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Declarative Machine Learning
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/*
* LSTM layer.
*/
source("nn/layers/sigmoid.dml") as sigmoid
source("nn/layers/tanh.dml") as tanh
forward = function(matrix[double] X, matrix[double] W, matrix[double] b, int T, int D,
boolean return_sequences, matrix[double] out0, matrix[double] c0)
return (matrix[double] out, matrix[double] c,
matrix[double] cache_out, matrix[double] cache_c, matrix[double] cache_ifog) {
/*
* Computes the forward pass for an LSTM layer with M neurons.
* The input data has N sequences of T examples, each with D features.
*
* In an LSTM, an internal cell state is maintained, additive
* interactions operate over the cell state at each timestep, and
* some amount of this cell state is exposed as output at each
* timestep. Additionally, the output of the previous timestep is fed
* back in as an additional input at the current timestep.
*
* Reference:
* - Long Short-Term Memory, Hochreiter, 1997
* - http://deeplearning.cs.cmu.edu/pdfs/Hochreiter97_lstm.pdf
*
* Inputs:
* - X: Inputs, of shape (N, T*D).
* - W: Weights, of shape (D+M, 4M).
* - b: Biases, of shape (1, 4M).
* - T: Length of example sequences (number of timesteps).
* - D: Dimensionality of the input features (number of features).
* - return_sequences: Whether to return `out` at all timesteps,
* or just for the final timestep.
* - out0: Outputs from previous timestep, of shape (N, M).
* Note: This is *optional* and could just be an empty matrix.
* - c0: Initial cell state, of shape (N, M).
* Note: This is *optional* and could just be an empty matrix.
*
* Outputs:
* - out: If `return_sequences` is True, outputs for all timesteps,
* of shape (N, T*M). Else, outputs for the final timestep, of
* shape (N, M).
* - c: Cell state for final timestep, of shape (N, M).
* - cache_out: Cache of outputs, of shape (T, N*M).
* Note: This is used for performance during training.
* - cache_c: Cache of cell state, of shape (T, N*M).
* Note: This is used for performance during training.
* - cache_ifog: Cache of intermediate values, of shape (T, N*4M).
* Note: This is used for performance during training.
*/
N = nrow(X)
M = as.integer(ncol(W)/4)
out_prev = out0
c_prev = c0
c = c_prev
if (return_sequences) {
out = matrix(0, rows=N, cols=T*M)
}
else {
out = matrix(0, rows=N, cols=M)
}
# caches to be used during the backward pass for performance
cache_out = matrix(0, rows=T, cols=N*M)
cache_c = matrix(0, rows=T, cols=N*M)
cache_ifog = matrix(0, rows=T, cols=N*4*M)
for (t in 1:T) { # each timestep
X_t = X[,(t-1)*D+1:t*D] # shape (N, D)
input = cbind(X_t, out_prev) # shape (N, D+M)
ifog = input %*% W + b # input, forget, output, and g gates; shape (N, 4M)
tmp = sigmoid::forward(ifog[,1:3*M]) # i,f,o gates squashed with sigmoid
ifog[,1:3*M] = tmp
tmp = tanh::forward(ifog[,3*M+1:4*M]) # g gate squashed with tanh
ifog[,3*M+1:4*M] = tmp
# c_t = f*prev_c + i*g
c = ifog[,M+1:2*M]*c_prev + ifog[,1:M]*ifog[,3*M+1:4*M] # shape (N, M)
# out_t = o*tanh(c)
tmp = tanh::forward(c)
out_t = ifog[,2*M+1:3*M] * tmp # shape (N, M)
# store
if (return_sequences) {
out[,(t-1)*M+1:t*M] = out_t
}
else {
out = out_t
}
out_prev = out_t
c_prev = c
cache_out[t,] = matrix(out_t, rows=1, cols=N*M) # reshape
cache_c[t,] = matrix(c, rows=1, cols=N*M) # reshape
cache_ifog[t,] = matrix(ifog, rows=1, cols=N*4*M) # reshape
}
}
backward = function(matrix[double] dout, matrix[double] dc,
matrix[double] X, matrix[double] W, matrix[double] b, int T, int D,
boolean given_sequences, matrix[double] out0, matrix[double] c0,
matrix[double] cache_out, matrix[double] cache_c, matrix[double] cache_ifog)
return (matrix[double] dX, matrix[double] dW, matrix[double] db,
matrix[double] dout0, matrix[double] dc0) {
/*
* Computes the backward pass for an LSTM layer with M neurons.
*
* Inputs:
* - dout: Gradient wrt `out`. If `given_sequences` is `True`,
* contains gradients on outputs for all timesteps, of
* shape (N, T*M). Else, contains the gradient on the output
* for the final timestep, of shape (N, M).
* - dc: Gradient wrt `c` (from later in time), of shape (N, M).
* This would come from later in time if the cell state was used
* downstream as the initial cell state for another LSTM layer.
* Typically, this would be used when a sequence was cut at
* timestep `T` and then continued in the next batch. If `c`
* was not used downstream, then `dc` would be an empty matrix.
* - X: Inputs, of shape (N, T*D).
* - W: Weights, of shape (D+M, 4M).
* - b: Biases, of shape (1, 4M).
* - T: Length of example sequences (number of timesteps).
* - D: Dimensionality of the input features.
* - given_sequences: Whether `dout` is for all timesteps,
* or just for the final timestep. This is based on whether
* `return_sequences` was true in the forward pass.
