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+#!/usr/bin/env python3
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+# Copyright (c) 2018-present, Facebook, Inc.
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+# All rights reserved.
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+#
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+# This source code is licensed under the MIT license found in the
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+# LICENSE file in the root directory of this source tree.
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+
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+import codecs, sys, time, math, argparse, ot
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+import numpy as np
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+from utils import *
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+
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+parser = argparse.ArgumentParser(description='Wasserstein Procrustes for Embedding Alignment')
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+parser.add_argument('--model_src', type=str, help='Path to source word embeddings')
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+parser.add_argument('--model_tgt', type=str, help='Path to target word embeddings')
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+parser.add_argument('--lexicon', type=str, help='Path to the evaluation lexicon')
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+parser.add_argument('--output_src', default='', type=str, help='Path to save the aligned source embeddings')
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+parser.add_argument('--output_tgt', default='', type=str, help='Path to save the aligned target embeddings')
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+parser.add_argument('--seed', default=1111, type=int, help='Random number generator seed')
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+parser.add_argument('--nepoch', default=5, type=int, help='Number of epochs')
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+parser.add_argument('--niter', default=5000, type=int, help='Initial number of iterations')
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+parser.add_argument('--bsz', default=500, type=int, help='Initial batch size')
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+parser.add_argument('--lr', default=500., type=float, help='Learning rate')
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+parser.add_argument('--nmax', default=20000, type=int, help='Vocabulary size for learning the alignment')
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+parser.add_argument('--reg', default=0.05, type=float, help='Regularization parameter for sinkhorn')
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+args = parser.parse_args()
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+
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+
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+def objective(X, Y, R, n=5000):
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+ Xn, Yn = X[:n], Y[:n]
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+ C = -np.dot(np.dot(Xn, R), Yn.T)
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+ P = ot.sinkhorn(np.ones(n), np.ones(n), C, 0.025, stopThr=1e-3)
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+ return 1000 * np.linalg.norm(np.dot(Xn, R) - np.dot(P, Yn)) / n
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+
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+
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+def sqrt_eig(x):
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+ U, s, VT = np.linalg.svd(x, full_matrices=False)
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+ return np.dot(U, np.dot(np.diag(np.sqrt(s)), VT))
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+
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+
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+def align(X, Y, R, lr=10., bsz=200, nepoch=5, niter=1000,
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+ nmax=10000, reg=0.05, verbose=True):
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+ for epoch in range(1, nepoch + 1):
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+ for _it in range(1, niter + 1):
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+ # sample mini-batch
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+ xt = X[np.random.permutation(nmax)[:bsz], :]
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+ yt = Y[np.random.permutation(nmax)[:bsz], :]
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+ # compute OT on minibatch
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+ C = -np.dot(np.dot(xt, R), yt.T)
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+ P = ot.sinkhorn(np.ones(bsz), np.ones(bsz), C, reg, stopThr=1e-3)
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+ # compute gradient
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+ G = - np.dot(xt.T, np.dot(P, yt))
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+ R -= lr / bsz * G
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+ # project on orthogonal matrices
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+ U, s, VT = np.linalg.svd(R)
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+ R = np.dot(U, VT)
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+ bsz *= 2
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+ niter //= 4
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+ if verbose:
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+ print("epoch: %d obj: %.3f" % (epoch, objective(X, Y, R)))
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+ return R
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+
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+
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+def convex_init(X, Y, niter=100, reg=0.05, apply_sqrt=False):
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+ n, d = X.shape
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+ if apply_sqrt:
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+ X, Y = sqrt_eig(X), sqrt_eig(Y)
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+ K_X, K_Y = np.dot(X, X.T), np.dot(Y, Y.T)
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+ K_Y *= np.linalg.norm(K_X) / np.linalg.norm(K_Y)
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+ K2_X, K2_Y = np.dot(K_X, K_X), np.dot(K_Y, K_Y)
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+ P = np.ones([n, n]) / float(n)
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+ for it in range(1, niter + 1):
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+ G = np.dot(P, K2_X) + np.dot(K2_Y, P) - 2 * np.dot(K_Y, np.dot(P, K_X))
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+ q = ot.sinkhorn(np.ones(n), np.ones(n), G, reg, stopThr=1e-3)
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+ alpha = 2.0 / float(2.0 + it)
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+ P = alpha * q + (1.0 - alpha) * P
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+ obj = np.linalg.norm(np.dot(P, K_X) - np.dot(K_Y, P))
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+ print(obj)
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+ return procrustes(np.dot(P, X), Y).T
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+
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+
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+print("\n*** Wasserstein Procrustes ***\n")
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+
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+np.random.seed(args.seed)
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+
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+maxload = 200000
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+w_src, x_src = load_vectors(args.model_src, maxload, norm=True, center=True)
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+w_tgt, x_tgt = load_vectors(args.model_tgt, maxload, norm=True, center=True)
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+src2trg, _ = load_lexicon(args.lexicon, w_src, w_tgt)
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+
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+print("\nComputing initial mapping with convex relaxation...")
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+t0 = time.time()
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+R0 = convex_init(x_src[:2500], x_tgt[:2500], reg=args.reg, apply_sqrt=True)
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+print("Done [%03d sec]" % math.floor(time.time() - t0))
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+
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+print("\nComputing mapping with Wasserstein Procrustes...")
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+t0 = time.time()
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+R = align(x_src, x_tgt, R0.copy(), bsz=args.bsz, lr=args.lr, niter=args.niter,
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+ nepoch=args.nepoch, reg=args.reg, nmax=args.nmax)
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+print("Done [%03d sec]" % math.floor(time.time() - t0))
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+
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+acc = compute_nn_accuracy(x_src, np.dot(x_tgt, R.T), src2trg)
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+print("\nPrecision@1: %.3f\n" % acc)
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+
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+if args.output_src != '':
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+ x_src = x_src / np.linalg.norm(x_src, 2, 1).reshape([-1, 1])
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+ save_vectors(args.output_src, x_src, w_src)
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+if args.output_tgt != '':
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+ x_tgt = x_tgt / np.linalg.norm(x_tgt, 2, 1).reshape([-1, 1])
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+ save_vectors(args.output_tgt, np.dot(x_tgt, R.T), w_tgt)
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