課程目錄

    本課程主要講解如何利用深度學(xué)習(xí)算法來解決各種實際應(yīng)用場景問題,學(xué)生學(xué)習(xí)如何使用這些深度學(xué)習(xí)算法,以及為什么要使用這些算法。本課程希望學(xué)生在課堂上學(xué)習(xí)理論,并通過做作業(yè)和最后的項目來學(xué)習(xí)實施方法。 注意:如果已修過類似的課程,例如,李宏毅老師的課程,則無需修此課程。

課程涵蓋了深度學(xué)習(xí)和表示學(xué)習(xí)中的最新技術(shù),重點包括監(jiān)督/自監(jiān)督學(xué)習(xí)、嵌入方法、度量學(xué)習(xí)、卷積網(wǎng)絡(luò)和循環(huán)網(wǎng)絡(luò),并應(yīng)用于計算機視覺、自然語言理解和語音識別。

This course is enable students to learn how and why to apply deep learning to tackle various practical problems, where the students are expected to learn the theory during the class and learn the implementation by doing assignments and final projects.

Lecture 02019/02/19Course Logistics [slides]


Registration: [Google Form]

Lecture 12019/02/26Introduction [slides] (video)

Guest Lecture (R103)[PyTorch Tutorial]

Lecture 22019/03/05Neural Network Basics [slides] (video)

Suggested Readings:

[Linear Algebra]

[Linear Algebra Slides]

[Linear Algebra Quick Review]

A12019/03/05A1: Dialogue Response Selection[A1 pages]

Lecture 32019/03/12Backpropagation [slides] (video)

Word Representation [slides] (video)

Suggested Readings:

[Learning Representations]

[Vector Space Models of Semantics]

[RNNLM: Recurrent Neural Nnetwork Language Model]

[Extensions of RNNLM]

[Optimzation]

Lecture 42019/03/19Recurrent Neural Network [slides] (video)

Basic Attention [slides] (video)

Suggested Readings:

[RNN for Language Understanding]

[RNN for Joint Language Understanding]

[Sequence-to-Sequence Learning]

[Neural Conversational Model]

[Neural Machine Translation with Attention]

[Summarization with Attention]

[Normalization]

A22019/03/19A2: Contextual Embeddings[A2 pages]

Lecture 52019/03/26Word Embeddings [slides] (video)

Contextual Embeddings - ELMo [slides] (video)

Suggested Readings:

[Estimation of Word Representations in Vector Space]

[GloVe: Global Vectors for Word Representation]

[Sequence Tagging with BiLM]

[Learned in Translation: Contextualized Word Vectors]

[ELMo: Embeddings from Language Models]

[More Embeddings]

2019/04/02Spring BreakA1 Due

Lecture 62019/04/09Transformer [slides] (video)


Contextual Embeddings - BERT [slides] (video)


Gating Mechanism [slides] (video)

Suggested readings:

[Contextual Word Representations Introduction]

[Attention is all you need]

[BERT: Pre-training of Bidirectional Transformers]

[GPT: Improving Understanding by Unsupervised Learning]

[Long Short-Term Memory]

[Gated Recurrent Unit]

[More Transformer]

Lecture 72019/04/16Reinforcement Learning Intro [slides] (video)

Basic Q-Learning [slides] (video)

Suggested Readings:

[Reinforcement Learning Intro]

[Stephane Ross' thesis]

[Playing Atari with Deep Reinforcement Learning]

[Deep Reinforcement Learning with Double Q-learning]

[Dueling Network Architectures for Deep Reinforcement Learning]

A32019/04/16A3: RL for Game Playing[A3 pages]

Lecture 82019/04/23Policy Gradient [slides] (video)

Actor-Critic (video)

More about RL [slides] (video)Suggested Readings:

[Asynchronous Methods for Deep Reinforcement Learning]

[Deterministic Policy Gradient Algorithms]

[Continuous Control with Deep Reinforcement Learning]

A2 Due

Lecture 92019/04/30Generative Adversarial Networks [slides] (video)

(Lectured by Prof. Hung-Yi Lee)

Lecture 102019/05/07Convolutional Neural Networks [slides]

A42019/05/07A4: Drawing[A4 pages]

2019/05/14BreakA3 Due

Lecture 112019/05/21Unsupervised Learning [slides]

NLP Examples [slides]

Project Plan [slides]

Special2019/05/28 Company WorkshopRegistration: [Google Form]

2019/06/04BreakA4 Due

Lecture 122019/06/11Project Progress Presentation

Course and Career Discussion

Special2019/06/18Company WorkshopRegistration: [Google Form]

Lecture 132019/06/25Final Presentation


郵箱
huangbenjincv@163.com

临西县| 静海县| 定西市| 云安县| 循化| 玛多县| 绥棱县| 贵州省| 河南省| 合阳县| 灌南县| 余江县| 井冈山市| 犍为县| 武强县| 牙克石市| 九龙县| 筠连县| 都江堰市| 巴楚县| 织金县| 广东省| 卢氏县| 隆昌县| 保靖县| 全南县| 三都| 乃东县| 邻水| 新昌县| 海兴县| 白银市| 大理市| 普格县| 萝北县| 昭苏县| 广安市| 凉城县| 凤阳县| 永宁县| 鹤壁市|