Soccer Analytics with Machine Learning: Learning Predictive Modeling Techniques with Sports Data
暫譯: 運動數據的機器學習足球分析:學習預測建模技術
Gao, Haipeng, Joury, Ari, Shen, Weining
- 出版商: O'Reilly
- 出版日期: 2026-07-21
- 售價: $2,110
- 貴賓價: 9.5 折 $2,004
- 語言: 英文
- 頁數: 342
- 裝訂: Quality Paper - also called trade paper
- ISBN: 1098181115
- ISBN-13: 9781098181116
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相關分類:
Machine Learning、Python
尚未上市,無法訂購
商品描述
Struggling to grasp machine learning concepts or unsure how to apply them in the real world? This book aims to change that by using the world's most popular game--soccer--to illuminate key concepts in predictive modeling and data science. Whether you're a complete beginner or you're interested in entering the burgeoning field of sports analytics, you'll develop a solid foundation in machine learning through engaging examples that bridge academic principles with practical applications.
Written by experts in both machine learning and sports analytics, this practical Python-focused guide introduces fundamental data science techniques using real soccer data. Ideal for students, analysts, and soccer fans alike, it offers instructions on models and techniques such as logistic regression, random forests, deep learning, simulations, and feature engineering. But instead of memorizing algorithms, you'll learn by building predictive models to analyze match outcomes, test betting strategies, run simulated game scenarios, and more.
- Understand machine learning concepts by working with real sports data
- Develop, refine, and evaluate machine learning models, using Python for data analysis
- Carry out detailed analyses and research on soccer game predictions and betting strategies to surface valuable insights
- Apply the skills you learn to predictive modeling scenarios in other industries
商品描述(中文翻譯)
在掌握機器學習概念上感到困難,或不確定如何將其應用於現實世界?本書旨在改變這一點,通過使用世界上最受歡迎的運動——足球——來闡明預測建模和數據科學中的關鍵概念。無論您是完全的初學者,還是對進入蓬勃發展的體育分析領域感興趣,您都將通過引人入勝的範例建立堅實的機器學習基礎,這些範例將學術原則與實際應用相結合。
本書由機器學習和體育分析領域的專家撰寫,這本以 Python 為重點的實用指南使用真實的足球數據介紹基本的數據科學技術。非常適合學生、分析師和足球迷,它提供了有關模型和技術的指導,例如邏輯回歸、隨機森林、深度學習、模擬和特徵工程。但您不僅僅是記憶算法,而是通過構建預測模型來分析比賽結果、測試投注策略、運行模擬比賽場景等來學習。
- 通過處理真實的體育數據來理解機器學習概念
- 使用 Python 進行數據分析,開發、完善和評估機器學習模型
- 對足球比賽預測和投注策略進行詳細分析和研究,以挖掘有價值的見解
- 將您學到的技能應用於其他行業的預測建模場景