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+#!/usr/bin/env python3
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+# -*- coding: utf-8 -*-
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+#
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+# Copyright (c) 2019-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 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 io, os, ot, argparse, random
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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=' ')
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+
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+parser.add_argument('--embdir', default='data/', type=str)
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+parser.add_argument('--outdir', default='output/', type=str)
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+parser.add_argument('--lglist', default='en-fr-es-it-pt-de-pl-ru-da-nl-cs', type=str,
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+ help='list of languages. The first element is the pivot. Example: en-fr-es to align English, French and Spanish with English as the pivot.')
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+
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+parser.add_argument('--maxload', default=20000, type=int, help='Max number of loaded vectors')
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+parser.add_argument('--uniform', action='store_true', help='switch to uniform probability of picking language pairs')
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+
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+# optimization parameters for the square loss
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+parser.add_argument('--epoch', default=2, type=int, help='nb of epochs for square loss')
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+parser.add_argument('--niter', default=500, type=int, help='max number of iteration per epoch for square loss')
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+parser.add_argument('--lr', default=0.1, type=float, help='learning rate for square loss')
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+parser.add_argument('--bsz', default=500, type=int, help='batch size for square loss')
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+
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+# optimization parameters for the RCSLS loss
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+parser.add_argument('--altepoch', default=100, type=int, help='nb of epochs for RCSLS loss')
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+parser.add_argument('--altlr', default=25, type=float, help='learning rate for RCSLS loss')
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+parser.add_argument("--altbsz", type=int, default=1000, help="batch size for RCSLS")
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+
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+args = parser.parse_args()
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+
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+###### SPECIFIC FUNCTIONS ######
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+
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+def getknn(sc, x, y, k=10):
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+ sidx = np.argpartition(sc, -k, axis=1)[:, -k:]
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+ ytopk = y[sidx.flatten(), :]
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+ ytopk = ytopk.reshape(sidx.shape[0], sidx.shape[1], y.shape[1])
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+ f = np.sum(sc[np.arange(sc.shape[0])[:, None], sidx])
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+ df = np.dot(ytopk.sum(1).T, x)
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+ return f / k, df / k
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+
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+
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+def rcsls(Xi, Xj, Zi, Zj, R, knn=10):
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+ X_trans = np.dot(Xi, R.T)
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+ f = 2 * np.sum(X_trans * Xj)
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+ df = 2 * np.dot(Xj.T, Xi)
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+ fk0, dfk0 = getknn(np.dot(X_trans, Zj.T), Xi, Zj, knn)
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+ fk1, dfk1 = getknn(np.dot(np.dot(Zi, R.T), Xj.T).T, Xj, Zi, knn)
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+ f = f - fk0 -fk1
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+ df = df - dfk0 - dfk1.T
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+ return -f / Xi.shape[0], -df.T / Xi.shape[0]
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+
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+
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+def GWmatrix(emb0):
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+ N = np.shape(emb0)[0]
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+ N2 = .5* np.linalg.norm(emb0, axis=1).reshape(1, N)
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+ C2 = np.tile(N2.transpose(), (1, N)) + np.tile(N2, (N, 1))
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+ C2 -= np.dot(emb0,emb0.T)
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+ return C2
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+
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+
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+def gromov_wasserstein(x_src, x_tgt, C2):
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+ N = x_src.shape[0]
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+ C1 = GWmatrix(x_src)
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+ M = ot.gromov_wasserstein(C1,C2,np.ones(N),np.ones(N),'square_loss',epsilon=0.55,max_iter=100,tol=1e-4)
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+ return procrustes(np.dot(M,x_tgt), x_src)
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+
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+
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+def align(EMB, TRANS, lglist, args):
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+ nmax, l = args.maxload, len(lglist)
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+ # create a list of language pairs to sample from
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+ # (default == higher probability to pick a language pair contianing the pivot)
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+ # if --uniform: uniform probability of picking a language pair
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+ samples = []
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+ for i in range(l):
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+ for j in range(l):
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+ if j == i :
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+ continue
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+ if j > 0 and args.uniform == False:
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+ samples.append((0,j))
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+ if i > 0 and args.uniform == False:
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+ samples.append((i,0))
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+ samples.append((i,j))
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+
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+ # optimization of the l2 loss
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+ print('start optimizing L2 loss')
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+ lr0, bsz, nepoch, niter = args.lr, args.bsz, args.epoch, args.niter
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+ for epoch in range(nepoch):
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+ print("start epoch %d / %d"%(epoch+1, nepoch))
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+ ones = np.ones(bsz)
