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skipthoughts.py
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skipthoughts.py
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'''
Skip-thought vectors
https://github.com/ryankiros/skip-thoughts
'''
import os
import theano
import theano.tensor as tensor
import cPickle as pkl
import numpy
import copy
import nltk
from collections import OrderedDict, defaultdict
from scipy.linalg import norm
from nltk.tokenize import word_tokenize
profile = False
#-----------------------------------------------------------------------------#
# Specify model and table locations here
#-----------------------------------------------------------------------------#
path_to_models = 'Data/skipthoughts/'
path_to_tables = 'Data/skipthoughts/'
#-----------------------------------------------------------------------------#
path_to_umodel = path_to_models + 'uni_skip.npz'
path_to_bmodel = path_to_models + 'bi_skip.npz'
def load_model():
"""
Load the model with saved tables
"""
# Load model options
print 'Loading model parameters...'
with open('%s.pkl'%path_to_umodel, 'rb') as f:
uoptions = pkl.load(f)
with open('%s.pkl'%path_to_bmodel, 'rb') as f:
boptions = pkl.load(f)
# Load parameters
uparams = init_params(uoptions)
uparams = load_params(path_to_umodel, uparams)
utparams = init_tparams(uparams)
bparams = init_params_bi(boptions)
bparams = load_params(path_to_bmodel, bparams)
btparams = init_tparams(bparams)
# Extractor functions
print 'Compiling encoders...'
embedding, x_mask, ctxw2v = build_encoder(utparams, uoptions)
f_w2v = theano.function([embedding, x_mask], ctxw2v, name='f_w2v')
embedding, x_mask, ctxw2v = build_encoder_bi(btparams, boptions)
f_w2v2 = theano.function([embedding, x_mask], ctxw2v, name='f_w2v2')
# Tables
print 'Loading tables...'
utable, btable = load_tables()
# Store everything we need in a dictionary
print 'Packing up...'
model = {}
model['uoptions'] = uoptions
model['boptions'] = boptions
model['utable'] = utable
model['btable'] = btable
model['f_w2v'] = f_w2v
model['f_w2v2'] = f_w2v2
return model
def load_tables():
"""
Load the tables
"""
words = []
utable = numpy.load(path_to_tables + 'utable.npy')
btable = numpy.load(path_to_tables + 'btable.npy')
f = open(path_to_tables + 'dictionary.txt', 'rb')
for line in f:
words.append(line.decode('utf-8').strip())
f.close()
utable = OrderedDict(zip(words, utable))
btable = OrderedDict(zip(words, btable))
return utable, btable
def encode(model, X, use_norm=True, verbose=True, batch_size=128, use_eos=False):
"""
Encode sentences in the list X. Each entry will return a vector
"""
# first, do preprocessing
X = preprocess(X)
# word dictionary and init
d = defaultdict(lambda : 0)
for w in model['utable'].keys():
d[w] = 1
ufeatures = numpy.zeros((len(X), model['uoptions']['dim']), dtype='float32')
bfeatures = numpy.zeros((len(X), 2 * model['boptions']['dim']), dtype='float32')
# length dictionary
ds = defaultdict(list)
captions = [s.split() for s in X]
for i,s in enumerate(captions):
ds[len(s)].append(i)
# Get features. This encodes by length, in order to avoid wasting computation
for k in ds.keys():
if verbose:
print k
numbatches = len(ds[k]) / batch_size + 1
for minibatch in range(numbatches):
caps = ds[k][minibatch::numbatches]
if use_eos:
uembedding = numpy.zeros((k+1, len(caps), model['uoptions']['dim_word']), dtype='float32')
bembedding = numpy.zeros((k+1, len(caps), model['boptions']['dim_word']), dtype='float32')
else:
uembedding = numpy.zeros((k, len(caps), model['uoptions']['dim_word']), dtype='float32')
bembedding = numpy.zeros((k, len(caps), model['boptions']['dim_word']), dtype='float32')
