Graph-Powered Machine Learning
暫譯: 圖形驅動的機器學習
Nego, Alessandro
- 出版商: Manning
- 出版日期: 2021-11-15
- 售價: $2,150
- 貴賓價: 9.5 折 $2,043
- 語言: 英文
- 頁數: 496
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1617295647
- ISBN-13: 9781617295645
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相關分類:
Machine Learning
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相關翻譯:
動手學圖機器學習 (簡中版)
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商品描述
Upgrade your machine learning models with graph-based algorithms, the perfect structure for complex and interlinked data. Summary
In Graph-Powered Machine Learning, you will learn: The lifecycle of a machine learning project
Graphs in big data platforms
Data source modeling using graphs
Graph-based natural language processing, recommendations, and fraud detection techniques
Graph algorithms
Working with Neo4J Graph-Powered Machine Learning teaches to use graph-based algorithms and data organization strategies to develop superior machine learning applications. You'll dive into the role of graphs in machine learning and big data platforms, and take an in-depth look at data source modeling, algorithm design, recommendations, and fraud detection. Explore end-to-end projects that illustrate architectures and help you optimize with best design practices. Author Alessandro Negro's extensive experience shines through in every chapter, as you learn from examples and concrete scenarios based on his work with real clients! Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the technology
Identifying relationships is the foundation of machine learning. By recognizing and analyzing the connections in your data, graph-centric algorithms like K-nearest neighbor or PageRank radically improve the effectiveness of ML applications. Graph-based machine learning techniques offer a powerful new perspective for machine learning in social networking, fraud detection, natural language processing, and recommendation systems. About the book
Graph-Powered Machine Learning teaches you how to exploit the natural relationships in structured and unstructured datasets using graph-oriented machine learning algorithms and tools. In this authoritative book, you'll master the architectures and design practices of graphs, and avoid common pitfalls. Author Alessandro Negro explores examples from real-world applications that connect GraphML concepts to real world tasks. What's inside Graphs in big data platforms
Recommendations, natural language processing, fraud detection
Graph algorithms
Working with the Neo4J graph database About the reader
For readers comfortable with machine learning basics. About the author
Alessandro Negro is Chief Scientist at GraphAware. He has been a speaker at many conferences, and holds a PhD in Computer Science. Table of Contents
PART 1 INTRODUCTION
1 Machine learning and graphs: An introduction
2 Graph data engineering
3 Graphs in machine learning applications
PART 2 RECOMMENDATIONS
4 Content-based recommendations
5 Collaborative filtering
6 Session-based recommendations
7 Context-aware and hybrid recommendations
PART 3 FIGHTING FRAUD
8 Basic approaches to graph-powered fraud detection
9 Proximity-based algorithms
10 Social network analysis against fraud
PART 4 TAMING TEXT WITH GRAPHS
11 Graph-based natural language processing
12 Knowledge graphs
In Graph-Powered Machine Learning, you will learn: The lifecycle of a machine learning project
Graphs in big data platforms
Data source modeling using graphs
Graph-based natural language processing, recommendations, and fraud detection techniques
Graph algorithms
