# How to compute gradients with tf.scatter_sub?

When implementing lambda-opt(an algorithm published on KDD'19) in tensorflow, I came across a problem to compute gradients with tf.scatter_sub

θ refers to an embedding matrix for docid. The formulation is

``````delta = theta_grad_no_reg.values * lr + 2 * lr * cur_scale * cur_theta
``````

then I use θ(t+1) for some computation. Finally, I want to compute gradients with respect to λ, not θ.

I wrote a demo like this:

``````import tensorflow as tf

w = tf.constant([[1.0], [2.0], [3.0]], dtype=tf.float32)
y = tf.constant([5.0], dtype=tf.float32)

# θ
emb_matrix = tf.get_variable("embedding_name", shape=(10, 3),
initializer=tf.random_normal_initializer(),dtype=tf.float32)
# get one line emb
cur_emb=tf.nn.embedding_lookup(emb_matrix,)
# The λ matrix
doc_lambda = tf.get_variable(name='docid_lambda', shape=(10, 3),
initializer=tf.random_normal_initializer(), dtype=tf.float32)
# get one line λ
cur_lambda=tf.nn.embedding_lookup(doc_lambda, )

# θ(t+1) Tensor("ScatterSub:0", shape=(10, 3), dtype=float32_ref)
next_emb_matrix=tf.scatter_sub(emb_matrix, , (cur_emb *cur_lambda))
# do some compute with θ(t+1) Tensor ,not Variable
next_cur_emb=tf.nn.embedding_lookup(next_emb_matrix,)

y_ = tf.matmul(next_cur_emb, w)
loss = tf.reduce_mean((y - y_) ** 2)
• I am not familiar with `tf.scatter_sub` but I do know you can get gradients with `tf.GradientTape()`. You do something like `tape.gradients()` and you pass the loss and your train variables. But I am also not sure which tf version you are using. Jan 16, 2020 at 9:39