Machine Learning in Business Finance Using Python
暫譯: 使用 Python 的商業金融機器學習
Kian Guan Lim
- 出版商: World Scientific Pub
- 出版日期: 2025-08-22
- 售價: $3,860
- 貴賓價: 9.5 折 $3,667
- 語言: 英文
- 頁數: 316
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 9819811236
- ISBN-13: 9789819811236
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相關分類:
Python、Fintech
海外代購書籍(需單獨結帳)
相關主題
商品描述
Major results in mathematical statistics theory such as the Binomial Theorem, the Laplace distribution, the Gaussian or normal distribution, the logarithmic distribution, the Poisson distribution, the Bernoulli distribution, Bayes theorem, and many others were created by giants in mathematics before the 1800s. The early form of central limit theorem was discovered in the 1800s.In the early 1900s till early 1930s, statistical theories including rigorous formulations of probability distributions by Pearson, the design of experiments and the maximum likelihood method by Fisher, concepts of testing by Neyman and others, were born. The extreme value theory was formulated in the 1920s. The practice of statistics had become rigorous within the framework of probability theory. The latter could have been from the time of Pascal and Fermat, though in modern times, it could have been based on the measure-theoretic approach by Kolmogorov. The march of statistical applications continuing into modern rigorous and analytical forms would not have been possible without the great efforts and tirelessness of generations of brilliant minds in these fields.Machine learning is a new wave of approach that might have begun in the late 1950s but picked up momentum only in the 1990s. It is a scientific approach that is partly statistical in perspectives and partly engineering in spirit, driven by explosions in data quantities or big data and the commensurate increase in the capacity of computer machines to manage and scrutinize these data. It has come to be somewhat hinged directly with the more general domain of data science and artificial intelligence.This book is an introduction to machine learning using Python programming language with applications in finance and business. The coverage of the book is contained in the Introduction section of this book. There will be a strong emphasis on financial and business applications, as well as fundamental information on corporate reporting data and market fundamental factors. The book also contains detailed examples of applications with data. Python codes are explained in a step-by-step manner using Jupyter Notebook so that the readers can practise on their own.
商品描述(中文翻譯)
數學統計理論中的主要成果,如二項定理、拉普拉斯分佈、高斯或正態分佈、對數分佈、泊松分佈、伯努利分佈、貝葉斯定理等,都是在1800年前由數學巨擘創造的。中央極限定理的早期形式是在1800年代被發現的。在1900年代初至1930年代初,統計理論,包括皮爾遜對機率分佈的嚴謹公式化、費雪的實驗設計和最大似然法、內曼等人的檢驗概念,應運而生。極值理論則是在1920年代被公式化。統計的實踐在機率理論的框架內變得嚴謹。後者可能源自帕斯卡和費馬的時代,雖然在現代,它可能基於科爾莫哥洛夫的測度理論方法。統計應用的發展,持續進入現代的嚴謹和分析形式,若沒有這些領域中一代又一代卓越頭腦的巨大努力和不懈追求,將是不可能的。
機器學習是一種新的方法浪潮,可能始於1950年代末,但在1990年代才開始獲得動力。這是一種科學方法,部分從統計的角度出發,部分從工程的精神出發,受到數據量爆炸或大數據的驅動,以及計算機處理和檢視這些數據的能力相應增加。它與更廣泛的數據科學和人工智慧領域有著直接的關聯。
本書是一本使用Python程式語言進行機器學習的入門書,應用於金融和商業。書中的內容涵蓋在本書的引言部分。將強調金融和商業應用,以及企業報告數據和市場基本因素的基本資訊。本書還包含了詳細的數據應用範例。Python代碼以逐步的方式在Jupyter Notebook中解釋,以便讀者能夠自行練習。