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Il y a 12 modules dans ce cours
Welcome to the Text Mining for Marketing course! This course will introduce you to the principles and methods of text mining as they apply to the field of marketing. You will learn how and why to use text mining to inform marketing decisions and strategies. This course is for everyone interested in practical applications of text mining in the marketing discipline and who wants to understand it and apply it. This course is not for those who are looking for programming instructions and mathematical routines.
This is a beginner-level course that will bring awareness to the present practice of text mining in marketing. It will help you to get familiarized with practical tips about when and where to use various techniques and tools. You will learn about critical theories and concepts with the help of relevant examples.
After the successful completion of this course, you will develop a basic understanding of how to use text mining techniques for making marketing decisions. You will gain sufficient knowledge of foundational elements, what is the relationship between textual data and marketing constructs/concepts, and how text mining and marketing work in tandem to produce relevant insights for today’s market. It will also provide you with concrete strategies to get started with text mining in marketing.
To succeed in this course, you should have experience in/know about/have basic understanding of marketing concepts and data analytics techniques. Students must understand the difference between data analytics and text analytics.
The module describes the importance of text mining in marketing, its definition, and its role in analyzing unstructured data to uncover hidden insights, trends, and patterns. The module further explains how text mining enables businesses to analyze customer feedback, social media posts, online reviews, and other textual sources to gain insights into customer behavior and preferences. The text mining process involves data acquisition, preprocessing, text analysis, and interpretation. The module also discusses the benefits of text mining in marketing, such as sentiment analysis, customer segmentation, and monitoring brand reputation. Finally, the module discusses the challenges of analyzing unstructured text data and future directions in text data analysis.
Inclus
6 vidéos5 lectures4 devoirs
Afficher les informations sur le contenu du module
6 vidéos•Total 32 minutes
Course Introduction•3 minutes
Meet Your Instructor•2 minutes
Introduction to Text Mining for Marketing•6 minutes
Definition of Text Mining and Marketing•7 minutes
Reasons for Using Text Mining in Marketing•7 minutes
Dealing with Text•8 minutes
5 lectures•Total 85 minutes
Course Overview•10 minutes
Essential Reading: Who Should Read This Book? and Where We Find Text? •15 minutes
Essential Reading: Sense and Sensibility in Thinking About Text •20 minutes
Essential Reading: A Few Places We Will Not Be Going •10 minutes
Essential Reading: Customer Value •30 minutes
4 devoirs•Total 12 minutes
Introduction to Text Mining for Marketing•3 minutes
Definition of Text Mining and Marketing•3 minutes
Reasons for Using Text Mining in Marketing•3 minutes
Dealing with Text•3 minutes
Application of Text Mining in Marketing
Module 2•2 heures à terminer
Détails du module
In this module, you will learn about customer feedback analysis, brand monitoring, and reputation management. It explains how text mining techniques can be used to analyze and extract useful information from unstructured or semi-structured textual data. It also highlights the benefits of leveraging machine learning and AI for customer feedback analysis and how sentiment analysis and named entity recognition can help monitor brand reputation. This module also discusses the use of text mining in two different business areas, competitive analysis and customer segmentation. The module explains the importance of these areas and their benefits for businesses. The module focuses on how text mining can be used in these areas, and it discusses different text mining techniques and their applications.
Inclus
4 vidéos4 lectures4 devoirs1 sujet de discussion
Afficher les informations sur le contenu du module
4 vidéos•Total 22 minutes
Customer Feedback Analysis•6 minutes
Brand Monitoring and Reputation Management•5 minutes
Competitive Analysis•5 minutes
Predictive Analysis and Customer Segmentation•5 minutes
4 lectures•Total 65 minutes
Essential Reading: Text Mining of Online Hotel Reviews •15 minutes
Essential Reading: Sentiment Analysis for Reputation Management •10 minutes
Essential Reading: Life Cycle Marketing Strategies •10 minutes
Essential Reading: An Easy Primer to Predictive Analytics for Marketers •30 minutes
4 devoirs•Total 18 minutes
Customer Feedback Analysis•3 minutes
Brand Monitoring and Reputation Management•9 minutes
Competitive Analysis•3 minutes
Predictive Analysis and Customer Segmentation•3 minutes
1 sujet de discussion•Total 20 minutes
Customer Feedback Analysis•20 minutes
Weekly Summative Assessment: Introduction and Application of Text Mining in Marketing
Module 3•1 heure à terminer
Détails du module
This assessment is a graded quiz based on the modules covered this week.
Inclus
1 devoir
Afficher les informations sur le contenu du module
1 devoir•Total 60 minutes
Graded Quiz: Introduction and Application of Text Mining in Marketing•60 minutes
Text Mining Techniques for Marketing - I
Module 4•2 heures à terminer
Détails du module
The module covers various text mining techniques that can be used in marketing to analyze customer feedback, monitor brand reputation, identify trends and patterns, and develop targeted marketing strategies. It aims to provide an overview of the exponential growth of data and access to unstructured or semi-structured text data and the importance of text mining for businesses to make informed decisions and enhance customer experiences. This module also describes two different text mining techniques: sentiment analysis and topic modeling. These techniques can be applied to a wide range of text data, including customer reviews, social media posts, news articles, and even internal documents such as emails and reports.