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+ f, fold, nb, lr = 0.0, 0.0, 0.0, lr0
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+ for it in range(niter):
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+ if it > 1 and f > fold + 1e-3:
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+ lr /= 2
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+ if lr < .05:
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+ break
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+ fold = f
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+ f, nb = 0.0, 0.0
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+ for k in range(100 * (l-1)):
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+ (i,j) = random.choice(samples)
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+ embi = EMB[i][np.random.permutation(nmax)[:bsz], :]
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+ embj = EMB[j][np.random.permutation(nmax)[:bsz], :]
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+ perm = ot.sinkhorn(ones, ones, np.linalg.multi_dot([embi, -TRANS[i], TRANS[j].T,embj.T]), reg = 0.025, stopThr = 1e-3)
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+ grad = np.linalg.multi_dot([embi.T, perm, embj])
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+ f -= np.trace(np.linalg.multi_dot([TRANS[i].T, grad, TRANS[j]])) / embi.shape[0]
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+ nb += 1
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+ if i > 0:
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+ TRANS[i] = proj_ortho(TRANS[i] + lr * np.dot(grad, TRANS[j]))
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+ if j > 0:
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+ TRANS[j] = proj_ortho(TRANS[j] + lr * np.dot(grad.transpose(), TRANS[i]))
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+ print("iter %d / %d - epoch %d - loss: %.5f lr: %.4f" % (it, niter, epoch+1, f / nb , lr))
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+ print("end of epoch %d - loss: %.5f - lr: %.4f" % (epoch+1, f / max(nb,1), lr))
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+ niter, bsz = max(int(niter/2),2), min(1000, bsz * 2)
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+ #end for epoch in range(nepoch):
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+
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+ # optimization of the RCSLS loss
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+ print('start optimizing RCSLS loss')
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+ f, fold, nb, lr = 0.0, 0.0, 0.0, args.altlr
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+ for epoch in range(args.altepoch):
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+ if epoch > 1 and f-fold > -1e-4 * abs(fold):
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+ lr/= 2
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+ if lr < 1e-1:
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+ break
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+ fold = f
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+ f, nb = 0.0, 0.0
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+ for k in range(round(nmax / args.altbsz) * 10 * (l-1)):
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+ (i,j) = random.choice(samples)
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+ sgdidx = np.random.choice(nmax, size=args.altbsz, replace=False)
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+ embi = EMB[i][sgdidx, :]
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+ embj = EMB[j][:nmax, :]
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+ # crude alignment approximation:
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+ T = np.dot(TRANS[i], TRANS[j].T)
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+ scores = np.linalg.multi_dot([embi, T, embj.T])
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+ perm = np.zeros_like(scores)
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+ perm[np.arange(len(scores)), scores.argmax(1)] = 1
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+ embj = np.dot(perm, embj)
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+ # normalization over a subset of embeddings for speed up
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+ fi, grad = rcsls(embi, embj, embi, embj, T.T)
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+ f += fi
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+ nb += 1
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+ if i > 0:
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+ TRANS[i] = proj_ortho(TRANS[i] - lr * np.dot(grad, TRANS[j]))
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+ if j > 0:
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+ TRANS[j] = proj_ortho(TRANS[j] - lr * np.dot(grad.transpose(), TRANS[i]))
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+ print("epoch %d - loss: %.5f - lr: %.4f" % (epoch+1, f / max(nb,1), lr))
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+ #end for epoch in range(args.altepoch):
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+ return TRANS
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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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+ 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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+ return procrustes(np.dot(P, X), Y).T
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+
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+
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+###### MAIN ######
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+
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+lglist = args.lglist.split('-')
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+l = len(lglist)
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+
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+# embs:
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+EMB = {}
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+for i in range(l):
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+ fn = args.embdir + '/wiki.' + lglist[i] + '.vec'
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+ _, vecs = load_vectors(fn, maxload=args.maxload)
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+ EMB[i] = vecs
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+
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+#init
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+print("Computing initial bilingual apping with Gromov-Wasserstein...")
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+TRANS={}
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+maxinit = 2000
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+emb0 = EMB[0][:maxinit,:]
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+C0 = GWmatrix(emb0)
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+TRANS[0] = np.eye(300)
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+for i in range(1, l):
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+ print("init "+lglist[i])
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+ embi = EMB[i][:maxinit,:]
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+ TRANS[i] = gromov_wasserstein(embi, emb0, C0)
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+
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+# align
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+align(EMB, TRANS, lglist, args)
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+
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+print('saving matrices in ' + args.outdir)
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+languages=''.join(lglist)
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+for i in range(l):
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+ save_matrix(args.outdir + '/W-' + languages + '-' + lglist[i], TRANS[i])
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