機器學習實戰營:從理論到實戰的探索之旅
謝雪葵,劉嘉蕊
- 出版商: 電子工業
- 出版日期: 2024-05-01
- 定價: $408
- 售價: 8.5 折 $347
- 語言: 簡體中文
- 頁數: 216
- ISBN: 7121478153
- ISBN-13: 9787121478154
-
相關分類:
Machine Learning
立即出貨
買這商品的人也買了...
-
$403數據決策:企業數據的管理、分析與應用 -
$454中臺實踐:數字化轉型方法論與解決方案 -
$505標簽類目體系:面向業務的數據資產設計方法論 -
Python 金融市場賺大錢聖經:寫出你的專屬指標, 2/e$780$616 -
$607Python 爬蟲從菜鳥到高手 -
$709機器學習高級實踐:運算廣告、供需預測、智慧行銷、動態定價 -
$469人機共協計算 -
$352AI 訓練師手冊:演算法與模型訓練從入門到精通 -
$356強化學習:人工智能如何知錯 -
$505人人可懂的模式識別(原書第2版) -
人工智能芯片設計$419$398 -
Streamlit 實戰指南 : 使用 Python 創建交互式數據應用$888$844
中文年末書展|繁簡參展書2書75折 詳見活動內容 »
-
75折
為你寫的 Vue Components:從原子到系統,一步步用設計思維打造面面俱到的元件實戰力 (iThome 鐵人賽系列書)$780$585 -
75折
BDD in Action, 2/e (中文版)$960$720 -
75折
看不見的戰場:社群、AI 與企業資安危機$750$563 -
79折
AI 精準提問 × 高效應用:DeepSeek、ChatGPT、Claude、Gemini、Copilot 一本搞定$390$308 -
7折
超實用!Word.Excel.PowerPoint 辦公室 Office 365 省時高手必備 50招, 4/e (暢銷回饋版)$420$294 -
75折
裂縫碎光:資安數位生存戰$550$412 -
85折
日本當代最強插畫 2025 : 150位當代最強畫師豪華作品集$640$544 -
79折
Google BI 解決方案:Looker Studio × AI 數據驅動行銷實作,完美整合 Google Analytics 4、Google Ads、ChatGPT、Gemini$630$498 -
79折
超有料 Plus!職場第一實用的 AI 工作術 - 用對 AI 工具、自動化 Agent, 讓生產力全面進化!$599$473 -
75折
從零開始學 Visual C# 2022 程式設計, 4/e (暢銷回饋版)$690$518 -
75折
Windows 11 制霸攻略:圖解 AI 與 Copilot 應用,輕鬆搞懂新手必學的 Windows 技巧$640$480 -
75折
精準駕馭 Word!論文寫作絕非難事 (好評回饋版)$480$360 -
Sam Yang 的插畫藝術:用 Procreate / PS 畫出最強男友視角 x 女孩美好日常$699$629 -
79折
AI 加持!Google Sheets 超級工作流$599$473 -
78折
想要 SSR? 快使用 Nuxt 吧!:Nuxt 讓 Vue.js 更好處理 SEO 搜尋引擎最佳化(iThome鐵人賽系列書)$780$608 -
75折
超實用!業務.總管.人資的辦公室 WORD 365 省時高手必備 50招 (第二版)$500$375 -
7折
Node-RED + YOLO + ESP32-CAM:AIoT 智慧物聯網與邊緣 AI 專題實戰$680$476 -
79折
「生成式⇄AI」:52 個零程式互動體驗,打造新世代人工智慧素養$599$473 -
7折
Windows APT Warfare:惡意程式前線戰術指南, 3/e$720$504 -
75折
我輩程式人:回顧從 Ada 到 AI 這條程式路,程式人如何改變世界的歷史與未來展望 (We, Programmers: A Chronicle of Coders from Ada to AI)$850$637 -
75折
不用自己寫!用 GitHub Copilot 搞定 LLM 應用開發$600$450 -
79折
Tensorflow 接班王者:Google JAX 深度學習又快又強大 (好評回饋版)$780$616 -
79折
GPT4 會你也會 - 共融機器人的多模態互動式情感分析 (好評回饋版)$700$553 -
79折
技術士技能檢定 電腦軟體應用丙級術科解題教本|Office 2021$460$363 -
75折
Notion 與 Notion AI 全能實戰手冊:生活、學習與職場的智慧策略 (暢銷回饋版)$560$420
相關主題
商品描述
本書是一本機器學習實用指南,提供從基礎知識到進階技能的全面學習路徑。本書以淺顯 易懂的方式介紹了機器學習的基本概念和主要類型,並詳細介紹使用 Python 及常見的庫進行數 據處理和機器學習的實操。此外,介紹了數據預處理的詳細過程,最後通過若乾典型案例加深 讀者對機器學習的理解。本書適合對機器學習感興趣的初學者,也可作為軟件開發人員、數據分析師、學術研究人員的參考書籍。
目錄大綱
目錄
機器學習入門············································································1
機器學習簡介 ···········································································1
1.1.1 什麼是機器學習································································1
1.1.2 機器學習的前景································································2
機器學習的主要類型 ··································································3
1.2.1 監督學習·········································································4
1.2.2 無監督學習······································································5
1.2.3 半監督學習······································································7
1.2.4 強化學習·········································································8
1.2.5 監督學習案例································································.10
選擇正確的算法·····································································.12
機器學習工具和環境·································································14
Python 介紹···········································································.14
2.1.1 Python 的安裝 ·······························································.14
2.1.2 Python 基礎語法 ····························································.19
2.1.3 Python 其他特性 ····························································.24
2.1.4 Python 簡單實戰案例(猜字遊戲) ····································.31
2.1.5 Python 高級實戰案例(網絡爬蟲) ····································.35
數據科學庫···········································································.38
2.2.1 NumPy ········································································.38
2.2.2 Pandas ·········································································.45
2.2.3 數據科學庫案例(電商網站) ··········································.54
機器學習庫···········································································.55
2.3.1 Scikit-Learn···································································.55
2.3.2 TensorFlow ···································································.60
2.3.3 Keras···········································································.64
2.3.4 機器學習庫案例(預測糖尿病) ·······································.67
數據預處理·············································································70
數據導入 ··············································································.70
數據清洗 ··············································································.71
特徵工程 ··············································································.73
3.3.1 特徵選擇······································································.73
3.3.2 特徵轉換······································································.75
3.3.3 特徵縮放······································································.77
數據分割 ··············································································.78
3.4.1 訓練集·········································································.78
3.4.2 測試集·········································································.79
3.4.3 驗證集·········································································.80
案例分析:銀行客戶數據·························································.80
機器學習模型的構建與評估························································84
監督學習實戰········································································.84
4.1.1 線性回歸······································································.84
4.1.2 邏輯回歸······································································.86
4.1.3 決策樹·········································································.88
