{ "cells": [ { "cell_type": "markdown", "metadata": {}, "source": [ "## RNN (Recurrent Neural Networks) 是什麼?\n", "\n", "循環神經網絡(RNN)是非常流行的模型,在NLP的很多任務中已經展示出了很大的威力。\n", "\n", "RNN背後的思想是利用信息序列間彼此的相關性。在傳統的神經網絡中,我們假設所有的輸入(包括輸出)之間是相互獨立的。對於很多任務來說,這樣的假設並不適當。 \n", "\n", "如果我們想預測一個序列中的下一個詞,我們最好能知道哪些詞在它前面。RNN之所以是循環的,是因為它針對序列中的每一個元素都執行相同的操作,每一個操作都依賴於之前的計算結果(state),換一種方式思考,可以認為RNN記憶了到當前為止已經計算過的信息。\n", "\n", "下面是RNN的一個典型結構圖:\n", "\n", "\n", "![](https://4.bp.blogspot.com/-U-b50pPNd_s/WQ8C-5g0siI/AAAAAAAAI8c/VCpWPA-z3Y8iTvLIhX6hlO83BqogFMu5ACLcB/s640/RNN2.png)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "為了使這些循環和狀態的概念更清楚,我們用Numpy來實現一個簡單的RNN。假設我們的RNN需要接受一個\"向量的序列(sequence of vectors)\"作為輸人(input), 這個\"向量的序列\"用一個2維的張量(timesteps, input_features)來表示。\n", "\n", "我們的RNN要迭代每一個\"時間步(timestep)\", 之後我們用\"t\"來表示\"時間步(timestep)\"。那某特定\"時間步(t)\"的輸入為\"X\"(input_feature" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 一個簡單RNN的pseudo-code:\n", "\n", "```\n", "state_t = 0 # 這是某一個\"時間步(timestep)\"的內部狀態(state)\n", "for input_t in input_sequence:\n", " output_t = f(input_t, state_t)\n", " state_t = output_t # 前一個處理過的輸出(output)變成新的狀態(state)\n", "```" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "我們可以進一步的細分其中的 \" f \" 這個函數的內容:\n", "> \" f \" 函數: 用來轉換輸入(input)與狀態(state)成為輸出(output),這個函數通過兩個矩陣W和U和一個偏向量(bias)進行參數化。" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 一個簡單RNN更詳細的pseudo-code:\n", "\n", "```\n", "state_t = 0 # 這是某一個\"時間步(timestep)\"的內部狀態(state)\n", "for input_t in input_sequence:\n", " output_t = activation(dot(W, input_t) + dot(U, state_t) + b)\n", " state_t = output_t # 前一個處理過的輸出(output)變成新的狀態(state)\n", "```" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 用Numpy實現的一個簡單RNN\n", "```\n", "timesteps = 100 # 輸入序列中的時間步數\n", "inputs_features = 32 # 輸入特徵空間的維度\n", "output_features = 64 # 輸出特徵空間的維度\n", "\n", "# 這是我們的輸入數據\n", "inputs = np.random.random((timesteps, features))\n", "\n", "# 這是我們的“初始狀態”:一個全零向量\n", "state_t = np.zeros((output_features,))\n", "\n", "# 創建隨機權重矩陣\n", "W = np.random.random((input_features, output_features)\n", "U = np.random.random((output_features, output_features)\n", "b = np.random.random((output_features,))\n", "\n", "successive_outputs = []\n", "for input_t in inputs: \n", " # 我們將輸入與當前狀態(即前一個輸出)組合以獲得當前輸出。\n", " output_t = np.tanh(np.dot(W, input_t) + np.dot(U, state_t) + b)\n", " \n", " # 我們將此輸出存儲在一個列表中。\n", " successive_outputs.append(output_t)\n", " \n", " # 我們更新下一個時間步的網絡“狀態”\n", " state_t = output_t\n", " \n", "# 最終輸出是2D張量(timesteps, output_features)\n", "final_output_sequence = np.concatenate(successive_outputs, axis=0)\n", "```\n", "\n", "![](https://3.bp.blogspot.com/-9cz6YIf-3Wk/WQ8C-7QNnOI/AAAAAAAAI8g/iFhXR9t3ii0UE9ZRXs425wR_HYJk9i7WgCLcB/s640/RNN1.png)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## Keras中的第一個循環神經層\n", "\n", "在Keras中的`SimpleRNN`神經層可視為上述Numpy簡單循環神經函式的實現。" ] }, { "cell_type": "code", "execution_count": 1, "metadata": {}, "outputs": [ { "name": "stderr", "output_type": "stream", "text": [ "Using TensorFlow backend.\n" ] }, { "data": { "text/plain": [ "'2.1.1'" ] }, "execution_count": 1, "metadata": {}, "output_type": "execute_result" } ], "source": [ "import keras\n", "keras.__version__" ] }, { "cell_type": "code", "execution_count": 2, "metadata": { "collapsed": true }, "outputs": [], "source": [ "from keras.layers import SimpleRNN" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "跟上述Numpy的RNN函式有一些些的不同: `SimpleRNN`像所有其他Keras神經層一樣,它會批次地處理序列(batches of sequences)資料,而不是像我們的Numpy示例中的單個序列。 