BOOKS - PROGRAMMING - Introduction to Machine Learning with R Rigorous Mathematical A...
Introduction to Machine Learning with R Rigorous Mathematical Analysis - Scott V. Burger 2018 PDF | EPUB O;kav_1Reilly Media BOOKS PROGRAMMING
ECO~14 kg CO²

1 TON

Views
22546

Telegram
 
Introduction to Machine Learning with R Rigorous Mathematical Analysis
Author: Scott V. Burger
Year: 2018
Pages: 226
Format: PDF | EPUB
File size: 10 MB
Language: ENG



Pay with Telegram STARS
Book Description: Introduction to Machine Learning with Rigorous Mathematical Analysis Author: Scott V. Burger 2018 226 O'Reilly Media Introduction: Machine learning is an intimidating subject, but it doesn't have to be. With this introductory guide, you'll gain a solid foundation in machine learning principles using the R programming language. You'll start with regression modeling and progress to more advanced topics like neural networks and tree-based methods. This book provides a rigorous mathematical analysis of the techniques used in machine learning. Chapter 1: The Evolution of Technology The development of technology has been a crucial aspect of human history, shaping our society and influencing our daily lives. From the invention of the wheel to the creation of artificial intelligence, technology has always played a significant role in advancing our understanding of the world and ourselves. However, the rapid pace of technological evolution can sometimes make it challenging to keep up with the latest innovations. In this chapter, we will explore the need for studying and understanding the process of technological evolution and its impact on humanity. Chapter 2: The Need for Personal Paradigms In today's world, technology is constantly evolving, and it's essential to develop a personal paradigm for perceiving the technological process of developing modern knowledge.
Введение в машинное обучение со строгим математическим анализом Автор: Скотт В. Бургер 2018 226 О'Рейли Медиа Введение: Машинное обучение - пугающий предмет, но это не обязательно. С помощью этого вводного руководства вы получите прочную основу в принципах машинного обучения с использованием языка программирования R. Вы начнете с регрессионного моделирования и перейдете к более продвинутым темам, таким как нейронные сети и методы на основе деревьев. В этой книге представлен строгий математический анализ техник, используемых в машинном обучении. Глава 1: Эволюция технологий Развитие технологий стало важнейшим аспектом истории человечества, формирующим наше общество и влияющим на нашу повседневную жизнь. От изобретения колеса до создания искусственного интеллекта технологии всегда играли значительную роль в продвижении нашего понимания мира и нас самих. Тем не менее, быстрые темпы технологической эволюции иногда могут усложнить задачу идти в ногу с последними инновациями. В этой главе мы рассмотрим необходимость изучения и понимания процесса технологической эволюции и его влияния на человечество. Глава 2: Потребность в личных парадигмах В современном мире технологии постоянно развиваются, и важно разработать личную парадигму восприятия технологического процесса развития современных знаний.
Introducción al aprendizaje automático con análisis matemático riguroso Autor: Scott W. Burger 2018 226 O'Reilly Media Introduction: aprendizaje automático es un tema aterrador, pero no es necesario. Con esta guía introductoria obtendrás una base sólida en los principios del aprendizaje automático utilizando el lenguaje de programación R. Comenzarás con el modelado de regresión y pasarás a temas más avanzados como las redes neuronales y las técnicas basadas en árboles. Este libro presenta un riguroso análisis matemático de las técnicas utilizadas en el aprendizaje automático. Capítulo 1: La evolución de la tecnología desarrollo de la tecnología se ha convertido en un aspecto crucial de la historia de la humanidad, formando nuestra sociedad e influyendo en nuestra vida cotidiana. Desde la invención de la rueda hasta la creación de inteligencia artificial, la tecnología siempre ha jugado un papel significativo en el avance de nuestra comprensión del mundo y de nosotros mismos. n embargo, el rápido ritmo de la evolución tecnológica a veces puede complicar la tarea de mantenerse al día con las últimas innovaciones. En este capítulo abordaremos la necesidad de estudiar y comprender el proceso de evolución tecnológica y su impacto en la humanidad. Capítulo 2: Necesidad de paradigmas personales En el mundo actual, la tecnología está en constante evolución y es importante desarrollar un paradigma personal de percepción del proceso tecnológico del desarrollo del conocimiento moderno.
Introduzione all'apprendimento automatico con analisi matematiche rigorose Autore: Scott V. Burger 2018 226 O'Reilly Media Introduzione: Apprendimento automatico è un oggetto spaventoso, ma non è necessario. Con questa guida introduttiva si ottiene una base solida nei principi di apprendimento automatico utilizzando il linguaggio di programmazione R. inizia con la simulazione di regressione e si passa a temi più avanzati come le reti neurali e tecniche a base di alberi. Questo libro fornisce una rigorosa analisi matematica delle tecniche utilizzate nell'apprendimento automatico. Capitolo 1: L'evoluzione della tecnologia Lo sviluppo della tecnologia è diventato un aspetto fondamentale della storia dell'umanità che forma la nostra società e influenza la nostra vita quotidiana. Dall'invenzione della ruota alla creazione dell'intelligenza artificiale, la tecnologia ha sempre avuto un ruolo importante nel promuovere la nostra comprensione del mondo e di noi stessi. Tuttavia, il rapido ritmo dell'evoluzione tecnologica può talvolta complicare la sfida di stare al passo con le ultime innovazioni. In questo capitolo affronteremo la necessità di studiare e comprendere il processo di evoluzione tecnologica e il suo impatto sull'umanità. Capitolo 2: La necessità di paradigmi personali Nel mondo moderno, la tecnologia è in continua evoluzione ed è importante sviluppare un paradigma personale per la percezione del processo tecnologico di sviluppo della conoscenza moderna.
''
厳密な計算による機械学習の紹介Scott W。 Burger 2018 226 O'Reilly Mediaはじめに:機械学習は怖いテーマですが、そうでなければなりません。この入門ガイドを使用すると、Rプログラミング言語を使用した機械学習の原則の確かな基礎を得ることができます。回帰モデリングから始め、ニューラルネットワークやツリーベースのメソッドなどのより高度なトピックに移動します。本書では、機械学習において使用される技術の厳密な数学的分析を紹介します。第1章:技術の進化技術の発展は、人類の歴史の重要な側面となっており、社会を形成し、私たちの日常生活に影響を与えています。車輪の発明から人工知能の創造まで、テクノロジーは常に世界と自分自身の理解を進める上で重要な役割を果たしてきました。それでも、技術の急速な進化は、最新のイノベーションに追いつくことを難しくすることがあります。この章では、科学技術の進化の過程とその人類への影響を研究し理解する必要性について見ていきます。第2章:個人的なパラダイムの必要性現代の世界では、技術は絶えず発展しており、現代の知識の発展の技術的プロセスの認識のための個人的なパラダイムを開発することが重要です。

