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models.py
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1556 lines (1413 loc) · 70 KB
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import math
import random
import torch
from torch import nn
from torch.nn import functional as F
import torch.nn.init as init
import numpy as np
import igraph
import pdb
# This file implements several VAE models for DAGs, including SVAE, GraphRNN, DVAE, GCN etc.
'''
String Variational Autoencoder (S-VAE). Treat DAGs as sequences of node descriptors.
A node descriptor is the concatenation of the node type's one-hot encoding and its
bit connections from other nodes. Nodes in a sequence are in a topological order.
'''
class SVAE(nn.Module):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=501, nz=56, bidirectional=False):
super(SVAE, self).__init__()
self.max_n = max_n # maximum number of vertices
self.nvt = nvt # number of vertex types
self.xs = (nvt + max_n-1) # size of input x for GRU,
# [one_hot(vertex_type), bit(connections)]
self.START_TYPE = START_TYPE
self.END_TYPE = END_TYPE
self.hs = hs # hidden state size of each vertex
self.nz = nz # size of latent representation z
self.gs = hs # graph state size
self.bidir = bidirectional # whether to use bidirectional encoding
self.device = None
# 0. encoding-related
self.grue = nn.GRU(self.xs, hs, batch_first=True, bidirectional=self.bidir) # encoder GRU
self.fc1 = nn.Linear(self.gs, nz) # latent mean
self.fc2 = nn.Linear(self.gs, nz) # latent logvar
# 1. decoding-related
self.grud = nn.GRU(hs, hs, batch_first=True) # decoder GRU
self.fc3 = nn.Linear(nz, hs) # from latent z to initial hidden state h0
self.add_vertex = nn.Sequential(
nn.Linear(self.hs, self.hs),
nn.ReLU(),
nn.Linear(self.hs, self.nvt),
)
self.add_edges = nn.Sequential(
nn.Linear(self.hs, self.hs),
nn.ReLU(),
nn.Linear(self.hs, self.max_n - 1),
)
# 2. bidir-related, to unify sizes
if self.bidir:
self.hg_unify = nn.Sequential(
nn.Linear(self.hs * 2, self.hs),
)
self.hv_unify = nn.Sequential(
nn.Linear(self.hs * 2, self.hs),
)
# 3. other
self.relu = nn.ReLU()
self.sigmoid = nn.Sigmoid()
self.tanh = nn.Tanh()
def get_device(self):
if self.device is None:
self.device = next(self.parameters()).device
return self.device
def _get_zeros(self, n, length):
return torch.zeros(n, length).to(self.get_device()) # get a zero hidden state
def _get_zero_hidden(self, n=1):
return self._get_zeros(n, self.hs) # get a zero hidden state
def _one_hot(self, idx, length):
if type(idx) in [list, range]:
if idx == []:
return None
idx = torch.LongTensor(idx).unsqueeze(0).t()
x = torch.zeros((len(idx), length)).scatter_(1, idx, 1).to(self.get_device())
else:
idx = torch.LongTensor([idx]).unsqueeze(0)
x = torch.zeros((1, length)).scatter_(1, idx, 1).to(self.get_device())
return x
def _collate_fn(self, G):
# create mini_batch of tensors from list G by padding
# each graph g is a 1 * (n_vertex - 1) * (n_types + n_vertex-1) tensor
# pad all to 1 * (max_n - 1) * (n_types + max_n-1) tensors
if type(G) != list:
G = [G]
G_new = []
for g in G:
if g.shape[1] < self.max_n - 1:
padding = torch.zeros(1, self.max_n-1-g.shape[1], g.shape[2]).to(self.get_device())
padding[0, :, self.START_TYPE] = 1 # use start type's bit to indicate padding
# nodes (since start types are never predicted)
g = torch.cat([g, padding], 1)
if g.shape[2] < self.xs:
padding = torch.zeros(1, g.shape[1], self.xs-g.shape[2]).to(self.get_device())
g = torch.cat([g, padding], 2) # pad zeros to indicate no connections to padding
# nodes
G_new.append(g)
return torch.cat(G_new, 0)
def encode(self, G):
# G: [batch_size * max_n-1 * xs]
_, Hn = self.grue(G)
Hg = Hn.view(Hn.shape[1], -1) # Hn's second dimension is "batch"
if self.bidir:
Hg = self.hg_unify(Hg)
mu, logvar = self.fc1(Hg), self.fc2(Hg)
return mu, logvar
def reparameterize(self, mu, logvar, eps_scale=0.01):
#return mu
if self.training:
std = logvar.mul(0.5).exp_()
eps = torch.randn_like(std) * eps_scale
return eps.mul(std).add_(mu)
else:
return mu
def _decode(self, z):
H0 = self.relu(self.fc3(z))
H_in = H0.unsqueeze(1).expand(-1, self.max_n - 1, -1)
H_out, _ = self.grud(H_in)
type_scores = self.add_vertex(H_out) # batch * max_n-1 * nvt
edge_scores = self.sigmoid(self.add_edges(H_out)) # batch * max_n-1 * max_n-1
return type_scores, edge_scores
def decode(self, z):
type_scores, edge_scores = self._decode(z)
return self.construct_igraph(type_scores, edge_scores)
def loss(self, mu, logvar, G_true, beta=0.005):
# G_true: [batch_size * max_n-1 * xs]
z = self.reparameterize(mu, logvar)
type_scores, edge_scores = self._decode(z)
res = 0