Working with Neo4J Graph-Powered Machine Learning teaches to use graph-based algorithms and data organization strategies to develop superior machine learning applications. You'll dive into the role of graphs in machine learning and big data platforms, and take an in-depth look at data source modeling, algorithm design, recommendations, and fraud detection. Explore end-to-end projects that illustrate architectures and help you optimize with best design practices. Author Alessandro Negro's extensive experience shines through in every chapter, as you learn from examples and concrete scenarios based on his work with real clients! Purchase of the print book includes a free eBook in PDF, Kindle, and ePub formats from Manning Publications. About the technology
Identifying relationships is the foundation of machine learning. By recognizing and analyzing the connections in your data, graph-centric algorithms like K-nearest neighbor or PageRank radically improve the effectiveness of ML applications. Graph-based machine learning techniques offer a powerful new perspective for machine learning in social networking, fraud detection, natural language processing, and recommendation systems. About the book
Graph-Powered Machine Learning teaches you how to exploit the natural relationships in structured and unstructured datasets using graph-oriented machine learning algorithms and tools. In this authoritative book, you'll master the architectures and design practices of graphs, and avoid common pitfalls. Author Alessandro Negro explores examples from real-world applications that connect GraphML concepts to real world tasks. What's inside Graphs in big data platforms
Recommendations, natural language processing, fraud detection
Graph algorithms
Working with the Neo4J graph database About the reader
For readers comfortable with machine learning basics. About the author
Alessandro Negro is Chief Scientist at GraphAware. He has been a speaker at many conferences, and holds a PhD in Computer Science. Table of Contents
PART 1 INTRODUCTION
1 Machine learning and graphs: An introduction
2 Graph data engineering
3 Graphs in machine learning applications
PART 2 RECOMMENDATIONS
4 Content-based recommendations
5 Collaborative filtering
6 Session-based recommendations
7 Context-aware and hybrid recommendations
PART 3 FIGHTING FRAUD
8 Basic approaches to graph-powered fraud detection
9 Proximity-based algorithms
10 Social network analysis against fraud
PART 4 TAMING TEXT WITH GRAPHS
11 Graph-based natural language processing
12 Knowledge graphs
商品描述(中文翻譯)
使用基於圖形的演算法升級您的機器學習模型,這是處理複雜和相互聯繫數據的完美結構。
摘要在圖形驅動的機器學習中,您將學到: 機器學習專案的生命週期
大數據平台中的圖形
使用圖形進行數據源建模
基於圖形的自然語言處理、推薦和詐騙檢測技術
圖形演算法
使用Neo4J 圖形驅動的機器學習教您如何使用基於圖形的演算法和數據組織策略來開發優越的機器學習應用程式。您將深入了解圖形在機器學習和大數據平台中的角色,並詳細探討數據源建模、演算法設計、推薦和詐騙檢測。探索端到端的專案,這些專案展示了架構並幫助您使用最佳設計實踐進行優化。作者Alessandro Negro的豐富經驗在每一章中都熠熠生輝,您將從基於他與真實客戶合作的例子和具體情境中學習! 購買印刷書籍可獲得Manning Publications提供的免費PDF、Kindle和ePub格式電子書。 關於技術
識別關係是機器學習的基礎。通過識別和分析數據中的連結,基於圖形的演算法如K最近鄰或PageRank能顯著提高機器學習應用的有效性。基於圖形的機器學習技術為社交網絡、詐騙檢測、自然語言處理和推薦系統中的機器學習提供了一種強大的新視角。 關於本書
圖形驅動的機器學習教您如何利用結構化和非結構化數據集中的自然關係,使用圖形導向的機器學習演算法和工具。在這本權威的書籍中,您將掌握圖形的架構和設計實踐,並避免常見的陷阱。作者Alessandro Negro探討了來自真實應用的例子,將GraphML概念與現實世界任務相連接。 內容概覽 大數據平台中的圖形
推薦系統、自然語言處理、詐騙檢測
圖形演算法
使用Neo4J圖形資料庫 讀者對象
適合對機器學習基礎知識感到舒適的讀者。 關於作者
Alessandro Negro是GraphAware的首席科學家。他曾在許多會議上演講,並擁有計算機科學博士學位。 目錄
第一部分 介紹
1 機器學習與圖形:簡介
2 圖形數據工程
3 機器學習應用中的圖形
第二部分 推薦系統
4 基於內容的推薦
5 協同過濾
6 基於會話的推薦
7 上下文感知和混合推薦
第三部分 打擊詐騙
8 基於圖形的詐騙檢測基本方法
9 基於接近度的演算法
10 社交網絡分析對抗詐騙
第四部分 用圖形駕馭文本
11 基於圖形的自然語言處理
12 知識圖形
作者簡介
Alessandro Negro is a Chief Scientist at GraphAware. With extensive experience in software development, software architecture, and data management, he has been a speaker at many conferences, such as Java One, Oracle Open World, and Graph Connect. He holds a Ph.D. in Computer Science and has authored several publications on graph-based machine learning.
作者簡介(中文翻譯)
Alessandro Negro 是 GraphAware 的首席科學家。他在軟體開發、軟體架構和數據管理方面擁有豐富的經驗,曾在許多會議上發表演講,例如 Java One、Oracle Open World 和 Graph Connect。他擁有計算機科學博士學位,並且發表過多篇關於基於圖形的機器學習的出版物。