71 lines
3.3 KiB
Python
71 lines
3.3 KiB
Python
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from collections import namedtuple
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import keras
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from keras.engine import Input, Model as KerasModel
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from keras.layers import Conv1D, Dense, Dropout, Embedding, GlobalAveragePooling1D, GlobalMaxPooling1D, TimeDistributed
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import dataset
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Model = namedtuple("Model", ["in_domains", "in_flows", "out_client", "out_server"])
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def get_embedding(embedding_size, input_length, filter_size, kernel_size, hidden_dims, drop_out=0.5):
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x = y = Input(shape=(input_length,))
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y = Embedding(input_dim=dataset.get_vocab_size(), output_dim=embedding_size)(y)
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y = Conv1D(filter_size, kernel_size=kernel_size, activation="relu")(y)
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y = Conv1D(filter_size, kernel_size=3, activation="relu")(y)
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y = Conv1D(filter_size, kernel_size=3, activation="relu")(y)
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y = GlobalAveragePooling1D()(y)
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y = Dense(hidden_dims, activation="relu")(y)
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return KerasModel(x, y)
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def get_model(cnnDropout, flow_features, domain_features, window_size, domain_length, cnn_dims, kernel_size,
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dense_dim, cnn, model_output="both"):
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ipt_domains = Input(shape=(window_size, domain_length), name="ipt_domains")
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encoded = TimeDistributed(cnn, name="domain_cnn")(ipt_domains)
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ipt_flows = Input(shape=(window_size, flow_features), name="ipt_flows")
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merged = keras.layers.concatenate([encoded, ipt_flows], -1)
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# CNN processing a small slides of flow windows
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y = Conv1D(filters=cnn_dims, kernel_size=kernel_size, activation="relu", padding="same",
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input_shape=(window_size, domain_features + flow_features))(merged)
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# remove temporal dimension by global max pooling
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y = GlobalMaxPooling1D()(y)
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y = Dropout(cnnDropout)(y)
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y = Dense(dense_dim, activation="relu")(y)
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y = Dense(dense_dim, activation="relu")(y)
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out_client = Dense(1, activation='sigmoid', name="client")(y)
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out_server = Dense(1, activation='sigmoid', name="server")(y)
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return Model(ipt_domains, ipt_flows, out_client, out_server)
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def get_new_model(dropout, flow_features, domain_features, window_size, domain_length, cnn_dims, kernel_size,
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dense_dim, cnn, model_output="both"):
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ipt_domains = Input(shape=(window_size, domain_length), name="ipt_domains")
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ipt_flows = Input(shape=(window_size, flow_features), name="ipt_flows")
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encoded = TimeDistributed(cnn, name="domain_cnn")(ipt_domains)
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merged = keras.layers.concatenate([encoded, ipt_flows], -1)
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y = Dense(dense_dim, activation="relu")(merged)
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y = Dense(dense_dim,
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activation="relu",
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name="dense_server")(y)
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out_server = Dense(1, activation="sigmoid", name="server")(y)
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merged = keras.layers.concatenate([merged, y], -1)
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# CNN processing a small slides of flow windows
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y = Conv1D(filters=cnn_dims,
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kernel_size=kernel_size,
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activation="relu",
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padding="same",
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input_shape=(window_size, domain_features + flow_features))(merged)
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# remove temporal dimension by global max pooling
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y = GlobalMaxPooling1D()(y)
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y = Dropout(dropout)(y)
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y = Dense(dense_dim, activation="relu")(y)
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y = Dense(dense_dim,
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activation="relu",
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name="dense_client")(y)
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out_client = Dense(1, activation='sigmoid', name="client")(y)
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return Model(ipt_domains, ipt_flows, out_client, out_server)
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