_, true_types = torch.max(G_true[:, :, :self.nvt], 2)
res += F.cross_entropy(type_scores.transpose(1, 2), true_types, reduction='sum')
true_edges = G_true[:, :, self.nvt:]
res += F.binary_cross_entropy(edge_scores, true_edges, reduction='sum')
kld = -0.5 * torch.sum(1 + logvar - mu.pow(2) - logvar.exp())
return res + beta*kld, res, kld
def construct_igraph(self, type_scores, edge_scores, stochastic=True):
# construct igraphs from node type and edge scores
# note that when stochastic=True, type_scores should be raw scores before softmax,
# and edge_scores should probabilities between [0, 1] (after sigmoid)
assert(type_scores.shape[:2] == edge_scores.shape[:2])
if stochastic:
type_probs = F.softmax(type_scores, 2).cpu().detach().numpy()
G = []
for gi in range(len(type_scores)):
g = igraph.Graph(directed=True)
g.add_vertex(type=self.START_TYPE)
for vj in range(1, self.max_n):
if vj == self.max_n - 1:
new_type = self.END_TYPE
else:
if stochastic:
new_type = np.random.choice(range(self.nvt), p=type_probs[gi][vj-1])
else:
new_type = torch.argmax(type_scores[gi][vj-1], 0).item()
g.add_vertex(type=new_type)
if new_type == self.END_TYPE:
end_vertices = set([v.index for v in g.vs.select(_outdegree_eq=0)
if v.index != g.vcount()-1])
for v in end_vertices:
g.add_edge(v, vj)
break
else:
for ek in range(vj):
ek_score = edge_scores[gi][vj-1][ek].item()
if stochastic:
if np.random.random_sample() < ek_score:
g.add_edge(ek, vj)
else:
if ek_score > 0.5:
g.add_edge(ek, vj)
G.append(g)
return G
def forward(self, G):
mu, logvar = self.encode(G)
loss, _, _ = self.loss(mu, logvar, G)
return loss
def encode_decode(self, G):
mu, logvar = self.encode(G)
z = self.reparameterize(mu, logvar)
return self.decode(z)
def generate_sample(self, n):
sample = torch.randn(n, self.nz).to(self.get_device())
G = self.decode(sample)
return G
'''
One-shot version of S-VAE. Encode/decode the entire matrix in one shot.
'''
class SVAE_oneshot(SVAE):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=1002, nz=112, bidirectional=False):
super(SVAE_oneshot, self).__init__(max_n, nvt, START_TYPE, END_TYPE, hs, nz, bidirectional)
self.encoder_nn = nn.Sequential(
nn.Linear((max_n-1) * self.xs, 2 * (max_n-1) * self.xs),
nn.ReLU(),
nn.Linear(2 * (max_n-1) * self.xs, self.gs),
)
self.decoder_nn = nn.Sequential(
nn.Linear(hs, 2 * hs),
nn.ReLU(),
nn.Linear(2 * hs, (max_n-1) * self.xs),
)
def encode(self, G):
# G: [batch_size * max_n-1 * xs]
Hg = self.relu(self.encoder_nn(G.view(len(G), -1)))
mu, logvar = self.fc1(Hg), self.fc2(Hg)
return mu, logvar
def _decode(self, z):
H0 = self.relu(self.fc3(z))
scores = self.decoder_nn(H0).view(len(z), self.max_n-1, -1)
type_scores = scores[:, :, :self.nvt] # batch * max_n-1 * nvt
edge_scores = self.sigmoid(scores[:, :, self.nvt:]) # batch * max_n-1 * max_n-1
return type_scores, edge_scores
'''
S-VAE with GraphRNN as the decoder. Encode/decode the entries of each adjacency row using
another GRU. Use a topological order (instead of BFS) to generate nodes.
Use teacher forcing during training (use ground truth nodes/edges in each step).
'''
class SVAE_GraphRNN(SVAE):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=501, nz=56, bidirectional=False):
super(SVAE_GraphRNN, self).__init__(max_n, nvt, START_TYPE, END_TYPE, hs, nz, bidirectional)
self.num_dirs = 2 if self.bidir else 1
self.num_layers = 1
self.grud = nn.GRU(self.xs, hs, num_layers=self.num_layers, batch_first=True, bidirectional=self.bidir) # encoder GRU (graph level)
self.grud_edge = nn.GRU(1, hs, num_layers=self.num_layers, batch_first=True, bidirectional=self.bidir) # encoder GRU (edge level)
self.add_edge = nn.Sequential(
nn.Linear(self.hs, self.hs),
nn.ReLU(),
nn.Linear(self.hs, 1),
)
def _decode(self, z):
H0 = self.relu(self.fc3(z)) # batch * hs
H0_graph = H0.unsqueeze(0).expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
input_graph_level = self._get_zeros(len(z), self.xs).unsqueeze(1) # batch * 1 * xs
type_scores, edge_scores = [], []
for vi in range(self.max_n-1):
output_graph_level, _ = self.grud(input_graph_level, H0_graph) # batch * 1 * (hs*num_dirs)
if self.bidir:
output_graph_level = self.hg_unify(output_graph_level) # batch * 1 * hs
H0_graph = output_graph_level.permute(1, 0, 2) # 1 * batch * hs
H0_graph = H0_graph.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
type_score = self.add_vertex(output_graph_level) # batch * 1 * nvt
type_prob = F.softmax(type_score, 2).squeeze(1) # batch * nvt
new_type = torch.multinomial(type_prob, 1) # batch * 1
type_score = self._one_hot(new_type.reshape(-1).tolist(), self.nvt).unsqueeze(1) # batch * 1 * nvt
type_scores.append(type_score)
H0_edge = output_graph_level.permute(1, 0, 2) # 1 * batch * hs