for ind, c in enumerate(caps):
caption = captions[c]
for j in range(len(caption)):
if d[caption[j]] > 0:
uembedding[j,ind] = model['utable'][caption[j]]
bembedding[j,ind] = model['btable'][caption[j]]
else:
uembedding[j,ind] = model['utable']['UNK']
bembedding[j,ind] = model['btable']['UNK']
if use_eos:
uembedding[-1,ind] = model['utable']['<eos>']
bembedding[-1,ind] = model['btable']['<eos>']
if use_eos:
uff = model['f_w2v'](uembedding, numpy.ones((len(caption)+1,len(caps)), dtype='float32'))
bff = model['f_w2v2'](bembedding, numpy.ones((len(caption)+1,len(caps)), dtype='float32'))
else:
uff = model['f_w2v'](uembedding, numpy.ones((len(caption),len(caps)), dtype='float32'))
bff = model['f_w2v2'](bembedding, numpy.ones((len(caption),len(caps)), dtype='float32'))
if use_norm:
for j in range(len(uff)):
uff[j] /= norm(uff[j])
bff[j] /= norm(bff[j])
for ind, c in enumerate(caps):
ufeatures[c] = uff[ind]
bfeatures[c] = bff[ind]
features = numpy.c_[ufeatures, bfeatures]
return features
def preprocess(text):
"""
Preprocess text for encoder
"""
X = []
sent_detector = nltk.data.load('tokenizers/punkt/english.pickle')
for t in text:
sents = sent_detector.tokenize(t)
result = ''
for s in sents:
tokens = word_tokenize(s)
result += ' ' + ' '.join(tokens)
X.append(result)
return X
def nn(model, text, vectors, query, k=5):
"""
Return the nearest neighbour sentences to query
text: list of sentences
vectors: the corresponding representations for text
query: a string to search
"""
qf = encode(model, [query])
qf /= norm(qf)
scores = numpy.dot(qf, vectors.T).flatten()
sorted_args = numpy.argsort(scores)[::-1]
sentences = [text[a] for a in sorted_args[:k]]
print 'QUERY: ' + query
print 'NEAREST: '
for i, s in enumerate(sentences):
print s, sorted_args[i]
def word_features(table):
"""
Extract word features into a normalized matrix
"""
features = numpy.zeros((len(table), 620), dtype='float32')
keys = table.keys()
for i in range(len(table)):
f = table[keys[i]]
features[i] = f / norm(f)
return features
def nn_words(table, wordvecs, query, k=10):
"""
Get the nearest neighbour words
"""
keys = table.keys()
qf = table[query]
scores = numpy.dot(qf, wordvecs.T).flatten()
sorted_args = numpy.argsort(scores)[::-1]
words = [keys[a] for a in sorted_args[:k]]
print 'QUERY: ' + query
print 'NEAREST: '
for i, w in enumerate(words):
print w
def _p(pp, name):
"""
make prefix-appended name
"""
return '%s_%s'%(pp, name)
def init_tparams(params):
"""
initialize Theano shared variables according to the initial parameters
"""
tparams = OrderedDict()
for kk, pp in params.iteritems():
tparams[kk] = theano.shared(params[kk], name=kk)
return tparams
def load_params(path, params):
"""
load parameters
"""
pp = numpy.load(path)
for kk, vv in params.iteritems():
if kk not in pp:
warnings.warn('%s is not in the archive'%kk)
continue
params[kk] = pp[kk]
return params
# layers: 'name': ('parameter initializer', 'feedforward')
layers = {'gru': ('param_init_gru', 'gru_layer')}
def get_layer(name):
fns = layers[name]
return (eval(fns[0]), eval(fns[1]))
def init_params(options):
"""
initialize all parameters needed for the encoder
"""
params = OrderedDict()
# embedding
params['Wemb'] = norm_weight(options['n_words_src'], options['dim_word'])
# encoder: GRU
params = get_layer(options['encoder'])[0](options, params, prefix='encoder',
nin=options['dim_word'], dim=options['dim'])
return params
def init_params_bi(options):
"""
initialize all paramters needed for bidirectional encoder
"""
params = OrderedDict()
# embedding
params['Wemb'] = norm_weight(options['n_words_src'], options['dim_word'])
