• 循环神经网络-LSTM


    参考
    长期以来,隐变量模型存在着长期信息保存和短期输入缺失的问题。 解决这一问题的最早方法之一是长短期存储器(long short-term memory,LSTM) (Hochreiter and Schmidhuber, 1997)。 它有许多与门控循环单元( 9.1节)一样的属性。 有趣的是,长短期记忆网络的设计比门控循环单元稍微复杂一些, 却比门控循环单元早诞生了近20年。

    从零开始实现

    import torch
    from torch import nn
    from d2l import torch as d2l
    
    batch_size, num_steps = 32, 35
    train_iter, vocab = d2l.load_data_time_machine(batch_size, num_steps)
    
    def get_lstm_params(vocab_size, num_hiddens, device):
        num_inputs = num_outputs = vocab_size
    
        def normal(shape):
            return torch.randn(size=shape, device=device)*0.01
    
        def three():
            return (normal((num_inputs, num_hiddens)),
                    normal((num_hiddens, num_hiddens)),
                    torch.zeros(num_hiddens, device=device))
    
        W_xi, W_hi, b_i = three()  # 输入门参数
        W_xf, W_hf, b_f = three()  # 遗忘门参数
        W_xo, W_ho, b_o = three()  # 输出门参数
        W_xc, W_hc, b_c = three()  # 候选记忆元参数
        # 输出层参数
        W_hq = normal((num_hiddens, num_outputs))
        b_q = torch.zeros(num_outputs, device=device)
        # 附加梯度
        params = [W_xi, W_hi, b_i, W_xf, W_hf, b_f, W_xo, W_ho, b_o, W_xc, W_hc,
                  b_c, W_hq, b_q]
        for param in params:
            param.requires_grad_(True)
        return params
    def init_lstm_state(batch_size, num_hiddens, device):
        return (torch.zeros((batch_size, num_hiddens), device=device),
                torch.zeros((batch_size, num_hiddens), device=device))
    def lstm(inputs, state, params):
        [W_xi, W_hi, b_i, W_xf, W_hf, b_f, W_xo, W_ho, b_o, W_xc, W_hc, b_c,
         W_hq, b_q] = params
        (H, C) = state
        outputs = []
        for X in inputs:
            I = torch.sigmoid((X @ W_xi) + (H @ W_hi) + b_i)
            F = torch.sigmoid((X @ W_xf) + (H @ W_hf) + b_f)
            O = torch.sigmoid((X @ W_xo) + (H @ W_ho) + b_o)
            C_tilda = torch.tanh((X @ W_xc) + (H @ W_hc) + b_c)
            C = F * C + I * C_tilda
            H = O * torch.tanh(C)
            Y = (H @ W_hq) + b_q
            outputs.append(Y)
        return torch.cat(outputs, dim=0), (H, C)
    
    vocab_size, num_hiddens, device = len(vocab), 256, d2l.try_gpu()
    num_epochs, lr = 500, 1
    model = d2l.RNNModelScratch(len(vocab), num_hiddens, device, get_lstm_params,
                                init_lstm_state, lstm)
    d2l.train_ch8(model, train_iter, vocab, lr, num_epochs, device)
    
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    简洁实现

    num_inputs = vocab_size
    lstm_layer = nn.LSTM(num_inputs, num_hiddens)
    model = d2l.RNNModel(lstm_layer, len(vocab))
    model = model.to(device)
    d2l.train_ch8(model, train_iter, vocab, lr, num_epochs, device)
    
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  • 原文地址:https://blog.csdn.net/weixin_39107270/article/details/133086962