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reward_model.py
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reward_model.py
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import numpy as np
import torch
import torch.nn as nn
import torch.nn.functional as F
import torch.utils.data as data
import torch.optim as optim
import itertools
import tqdm
import copy
import scipy.stats as st
import os
import time
from scipy.stats import norm
device = 'cuda'
def gen_net(in_size=1, out_size=1, H=128, n_layers=3, activation='tanh'):
net = []
for i in range(n_layers):
net.append(nn.Linear(in_size, H))
net.append(nn.LeakyReLU())
in_size = H
net.append(nn.Linear(in_size, out_size))
if activation == 'tanh':
net.append(nn.Tanh())
elif activation == 'sig':
net.append(nn.Sigmoid())
else:
net.append(nn.ReLU())
return net
def KCenterGreedy(obs, full_obs, num_new_sample):
selected_index = []
current_index = list(range(obs.shape[0]))
new_obs = obs
new_full_obs = full_obs
start_time = time.time()
for count in range(num_new_sample):
dist = compute_smallest_dist(new_obs, new_full_obs)
max_index = torch.argmax(dist)
max_index = max_index.item()
if count == 0:
selected_index.append(max_index)
else:
selected_index.append(current_index[max_index])
current_index = current_index[0:max_index] + current_index[max_index+1:]
new_obs = obs[current_index]
new_full_obs = np.concatenate([
full_obs,
obs[selected_index]],
axis=0)
return selected_index
def compute_smallest_dist(obs, full_obs):
obs = torch.from_numpy(obs).float()
full_obs = torch.from_numpy(full_obs).float()
batch_size = 100
with torch.no_grad():
total_dists = []
for full_idx in range(len(obs) // batch_size + 1):
full_start = full_idx * batch_size
if full_start < len(obs):
full_end = (full_idx + 1) * batch_size
dists = []
for idx in range(len(full_obs) // batch_size + 1):
start = idx * batch_size
if start < len(full_obs):
end = (idx + 1) * batch_size
dist = torch.norm(
obs[full_start:full_end, None, :].to(device) - full_obs[None, start:end, :].to(device), dim=-1, p=2
)
dists.append(dist)
dists = torch.cat(dists, dim=1)
small_dists = torch.torch.min(dists, dim=1).values
total_dists.append(small_dists)
total_dists = torch.cat(total_dists)
return total_dists.unsqueeze(1)
class RewardModel:
def __init__(self, ds, da,
ensemble_size=3, lr=3e-4, mb_size = 128, size_segment=1,
env_maker=None, max_size=100, activation='tanh', capacity=5e5,
large_batch=1, label_margin=0.0,
teacher_beta=-1, teacher_gamma=1,
teacher_eps_mistake=0,
teacher_eps_skip=0,
teacher_eps_equal=0):
