 8 4 Deep Learning with Python 费良宏2016的目标:Web爬虫+深度学习+自然语言处理 = ? Microso� Apple AWS 今年最激动人心的事件? 2016.1.28 “Mastering the game of Go with deep neural networks and tree search” 今年最激动人心的事件? 2016年3月Alphago 4:1 击败李世石九段 人工智能 VS. 机器学习 VS. 深度学习 文的自动分类 半监督学习 - 介于监督学习和无监督学习之间,算法: Graph Inference 或者Laplacian SVM 强化学习- 通过观察来学习做成如何的动作, 算法:Q-Learning以及时间差学习 机器学习- 方法及流程 输入特征选择 – 基于什么进行预测 目标 – 预测什么 预测功能 – 回归、聚类、降维... Xn -> F(xn) -> T(x) 机器学习- (NYU,2002), Facebook AI, Google Deepmind Theano (University of Montreal, ~2010), 学院派 Kersa, “Deep Learning library for Theano and TensorFlow” Caffe (Berkeley),卷积神经网络,贾扬清 TensorFlow (Google) Spark MLLib0 码力 | 49 页 | 9.06 MB | 1 年前3 8 4 Deep Learning with Python 费良宏2016的目标:Web爬虫+深度学习+自然语言处理 = ? Microso� Apple AWS 今年最激动人心的事件? 2016.1.28 “Mastering the game of Go with deep neural networks and tree search” 今年最激动人心的事件? 2016年3月Alphago 4:1 击败李世石九段 人工智能 VS. 机器学习 VS. 深度学习 文的自动分类 半监督学习 - 介于监督学习和无监督学习之间,算法: Graph Inference 或者Laplacian SVM 强化学习- 通过观察来学习做成如何的动作, 算法:Q-Learning以及时间差学习 机器学习- 方法及流程 输入特征选择 – 基于什么进行预测 目标 – 预测什么 预测功能 – 回归、聚类、降维... Xn -> F(xn) -> T(x) 机器学习- (NYU,2002), Facebook AI, Google Deepmind Theano (University of Montreal, ~2010), 学院派 Kersa, “Deep Learning library for Theano and TensorFlow” Caffe (Berkeley),卷积神经网络,贾扬清 TensorFlow (Google) Spark MLLib0 码力 | 49 页 | 9.06 MB | 1 年前3
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 2020美团技术年货 算法篇进行特征的高阶组合。 模型结构 我们的模型结构参考 AutoInt[3] 结构,但在实践中,根据美团搜索的数据特点,我们 对模型结构做了一些调整,如下图 2 所示: 图 2 Transformer&Deep 结构示意图 算法 < 27 相比 AutoInt[3],该结构有以下不同: ● 保留将稠密特征和离散特征的 Embedding 送入到 MLP 网络,以隐式的方式 学习其非线性表达。 Pre-training of deep bidirectional transformers for language understanding[J]. arXiv preprint arXiv:1810.04805, 2018. [3] Song W, Shi C, Xiao Z, et al. Autoint: Automatic feature interaction learning via self-attentive e-commerce recommendation in Alibaba[C]//Proceedings of the 1st International Workshop on Deep Learning Practice for High-Dimensional Sparse Data. 2019: 1-4. [5] Pei C, Zhang Y, Zhang Y, et al. Personalized0 码力 | 317 页 | 16.57 MB | 1 年前3 2020美团技术年货 算法篇进行特征的高阶组合。 模型结构 我们的模型结构参考 AutoInt[3] 结构,但在实践中,根据美团搜索的数据特点,我们 对模型结构做了一些调整,如下图 2 所示: 图 2 Transformer&Deep 结构示意图 算法 < 27 相比 AutoInt[3],该结构有以下不同: ● 保留将稠密特征和离散特征的 Embedding 送入到 MLP 网络,以隐式的方式 学习其非线性表达。 Pre-training of deep bidirectional transformers for language understanding[J]. arXiv preprint arXiv:1810.04805, 2018. [3] Song W, Shi C, Xiao Z, et al. Autoint: Automatic feature interaction learning via self-attentive e-commerce recommendation in Alibaba[C]//Proceedings of the 1st International Workshop on Deep Learning Practice for High-Dimensional Sparse Data. 2019: 1-4. [5] Pei C, Zhang Y, Zhang Y, et al. Personalized0 码力 | 317 页 | 16.57 MB | 1 年前3
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