GRU与自注意力机制
时间: 2023-08-28 21:20:37 浏览: 58
GRU (Gated Recurrent Unit) 是一种循环神经网络模型,用于处理序列数据。它具有门控机制,能够更好地捕捉序列中的长期依赖关系。GRU模型的内部结构包括更新门、重置门和隐藏状态,通过这些门控制信息的流动和保留。<span class="em">1</span><span class="em">2</span><span class="em">3</span>
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