# encoder: GRU
params = get_layer(options['encoder'])[0](options, params, prefix='encoder',
nin=options['dim_word'], dim=options['dim'])
params = get_layer(options['encoder'])[0](options, params, prefix='encoder_r',
nin=options['dim_word'], dim=options['dim'])
return params
def build_encoder(tparams, options):
"""
build an encoder, given pre-computed word embeddings
"""
# word embedding (source)
embedding = tensor.tensor3('embedding', dtype='float32')
x_mask = tensor.matrix('x_mask', dtype='float32')
# encoder
proj = get_layer(options['encoder'])[1](tparams, embedding, options,
prefix='encoder',
mask=x_mask)
ctx = proj[0][-1]
return embedding, x_mask, ctx
def build_encoder_bi(tparams, options):
"""
build bidirectional encoder, given pre-computed word embeddings
"""
# word embedding (source)
embedding = tensor.tensor3('embedding', dtype='float32')
embeddingr = embedding[::-1]
x_mask = tensor.matrix('x_mask', dtype='float32')
xr_mask = x_mask[::-1]
# encoder
proj = get_layer(options['encoder'])[1](tparams, embedding, options,
prefix='encoder',
mask=x_mask)
projr = get_layer(options['encoder'])[1](tparams, embeddingr, options,
prefix='encoder_r',
mask=xr_mask)
ctx = tensor.concatenate([proj[0][-1], projr[0][-1]], axis=1)
return embedding, x_mask, ctx
# some utilities
def ortho_weight(ndim):
W = numpy.random.randn(ndim, ndim)
u, s, v = numpy.linalg.svd(W)
return u.astype('float32')
def norm_weight(nin,nout=None, scale=0.1, ortho=True):
if nout == None:
nout = nin
if nout == nin and ortho:
W = ortho_weight(nin)
else:
W = numpy.random.uniform(low=-scale, high=scale, size=(nin, nout))
return W.astype('float32')
def param_init_gru(options, params, prefix='gru', nin=None, dim=None):
"""
parameter init for GRU
"""
if nin == None:
nin = options['dim_proj']
if dim == None:
dim = options['dim_proj']
W = numpy.concatenate([norm_weight(nin,dim),
norm_weight(nin,dim)], axis=1)
params[_p(prefix,'W')] = W
params[_p(prefix,'b')] = numpy.zeros((2 * dim,)).astype('float32')
U = numpy.concatenate([ortho_weight(dim),
ortho_weight(dim)], axis=1)
params[_p(prefix,'U')] = U
Wx = norm_weight(nin, dim)
params[_p(prefix,'Wx')] = Wx
Ux = ortho_weight(dim)
params[_p(prefix,'Ux')] = Ux
params[_p(prefix,'bx')] = numpy.zeros((dim,)).astype('float32')
return params
def gru_layer(tparams, state_below, options, prefix='gru', mask=None, **kwargs):
"""
Forward pass through GRU layer
"""
nsteps = state_below.shape[0]
if state_below.ndim == 3:
n_samples = state_below.shape[1]
else:
n_samples = 1
dim = tparams[_p(prefix,'Ux')].shape[1]
if mask == None:
mask = tensor.alloc(1., state_below.shape[0], 1)
def _slice(_x, n, dim):
if _x.ndim == 3:
return _x[:, :, n*dim:(n+1)*dim]
return _x[:, n*dim:(n+1)*dim]
state_below_ = tensor.dot(state_below, tparams[_p(prefix, 'W')]) + tparams[_p(prefix, 'b')]
state_belowx = tensor.dot(state_below, tparams[_p(prefix, 'Wx')]) + tparams[_p(prefix, 'bx')]
U = tparams[_p(prefix, 'U')]
Ux = tparams[_p(prefix, 'Ux')]
def _step_slice(m_, x_, xx_, h_, U, Ux):
preact = tensor.dot(h_, U)
preact += x_
r = tensor.nnet.sigmoid(_slice(preact, 0, dim))
u = tensor.nnet.sigmoid(_slice(preact, 1, dim))
preactx = tensor.dot(h_, Ux)
preactx = preactx * r
preactx = preactx + xx_
h = tensor.tanh(preactx)
h = u * h_ + (1. - u) * h
h = m_[:,None] * h + (1. - m_)[:,None] * h_
return h
seqs = [mask, state_below_, state_belowx]
_step = _step_slice
rval, updates = theano.scan(_step,
sequences=seqs,
outputs_info = [tensor.alloc(0., n_samples, dim)],
non_sequences = [tparams[_p(prefix, 'U')],
tparams[_p(prefix, 'Ux')]],
name=_p(prefix, '_layers'),
n_steps=nsteps,
profile=profile,
strict=True)
rval = [rval]
return rval