# train data is trajectories, must process to sa and s..
self.ds = ds
self.da = da
self.de = ensemble_size
self.lr = lr
self.ensemble = []
self.paramlst = []
self.opt = None
self.model = None
self.max_size = max_size
self.activation = activation
self.size_segment = size_segment
self.capacity = int(capacity)
self.buffer_seg1 = np.empty((self.capacity, size_segment, self.ds+self.da), dtype=np.float32)
self.buffer_seg2 = np.empty((self.capacity, size_segment, self.ds+self.da), dtype=np.float32)
self.buffer_label = np.empty((self.capacity, 1), dtype=np.float32)
self.buffer_index = 0
self.buffer_full = False
self.construct_ensemble()
self.inputs = []
self.targets = []
self.raw_actions = []
self.img_inputs = []
self.mb_size = mb_size
self.origin_mb_size = mb_size
self.train_batch_size = 128
self.CEloss = nn.CrossEntropyLoss()
self.running_means = []
self.running_stds = []
self.best_seg = []
self.best_label = []
self.best_action = []
self.large_batch = large_batch
# new teacher
self.teacher_beta = teacher_beta
self.teacher_gamma = teacher_gamma
self.teacher_eps_mistake = teacher_eps_mistake
self.teacher_eps_equal = teacher_eps_equal
self.teacher_eps_skip = teacher_eps_skip
self.teacher_thres_skip = 0
self.teacher_thres_equal = 0
self.label_margin = label_margin
self.label_target = 1 - 2*self.label_margin
def softXEnt_loss(self, input, target):
logprobs = torch.nn.functional.log_softmax (input, dim = 1)
return -(target * logprobs).sum() / input.shape[0]
def change_batch(self, new_frac):
self.mb_size = int(self.origin_mb_size*new_frac)
def set_batch(self, new_batch):
self.mb_size = int(new_batch)
def set_teacher_thres_skip(self, new_margin):
self.teacher_thres_skip = new_margin * self.teacher_eps_skip
def set_teacher_thres_equal(self, new_margin):
self.teacher_thres_equal = new_margin * self.teacher_eps_equal
def construct_ensemble(self):
for i in range(self.de):
model = nn.Sequential(*gen_net(in_size=self.ds+self.da,
out_size=1, H=256, n_layers=3,
activation=self.activation)).float().to(device)
self.ensemble.append(model)
self.paramlst.extend(model.parameters())
self.opt = torch.optim.Adam(self.paramlst, lr = self.lr)
def add_data(self, obs, act, rew, done):
sa_t = np.concatenate([obs, act], axis=-1)
r_t = rew
flat_input = sa_t.reshape(1, self.da+self.ds)
r_t = np.array(r_t)
flat_target = r_t.reshape(1, 1)
init_data = len(self.inputs) == 0
if init_data:
self.inputs.append(flat_input)
self.targets.append(flat_target)
elif done:
self.inputs[-1] = np.concatenate([self.inputs[-1], flat_input])
self.targets[-1] = np.concatenate([self.targets[-1], flat_target])
# FIFO
if len(self.inputs) > self.max_size:
self.inputs = self.inputs[1:]
self.targets = self.targets[1:]
self.inputs.append([])
self.targets.append([])
else:
if len(self.inputs[-1]) == 0:
self.inputs[-1] = flat_input
self.targets[-1] = flat_target
else:
self.inputs[-1] = np.concatenate([self.inputs[-1], flat_input])
self.targets[-1] = np.concatenate([self.targets[-1], flat_target])
def add_data_batch(self, obses, rewards):
num_env = obses.shape[0]
for index in range(num_env):
self.inputs.append(obses[index])
self.targets.append(rewards[index])
def get_rank_probability(self, x_1, x_2):