這意味著它需要的張量結構形狀`(batch_size,timesteps,input_features)`的輸入,而不是`(timesteps, input_features)`。\n", "\n", "像Keras中的所有其它的循環神經層(recurrent layers)一樣,`SimpleRNN`可以用兩種不同的模式來運行:\n", "1. 它可以返回每個時間步的連續輸出的全部序列(一個形狀為`(batch_size,timesteps,output_features)`的3D張量)\n", "2. 或者它 可以僅返回每個輸入序列的最後一個輸出(一個形狀為`(batch_size,output_features)`的2D張量)。 \n", "\n", "這兩種模式由`return_sequences`構造函數參數控制。 我們來看一個例子:" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 使用SimpleRNN並返回最後一個狀態\n", "\n", "`return_sequences`預設為`False`\n", "\n", "![many-to-one](https://i.stack.imgur.com/QCnpU.jpg)" ] }, { "cell_type": "code", "execution_count": 3, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "_________________________________________________________________\n", "Layer (type) Output Shape Param # \n", "=================================================================\n", "embedding_1 (Embedding) (None, None, 32) 320000 \n", "_________________________________________________________________\n", "simple_rnn_1 (SimpleRNN) (None, 32) 2080 \n", "=================================================================\n", "Total params: 322,080\n", "Trainable params: 322,080\n", "Non-trainable params: 0\n", "_________________________________________________________________\n" ] } ], "source": [ "from keras.models import Sequential\n", "from keras.layers import Embedding, SimpleRNN\n", "\n", "model = Sequential()\n", "model.add(Embedding(10000, 32))\n", "model.add(SimpleRNN(32)) # return_sequences預設為False\n", "model.summary()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 使用SimpleRNN並返回完整的狀態序列\n", "\n", "把`return_sequences`設為`True`\n", "\n", "![many-to-many](https://i.stack.imgur.com/DiPyQ.jpg)" ] }, { "cell_type": "code", "execution_count": 4, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "_________________________________________________________________\n", "Layer (type) Output Shape Param # \n", "=================================================================\n", "embedding_2 (Embedding) (None, None, 32) 320000 \n", "_________________________________________________________________\n", "simple_rnn_2 (SimpleRNN) (None, None, 32) 2080 \n", "=================================================================\n", "Total params: 322,080\n", "Trainable params: 322,080\n", "Non-trainable params: 0\n", "_________________________________________________________________\n" ] } ], "source": [ "model = Sequential()\n", "model.add(Embedding(10000, 32))\n", "model.add(SimpleRNN(32, return_sequences=True)) # 把return_sequences設為True\n", "model.summary()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 將多個RNN圖層堆疊在一起\n", "\n", "為了增加神經網絡的表示能力,有時把多個RNN一個接一個地堆疊起來很有用。在這樣的設置中,我們必須讓所有的RNN中間層返回完整的序列:\n", "\n", "![rnn-stacking](https://leonardoaraujosantos.gitbooks.io/artificial-inteligence/content/image_folder_6/RNN_Stacking.png)" ] }, { "cell_type": "code", "execution_count": 5, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "_________________________________________________________________\n", "Layer (type) Output Shape Param # \n", "=================================================================\n", "embedding_3 (Embedding) (None, None, 32) 320000 \n", "_________________________________________________________________\n", "simple_rnn_3 (SimpleRNN) (None, None, 32) 2080 \n", "_________________________________________________________________\n", "simple_rnn_4 (SimpleRNN) (None, None, 32) 2080 \n", "_________________________________________________________________\n", "simple_rnn_5 (SimpleRNN) (None, None, 32) 2080 \n", "_________________________________________________________________\n", "simple_rnn_6 (SimpleRNN) (None, 32) 2080 \n", "=================================================================\n", "Total params: 328,320\n", "Trainable params: 328,320\n", "Non-trainable params: 0\n", "_________________________________________________________________\n" ] } ], "source": [ "model = Sequential()\n", "model.add(Embedding(10000, 32))\n", "model.add(SimpleRNN(32, return_sequences=True)) # 把return_sequences設為True\n", "model.add(SimpleRNN(32, return_sequences=True)) # 把return_sequences設為True\n", "model.add(SimpleRNN(32, return_sequences=True)) # 把return_sequences設為True\n", "model.add(SimpleRNN(32)) # 只有最後的RNN層只需要最後的output, 因此不必特別去設置\"return_sequences\"\n", "model.summary()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "現在讓我們嘗試在IMDB電影評論分類問題上使用這種模型。 首先,我們預處理數據:" ] }, { "cell_type": "code", "execution_count": 6, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "Loading data...\n", "25000 train sequences\n", "25000 test sequences\n", "Pad sequences (samples x time)\n", "input_train shape: (25000, 500)\n", "input_test shape: (25000, 500)\n" ] } ], "source": [ "from keras.datasets import imdb\n", "from keras.preprocessing import sequence\n", "\n", "max_features = 10000 # 要考慮作為特徵的語詞數量\n", "maxlen = 500 # 當句子的長度超過500個語詞的部份,就把它刪除掉\n", "batch_size = 32\n", "\n", "# 載入IMDB的資料\n", "print('Loading data...')\n", "(input_train, y_train), (input_test, y_test) = imdb.load_data(num_words=max_features)\n", "print(len(input_train), 'train sequences')\n", "print(len(input_test), 'test sequences')\n", "\n", "# 如果長度不夠的話就補空的\n", "print('Pad sequences (samples x time)')\n", "input_train = sequence.pad_sequences(input_train, maxlen=maxlen)\n", "input_test = sequence.pad_sequences(input_test, maxlen=maxlen)\n", "print('input_train shape:', input_train.shape)\n", "print('input_test shape:', input_test.shape)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "我們使用一個`Embedding`層和一個`SimpleRNN`層來訓練一個簡單的循環網絡(`RNN`):" ] }, { "cell_type": "code", "execution_count": 7, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "_________________________________________________________________\n", "Layer (type) Output Shape Param # \n", "=================================================================\n", "embedding_4 (Embedding) (None, None, 32) 320000 \n", "_________________________________________________________________\n", "simple_rnn_7 (SimpleRNN) (None, 32) 2080 \n", "_________________________________________________________________\n", "dense_1 (Dense) (None, 1) 33 \n", "=================================================================\n", "Total params: 322,113\n", "Trainable params: 322,113\n", "Non-trainable params: 0\n", "_________________________________________________________________\n", "Train on 20000 samples, validate on 5000 samples\n", "Epoch 1/10\n", "20000/20000 [==============================] - 37s 2ms/step - loss: 0.6397 - acc: 0.6175 - val_loss: 0.4824 - val_acc: 0.7774\n", "Epoch 2/10\n", "20000/20000 [==============================] - 36s 2ms/step - loss: 0.4124 - acc: 0.8239 - val_loss: 0.4232 - val_acc: 0.8078\n", "Epoch 3/10\n", "20000/20000 [==============================] - 