提交 28682325 编写于 作者: D Dang Qingqing

Fix row_conv doc

test=develop
上级 c00ed19d
...@@ -109,23 +109,23 @@ from future subsequences in a computationally efficient manner to improve ...@@ -109,23 +109,23 @@ from future subsequences in a computationally efficient manner to improve
unidirectional recurrent neural networks. The row convolution operator is unidirectional recurrent neural networks. The row convolution operator is
different from the 1D sequence convolution, and is computed as follows: different from the 1D sequence convolution, and is computed as follows:
Given an input sequence $in$ of length $t$ and input dimension $d$, Given an input sequence $X$ of length $t$ and input dimension $D$,
and a filter ($W$) of size $context \times d$, and a filter ($W$) of size $context \times D$,
the output sequence is convolved as: the output sequence is convolved as:
$$ $$
out_{i, :} = \\sum_{j=i}^{i + context} in_{j,:} \\cdot W_{i-j, :} out_{i} = \\sum_{j=i}^{i + context - 1} X_{j} \\cdot W_{j-i}
$$ $$
In the above equation: In the above equation:
* $Out_{i}$: The i-th row of output variable with shape [1, D]. * $Out_{i}$: The i-th row of output variable with shape [1, D].
* $\\tau$: Future context size. * $context$: Future context size.
* $X_{j}$: The j-th row of input variable with shape [1, D]. * $X_{j}$: The j-th row of input variable with shape [1, D].
* $W_{i-j}$: The (i-j)-th row of parameters with shape [1, D]. * $W_{j-i}$: The (j-i)-th row of parameters with shape [1, D].
More details about row_conv please refer to More details about row_conv please refer to
the design document the design document
......
Markdown is supported
0% .
You are about to add 0 people to the discussion. Proceed with caution.
先完成此消息的编辑!
想要评论请 注册