4.1.4 隨機森林······································································.90
無監督學習實戰·····································································.91
4.2.1 K-means ·······································································.92
4.2.2 主成分分析···································································.93
深度學習實戰········································································.95
4.3.1 神經網絡······································································.95
4.3.2 捲積神經網絡································································.98
4.3.3 循環神經網絡································································102
模型評估與選擇 ·····································································105
案例分析:客戶流失預測 ·························································107
第5章 5.1
機器學習項目實戰···································································111
項目一:房價預測 ·································································.111
5.1.1 數據獲取與理解·····························································112
5.1.2 數據預處理···································································116
5.1.3 特徵工程······································································120
5.1.4 模型構建與訓練·····························································123
5.1.5 模型評估與優化·····························································125
5.1.6 結果解釋······································································128
項目二:圖像識別 ··································································130
5.2.1 數據獲取與理解·····························································131
5.2.2 數據預處理···································································134
5.2.3 特徵工程······································································136
5.2.4 模型構建與訓練·····························································138
5.2.5 模型評估與優化·····························································140
5.2.6 結果解釋······································································143
項目三:自然語言處理 ····························································144
5.3.1 數據獲取與理解·····························································144
5.3.2 數據預處理···································································147
5.3.3 特徵工程······································································148
5.3.4 模型構建與訓練·····························································149
5.3.5 模型評估與優化·····························································151
5.3.6 結果解釋······································································157
項目四:新聞主題分類 ····························································157
5.4.1 數據獲取與理解·····························································158
5.4.2 數據預處理···································································161
5.4.3 特徵工程······································································164
5.4.4 模型構建與訓練·····························································166
5.4.5 模型評估與優化·····························································168
5.4.6 結果解釋······································································171
項目五:信用卡欺詐檢測 ·························································172
5.5.1 數據獲取與理解·····························································173
5.5.2 數據預處理···································································176
第5章 5.1
機器學習項目實戰···································································111
項目一:房價預測 ·································································.111
5.1.1 數據獲取與理解·····························································112
5.1.2 數據預處理···································································116
5.1.3 特徵工程······································································120
5.1.4 模型構建與訓練·····························································123
5.1.5 模型評估與優化·····························································125
5.1.6 結果解釋······································································128
項目二:圖像識別 ··································································130
5.2.1 數據獲取與理解·····························································131
5.2.2 數據預處理···································································134
5.2.3 特徵工程······································································136
5.2.4 模型構建與訓練·····························································138
5.2.5 模型評估與優化·····························································140
5.2.6 結果解釋······································································143
項目三:自然語言處理 ····························································144
5.3.1 數據獲取與理解·····························································144
5.3.2 數據預處理···································································147
5.3.3 特徵工程······································································148
5.3.4 模型構建與訓練·····························································149
5.3.5 模型評估與優化·····························································151
5.3.6 結果解釋······································································157
項目四:新聞主題分類 ····························································157
5.4.1 數據獲取與理解·····························································158
5.4.2 數據預處理···································································161
5.4.3 特徵工程······································································164
5.4.4 模型構建與訓練·····························································166
5.4.5 模型評估與優化·····························································168
5.4.6 結果解釋······································································171
項目五:信用卡欺詐檢測 ·························································172
5.5.1 數據獲取與理解·····························································173
5.5.2 數據預處理···································································176