# get probability x_1 > x_2
probs = []
for member in range(self.de):
probs.append(self.p_hat_member(x_1, x_2, member=member).cpu().numpy())
probs = np.array(probs)
return np.mean(probs, axis=0), np.std(probs, axis=0)
def get_entropy(self, x_1, x_2):
# get probability x_1 > x_2
probs = []
for member in range(self.de):
probs.append(self.p_hat_entropy(x_1, x_2, member=member).cpu().numpy())
probs = np.array(probs)
return np.mean(probs, axis=0), np.std(probs, axis=0)
def p_hat_member(self, x_1, x_2, member=-1):
# softmaxing to get the probabilities according to eqn 1
with torch.no_grad():
r_hat1 = self.r_hat_member(x_1, member=member)
r_hat2 = self.r_hat_member(x_2, member=member)
r_hat1 = r_hat1.sum(axis=1)
r_hat2 = r_hat2.sum(axis=1)
r_hat = torch.cat([r_hat1, r_hat2], axis=-1)
# taking 0 index for probability x_1 > x_2
return F.softmax(r_hat, dim=-1)[:,0]
def p_hat_entropy(self, x_1, x_2, member=-1):
# softmaxing to get the probabilities according to eqn 1
with torch.no_grad():
r_hat1 = self.r_hat_member(x_1, member=member)
r_hat2 = self.r_hat_member(x_2, member=member)
r_hat1 = r_hat1.sum(axis=1)
r_hat2 = r_hat2.sum(axis=1)
r_hat = torch.cat([r_hat1, r_hat2], axis=-1)
ent = F.softmax(r_hat, dim=-1) * F.log_softmax(r_hat, dim=-1)
ent = ent.sum(axis=-1).abs()
return ent
def r_hat_member(self, x, member=-1):
# the network parameterizes r hat in eqn 1 from the paper
return self.ensemble[member](torch.from_numpy(x).float().to(device))
def r_hat(self, x):
# they say they average the rewards from each member of the ensemble, but I think this only makes sense if the rewards are already normalized
# but I don't understand how the normalization should be happening right now :(
r_hats = []
for member in range(self.de):
r_hats.append(self.r_hat_member(x, member=member).detach().cpu().numpy())
r_hats = np.array(r_hats)
return np.mean(r_hats)
def r_hat_batch(self, x):
# they say they average the rewards from each member of the ensemble, but I think this only makes sense if the rewards are already normalized
# but I don't understand how the normalization should be happening right now :(
r_hats = []
for member in range(self.de):
r_hats.append(self.r_hat_member(x, member=member).detach().cpu().numpy())
r_hats = np.array(r_hats)
return np.mean(r_hats, axis=0)
def save(self, model_dir, step):
for member in range(self.de):
torch.save(
self.ensemble[member].state_dict(), '%s/reward_model_%s_%s.pt' % (model_dir, step, member)
)
def load(self, model_dir, step):
for member in range(self.de):
self.ensemble[member].load_state_dict(
torch.load('%s/reward_model_%s_%s.pt' % (model_dir, step, member))
)
def get_train_acc(self):
ensemble_acc = np.array([0 for _ in range(self.de)])
max_len = self.capacity if self.buffer_full else self.buffer_index
total_batch_index = np.random.permutation(max_len)
batch_size = 256
num_epochs = int(np.ceil(max_len/batch_size))
total = 0
for epoch in range(num_epochs):
last_index = (epoch+1)*batch_size
if (epoch+1)*batch_size > max_len:
last_index = max_len
sa_t_1 = self.buffer_seg1[epoch*batch_size:last_index]
sa_t_2 = self.buffer_seg2[epoch*batch_size:last_index]
labels = self.buffer_label[epoch*batch_size:last_index]