35s 2ms/step - loss: 0.3003 - acc: 0.8791 - val_loss: 0.3664 - val_acc: 0.8384\n", "Epoch 4/10\n", "20000/20000 [==============================] - 36s 2ms/step - loss: 0.2471 - acc: 0.9030 - val_loss: 0.4129 - val_acc: 0.8166\n", "Epoch 5/10\n", "20000/20000 [==============================] - 35s 2ms/step - loss: 0.1776 - acc: 0.9362 - val_loss: 0.3848 - val_acc: 0.8702\n", "Epoch 6/10\n", "20000/20000 [==============================] - 35s 2ms/step - loss: 0.1285 - acc: 0.9546 - val_loss: 0.3807 - val_acc: 0.8682\n", "Epoch 7/10\n", "20000/20000 [==============================] - 38s 2ms/step - loss: 0.0847 - acc: 0.9715 - val_loss: 0.4244 - val_acc: 0.8522\n", "Epoch 8/10\n", "20000/20000 [==============================] - 35s 2ms/step - loss: 0.0498 - acc: 0.9843 - val_loss: 0.6897 - val_acc: 0.7588\n", "Epoch 9/10\n", "20000/20000 [==============================] - 35s 2ms/step - loss: 0.0357 - acc: 0.9881 - val_loss: 0.6835 - val_acc: 0.7824\n", "Epoch 10/10\n", "20000/20000 [==============================] - 35s 2ms/step - loss: 0.0275 - acc: 0.9915 - val_loss: 0.8700 - val_acc: 0.8058\n" ] } ], "source": [ "from keras.layers import Dense\n", "\n", "model = Sequential()\n", "model.add(Embedding(max_features, 32))\n", "model.add(SimpleRNN(32))\n", "model.add(Dense(1, activation='sigmoid'))\n", "\n", "model.summary()\n", "\n", "model.compile(optimizer='rmsprop', loss='binary_crossentropy', metrics=['acc'])\n", "history = model.fit(input_train, y_train,\n", " epochs=10,\n", " batch_size=128,\n", " validation_split=0.2)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "我們用圖表來看一下模型在訓練(training)和驗證(validation)的損失(loss)和準確性(accuracy):" ] }, { "cell_type": "code", "execution_count": 8, "metadata": {}, "outputs": [ { "data": { "image/png": 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SY7yvVSUpKcls2rTJ02EEpDOFJXzpaMrZfOQUQQKD2sYyoVcCwzo0IixUm3KU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\nZwczz5KScZZb+jSviZdTSimf4VIbvzF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xXD9453rY8TlUnl/L+9IuEfw8qSOvfLOfbUfy3Vy4Uh5g01zI2QmjHgZfP7ur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\n6Vh5peqi4a48WmWl4cvtmcx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"text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "import matplotlib.pyplot as plt\n", "\n", "acc = history.history['acc']\n", "val_acc = history.history['val_acc']\n", "loss = history.history['loss']\n", "val_loss = history.history['val_loss']\n", "\n", "epochs = range(len(acc))\n", "\n", "plt.plot(epochs, acc, label='Training acc')\n", "plt.plot(epochs, val_acc, label='Validation acc')\n", "plt.title('Training and validation accuracy')\n", "plt.legend()\n", "\n", "plt.figure()\n", "\n", "plt.plot(epochs, loss, label='Training loss')\n", "plt.plot(epochs, val_loss, label='Validation loss')\n", "plt.title('Training and validation loss')\n", "plt.legend()\n", "\n", "plt.show()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "使用`SimpleRNN`我們對這個數據集獲得了81%的測試精度。 這個網絡模型表現不算太好,部分問題是我們的輸入只考慮了前500個語詞而不是考慮所有序列語詞。 別外的一個問題是`SimpleRNN`在處理長序列(如文本)方面表現不太好(有梯度消失或梯度爆炸的現象)。我們來看看其它更高級的神經圖層。" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 了解長短期記憶模型(long short-term memory,LSTM)與 GRU\n", "\n", "`SimpleRNN`不是Keras唯一可用的RNN層:在Keras中還有`LSTM`和`GRU`。 在實務中,你將永遠使用其中的一個,`SimpleRNN`一般來說太簡單了,以至於沒有任何實際用途。\n", "\n", "LSTM(long short-term memory單元(cell)使用了輸入閘(input gate),忘記閘(forget get)和輸出閘(output gate)來解決原本的RNN單元(cell)會面臨的梯度消失或梯度爆炸的現象。