H0_edge = H0_edge.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
input_edge_level = self._get_zeros(len(z), 1).unsqueeze(1) # batch * 1 * 1
edge_score = []
for ej in range(self.max_n-1):
output_edge_level, _ = self.grud_edge(input_edge_level, H0_edge) # batch * 1 * (hs*num_dirs)
if self.bidir:
output_edge_level = self.hv_unify(output_edge_level) # batch * 1 * hs
H0_edge = output_edge_level.permute(1, 0, 2)
H0_edge = H0_edge.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
edge_score_j = self.sigmoid(self.add_edge(output_edge_level)).detach() # batch * 1 * 1
# sample edge j of node i
edge_score_j = np.random.random_sample((len(z), 1, 1)) < edge_score_j
edge_score_j = edge_score_j.type(torch.FloatTensor).to(self.get_device())
edge_score.append(edge_score_j)
input_edge_level = edge_score_j
edge_score = torch.cat(edge_score, 2) # batch * 1 * max_n-1
edge_scores.append(edge_score)
input_graph_level = torch.cat([type_score, edge_score], 2) # batch * 1 * xs
type_scores = torch.cat(type_scores, 1) # batch * max_n-1 * nvt
edge_scores = torch.cat(edge_scores, 1) # batch * max_n-1 * max_n-1
return type_scores, edge_scores
def decode(self, z):
type_scores, edge_scores = self._decode(z)
return self.construct_igraph(type_scores, edge_scores, stochastic=False)
def loss(self, mu, logvar, G_true, beta=0.005):
# G_true: [batch_size * max_n-1 * xs]
# use teacher forcing to train (feed groundtruth at each step instead of prediction)
z = self.reparameterize(mu, logvar)
H0 = self.relu(self.fc3(z)) # batch * hs
Input_graph_level = G_true[:, :-1, :].contiguous()
Input_graph_level = torch.cat([self._get_zeros(len(z), self.xs).unsqueeze(1), Input_graph_level], 1) # pad initial zeros
H0_graph = H0.unsqueeze(0).expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
Output_graph_level, _ = self.grud(Input_graph_level, H0_graph) # batch * max_n-1 * (hs*num_dirs)
if self.bidir:
Output_graph_level = self.hg_unify(Output_graph_level) # batch * max_n-1 * hs
type_scores = self.add_vertex(Output_graph_level) # batch * max_n-1 * nvt
# merge node dimension with batch dimension as the "new" batch dimension for parallel computing
H0_edge = Output_graph_level
H0_edge = H0_edge.reshape(1, -1, self.hs) # 1 * (batch * max_n-1) * hs
H0_edge = H0_edge.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
Input_edge_level = G_true[:, :, self.nvt:-1]
Input_edge_level = torch.cat([self._get_zeros(len(z), self.max_n-1).unsqueeze(2), Input_edge_level], 2) # pad initial zeros
Input_edge_level = Input_edge_level.reshape(-1, self.max_n-1, 1).contiguous() # (batch * max_n-1) * max_n-1 * 1
Output_edge_level, _ = self.grud_edge(Input_edge_level, H0_edge) # (batch * max_n-1) * max_n-1 * (hs * num_dirs)
if self.bidir:
Output_edge_level = self.hv_unify(Output_edge_level) # (batch * max_n-1) * max_n-1 * hs
edge_scores = self.sigmoid(self.add_edge(Output_edge_level)) # (batch * max_n-1) * max_n-1 * 1
edge_scores = edge_scores.reshape(-1, self.max_n-1, self.max_n-1)
res = 0
_, true_types = torch.max(G_true[:, :, :self.nvt], 2)
res += F.cross_entropy(type_scores.transpose(1, 2), true_types, reduction='sum')
true_edges = G_true[:, :, self.nvt:]
res += F.binary_cross_entropy(edge_scores, true_edges, reduction='sum')
kld = -0.5 * torch.sum(1 + logvar - mu.pow(2) - logvar.exp())
return res + beta*kld, res, kld
'''
GraphRNN decoder using a random BFS order
'''
from collections import deque
class SVAE_GraphRNN_BFS(SVAE):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=501, nz=56, bidirectional=False):
super(SVAE_GraphRNN_BFS, self).__init__(max_n, nvt, START_TYPE, END_TYPE, hs, nz, bidirectional)
self.num_dirs = 2 if self.bidir else 1
self.num_layers = 1
self.xs = (nvt + max_n) # size of input x for GRU,
# [one_hot(vertex_type), bit(connections)]
self.grue = nn.GRU(self.xs, hs, batch_first=True, bidirectional=self.bidir) # encoder GRU
self.grud = nn.GRU(self.xs, hs, num_layers=self.num_layers, batch_first=True, bidirectional=self.bidir) # decoder GRU (graph level)
self.grud_edge = nn.GRU(1, hs, num_layers=self.num_layers, batch_first=True, bidirectional=self.bidir) # decoder GRU (edge level)
self.add_edge = nn.Sequential(
nn.Linear(self.hs, self.hs),
nn.ReLU(),
nn.Linear(self.hs, 1),
)
def bfs(self, adj, feat):
n = len(adj)
queue = deque([random.randint(0, n-1)])
visited = set()
order = []
while queue:
cur = queue.popleft()
if cur in visited:
continue
order.append(cur)
visited.add(cur)
successors = adj[cur].nonzero().flatten().tolist()
predecessors = adj[:, cur].nonzero().flatten().tolist()
neis = set(successors + predecessors)
neis = neis - visited
for x in neis:
queue.append(x)
return adj[order, :][:, order], feat[order]
def G_to_adjfeat(self, G):
# convert SVAE's G tensor to adjacency matrix and node features
assert(G.shape[0]==1)
G = G[0]
pad = torch.zeros(1, self.nvt).to(G.device)
pad[:, 0] = 1
input_features = torch.cat([pad, G[:, :self.nvt]], 0) # add the start node
pad2 = torch.zeros(self.max_n-1, 1).to(G.device)
adj = torch.cat([pad2, G[:, self.nvt:].permute(1, 0)], 1)
pad3 = torch.zeros(1, self.max_n).to(G.device)
adj = torch.cat([adj, pad3], 0)
return adj, input_features
def adjfeat_to_G(self, adj, feat):
# the new G tensor contains starting node as well as connections of last node
adj = adj.permute(1, 0)
return torch.cat([feat, adj], 1).unsqueeze(0)
def _collate_fn(self, G):
# create mini_batch of tensors from list G by padding
# each graph g is a 1 * (n_vertex - 1) * (n_types + n_vertex-1) tensor
# first transform each g into its node features and adj matrix
# then each graph is permuted by a bfs node order
# pad all to 1 * (max_n) * (n_types + max_n) tensors
G_new = []
for g in G:
# apply a bfs ordering to nodes
adj, feat = self.G_to_adjfeat(g)
g = self.adjfeat_to_G(*self.bfs(adj, feat)) # 1 * n_vertex * (n_types + n_vertex)
if g.shape[1] < self.max_n:
padding = torch.zeros(1, self.max_n-g.shape[1], g.shape[2]).to(self.get_device())
padding[0, :, self.START_TYPE] = 1 # treat padding nodes as start_type
g = torch.cat([g, padding], 1) # 1 * max_n * (n_types + n_vertex)
if g.shape[2] < self.xs:
padding = torch.zeros(1, g.shape[1], self.xs-g.shape[2]).to(self.get_device())
g = torch.cat([g, padding], 2) # pad zeros to indicate no connections to padding
# nodes, g: 1 * max_n * xs
G_new.append(g)
return torch.cat(G_new, 0)
def _decode(self, z):
H0 = self.relu(self.fc3(z)) # batch * hs
H0_graph = H0.unsqueeze(0).expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
input_graph_level = self._get_zeros(len(z), self.xs).unsqueeze(1) # batch * 1 * xs
type_scores, edge_scores = [], []
for vi in range(self.max_n):
output_graph_level, _ = self.grud(input_graph_level, H0_graph) # batch * 1 * (hs*num_dirs)
if self.bidir:
output_graph_level = self.hg_unify(output_graph_level) # batch * 1 * hs
H0_graph = output_graph_level.permute(1, 0, 2) # 1 * batch * hs
H0_graph = H0_graph.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
type_score = self.add_vertex(output_graph_level) # batch * 1 * nvt
type_prob = F.softmax(type_score, 2).squeeze(1) # batch * nvt
new_type = torch.multinomial(type_prob, 1) # batch * 1
type_score = self._one_hot(new_type.reshape(-1).tolist(), self.nvt).unsqueeze(1) # batch * 1 * nvt
type_scores.append(type_score)
H0_edge = output_graph_level.permute(1, 0, 2) # 1 * batch * hs
H0_edge = H0_edge.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
input_edge_level = self._get_zeros(len(z), 1).unsqueeze(1) # batch * 1 * 1
edge_score = []
for ej in range(self.max_n):
output_edge_level, _ = self.grud_edge(input_edge_level, H0_edge) # batch * 1 * (hs*num_dirs)
if self.bidir:
output_edge_level = self.hv_unify(output_edge_level) # batch * 1 * hs
H0_edge = output_edge_level.permute(1, 0, 2)
H0_edge = H0_edge.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
edge_score_j = self.sigmoid(self.add_edge(output_edge_level)).detach() # batch * 1 * 1
# sample edge j of node i
edge_score_j = np.random.random_sample((len(z), 1, 1)) < edge_score_j
edge_score_j = edge_score_j.type(torch.FloatTensor).to(self.get_device())
edge_score.append(edge_score_j)
input_edge_level = edge_score_j
edge_score = torch.cat(edge_score, 2) # batch * 1 * max_n
edge_scores.append(edge_score)
input_graph_level = torch.cat([type_score, edge_score], 2) # batch * 1 * xs
type_scores = torch.cat(type_scores, 1) # batch * max_n * nvt
edge_scores = torch.cat(edge_scores, 1) # batch * max_n * max_n
return type_scores, edge_scores
def decode(self, z):
type_scores, edge_scores = self._decode(z)
# the _decode is already stochastic, so set stochastic=Falsle
return self.construct_igraph(type_scores, edge_scores, stochastic=False)
def loss(self, mu, logvar, G_true, beta=0.005):
# G_true: [batch_size * max_n * xs]
# use teacher forcing to train (feed groundtruth at each step instead of prediction)
z = self.reparameterize(mu, logvar)
H0 = self.relu(self.fc3(z)) # batch * hs
Input_graph_level = G_true[:, :-1, :].contiguous()
Input_graph_level = torch.cat([self._get_zeros(len(z), self.xs).unsqueeze(1), Input_graph_level], 1) # pad initial zeros
H0_graph = H0.unsqueeze(0).expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
Output_graph_level, _ = self.grud(Input_graph_level, H0_graph) # batch * max_n * (hs*num_dirs)
if self.bidir:
