{ "
This predicts the tokens and gives the lof softmax of those. You don't need this if you are using _^_0_^_.
\n": "\n\u3053\u308c\u306b\u3088\u308a\u30c8\u30fc\u30af\u30f3\u304c\u4e88\u6e2c\u3055\u308c\u3001\u305d\u306e\u30c8\u30fc\u30af\u30f3\u306e of softmax \u304c\u7b97\u51fa\u3055\u308c\u307e\u3059\u3002\u3092\u4f7f\u7528\u3057\u3066\u3044\u308b\u5834\u5408\u306f\u3053\u308c\u306f\u5fc5\u8981\u3042\u308a\u307e\u305b\u3093_^_0_^_\u3002
\n", "\nThis can act as an encoder layer or a decoder layer.
\n\ud83d\uddd2 Some implementations, including the paper seem to have differences in where the layer-normalization is done. Here we do a layer normalization before attention and feed-forward networks, and add the original residual vectors. Alternative is to do a layer normalization after adding the residuals. But we found this to be less stable when training. We found a detailed discussion about this in the paper On Layer Normalization in the Transformer Architecture.
\n": "\n\u3053\u308c\u306f\u3001\u30a8\u30f3\u30b3\u30fc\u30c0\u5c64\u307e\u305f\u306f\u30c7\u30b3\u30fc\u30c0\u5c64\u3068\u3057\u3066\u6a5f\u80fd\u3067\u304d\u307e\u3059\u3002
\n\ud83d\uddd2 \u8ad6\u6587\u3092\u542b\u3080\u4e00\u90e8\u306e\u5b9f\u88c5\u3067\u306f\u3001\u5c64\u306e\u6b63\u898f\u5316\u304c\u884c\u308f\u308c\u308b\u5834\u6240\u306b\u9055\u3044\u304c\u3042\u308b\u3088\u3046\u3067\u3059\u3002\u3053\u3053\u3067\u306f\u3001\u30a2\u30c6\u30f3\u30b7\u30e7\u30f3\u30cd\u30c3\u30c8\u30ef\u30fc\u30af\u3068\u30d5\u30a3\u30fc\u30c9\u30d5\u30a9\u30ef\u30fc\u30c9\u30cd\u30c3\u30c8\u30ef\u30fc\u30af\u306e\u524d\u306b\u5c64\u306e\u6b63\u898f\u5316\u3092\u884c\u3044\u3001\u5143\u306e\u6b8b\u5dee\u30d9\u30af\u30c8\u30eb\u3092\u8ffd\u52a0\u3057\u307e\u3059\u3002\u5225\u306e\u65b9\u6cd5\u306f\u3001\u6b8b\u5dee\u3092\u8ffd\u52a0\u3057\u305f\u5f8c\u306b\u5c64\u306e\u6b63\u898f\u5316\u3092\u884c\u3046\u3053\u3068\u3067\u3059\u3002\u3057\u304b\u3057\u3001\u30c8\u30ec\u30fc\u30cb\u30f3\u30b0\u4e2d\u306f\u5b89\u5b9a\u6027\u304c\u4f4e\u3044\u3053\u3068\u304c\u308f\u304b\u308a\u307e\u3057\u305f\u3002\u3053\u308c\u306b\u3064\u3044\u3066\u306e\u8a73\u7d30\u306a\u8b70\u8ad6\u306f\u3001\u300c\u30c8\u30e9\u30f3\u30b9\u30d5\u30a9\u30fc\u30de\u30fc\u30a2\u30fc\u30ad\u30c6\u30af\u30c1\u30e3\u306b\u304a\u3051\u308b\u5c64\u6b63\u898f\u5316\u306b\u3064\u3044\u3066\u300d\u3068\u3044\u3046\u8ad6\u6587\u306b\u8a18\u8f09\u3055\u308c\u3066\u3044\u307e\u3059
\u3002\n", "Add the feed-forward results back
\n": "\u30d5\u30a3\u30fc\u30c9\u30d5\u30a9\u30ef\u30fc\u30c9\u306e\u7d50\u679c\u3092\u8ffd\u52a0\u3057\u76f4\u3059
\n", "Add the self attention results
\n": "\u30bb\u30eb\u30d5\u30a2\u30c6\u30f3\u30b7\u30e7\u30f3\u306e\u7d50\u679c\u3092\u8ffd\u52a0
\n", "Add the source attention results
\n": "\u30bd\u30fc\u30b9\u30a2\u30c6\u30f3\u30b7\u30e7\u30f3\u7d50\u679c\u306e\u8ffd\u52a0
\n", "Attention to source. i.e. keys and values are from source
\n": "\u30bd\u30fc\u30b9\u306b\u6ce8\u610f\u3002\u3064\u307e\u308a\u3001\u30ad\u30fc\u3068\u5024\u306f\u30bd\u30fc\u30b9\u304b\u3089\u306e\u3082\u306e\u3067\u3059
