Ai-Assisted Statistics for Data Scientists: 50+ Essential Concepts Using R and Python
暫譯: 數據科學家的 AI 輔助統計:50+ 個使用 R 和 Python 的基本概念
Bruce, Peter, Bruce, Andrew, Gedeck, Peter
商品描述
Statistical methods are a key part of data science, yet few data scientists have formal statistical training. Courses and books on basic statistics rarely cover the topic from a data science perspective. The third edition of this popular guide expands its practical foundations in R and Python into the modern AI toolkit, with new chapters on neural networks, deep learning, and large language models. Generative AI is integrated throughout, showing how tools such as ChatGPT, Claude, and Gemini work, and how they can support real-world statistical workflows.
This book highlights concepts that matter most when working with data, building predictive models, and deploying AI responsibly. If you're comfortable with R or Python and have had some exposure to basic statistics, this concise reference will boost your statistical literacy, your understanding of how AI works, and your confidence in real-world data science and AI projects.
- Conduct exploratory analysis of data to improve quality and model outcomes
- Apply sampling and experimental design to reduce bias and answer questions with clarity
- Use regression to understand data-generating processes and detect anomalies
- Build predictive models using classification, clustering, and unsupervised learning with unbalanced data
商品描述(中文翻譯)
統計方法是數據科學的關鍵部分,但很少有數據科學家接受過正式的統計訓練。關於基本統計的課程和書籍很少從數據科學的角度來探討這個主題。這本受歡迎的指南第三版擴展了其在 R 和 Python 中的實用基礎,融入了現代 AI 工具包,新增了有關神經網絡、深度學習和大型語言模型的章節。生成式 AI 在整本書中都有所整合,展示了 ChatGPT、Claude 和 Gemini 等工具的運作方式,以及它們如何支持現實世界的統計工作流程。
本書強調在處理數據、建立預測模型和負責任地部署 AI 時最重要的概念。如果您對 R 或 Python 感到熟悉,並且對基本統計有一定的了解,這本簡明的參考書將提升您的統計素養、對 AI 運作的理解,以及在現實世界數據科學和 AI 項目中的信心。
- 進行數據的探索性分析,以改善質量和模型結果
- 應用抽樣和實驗設計以減少偏差,並清晰地回答問題
- 使用回歸分析來理解數據生成過程並檢測異常
- 使用分類、聚類和無監督學習來建立預測模型,處理不平衡數據