Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 pdf 下載 txt下載 epub 下載 mobi 下載 2024


Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing)

簡體網頁||繁體網頁
Li Deng 作者
Now Publishers Inc
譯者
2014-6-12 出版日期
212 頁數
USD 94.05 價格
Paperback
叢書系列
9781601988140 圖書編碼

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 圖書標籤: 深度學習  機器學習  計算機科學  自然語言處理  人工智能  CS  豆瓣  豆列   


喜歡 Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 的讀者還喜歡




點擊這裡下載
    


想要找書就要到 圖書目錄大全
立刻按 ctrl+D收藏本頁
你會得到大驚喜!!

發表於2024-06-28

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 epub 下載 mobi 下載 pdf 下載 txt 下載 2024

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 epub 下載 pdf 下載 mobi 下載 txt 下載 2024

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 pdf 下載 txt下載 epub 下載 mobi 下載 2024



Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 用戶評價

評分

搞語音識彆的人寫的,書的布局框架多少還是受背景影響,有些地方講得不深。

評分

搞語音識彆的人寫的,書的布局框架多少還是受背景影響,有些地方講得不深。

評分

Review

評分

Review

評分

搞語音識彆的人寫的,書的布局框架多少還是受背景影響,有些地方講得不深。

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 著者簡介

http://research.microsoft.com/en-us/people/deng/


Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 著者簡介


Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 pdf 下載 txt下載 epub 下載 mobi 在線電子書下載

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 圖書描述

This book is aimed to provide an overview of general deep learning methodology and its applications to a variety of signal and information processing tasks. The application areas are chosen with the following three criteria: 1) expertise or knowledge of the authors; 2) the application areas that have already been transformed by the successful use of deep learning technology, such as speech recognition and computer vision; and 3) the application areas that have the potential to be impacted significantly by deep learning and that have gained concentrated research efforts, including natural language and text processing, information retrieval, and multimodal information processing empowered by multi-task deep learning.

In Chapter 1, we provide the background of deep learning, as intrinsically connected to the use of multiple layers of nonlinear transformations to derive features from the sensory signals such as speech and visual images. In the most recent literature, deep learning is embodied also as representation learning, which involves a hierarchy of features or concepts where higher-level representations of them are defined from lower-level ones and where the same lower-level representations help to define higher-level ones. In Chapter 2, a brief historical account of deep learning is presented. In particular, selected chronological development of speech recognition is used to illustrate the recent impact of deep learning that has become a dominant technology in speech recognition industry within only a few years since the start of a collaboration between academic and industrial researchers in applying deep learning to speech recognition. In Chapter 3, a three-way classification scheme for a large body of work in deep learning is developed. We classify a growing number of deep learning techniques into unsupervised, supervised, and hybrid categories, and present qualitative descriptions and a literature survey for each category. From Chapter 4 to Chapter 6, we discuss in detail three popular deep networks and related learning methods, one in each category. Chapter 4 is devoted to deep autoencoders as a prominent example of the unsupervised deep learning techniques. Chapter 5 gives a major example in the hybrid deep network category, which is the discriminative feed-forward neural network for supervised learning with many layers initialized using layer-by-layer generative, unsupervised pre-training. In Chapter 6, deep stacking networks and several of the variants are discussed in detail, which exemplify the discriminative or supervised deep learning techniques in the three-way categorization scheme.

In Chapters 7-11, we select a set of typical and successful applications of deep learning in diverse areas of signal and information processing and of applied artificial intelligence. In Chapter 7, we review the applications of deep learning to speech and audio processing, with emphasis on speech recognition organized according to several prominent themes. In Chapters 8, we present recent results of applying deep learning to language modeling and natural language processing. Chapter 9 is devoted to selected applications of deep learning to information retrieval including Web search. In Chapter 10, we cover selected applications of deep learning to image object recognition in computer vision. Selected applications of deep learning to multi-modal processing and multi-task learning are reviewed in Chapter 11. Finally, an epilogue is given in Chapter 12 to summarize what we presented in earlier chapters and to discuss future challenges and directions.

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 下載 mobi epub pdf txt 在線電子書下載


想要找書就要到 圖書目錄大全
立刻按 ctrl+D收藏本頁
你會得到大驚喜!!

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 讀後感

評分

評分

評分

評分

評分

類似圖書 點擊查看全場最低價

Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 pdf 下載 txt下載 epub 下載 mobi 下載 2024


分享鏈接





Deep Learning: Methods and Applications (Foundations and Trends(r) in Signal Processing) 在線電子書 相關圖書




本站所有內容均為互聯網搜索引擎提供的公開搜索信息,本站不存儲任何數據與內容,任何內容與數據均與本站無關,如有需要請聯繫相關搜索引擎包括但不限於百度google,bing,sogou

友情鏈接

© 2024 book.wenda123.org All Rights Reserved. 圖書目錄大全 版權所有