\n", "Final normalization layer
\n": "\u6700\u7d42\u6b63\u898f\u5316\u30ec\u30a4\u30e4\u30fc
\n", "Finally, normalize the vectors
\n": "\u6700\u5f8c\u306b\u3001\u30d9\u30af\u30c8\u30eb\u3092\u6b63\u898f\u5316\u3057\u307e\u3059\u3002
\n", "If a source is provided, get results from attention to source. This is when you have a decoder layer that pays attention to encoder outputs
\n": "\u30bd\u30fc\u30b9\u304c\u63d0\u4f9b\u3055\u308c\u3066\u3044\u308b\u5834\u5408\u306f\u3001\u30bd\u30fc\u30b9\u306b\u6ce8\u76ee\u3057\u3066\u7d50\u679c\u3092\u53d6\u5f97\u3057\u307e\u3059\u3002\u3053\u308c\u306f\u3001\u30a8\u30f3\u30b3\u30fc\u30c0\u30fc\u51fa\u529b\u306b\u6ce8\u76ee\u3059\u308b\u30c7\u30b3\u30fc\u30c0\u30fc\u30ec\u30a4\u30e4\u30fc\u304c\u3042\u308b\u5834\u5408\u3067\u3059
\u3002\n", "Make copies of the transformer layer
\n": "\u30c8\u30e9\u30f3\u30b9\u30ec\u30a4\u30e4\u30fc\u306e\u30b3\u30d4\u30fc\u3092\u4f5c\u6210
\n", "Normalize for feed-forward
\n": "\u30d5\u30a3\u30fc\u30c9\u30d5\u30a9\u30ef\u30fc\u30c9\u7528\u306b\u6b63\u898f\u5316
\n", "Normalize the vectors before doing self attention
\n": "\u30bb\u30eb\u30d5\u30a2\u30c6\u30f3\u30b7\u30e7\u30f3\u3092\u884c\u3046\u524d\u306b\u30d9\u30af\u30c8\u30eb\u3092\u6b63\u898f\u5316\u3057\u3066\u304f\u3060\u3055\u3044
\n", "Normalize vectors
\n": "\u30d9\u30af\u30c8\u30eb\u3092\u6b63\u898f\u5316
\n", "Pass through the feed-forward network
\n": "\u30d5\u30a3\u30fc\u30c9\u30d5\u30a9\u30ef\u30fc\u30c9\u30cd\u30c3\u30c8\u30ef\u30fc\u30af\u3092\u901a\u904e
\n", "Run encodings and targets through decoder
\n": "\u30c7\u30b3\u30fc\u30c0\u30fc\u306b\u3088\u308b\u30a8\u30f3\u30b3\u30fc\u30c7\u30a3\u30f3\u30b0\u3068\u30bf\u30fc\u30b2\u30c3\u30c8\u306e\u5b9f\u884c
\n", "Run the source through encoder
\n": "\u30bd\u30fc\u30b9\u3092\u30a8\u30f3\u30b3\u30fc\u30c0\u3067\u5b9f\u884c
\n", "Run through each transformer layer
\n": "\u5404\u5909\u5727\u5668\u5c64\u306b\u901a\u3059
\n", "Run through self attention, i.e. keys and values are from self
\n": "\u81ea\u5df1\u6ce8\u610f\u3092\u5411\u3051\u308b\u3002\u3064\u307e\u308a\u3001\u30ad\u30fc\u3068\u5024\u306f\u81ea\u5df1\u304b\u3089\u306e\u3082\u306e\u3060
\n", "Save the input to the feed forward layer if specified
\n": "\u6307\u5b9a\u3055\u308c\u3066\u3044\u308b\u5834\u5408\u3001\u5165\u529b\u3092\u30d5\u30a3\u30fc\u30c9\u30d5\u30a9\u30ef\u30fc\u30c9\u5c64\u306b\u4fdd\u5b58\u3057\u307e\u3059
\n", "This was important from their code. Initialize parameters with Glorot / fan_avg.
\n": "\u3053\u308c\u306f\u5f7c\u3089\u306e\u30b3\u30fc\u30c9\u304b\u3089\u3059\u308b\u3068\u91cd\u8981\u3067\u3057\u305f\u3002Glorot /fan_avg \u3092\u4f7f\u7528\u3057\u3066\u30d1\u30e9\u30e1\u30fc\u30bf\u30fc\u3092\u521d\u671f\u5316\u3057\u307e\u3059
\u3002\n", "Whether to save input to the feed forward layer
\n": "\u5165\u529b\u3092\u30d5\u30a3\u30fc\u30c9\u30d5\u30a9\u30ef\u30fc\u30c9\u5c64\u306b\u4fdd\u5b58\u3059\u308b\u304b\u3069\u3046\u304b
\n", "