labels = torch.from_numpy(labels.flatten()).long().to(device)
total += labels.size(0)
for member in range(self.de):
# get logits
r_hat1 = self.r_hat_member(sa_t_1, member=member)
r_hat2 = self.r_hat_member(sa_t_2, member=member)
r_hat1 = r_hat1.sum(axis=1)
r_hat2 = r_hat2.sum(axis=1)
r_hat = torch.cat([r_hat1, r_hat2], axis=-1)
_, predicted = torch.max(r_hat.data, 1)
correct = (predicted == labels).sum().item()
ensemble_acc[member] += correct
ensemble_acc = ensemble_acc / total
return np.mean(ensemble_acc)
def get_queries(self, mb_size=20):
len_traj, max_len = len(self.inputs[0]), len(self.inputs)
img_t_1, img_t_2 = None, None
if len(self.inputs[-1]) < len_traj:
max_len = max_len - 1
# get train traj
train_inputs = np.array(self.inputs[:max_len])
train_targets = np.array(self.targets[:max_len])
batch_index_2 = np.random.choice(max_len, size=mb_size, replace=True)
sa_t_2 = train_inputs[batch_index_2] # Batch x T x dim of s&a
r_t_2 = train_targets[batch_index_2] # Batch x T x 1
batch_index_1 = np.random.choice(max_len, size=mb_size, replace=True)
sa_t_1 = train_inputs[batch_index_1] # Batch x T x dim of s&a
r_t_1 = train_targets[batch_index_1] # Batch x T x 1
sa_t_1 = sa_t_1.reshape(-1, sa_t_1.shape[-1]) # (Batch x T) x dim of s&a
r_t_1 = r_t_1.reshape(-1, r_t_1.shape[-1]) # (Batch x T) x 1
sa_t_2 = sa_t_2.reshape(-1, sa_t_2.shape[-1]) # (Batch x T) x dim of s&a
r_t_2 = r_t_2.reshape(-1, r_t_2.shape[-1]) # (Batch x T) x 1
# Generate time index
time_index = np.array([list(range(i*len_traj,
i*len_traj+self.size_segment)) for i in range(mb_size)])
time_index_2 = time_index + np.random.choice(len_traj-self.size_segment, size=mb_size, replace=True).reshape(-1,1)
time_index_1 = time_index + np.random.choice(len_traj-self.size_segment, size=mb_size, replace=True).reshape(-1,1)
sa_t_1 = np.take(sa_t_1, time_index_1, axis=0) # Batch x size_seg x dim of s&a
r_t_1 = np.take(r_t_1, time_index_1, axis=0) # Batch x size_seg x 1
sa_t_2 = np.take(sa_t_2, time_index_2, axis=0) # Batch x size_seg x dim of s&a
r_t_2 = np.take(r_t_2, time_index_2, axis=0) # Batch x size_seg x 1
return sa_t_1, sa_t_2, r_t_1, r_t_2
def put_queries(self, sa_t_1, sa_t_2, labels):
total_sample = sa_t_1.shape[0]
next_index = self.buffer_index + total_sample
if next_index >= self.capacity:
self.buffer_full = True
maximum_index = self.capacity - self.buffer_index
np.copyto(self.buffer_seg1[self.buffer_index:self.capacity], sa_t_1[:maximum_index])
np.copyto(self.buffer_seg2[self.buffer_index:self.capacity], sa_t_2[:maximum_index])
np.copyto(self.buffer_label[self.buffer_index:self.capacity], labels[:maximum_index])
remain = total_sample - (maximum_index)
if remain > 0:
np.copyto(self.buffer_seg1[0:remain], sa_t_1[maximum_index:])
np.copyto(self.buffer_seg2[0:remain], sa_t_2[maximum_index:])
np.copyto(self.buffer_label[0:remain], labels[maximum_index:])
self.buffer_index = remain
else:
np.copyto(self.buffer_seg1[self.buffer_index:next_index], sa_t_1)
np.copyto(self.buffer_seg2[self.buffer_index:next_index], sa_t_2)
np.copyto(self.buffer_label[self.buffer_index:next_index], labels)
self.buffer_index = next_index
def get_label(self, sa_t_1, sa_t_2, r_t_1, r_t_2):
sum_r_t_1 = np.sum(r_t_1, axis=1)
sum_r_t_2 = np.sum(r_t_2, axis=1)