Inclus
4 vidéos4 lectures4 devoirs
Afficher les informations sur le contenu du module
4 vidéos•Total 20 minutes
Text Mining Techniques for Marketing•6 minutes
Text Preprocessing Techniques•5 minutes
Sentiment Analysis•4 minutes
Topic Modeling •4 minutes
4 lectures•Total 85 minutes
Essential Reading: Social Listening and Text Analysis •20 minutes
Essential Reading: Processing and Understanding Text •30 minutes
Essential Reading: In the Mood for Sentiment (and Counting)•20 minutes
Essential Reading: Topic Modeling •15 minutes
4 devoirs•Total 18 minutes
Text Mining Techniques for Marketing•3 minutes
Text Preprocessing Techniques•3 minutes
Sentiment Analysis•6 minutes
Topic Modeling•6 minutes
Text Mining Techniques for Marketing - II
Module 5•3 heures à terminer
Détails du module
In this module, we will discuss the concept of named entity recognition (NER), which is a text-mining technique used to identify and classify named entities, such as people, organizations, locations, and dates, mentioned in a piece of text data. The module explains the importance of NER in natural language processing (NLP) and various industries, including marketing. This module also explains the importance of text classification in analyzing large volumes of text data and its applications in sentiment analysis, spam detection, and customer segmentation. This module describes two other techniques, i.e., topic clusterings and Bayes Nets, that can be used to analyze and make sense of unstructured data. Topic clustering involves grouping similar pieces of text data together based on their shared topics or themes, whereas Bayes Nets is a unique group of techniques with potent predictive abilities that employ graphical analytical approaches to categorize relationships between variables.
Inclus
4 vidéos4 lectures4 devoirs1 sujet de discussion
Afficher les informations sur le contenu du module
4 vidéos•Total 22 minutes
Named Entity Recognition•5 minutes
Text Classification•5 minutes
Topic Clustering•5 minutes
Bayes Nets or Bayesian Networks•6 minutes
4 lectures•Total 120 minutes
Essential Reading: Named Entity Recognition •30 minutes
Essential Reading: Classifications That Grow on Trees•30 minutes
Essential Reading: Putting Text Together•30 minutes
Essential Reading: All in the family with Bayes Nets•30 minutes
4 devoirs•Total 12 minutes
Named Entity Recognition•3 minutes
Text Classification•3 minutes
Topic Clustering•3 minutes
Bayes Nets or Bayesian Networks•3 minutes
1 sujet de discussion•Total 30 minutes
Named Entity Recognition•30 minutes
Weekly Summative Assessment: Text Mining Techniques for Marketing
Module 6•1 heure à terminer
Détails du module
This assessment is a graded quiz based on the modules covered this week.
Inclus
1 devoir
Afficher les informations sur le contenu du module
1 devoir•Total 60 minutes
Graded Quiz: Text Mining Techniques for Marketing•60 minutes
Challenges - I
Module 7•2 heures à terminer
Détails du module
This module provides an overview of the challenges and limitations of text mining in marketing. It highlights the significance of text mining in marketing and outlines several challenges and limitations marketers face while using text mining techniques in their decision-making. In this module, we will also discuss different aspects of text mining in the marketing domain. First, we will highlight the importance of data quality and reliability, discussing the challenges of the accuracy and reliability of unstructured text data. In the later part, we will focus on data privacy concerns in text mining, covering regulations such as the General Data Protection Regulation (GDPR) and the California Consumer Privacy Act (CCPA).
Inclus
4 vidéos4 lectures4 devoirs
Afficher les informations sur le contenu du module
4 vidéos•Total 25 minutes
Challenges and Limitations of Text Mining in Marketing•7 minutes
Accuracy of Text Mining Techniques•6 minutes
Data Quality and Reliability•6 minutes
Data Privacy•6 minutes
4 lectures•Total 60 minutes
Essential Reading: Text Mining: Challenges and Future Directions •15 minutes
Essential Reading: Text Mining: Techniques, Applications, and Issues•10 minutes
Essential Reading: Choosing the Right Customer or Segment•15 minutes
Essential Reading: Privacy and the Difference Between Delightful and Invasive •20 minutes
4 devoirs•Total 18 minutes
Challenges and Limitations of Text Mining in Marketing•6 minutes
Accuracy of Text Mining Techniques•3 minutes
Data Quality and Reliability•3 minutes
Data Privacy•6 minutes
Challenges - II
Module 8•2 heures à terminer
Détails du module
This module discusses the challenges of lack of context and complex data analysis in text mining for marketing. It explains how these challenges can lead to inaccurate analysis and incorrect conclusions. It also highlights the need for businesses to use techniques, such as sentiment analysis and natural language processing, to overcome these challenges and make accurate and informed decisions based on text data analysis. In the second half, we will discuss the challenges faced by marketers while adopting text-mining techniques for decision-making, with a focus on the cost associated with text mining and the technical skills and expertise required. It also highlights the need to invest in necessary resources and expertise to effectively use text mining tools and processes.
