Professional Certificate Twitter Data for Investigations
-- ViewingNowThe Twitter Data for Investigations Professional Certificate course is a comprehensive program that equips learners with essential skills to leverage Twitter data for investigative purposes. This course is crucial in today's digital age, where social media plays a significant role in shaping public opinion and spreading information.
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⢠<data-mining-techniques>: Introduction to various data mining techniques used to extract insights from Twitter data.
⢠<twitter-api>: Understanding the Twitter API and how to access data from Twitter for analysis.
⢠<natural-language-processing>: Overview of natural language processing (NLP) techniques and their application in analyzing Twitter data.
⢠<social-network-analysis>: Exploration of social network analysis and its use in identifying patterns and relationships in Twitter data.
⢠<sentiment-analysis>: In-depth review of sentiment analysis, including supervised and unsupervised methods, and their application in analyzing Twitter data.
⢠<topic-modeling>: Study of topic modeling techniques, such as Latent Dirichlet Allocation (LDA), and their application in identifying themes and topics in Twitter data.
⢠<geographic-information-systems>: Introduction to Geographic Information Systems (GIS) and their use in analyzing geolocated Twitter data.
⢠<data-visualization>: Overview of data visualization techniques and tools for presenting Twitter data insights.
⢠<ethical-considerations>: Examination of ethical considerations when analyzing Twitter data, including privacy and consent.
⢠<case-studies>: Analysis of real-world case studies demonstrating the application of Twitter data for investigations.
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