Certificate in Core Topic Modeling Concepts

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The Certificate in Core Topic Modeling Concepts is a comprehensive course that empowers learners with essential skills in topic modeling, a widely sought-after competency in data analysis. This course covers vital concepts, including Latent Dirichlet Allocation (LDA), Non-negative Matrix Factorization (NMF), and Correlation Explanation (CorEx).

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In an era driven by big data, topic modeling has become indispensable in various industries, including marketing, finance, and healthcare. By mastering these core concepts, learners can extract meaningful insights from large, unstructured text data, driving data-informed decision-making and strategic planning. Upon completion, learners will be equipped with the skills to apply topic modeling techniques to real-world problems, enhancing their career prospects and competitive advantage in the job market. Stand out in your field with this industry-demanded certificate and unlock new opportunities in data analysis.

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โ€ข Introduction to Topic Modeling: Understanding the basics and importance of topic modeling, differentiating it from other text mining techniques. โ€ข Probabilistic Graphical Models: Exploring directed graphs, plate notation, and modeling dependencies in topic models. โ€ข Latent Dirichlet Allocation (LDA): Delving into the most popular topic modeling algorithm, its components, and use cases. โ€ข Implementing LDA with Gensim: Hands-on experience using Python's Gensim library to create LDA models. โ€ข Evaluation Metrics for Topic Models: Learning how to assess topic model performance using coherence scores and other metrics. โ€ข Non-Negative Matrix Factorization (NMF): Investigating an alternative topic modeling algorithm and its applications. โ€ข Hierarchical Dirichlet Process (HDP): Examining an advanced topic modeling technique for modeling an unknown number of topics. โ€ข Real-world Applications: Practicing topic modeling on diverse datasets, from scientific literature to social media posts. โ€ข Data Preprocessing for Topic Modeling: Cleaning, normalizing, and formatting text data for optimal topic modeling outcomes.

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element with the ID 'chart_div'. The width of the chart is set to 100%, allowing it to adapt to all screen sizes. The height has been set to an appropriate value of 400px. Inline CSS styles have been applied to ensure proper layout and spacing. The Google Charts library has been loaded correctly using the script tag . The JavaScript code to define the chart data, options, and rendering logic is included within a
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