Inclus
4 vidéos4 lectures4 devoirs1 sujet de discussion
Afficher les informations sur le contenu du module
4 vidéos•Total 22 minutes
Lack of Context •6 minutes
Complex Data Analysis and Interpretation•5 minutes
Cost•5 minutes
Technical Skills and Expertise•6 minutes
4 lectures•Total 75 minutes
Essential Reading: Semantic Issues •30 minutes
Essential Reading: Text Analytics Needs to Follow Good Analytic Principles •15 minutes
Essential Reading: Analyzing Text Has More Costs Than You May Expect •15 minutes
Essential Reading: Career Advice for Aspiring Predictive Marketers •15 minutes
4 devoirs•Total 12 minutes
Lack of Context•3 minutes
Complex Data Analysis and Interpretation•3 minutes
Cost•3 minutes
Technical Skills and Expertise•3 minutes
1 sujet de discussion•Total 30 minutes
Lack of Context•30 minutes
Weekly Summative Assessment: Challenges of Text Mining Techniques
Module 9•1 heure à terminer
Détails du module
This assessment is a graded quiz based on the modules covered this week.
Inclus
1 devoir
Afficher les informations sur le contenu du module
1 devoir•Total 60 minutes
Graded Quiz: Challenges of Text Mining Techniques•60 minutes
Future Directions
Module 10•1 heure à terminer
Détails du module
This module discusses the future directions of text mining in marketing, focusing on the advancements in machine learning and AI. The module covers various areas of development that are likely to shape the field of text mining, such as the integration of text mining with other forms of data analysis, the development of more advanced text mining algorithms, the use of machine learning and AI, the development of specialized tools and applications, and the development of new techniques for protecting customer privacy. This module also discusses the integration of text mining with other marketing technologies and new sources of data and analysis in text mining for marketing. It explores the potential applications of text mining in marketing, including how text mining can be integrated with existing marketing technologies, such as customer relationship management (CRM) software, marketing automation tools, and analytics platforms. The module also discusses emerging technologies, such as natural language processing (NLP) and chatbots, and how text mining can be integrated with these technologies to gain more accurate insights.
Inclus
4 vidéos4 lectures4 devoirs
Afficher les informations sur le contenu du module
4 vidéos•Total 23 minutes
Future Directions of Text Mining in Marketing •6 minutes
Advancements in Machine Learning and Artificial Intelligence•6 minutes
Integration with Other Marketing Technologies •6 minutes
New Sources of Data and Analysis•6 minutes
4 lectures•Total 35 minutes
Essential Reading: Where We May Be Going •5 minutes
Essential Reading: What Role Does Text Analytics Play?•5 minutes
Essential Reading: Best Practices for Text Analytics •15 minutes
Essential Reading: New Areas That May Use Text Analytics in the Future•10 minutes
4 devoirs•Total 18 minutes
Future Directions of Text Mining in Marketing •3 minutes
Advancements in Machine Learning and Artificial Intelligence•6 minutes
Integration with Other Marketing Technologies •3 minutes
New Sources of Data and Analysis•6 minutes
Implications
Module 11•2 heures à terminer
Détails du module
The module focuses on the implications of text mining in marketing practice and research, including the opportunities presented by advancements in machine learning and artificial intelligence. It also highlights the ethical concerns related to the use of text mining techniques in marketing, such as privacy violations, feedback manipulation, targeting vulnerable customers, and potential biases. This module also provides an in-depth exploration of the potential applications of text mining techniques in marketing. It highlights the crucial role that text mining can play in providing valuable insights into customer feedback, monitoring brand reputation, conducting competitive analysis, and segmentation of customer behavior. The module discusses the future directions of text mining in marketing, including the integration of new sources of data, such as voice data, image and video data, and customer journey data. The implications of text mining for marketing practice and research are also explored, including ethical considerations.
Inclus
4 vidéos4 lectures4 devoirs1 sujet de discussion
Afficher les informations sur le contenu du module
4 vidéos•Total 23 minutes
Implications for Marketing Practice and Research•5 minutes
Ethical Concerns•5 minutes
Summary•6 minutes
Conclusion•6 minutes
4 lectures•Total 60 minutes
Essential Reading: Text Mining for Market Prediction•15 minutes
Essential Reading: Ethical Issues in Text Mining for Mental Health•15 minutes
Essential Reading: Summary•15 minutes
Essential Reading: The Future of Text and Web Analytics•15 minutes
4 devoirs•Total 12 minutes
Implications for Marketing Practice and Research•3 minutes
Ethical Concerns•3 minutes
Summary•3 minutes
Conclusion•3 minutes
1 sujet de discussion•Total 30 minutes
Ethical Concerns•30 minutes
Weekly Summative Assessment: Future Directions and Implications
Module 12•1 heure à terminer
Détails du module
This assessment is a graded quiz based on the modules covered this week.
Inclus
1 vidéo1 devoir
Afficher les informations sur le contenu du module
1 vidéo•Total 2 minutes
Course Wrap-up•2 minutes
1 devoir•Total 60 minutes
Graded Quiz: Future Directions and Implications•60 minutes
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