NN(args)
config = tf.ConfigProto()
config.gpu_options.allow_growth=True
with tf.Session(config=config) as sess:
sess.run(tf.global_variables_initializer())
model.fit(sess)