Northeastern University
Machine Learning and Data Analytics Part 1
Northeastern University

Machine Learning and Data Analytics Part 1

包含在 Coursera Plus

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深入了解一个主题并学习基础知识。
中级 等级
需要一些相关经验
2 周 完成
在 10 小时 一周
灵活的计划
自行安排学习进度

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该课程共有7个模块

In this module, participants will explore essential data concepts across domains, understanding diverse data types, attributes, and features. They will grasp the fundamental principles, methodologies, and scope of data mining.

涵盖的内容

4个视频9篇阅读材料1个作业

This module aims to impart a comprehensive understanding of data concepts, spanning various domains. Participants will learn to differentiate between different data types, attributes, and features. They will explore fundamental principles and methodologies of data mining

涵盖的内容

3个视频13篇阅读材料1个作业

Throughout this module, we will jump into the realm of dimensionality reduction, a technique for simplifying complex datasets to facilitate efficient analysis and visualization. By implementing dimensionality reduction methods such as Principal Component Analysis (PCA) and t-Distributed Stochastic Neighbor Embedding (t-SNE), we gain insight into how to effectively reduce the number of features while preserving essential information. We'll also learn to select and apply the most suitable dimensionality reduction techniques based on data types and analytical goals.

涵盖的内容

5个视频11篇阅读材料1个作业

In this module, we learn the concept of the Bias-Variance Trade-Off in machine learning. Striving for models that generalize well requires navigating the delicate balance between bias and variance to avoid underfitting and overfitting. Bias prevents the error from oversimplifying a complex problem, while variance quantifies the model's sensitivity to different training data subsets. We will explore strategies to combat bias and variance in developing models that strike the right balance between accuracy and generalization. Transitioning to regression metrics, we will look at practical tools used to measure and evaluate model performance in regression tasks, focusing on metrics such as Root Mean Squared Error (RMSE). Finally, we will navigate the landscape of assessing model performance in binary classification tasks, exploring advanced measures like the F1 score, Matthews Correlation Coefficient (MCC), propensity scores, and the AUC-ROC curve.

涵盖的内容

5个视频9篇阅读材料1个作业

In this module, we will continue to explore key learning objectives to empower your understanding and application of essential techniques in machine learning. By mastering foundational classification algorithms such as KNN, LDA, and logistic regression, you'll gain the tools to tackle practical data mining tasks effectively. Through real-world dataset analysis, you'll learn to implement these algorithms with precision and insight, enabling you to extract valuable insights and make informed decisions in various domains. Join us this week to unlock the potential of classification algorithms and elevate your machine learning skills.

涵盖的内容

6个视频9篇阅读材料1个作业

Embark on a captivating journey through the world of classification algorithms in this module. We’ll dive into the intricacies of foundational techniques like decision trees, Bayes classifier, ensemble learning, and more as you learn to navigate real-world dataset analysis with confidence. After we uncover the power of the Bayes classifier, we will transition seamlessly into tackling regression tasks with decision trees. Finally, we will dive into the realm of ensemble learning. Over the course of the module, you’ll become equipped with the knowledge and skills to implement these algorithms effectively, propelling your data mining endeavors to new heights.

涵盖的内容

4个视频12篇阅读材料1个作业

In this module, we get into essential regression techniques, equipping you with the skills to analyze and model real-world data. Through hands-on lessons, learners will grasp the fundamentals of linear, multiple, and logistic regression, gaining proficiency in implementing these methods on diverse datasets for predictive modeling. Lessons cover topics ranging from understanding linear regression and calculating coefficients to exploring polynomial regression and feature selection. By the end of this module, students will possess a comprehensive understanding of regression techniques, enabling them to make informed decisions and generate valuable insights from data.

涵盖的内容

3个视频5篇阅读材料1个作业

位教师

Chinthaka Pathum Dinesh  Herath Gedara
Northeastern University
2 门课程67 名学生

提供方

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