\n", "\n", "![lstm_vs_rnn](https://cdn-images-1.medium.com/max/1600/0*kl2Cd89GGQClOS48.)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "這些閘每個都有自己的一組權重值。 整個LSTM單元(cell)是可微分的(意思是我們計算梯度並使用它們來更新權重),所以我們可以使用反向(back-propagation)來迭代訓練它。基本上,LSTM單元為我們提供遺忘(forget),記憶(memory)和關注(attention)的機制。 \n", "\n", "![lstm_cell](https://cdn-images-1.medium.com/max/1600/0*LyfY3Mow9eCYlj7o.)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "## 一個具體的LSTM範例\n", "\n", "現在讓我們看看LSTM如何解決實際的問題:我們將使用LSTM層建立一個模型,並在IMDB數據上進行訓練。 這個網絡設計類似於我們剛剛介紹的那個`SimpleRNN`。 我們只指定LSTM圖層的輸出維度,並將其他所有參數(有很多)留給Keras默認值。 Keras具有良好的默認設置,並且事情幾乎總是“正常工作”,而無需我們花太多時間手動調整參數。" ] }, { "cell_type": "code", "execution_count": 9, "metadata": {}, "outputs": [ { "name": "stdout", "output_type": "stream", "text": [ "_________________________________________________________________\n", "Layer (type) Output Shape Param # \n", "=================================================================\n", "embedding_5 (Embedding) (None, None, 32) 320000 \n", "_________________________________________________________________\n", "lstm_1 (LSTM) (None, 32) 8320 \n", "_________________________________________________________________\n", "dense_2 (Dense) (None, 1) 33 \n", "=================================================================\n", "Total params: 328,353\n", "Trainable params: 328,353\n", "Non-trainable params: 0\n", "_________________________________________________________________\n", "Train on 20000 samples, validate on 5000 samples\n", "Epoch 1/10\n", "20000/20000 [==============================] - 117s 6ms/step - loss: 0.5242 - acc: 0.7536 - val_loss: 0.3850 - val_acc: 0.8578\n", "Epoch 2/10\n", "20000/20000 [==============================] - 115s 6ms/step - loss: 0.3017 - acc: 0.8801 - val_loss: 0.3114 - val_acc: 0.8830\n", "Epoch 3/10\n", "20000/20000 [==============================] - 108s 5ms/step - loss: 0.2374 - acc: 0.9090 - val_loss: 0.2728 - val_acc: 0.8932\n", "Epoch 4/10\n", "20000/20000 [==============================] - 109s 5ms/step - loss: 0.2010 - acc: 0.9248 - val_loss: 0.4256 - val_acc: 0.8672\n", "Epoch 5/10\n", "20000/20000 [==============================] - 113s 6ms/step - loss: 0.1754 - acc: 0.9370 - val_loss: 0.3142 - val_acc: 0.8886\n", "Epoch 6/10\n", "20000/20000 [==============================] - 110s 6ms/step - loss: 0.1535 - acc: 0.9447 - val_loss: 0.4495 - val_acc: 0.8726\n", "Epoch 7/10\n", "20000/20000 [==============================] - 112s 6ms/step - loss: 0.1387 - acc: 0.9506 - val_loss: 0.4064 - val_acc: 0.8382\n", "Epoch 8/10\n", "20000/20000 [==============================] - 113s 6ms/step - loss: 0.1286 - acc: 0.9551 - val_loss: 0.3430 - val_acc: 0.8828\n", "Epoch 9/10\n", "20000/20000 [==============================] - 109s 5ms/step - loss: 0.1157 - acc: 0.9598 - val_loss: 0.4107 - val_acc: 0.8504\n", "Epoch 10/10\n", "20000/20000 [==============================] - 108s 5ms/step - loss: 0.1057 - acc: 0.9641 - val_loss: 0.3868 - val_acc: 0.8808\n" ] } ], "source": [ "from keras.layers import LSTM\n", "\n", "model = Sequential()\n", "model.add(Embedding(max_features, 32))\n", "model.add(LSTM(32))\n", "model.add(Dense(1, activation='sigmoid'))\n", "\n", "model.summary()\n", "\n", "model.compile(optimizer='rmsprop',\n", " loss='binary_crossentropy',\n", " metrics=['acc'])\n", "history = model.fit(input_train, y_train,\n", " epochs=10,\n", " batch_size=128,\n", " validation_split=0.2)" ] }, { "cell_type": "code", "execution_count": 12, "metadata": {}, "outputs": [ { "data": { "image/png": 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pdUoaanD3CeA5EdkIbAF+AMpP5gmMMXOBuQCJiYmmgeLyCsWl5TzwwRYW/3CA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\nkj54a+I/nAJvXGqvHOw9wV5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hcO2HdibrGwNsUvJFKyba4mn1W8JNk+0w0LomAo3LE/1SuPVbW5JjVw5MuMv2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\nkgnXjocbv7SlDCbeAy+fDas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RoUFsBA1iIzgrPbHKc8YY9h4uZmP+ITZXSvob8w8xZdkO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\nYII=\n", "text/plain": [ "" ] }, "metadata": {}, "output_type": "display_data" } ], "source": [ "acc = history.history['acc']\n", "val_acc = history.history['val_acc']\n", "loss = history.history['loss']\n", "val_loss = history.history['val_loss']\n", "\n", "epochs = range(len(acc))\n", "\n", "plt.plot(epochs, acc, label='Training acc')\n", "plt.plot(epochs, val_acc, label='Validation acc')\n", "plt.title('Training and validation accuracy')\n", "plt.legend()\n", "\n", "plt.figure()\n", "\n", "plt.plot(epochs, loss, label='Training loss')\n", "plt.plot(epochs, val_loss, label='Validation loss')\n", "plt.title('Training and validation loss')\n", "plt.legend()\n", "\n", "plt.show()" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "使用`LSTM`對這個數據集獲得了88%的測試精度, 相比`SimpleRNN`來說效果的確好多了。" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "### 參考: \n", "* [fchollet: deep-learning-with-python-notebooks (原文)](https://github.com/fchollet/deep-learning-with-python-notebooks/blob/master/6.2-understanding-recurrent-neural-networks.ipynb)\n", "* [Keras官網](http://keras.io/)" ] }, { "cell_type": "markdown", "metadata": {}, "source": [ "MIT License\n", "\n", "Copyright (c) 2017 François Chollet\n", "\n", "Permission is hereby granted, free of charge, to any person obtaining a copy\n", "of this software and associated documentation files (the \"Software\"), to deal\n", "in the Software without restriction, including without limitation the rights\n", "to use, copy, modify, merge, publish, distribute, sublicense, and/or sell\n", "copies of the Software, and to permit persons to whom the Software is\n", "furnished to do so, subject to the following conditions:\n", "\n", "The above copyright notice and this permission notice shall be included in all\n", "copies or substantial portions of the Software.\n", "\n", "THE SOFTWARE IS PROVIDED \"AS IS\", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR\n", "IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,\n", "FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE\n", "AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER\n", "LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,\n", "OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE\n", "SOFTWARE." ] }, { "cell_type": "code", "execution_count": null, "metadata": { "collapsed": true }, "outputs": [], "source": [] } ], "metadata": { "kernelspec": { "display_name": "Python 3", "language": "python", "name": "python3" }, "language_info": { "codemirror_mode": { "name": "ipython", "version": 3 }, "file_extension": ".py", "mimetype": "text/x-python", "name": "python", "nbconvert_exporter": "python", "pygments_lexer": "ipython3", "version": "3.5.3" } }, "nbformat": 4, "nbformat_minor": 2 }