Output_graph_level = self.hg_unify(Output_graph_level) # batch * max_n * hs
type_scores = self.add_vertex(Output_graph_level) # batch * max_n * nvt
# merge node dimension with batch dimension as the "new" batch dimension for parallel computing
H0_edge = Output_graph_level
H0_edge = H0_edge.reshape(1, -1, self.hs) # 1 * (batch * max_n) * hs
H0_edge = H0_edge.expand(self.num_dirs*self.num_layers, -1, -1).contiguous()
Input_edge_level = G_true[:, :, self.nvt:-1]
Input_edge_level = torch.cat([self._get_zeros(len(z), self.max_n).unsqueeze(2), Input_edge_level], 2) # pad initial zeros
Input_edge_level = Input_edge_level.reshape(-1, self.max_n, 1).contiguous() # (batch * max_n) * max_n * 1
Output_edge_level, _ = self.grud_edge(Input_edge_level, H0_edge) # (batch * max_n) * max_n * (hs * num_dirs)
if self.bidir:
Output_edge_level = self.hv_unify(Output_edge_level) # (batch * max_n) * max_n * hs
edge_scores = self.sigmoid(self.add_edge(Output_edge_level)) # (batch * max_n) * max_n * 1
edge_scores = edge_scores.reshape(-1, self.max_n, self.max_n)
res = 0
_, true_types = torch.max(G_true[:, :, :self.nvt], 2)
res += F.cross_entropy(type_scores.transpose(1, 2), true_types, reduction='sum')
true_edges = G_true[:, :, self.nvt:]
res += F.binary_cross_entropy(edge_scores, true_edges, reduction='sum')
kld = -0.5 * torch.sum(1 + logvar - mu.pow(2) - logvar.exp())
return res + beta*kld, res, kld
def construct_igraph(self, type_scores, edge_scores, stochastic=True):
# construct igraphs from node type and edge scores
# note that when stochastic=True, type_scores should be raw scores before softmax,
# and edge_scores should probabilities between [0, 1] (after sigmoid)
assert(type_scores.shape[:2] == edge_scores.shape[:2])
if stochastic:
type_probs = F.softmax(type_scores, 2).cpu().detach().numpy()
G = []
for gi in range(len(type_scores)):
# add vertices
g = igraph.Graph(directed=True)
for vj in range(self.max_n):
if stochastic:
new_type = np.random.choice(range(self.nvt), p=type_probs[gi][vj])
else:
new_type = torch.argmax(type_scores[gi][vj], 0).item()
g.add_vertex(type=new_type)
# add edges
output_vertex = None
for vj in range(self.max_n):
for ek in range(self.max_n):
ek_score = edge_scores[gi][vj][ek].item()
if stochastic:
if np.random.random_sample() < ek_score:
g.add_edge(ek, vj)
else:
if ek_score > 0.5:
g.add_edge(ek, vj)
# apply a topological order to g (otherwise some validity test doesn't work)
if g.is_dag():
topo_order = g.topological_sorting()
perm = [-1] * len(topo_order)
for i in range(len(perm)):
perm[topo_order[i]] = i
g = g.permute_vertices(perm)
G.append(g)
return G
'''
DAG Variational Autoencoder (D-VAE).
'''
class DVAE(nn.Module):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=501, nz=56, bidirectional=False, vid=True):
super(DVAE, self).__init__()
self.max_n = max_n # maximum number of vertices
self.nvt = nvt # number of vertex types
self.START_TYPE = START_TYPE
self.END_TYPE = END_TYPE
self.hs = hs # hidden state size of each vertex
self.nz = nz # size of latent representation z
self.gs = hs # size of graph state
self.bidir = bidirectional # whether to use bidirectional encoding
self.vid = vid
self.device = None
if self.vid:
self.vs = hs + max_n # vertex state size = hidden state + vid
else:
self.vs = hs
# 0. encoding-related
self.grue_forward = nn.GRUCell(nvt, hs) # encoder GRU
self.grue_backward = nn.GRUCell(nvt, hs) # backward encoder GRU
self.fc1 = nn.Linear(self.gs, nz) # latent mean
self.fc2 = nn.Linear(self.gs, nz) # latent logvar
# 1. decoding-related
self.grud = nn.GRUCell(nvt, hs) # decoder GRU
self.fc3 = nn.Linear(nz, hs) # from latent z to initial hidden state h0
self.add_vertex = nn.Sequential(
nn.Linear(hs, hs * 2),
nn.ReLU(),
nn.Linear(hs * 2, nvt)
) # which type of new vertex to add f(h0, hg)
self.add_edge = nn.Sequential(
nn.Linear(hs * 2, hs * 4),
nn.ReLU(),
nn.Linear(hs * 4, 1)
) # whether to add edge between v_i and v_new, f(hvi, hnew)
# 2. gate-related
self.gate_forward = nn.Sequential(
nn.Linear(self.vs, hs),
nn.Sigmoid()
)
self.gate_backward = nn.Sequential(
nn.Linear(self.vs, hs),
nn.Sigmoid()
)
self.mapper_forward = nn.Sequential(
nn.Linear(self.vs, hs, bias=False),
) # disable bias to ensure padded zeros also mapped to zeros
self.mapper_backward = nn.Sequential(
nn.Linear(self.vs, hs, bias=False),
)
# 3. bidir-related, to unify sizes
if self.bidir:
self.hv_unify = nn.Sequential(
nn.Linear(hs * 2, hs),
)
self.hg_unify = nn.Sequential(
nn.Linear(self.gs * 2, self.gs),
)
# 4. other
self.relu = nn.ReLU()
self.sigmoid = nn.Sigmoid()
self.tanh = nn.Tanh()
self.logsoftmax1 = nn.LogSoftmax(1)
def get_device(self):
if self.device is None:
self.device = next(self.parameters()).device
return self.device
def _get_zeros(self, n, length):
return torch.zeros(n, length).to(self.get_device()) # get a zero hidden state
def _get_zero_hidden(self, n=1):
return self._get_zeros(n, self.hs) # get a zero hidden state
def _one_hot(self, idx, length):
if type(idx) in [list, range]:
if idx == []:
return None
idx = torch.LongTensor(idx).unsqueeze(0).t()
x = torch.zeros((len(idx), length)).scatter_(1, idx, 1).to(self.get_device())
else:
idx = torch.LongTensor([idx]).unsqueeze(0)
x = torch.zeros((1, length)).scatter_(1, idx, 1).to(self.get_device())
return x
def _gated(self, h, gate, mapper):
return gate(h) * mapper(h)
def _collate_fn(self, G):
return [g.copy() for g in G]
def _propagate_to(self, G, v, propagator, H=None, reverse=False):
# propagate messages to vertex index v for all graphs in G
# return the new messages (states) at v
G = [g for g in G if g.vcount() > v]
if len(G) == 0:
return
if H is not None:
idx = [i for i, g in enumerate(G) if g.vcount() > v]
H = H[idx]
v_types = [g.vs[v]['type'] for g in G]
X = self._one_hot(v_types, self.nvt)
if reverse:
H_name = 'H_backward' # name of the hidden states attribute
H_pred = [[g.vs[x][H_name] for x in g.successors(v)] for g in G]
if self.vid:
vids = [self._one_hot(g.successors(v), self.max_n) for g in G]
gate, mapper = self.gate_backward, self.mapper_backward
else:
H_name = 'H_forward' # name of the hidden states attribute
H_pred = [[g.vs[x][H_name] for x in g.predecessors(v)] for g in G]
if self.vid:
vids = [self._one_hot(g.predecessors(v), self.max_n) for g in G]
gate, mapper = self.gate_forward, self.mapper_forward
if self.vid:
H_pred = [[torch.cat([x[i], y[i:i+1]], 1) for i in range(len(x))] for x, y in zip(H_pred, vids)]
# if h is not provided, use gated sum of v's predecessors' states as the input hidden state
if H is None:
max_n_pred = max([len(x) for x in H_pred]) # maximum number of predecessors
if max_n_pred == 0:
H = self._get_zero_hidden(len(G))
else:
H_pred = [torch.cat(h_pred +
[self._get_zeros(max_n_pred - len(h_pred), self.vs)], 0).unsqueeze(0)
for h_pred in H_pred] # pad all to same length
H_pred = torch.cat(H_pred, 0) # batch * max_n_pred * vs
H = self._gated(H_pred, gate, mapper).sum(1) # batch * hs
Hv = propagator(X, H)
for i, g in enumerate(G):
g.vs[v][H_name] = Hv[i:i+1]
return Hv
def _propagate_from(self, G, v, propagator, H0=None, reverse=False):
# perform a series of propagation_to steps starting from v following a topo order
# assume the original vertex indices are in a topological order
if reverse:
prop_order = range(v, -1, -1)
else:
prop_order = range(v, self.max_n)
Hv = self._propagate_to(G, v, propagator, H0, reverse=reverse) # the initial vertex
for v_ in prop_order[1:]:
self._propagate_to(G, v_, propagator, reverse=reverse)
return Hv
def _update_v(self, G, v, H0=None):
# perform a forward propagation step at v when decoding to update v's state
self._propagate_to(G, v, self.grud, H0, reverse=False)
return
def _get_vertex_state(self, G, v):
# get the vertex states at v
Hv = []
for g in G:
if v >= g.vcount():
hv = self._get_zero_hidden()
else:
hv = g.vs[v]['H_forward']
Hv.append(hv)
Hv = torch.cat(Hv, 0)
return Hv
def _get_graph_state(self, G, decode=False):
# get the graph states
# when decoding, use the last generated vertex's state as the graph state
# when encoding, use the ending vertex state or unify the starting and ending vertex states
Hg = []
for g in G:
hg = g.vs[g.vcount()-1]['H_forward']
if self.bidir and not decode: # decoding never uses backward propagation
hg_b = g.vs[0]['H_backward']
hg = torch.cat([hg, hg_b], 1)
Hg.append(hg)
Hg = torch.cat(Hg, 0)
if self.bidir and not decode:
Hg = self.hg_unify(Hg)
return Hg
def encode(self, G):
# encode graphs G into latent vectors
if type(G) != list:
G = [G]
self._propagate_from(G, 0, self.grue_forward, H0=self._get_zero_hidden(len(G)),
reverse=False)
if self.bidir:
self._propagate_from(G, self.max_n-1, self.grue_backward,
H0=self._get_zero_hidden(len(G)), reverse=True)
Hg = self._get_graph_state(G)
mu, logvar = self.fc1(Hg), self.fc2(Hg)
return mu, logvar
def reparameterize(self, mu, logvar, eps_scale=0.01):
# return z ~ N(mu, std)
if self.training:
std = logvar.mul(0.5).exp_()
eps = torch.randn_like(std) * eps_scale
return eps.mul(std).add_(mu)
else:
return mu
def _get_edge_score(self, Hvi, H, H0):
# compute scores for edges from vi based on Hvi, H (current vertex) and H0
# in most cases, H0 need not be explicitly included since Hvi and H contain its information
return self.sigmoid(self.add_edge(torch.cat([Hvi, H], -1)))
def decode(self, z, stochastic=True):