# skip the query
if self.teacher_thres_skip > 0:
max_r_t = np.maximum(sum_r_t_1, sum_r_t_2)
max_index = (max_r_t > self.teacher_thres_skip).reshape(-1)
if sum(max_index) == 0:
return None, None, None, None, []
sa_t_1 = sa_t_1[max_index]
sa_t_2 = sa_t_2[max_index]
r_t_1 = r_t_1[max_index]
r_t_2 = r_t_2[max_index]
sum_r_t_1 = np.sum(r_t_1, axis=1)
sum_r_t_2 = np.sum(r_t_2, axis=1)
# equally preferable
margin_index = (np.abs(sum_r_t_1 - sum_r_t_2) < self.teacher_thres_equal).reshape(-1)
# perfectly rational
seg_size = r_t_1.shape[1]
temp_r_t_1 = r_t_1.copy()
temp_r_t_2 = r_t_2.copy()
for index in range(seg_size-1):
temp_r_t_1[:,:index+1] *= self.teacher_gamma
temp_r_t_2[:,:index+1] *= self.teacher_gamma
sum_r_t_1 = np.sum(temp_r_t_1, axis=1)
sum_r_t_2 = np.sum(temp_r_t_2, axis=1)
rational_labels = 1*(sum_r_t_1 < sum_r_t_2)
if self.teacher_beta > 0: # Bradley-Terry rational model
r_hat = torch.cat([torch.Tensor(sum_r_t_1),
torch.Tensor(sum_r_t_2)], axis=-1)
r_hat = r_hat*self.teacher_beta
ent = F.softmax(r_hat, dim=-1)[:, 1]
labels = torch.bernoulli(ent).int().numpy().reshape(-1, 1)
else:
labels = rational_labels
# making a mistake
len_labels = labels.shape[0]
rand_num = np.random.rand(len_labels)
noise_index = rand_num <= self.teacher_eps_mistake
labels[noise_index] = 1 - labels[noise_index]
# equally preferable
labels[margin_index] = -1
return sa_t_1, sa_t_2, r_t_1, r_t_2, labels
def kcenter_sampling(self):
# get queries
num_init = self.mb_size*self.large_batch
sa_t_1, sa_t_2, r_t_1, r_t_2 = self.get_queries(
mb_size=num_init)
# get final queries based on kmeans clustering
temp_sa_t_1 = sa_t_1[:,:,:self.ds]
temp_sa_t_2 = sa_t_2[:,:,:self.ds]
temp_sa = np.concatenate([temp_sa_t_1.reshape(num_init, -1),
temp_sa_t_2.reshape(num_init, -1)], axis=1)
max_len = self.capacity if self.buffer_full else self.buffer_index
tot_sa_1 = self.buffer_seg1[:max_len, :, :self.ds]
tot_sa_2 = self.buffer_seg2[:max_len, :, :self.ds]
tot_sa = np.concatenate([tot_sa_1.reshape(max_len, -1),
tot_sa_2.reshape(max_len, -1)], axis=1)
selected_index = KCenterGreedy(temp_sa, tot_sa, self.mb_size)
r_t_1, sa_t_1 = r_t_1[selected_index], sa_t_1[selected_index]
r_t_2, sa_t_2 = r_t_2[selected_index], sa_t_2[selected_index]
# get labels
sa_t_1, sa_t_2, r_t_1, r_t_2, labels = self.get_label(
sa_t_1, sa_t_2, r_t_1, r_t_2)
if len(labels) > 0:
self.put_queries(sa_t_1, sa_t_2, labels)
return len(labels)
def kcenter_disagree_sampling(self):
num_init = self.mb_size*self.large_batch
num_init_half = int(num_init*0.5)
# get queries
sa_t_1, sa_t_2, r_t_1, r_t_2 = self.get_queries(
mb_size=num_init)
# get final queries based on uncertainty
_, disagree = self.get_rank_probability(sa_t_1, sa_t_2)
top_k_index = (-disagree).argsort()[:num_init_half]
r_t_1, sa_t_1 = r_t_1[top_k_index], sa_t_1[top_k_index]
r_t_2, sa_t_2 = r_t_2[top_k_index], sa_t_2[top_k_index]
# get final queries based on kmeans clustering
temp_sa_t_1 = sa_t_1[:,:,:self.ds]
temp_sa_t_2 = sa_t_2[:,:,:self.ds]
temp_sa = np.concatenate([temp_sa_t_1.reshape(num_init_half, -1),
temp_sa_t_2.reshape(num_init_half, -1)], axis=1)
max_len = self.capacity if self.buffer_full else self.buffer_index
tot_sa_1 = self.buffer_seg1[:max_len, :, :self.ds]
