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op {
graph_op_name: "SparseApplyAdagrad"
in_arg {
name: "var"
description: <<END
Should be from a Variable().
END
}
in_arg {
name: "accum"
description: <<END
Should be from a Variable().
END
}
in_arg {
name: "lr"
description: <<END
Learning rate. Must be a scalar.
END
}
in_arg {
name: "grad"
description: <<END
The gradient.
END
}
in_arg {
name: "indices"
description: <<END
A vector of indices into the first dimension of var and accum.
END
}
out_arg {
name: "out"
description: <<END
Same as "var".
END
}
attr {
name: "use_locking"
description: <<END
If `True`, updating of the var and accum tensors will be protected
by a lock; otherwise the behavior is undefined, but may exhibit less
contention.
END
}
summary: "Update relevant entries in \'*var\' and \'*accum\' according to the adagrad scheme."
description: <<END
That is for rows we have grad for, we update var and accum as follows:
$$accum += grad * grad$$
$$var -= lr * grad * (1 / sqrt(accum))$$
END
}
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