# decode latent vectors z back to graphs
# if stochastic=True, stochastically sample each action from the predicted distribution;
# otherwise, select argmax action deterministically.
H0 = self.tanh(self.fc3(z)) # or relu activation, similar performance
G = [igraph.Graph(directed=True) for _ in range(len(z))]
for g in G:
g.add_vertex(type=self.START_TYPE)
self._update_v(G, 0, H0)
finished = [False] * len(G)
for idx in range(1, self.max_n):
# decide the type of the next added vertex
if idx == self.max_n - 1: # force the last node to be end_type
new_types = [self.END_TYPE] * len(G)
else:
Hg = self._get_graph_state(G, decode=True)
type_scores = self.add_vertex(Hg)
if stochastic:
type_probs = F.softmax(type_scores, 1).cpu().detach().numpy()
new_types = [np.random.choice(range(self.nvt), p=type_probs[i])
for i in range(len(G))]
else:
new_types = torch.argmax(type_scores, 1)
new_types = new_types.flatten().tolist()
for i, g in enumerate(G):
if not finished[i]:
g.add_vertex(type=new_types[i])
self._update_v(G, idx)
# decide connections
edge_scores = []
for vi in range(idx-1, -1, -1):
Hvi = self._get_vertex_state(G, vi)
H = self._get_vertex_state(G, idx)
ei_score = self._get_edge_score(Hvi, H, H0)
if stochastic:
random_score = torch.rand_like(ei_score)
decisions = random_score < ei_score
else:
decisions = ei_score > 0.5
for i, g in enumerate(G):
if finished[i]:
continue
if new_types[i] == self.END_TYPE:
# if new node is end_type, connect it to all loose-end vertices (out_degree==0)
end_vertices = set([v.index for v in g.vs.select(_outdegree_eq=0)
if v.index != g.vcount()-1])
for v in end_vertices:
g.add_edge(v, g.vcount()-1)
finished[i] = True
continue
if decisions[i, 0]:
g.add_edge(vi, g.vcount()-1)
self._update_v(G, idx)
for g in G:
del g.vs['H_forward'] # delete hidden states to save GPU memory
return G
def loss(self, mu, logvar, G_true, beta=0.005):
# compute the loss of decoding mu and logvar to true graphs using teacher forcing
# ensure when computing the loss of step i, steps 0 to i-1 are correct
z = self.reparameterize(mu, logvar)
H0 = self.tanh(self.fc3(z)) # or relu activation, similar performance
G = [igraph.Graph(directed=True) for _ in range(len(z))]
for g in G:
g.add_vertex(type=self.START_TYPE)
self._update_v(G, 0, H0)
res = 0 # log likelihood
for v_true in range(1, self.max_n):
# calculate the likelihood of adding true types of nodes
# use start type to denote padding vertices since start type only appears for vertex 0
# and will never be a true type for later vertices, thus it's free to use
true_types = [g_true.vs[v_true]['type'] if v_true < g_true.vcount()
else self.START_TYPE for g_true in G_true]
Hg = self._get_graph_state(G, decode=True)
type_scores = self.add_vertex(Hg)
# vertex log likelihood
vll = self.logsoftmax1(type_scores)[np.arange(len(G)), true_types].sum()
res = res + vll
for i, g in enumerate(G):
if true_types[i] != self.START_TYPE:
g.add_vertex(type=true_types[i])
self._update_v(G, v_true)
# calculate the likelihood of adding true edges
true_edges = []
for i, g_true in enumerate(G_true):
true_edges.append(g_true.get_adjlist(igraph.IN)[v_true] if v_true < g_true.vcount()
else [])
edge_scores = []
for vi in range(v_true-1, -1, -1):
Hvi = self._get_vertex_state(G, vi)
H = self._get_vertex_state(G, v_true)
ei_score = self._get_edge_score(Hvi, H, H0)
edge_scores.append(ei_score)
for i, g in enumerate(G):
if vi in true_edges[i]:
g.add_edge(vi, v_true)
self._update_v(G, v_true)
edge_scores = torch.cat(edge_scores[::-1], 1)
ground_truth = torch.zeros_like(edge_scores)
idx1 = [i for i, x in enumerate(true_edges) for _ in range(len(x))]
idx2 = [xx for x in true_edges for xx in x]
ground_truth[idx1, idx2] = 1.0
# edges log-likelihood
ell = - F.binary_cross_entropy(edge_scores, ground_truth, reduction='sum')
res = res + ell
res = -res # convert likelihood to loss
kld = -0.5 * torch.sum(1 + logvar - mu.pow(2) - logvar.exp())
return res + beta*kld, res, kld
def encode_decode(self, G):
mu, logvar = self.encode(G)
z = self.reparameterize(mu, logvar)
return self.decode(z)
def forward(self, G):
mu, logvar = self.encode(G)
loss, _, _ = self.loss(mu, logvar, G)
return loss
def generate_sample(self, n):
sample = torch.randn(n, self.nz).to(self.get_device())
G = self.decode(sample)
return G
'''
D-VAE with GCN encoder
The message passing happens at all nodes simultaneously.