tot_sa_2 = self.buffer_seg2[:max_len, :, :self.ds]
tot_sa = np.concatenate([tot_sa_1.reshape(max_len, -1),
tot_sa_2.reshape(max_len, -1)], axis=1)
selected_index = KCenterGreedy(temp_sa, tot_sa, self.mb_size)
r_t_1, sa_t_1 = r_t_1[selected_index], sa_t_1[selected_index]
r_t_2, sa_t_2 = r_t_2[selected_index], sa_t_2[selected_index]
# get labels
sa_t_1, sa_t_2, r_t_1, r_t_2, labels = self.get_label(
sa_t_1, sa_t_2, r_t_1, r_t_2)
if len(labels) > 0:
self.put_queries(sa_t_1, sa_t_2, labels)
return len(labels)
def kcenter_entropy_sampling(self):
num_init = self.mb_size*self.large_batch
num_init_half = int(num_init*0.5)
# get queries
sa_t_1, sa_t_2, r_t_1, r_t_2 = self.get_queries(
mb_size=num_init)
# get final queries based on uncertainty
entropy, _ = self.get_entropy(sa_t_1, sa_t_2)
top_k_index = (-entropy).argsort()[:num_init_half]
r_t_1, sa_t_1 = r_t_1[top_k_index], sa_t_1[top_k_index]
r_t_2, sa_t_2 = r_t_2[top_k_index], sa_t_2[top_k_index]
# get final queries based on kmeans clustering
temp_sa_t_1 = sa_t_1[:,:,:self.ds]
temp_sa_t_2 = sa_t_2[:,:,:self.ds]
temp_sa = np.concatenate([temp_sa_t_1.reshape(num_init_half, -1),
temp_sa_t_2.reshape(num_init_half, -1)], axis=1)
max_len = self.capacity if self.buffer_full else self.buffer_index
tot_sa_1 = self.buffer_seg1[:max_len, :, :self.ds]
tot_sa_2 = self.buffer_seg2[:max_len, :, :self.ds]
tot_sa = np.concatenate([tot_sa_1.reshape(max_len, -1),
tot_sa_2.reshape(max_len, -1)], axis=1)
selected_index = KCenterGreedy(temp_sa, tot_sa, self.mb_size)
r_t_1, sa_t_1 = r_t_1[selected_index], sa_t_1[selected_index]
r_t_2, sa_t_2 = r_t_2[selected_index], sa_t_2[selected_index]
# get labels
sa_t_1, sa_t_2, r_t_1, r_t_2, labels = self.get_label(
sa_t_1, sa_t_2, r_t_1, r_t_2)
if len(labels) > 0:
self.put_queries(sa_t_1, sa_t_2, labels)
return len(labels)
def uniform_sampling(self):
# get queries
sa_t_1, sa_t_2, r_t_1, r_t_2 = self.get_queries(
mb_size=self.mb_size)
# get labels
sa_t_1, sa_t_2, r_t_1, r_t_2, labels = self.get_label(
sa_t_1, sa_t_2, r_t_1, r_t_2)
if len(labels) > 0:
self.put_queries(sa_t_1, sa_t_2, labels)
return len(labels)
def disagreement_sampling(self):
# get queries
sa_t_1, sa_t_2, r_t_1, r_t_2 = self.get_queries(
mb_size=self.mb_size*self.large_batch)
# get final queries based on uncertainty
_, disagree = self.get_rank_probability(sa_t_1, sa_t_2)
top_k_index = (-disagree).argsort()[:self.mb_size]
r_t_1, sa_t_1 = r_t_1[top_k_index], sa_t_1[top_k_index]
r_t_2, sa_t_2 = r_t_2[top_k_index], sa_t_2[top_k_index]
# get labels
sa_t_1, sa_t_2, r_t_1, r_t_2, labels = self.get_label(
sa_t_1, sa_t_2, r_t_1, r_t_2)
if len(labels) > 0:
self.put_queries(sa_t_1, sa_t_2, labels)
return len(labels)
def entropy_sampling(self):
# get queries
sa_t_1, sa_t_2, r_t_1, r_t_2 = self.get_queries(
mb_size=self.mb_size*self.large_batch)
# get final queries based on uncertainty
entropy, _ = self.get_entropy(sa_t_1, sa_t_2)
top_k_index = (-entropy).argsort()[:self.mb_size]
r_t_1, sa_t_1 = r_t_1[top_k_index], sa_t_1[top_k_index]
r_t_2, sa_t_2 = r_t_2[top_k_index], sa_t_2[top_k_index]
# get labels
sa_t_1, sa_t_2, r_t_1, r_t_2, labels = self.get_label(
sa_t_1, sa_t_2, r_t_1, r_t_2)
if len(labels) > 0:
self.put_queries(sa_t_1, sa_t_2, labels)
return len(labels)
def train_reward(self):
ensemble_losses = [[] for _ in range(self.de)]
ensemble_acc = np.array([0 for _ in range(self.de)])
max_len = self.capacity if self.buffer_full else self.buffer_index
total_batch_index = []
for _ in range(self.de):
total_batch_index.append(np.random.permutation(max_len))
num_epochs = int(np.ceil(max_len/self.train_batch_size))
list_debug_loss1, list_debug_loss2 = [], []
total = 0
for epoch in range(num_epochs):
self.opt.zero_grad()
loss = 0.0
last_index = (epoch+1)*self.train_batch_size
if last_index > max_len:
last_index = max_len
for member in range(self.de):
# get random batch
idxs = total_batch_index[member][epoch*self.train_batch_size:last_index]
sa_t_1 = self.buffer_seg1[idxs]
sa_t_2 = self.buffer_seg2[idxs]
labels = self.buffer_label[idxs]
labels = torch.from_numpy(labels.flatten()).long().to(device)
if member == 0:
total += labels.size(0)
# get logits
r_hat1 = self.r_hat_member(sa_t_1, member=member)
r_hat2 = self.r_hat_member(sa_t_2, member=member)
r_hat1 = r_hat1.sum(axis=1)
r_hat2 = r_hat2.sum(axis=1)
r_hat = torch.cat([r_hat1, r_hat2], axis=-1)
# compute loss
curr_loss = self.CEloss(r_hat, labels)
loss += curr_loss
ensemble_losses[member].append(curr_loss.item())
# compute acc
_, predicted = torch.max(r_hat.data, 1)
correct = (predicted == labels).sum().item()
ensemble_acc[member] += correct
loss.backward()
self.opt.step()
ensemble_acc = ensemble_acc / total
return ensemble_acc
def train_soft_reward(self):
ensemble_losses = [[] for _ in range(self.de)]
ensemble_acc = np.array([0 for _ in range(self.de)])
max_len = self.capacity if self.buffer_full else self.buffer_index
total_batch_index = []
for _ in range(self.de):
total_batch_index.append(np.random.permutation(max_len))
num_epochs = int(np.ceil(max_len/self.train_batch_size))
list_debug_loss1, list_debug_loss2 = [], []
total = 0
for epoch in range(num_epochs):
self.opt.zero_grad()
loss = 0.0
last_index = (epoch+1)*self.train_batch_size
if last_index > max_len:
last_index = max_len
for member in range(self.de):
# get random batch
idxs = total_batch_index[member][epoch*self.train_batch_size:last_index]
sa_t_1 = self.buffer_seg1[idxs]
sa_t_2 = self.buffer_seg2[idxs]
labels = self.buffer_label[idxs]
labels = torch.from_numpy(labels.flatten()).long().to(device)
if member == 0:
total += labels.size(0)
# get logits
r_hat1 = self.r_hat_member(sa_t_1, member=member)
r_hat2 = self.r_hat_member(sa_t_2, member=member)
r_hat1 = r_hat1.sum(axis=1)
r_hat2 = r_hat2.sum(axis=1)
r_hat = torch.cat([r_hat1, r_hat2], axis=-1)
# compute loss
uniform_index = labels == -1
labels[uniform_index] = 0
target_onehot = torch.zeros_like(r_hat).scatter(1, labels.unsqueeze(1), self.label_target)
target_onehot += self.label_margin
if sum(uniform_index) > 0:
target_onehot[uniform_index] = 0.5
curr_loss = self.softXEnt_loss(r_hat, target_onehot)
loss += curr_loss
ensemble_losses[member].append(curr_loss.item())
# compute acc
_, predicted = torch.max(r_hat.data, 1)
correct = (predicted == labels).sum().item()
ensemble_acc[member] += correct
loss.backward()
self.opt.step()
ensemble_acc = ensemble_acc / total
return ensemble_acc