* - out0: Outputs from previous timestep, of shape (N, M).
* Note: This is *optional* and could just be an empty matrix.
* - c0: Initial cell state, of shape (N, M).
* Note: This is *optional* and could just be an empty matrix.
* - cache_out: Cache of outputs, of shape (T, N*M).
* Note: This is used for performance during training.
* - cache_c: Cache of cell state, of shape (T, N*M).
* Note: This is used for performance during training.
* - cache_ifog: Cache of intermediate values, of shape (T, N*4*M).
* Note: This is used for performance during training.
*
* Outputs:
* - dX: Gradient wrt `X`, of shape (N, T*D).
* - dW: Gradient wrt `W`, of shape (D+M, 4M).
* - db: Gradient wrt `b`, of shape (1, 4M).
* - dout0: Gradient wrt `out0`, of shape (N, M).
* - dc0: Gradient wrt `c0`, of shape (N, M).
*/
N = nrow(X)
M = as.integer(ncol(W)/4)
dX = matrix(0, rows=N, cols=T*D)
dW = matrix(0, rows=D+M, cols=4*M)
db = matrix(0, rows=1, cols=4*M)
dout0 = matrix(0, rows=N, cols=M)
dc0 = matrix(0, rows=N, cols=M)
dct = dc
if (!given_sequences) {
# only given dout for output at final timestep, so prepend empty douts for all other timesteps
dout = cbind(matrix(0, rows=N, cols=(T-1)*D), dout) # shape (N, T*M)
}
t = T
for (iter in 1:T) { # each timestep in reverse order
X_t = X[,(t-1)*D+1:t*D] # shape (N, D)
dout_t = dout[,(t-1)*M+1:t*M] # shape (N, M)
out_t = matrix(cache_out[t,], rows=N, cols=M) # shape (N, M)
ct = matrix(cache_c[t,], rows=N, cols=M) # shape (N, M)
if (t == 1) {
out_prev = out0 # shape (N, M)
c_prev = c0 # shape (N, M)
}
else {
out_prev = matrix(cache_out[t-1,], rows=N, cols=M) # shape (N, M)
c_prev = matrix(cache_c[t-1,], rows=N, cols=M) # shape (N, M)
}
input = cbind(X_t, out_prev) # shape (N, D+M)
ifog = matrix(cache_ifog[t,], rows=N, cols=4*M)
i = ifog[,1:M] # input gate, shape (N, M)
f = ifog[,M+1:2*M] # forget gate, shape (N, M)
o = ifog[,2*M+1:3*M] # output gate, shape (N, M)
g = ifog[,3*M+1:4*M] # g gate, shape (N, M)
tmp = tanh::backward(dout_t, ct)
dct = dct + o*tmp # shape (N, M)
tmp = tanh::forward(ct)
do = tmp * dout_t # output gate, shape (N, M)
df = c_prev * dct # forget gate, shape (N, M)
dc_prev = f * dct # shape (N, M)
di = g * dct # input gate, shape (N, M)
dg = i * dct # g gate, shape (N, M)
di_raw = i * (1-i) * di
df_raw = f * (1-f) * df
do_raw = o * (1-o) * do
dg_raw = (1-g^2) * dg
difog_raw = cbind(di_raw, cbind(df_raw, cbind(do_raw, dg_raw))) # shape (N, 4M)
dW = dW + t(input) %*% difog_raw # shape (D+M, 4M)
db = db + colSums(difog_raw) # shape (1, 4M)
dinput = difog_raw %*% t(W) # shape (N, D+M)
dX[,(t-1)*D+1:t*D] = dinput[,1:D]
dout_prev = dinput[,D+1:D+M] # shape (N, M)
if (t == 1) {
dout0 = dout_prev # shape (N, M)
dc0 = dc_prev # shape (N, M)
}
else {
dout[,(t-2)*M+1:(t-1)*M] = dout[,(t-2)*M+1:(t-1)*M] + dout_prev # shape (N, M)
dct = dc_prev # shape (N, M)
}
t = t - 1
}
}
init = function(int N, int D, int M)
return (matrix[double] W, matrix[double] b, matrix[double] out0, matrix[double] c0) {
/*
* Initialize the parameters of this layer.
*
* Note: This is just a convenience function, and parameters
* may be initialized manually if needed.
*
* We use the Glorot uniform heuristic which limits the magnification
* of inputs/gradients during forward/backward passes by scaling
* uniform weights by a factor of sqrt(6/(fan_in + fan_out)).
* - http://jmlr.org/proceedings/papers/v9/glorot10a/glorot10a.pdf
*
* Inputs:
* - N: Number of examples in batch.
* - D: Dimensionality of the input features (number of features).
* - M: Number of neurons in this layer.
*
* Outputs:
* - W: Weights, of shape (D+M, 4M).
* - b: Biases, of shape (1, 4M).
* - out0: Empty previous timestep output matrix, of shape (N, M).
* - c0: Empty initial cell state matrix, of shape (N, M).
*/
fan_in = D+M
fan_out = 4*M
scale = sqrt(6/(fan_in+fan_out))
W = rand(rows=D+M, cols=4*M, min=-scale, max=scale, pdf="uniform")
b = matrix(0, rows=1, cols=4*M)
out0 = matrix(0, rows=N, cols=M)
c0 = matrix(0, rows=N, cols=M)
}