'''
class DVAE_GCN(DVAE):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=501, nz=56, bidirectional=False, levels=3):
# bidirectional means passing messages ignoring edge directions
super(DVAE_GCN, self).__init__(max_n, nvt, START_TYPE, END_TYPE, hs, nz, bidirectional)
self.levels = levels
self.gconv = nn.ModuleList()
self.gconv.append(
nn.Sequential(
nn.Linear(nvt, hs),
nn.ReLU(),
)
)
for lv in range(1, levels):
self.gconv.append(
nn.Sequential(
nn.Linear(hs, hs),
nn.ReLU(),
)
)
def _get_feature(self, g, v, lv=0):
# get the node feature vector of v
if lv == 0: # initial level uses type features
v_type = g.vs[v]['type']
x = self._one_hot(v_type, self.nvt)
else:
x = g.vs[v]['H_forward']
return x
def _get_zero_x(self, n=1):
# get zero predecessor states X, used for padding
return torch.zeros(n, self.nvt).to(self.get_device())
def _get_graph_state(self, G, decode=False, start=0, end_offset=0):
# get the graph states
# sum all node states between start and n-end_offset as the graph state
Hg = []
max_n_nodes = max(g.vcount() for g in G)
for g in G:
hg = torch.cat([g.vs[i]['H_forward'] for i in range(start, g.vcount() - end_offset)],
0).unsqueeze(0) # 1 * n * hs
if g.vcount() < max_n_nodes:
hg = torch.cat([hg,
torch.zeros(1, max_n_nodes - g.vcount(), hg.shape[2]).to(self.get_device())],
1) # 1 * max_n * hs
Hg.append(hg)
# sum node states as the graph state
Hg = torch.cat(Hg, 0).sum(1) # batch * hs
return Hg # batch * hs
def _GCN_propagate_to(self, G, v, lv=0):
# propagate messages to vertex index v for all graphs in G
# return the new messages (states) at v
G = [g for g in G if g.vcount() > v]
if len(G) == 0:
return
if self.bidir: # ignore edge directions, accept all neighbors' messages
H_nei = [[self._get_feature(g, v, lv)/(g.degree(v)+1)] +
[self._get_feature(g, x, lv)/math.sqrt((g.degree(x)+1)*(g.degree(v)+1))
for x in g.neighbors(v)] for g in G]
else: # only accept messages from predecessors (generalizing GCN to directed cases)
H_nei = [[self._get_feature(g, v, lv)/(g.indegree(v)+1)] +
[self._get_feature(g, x, lv)/math.sqrt((g.outdegree(x)+1)*(g.indegree(v)+1))
for x in g.predecessors(v)] for g in G]
max_n_nei = max([len(x) for x in H_nei]) # maximum number of neighbors
H_nei = [torch.cat(h_nei + [self._get_zeros(max_n_nei - len(h_nei), h_nei[0].shape[1])], 0).unsqueeze(0)
for h_nei in H_nei] # pad all to same length
H_nei = torch.cat(H_nei, 0) # batch * max_n_nei * nvt
Hv = self.gconv[lv](H_nei.sum(1)) # batch * hs
for i, g in enumerate(G):
g.vs[v]['H_forward'] = Hv[i:i+1]
return Hv
def encode(self, G):
# encode graphs G into latent vectors
# GCN propagation is now implemented in a non-parallel way for consistency, but
# can definitely be parallel to speed it up. However, the major computation cost
# comes from the generation, which is not parallellizable.
if type(G) != list:
G = [G]
prop_order = range(self.max_n)
for lv in range(self.levels):
for v_ in prop_order:
self._GCN_propagate_to(G, v_, lv)
Hg = self._get_graph_state(G, start=1, end_offset=1) # does not use the dummy input
# and output nodes
mu, logvar = self.fc1(Hg), self.fc2(Hg)
return mu, logvar
'''
D-VAE for Bayesian networks.
The encoding of each node takes gated sum of X instead of H of its predecessors as input.
The decoding is the same as D-VAE, except for including H0 to predict edge scores.
'''
class DVAE_BN(DVAE):
def __init__(self, max_n, nvt, START_TYPE, END_TYPE, hs=501, nz=56, bidirectional=False):
super(DVAE_BN, self).__init__(max_n, nvt, START_TYPE, END_TYPE, hs, nz, bidirectional)
self.mapper_forward = nn.Sequential(
nn.Linear(self.nvt, hs, bias=False),
) # disable bias to ensure padded zeros also mapped to zeros
self.mapper_backward = nn.Sequential(
nn.Linear(self.nvt, hs, bias=False),
)
self.gate_forward = nn.Sequential(
nn.Linear(self.nvt, hs),
nn.Sigmoid()
)
self.gate_backward = nn.Sequential(
nn.Linear(self.nvt, hs),
nn.Sigmoid()
)
self.add_edge = nn.Sequential(
nn.Linear(hs * 3, hs),
nn.ReLU(),
nn.Linear(hs, 1)
) # whether to add edge between v_i and v_new, f(hvi, hnew, h0)