Machine Learning-Based System for Automated Presentation Generation from CSV Data
DOI:
https://doi.org/10.56294/dm2024359Keywords:
Automated Presentation Generation, Content-Based Powerpoint, Text Document Analysis, Data Visualization, CSV File Processing, Machine Learning Algorithms, Data Preprocessing, Feature Extraction, Slide Creation, Information Extraction, Unstructured Data Analysis, Python Pptx ModuleAbstract
Effective presentation slides are crucial for conveying information efficiently, yet existing tools lack content analysis capabilities. This paper introduces a content-based PowerPoint presentation generator, aiming to address this gap. By leveraging automated techniques, slides are generated from text documents, ensuring original concepts are effectively communicated. Unstructured data poses challenges for organizations, impacting productivity and profitability. While traditional methods fall short, AI-based approaches offer promise. This systematic literature review (SLR) explores AI methods for extracting data from unstructured details. Findings reveal limitations in existing methods, particularly in handling complex document layouts. Moreover, publicly available datasets are task-specific and of low quality, highlighting the need for comprehensive datasets reflecting real-world scenarios. The SLR underscores the potential of Artificial-based approaches for information extraction but emphasizes the challenges in processing diverse document layouts. The proposed is a framework for constructing high-quality datasets and advocating for closer collaboration between businesses and researchers to address unstructured data challenges effectively
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Copyright (c) 2024 Balusamy Nachiappan, N Rajkumar, C Kalpana, Mohanraj A, B Prabhu Shankar, C Viji (Author)

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