You may also be interested in:

Introduction to Machine Learning (Adaptive Computation and Machine Learning), 4th Edition
Probabilistic Machine Learning: An Introduction (Adaptive Computation and Machine Learning series)
Machine Learning for Beginners An Introduction to Artificial Intelligence and Machine Learning
Machine Learning For Beginners A Math Free Introduction for Business and Individuals to Machine Learning, Big Data, Data Science, and Neural Networks
Machine Learning with Neural Networks An In-depth Visual Introduction with Python Make Your Own Neural Network in Python A Simple Guide on Machine Learning with Neural Networks
Simple Machine Learning for Programmers Beginner|s Intro to Using Machine Learning, Deep Learning, and Artificial Intelligence for Practical Applications
Machine Learning for Beginners A Complete and Phased Beginner’s Guide to Learning and Understanding Machine Learning and Artificial Intelligence Algoritms
Machine Learning For Beginners Guide Algorithms Supervised & Unsupervsied Learning. Decision Tree & Random Forest Introduction
A Concise Introduction to Machine Learning
A hands-on introduction to machine learning
Probabilistic Machine Learning An Introduction
An Introduction to Machine Learning Interpretability
Machine Learning a Concise Introduction
Python Programming The Crash Course for Python – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Python Programming The Crash Course for Python Projects – Learn the Secrets of Machine Learning, Data Science Analysis and Artificial Intelligence. Introduction to Deep Learning for Beginners
Machine Learning Fundamentals A Concise Introduction
Machine Learning An Applied Mathematics Introduction
Introduction to Machine Learning, 3rd Edition
Artificial Intelligence With an Introduction to Machine Learning, Second Edition
Pragmatic AI An Introduction to Cloud-Based Machine Learning
Introduction to Machine Learning with Python (Early Release)
Fundamentals of Machine Learning An Introduction to Neural Networks
Introduction to Algorithms for Data Mining and Machine Learning
Introduction to Machine Learning with R Rigorous Mathematical Analysis
Introduction to Statistical and Machine Learning Methods for Data Science
An Introduction to Optimization With Applications to Machine Learning, 5th Edition
Machine Learning with Neural Networks An Introduction for Scientists and Engineers
Introduction to Machine Learning in the Cloud with Python: Concepts and Practices
Introduction to IoT with Machine Learning and Image Processing using Raspberry Pi
An Introduction to Electronic Warfare From the First Jamming to Machine Learning Techniques
An Introduction to Optimization with Applications in Machine Learning and Data Analytics
Python Machine Learning The Ultimate Guide for Beginners to Machine Learning with Python, Programming and Deep Learning, Artificial Intelligence, Neural Networks, and Data Science
Machine Learning For Absolute Beginners A Plain English Introduction, Third Edition
Machine Learning in Business An Introduction to the World of Data Science Second Edition
A Brief Introduction to Machine Learning for Engineers (Foundations and Trends(r) in Signal Processing)
Low-Code AI: A Practical Project-Driven Introduction to Machine Learning
Machine Learning for Kids A Project-Based Introduction to Artificial Intelligence
Introduction to Machine Learning with Applications in Information Security 2nd Edition
Debugging Machine Learning Models with Python: Develop high-performance, low-bias, and explainable machine learning and deep learning models
Low-Code AI A Practical Project-Driven Introduction to Machine Learning (Final)