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Enhancing Innovation Management and Venture Capital Evaluation via Advanced Deep Learning Techniques

Published: 18 December 2023 Publication History

Abstract

Innovation management involves planning, organizing, and controlling innovation within an organization, while venture capital evaluation assesses investment opportunities in startups and early-stage companies. Both fields require effective decision-making and data analysis. This study aims to enhance innovation management and venture capital evaluation by combining CNN and GRU using deep learning. The approach consists of two steps. First, the authors build a deep learning model that fuses CNN and GRU to analyze diverse data sources like text, finance, market trends, and social media sentiment. Second, they optimize the model using the gorilla troop optimization (GTO) algorithm, inspired by gorilla behavior. GTO efficiently explores the solution space to find optimal or near-optimal solutions. The authors compare the fused CNN-GRU model with traditional methods and evaluate the GTO algorithm's performance. The results demonstrate improvements in innovation management and venture capital evaluation.

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Information & Contributors

Information

Published In

cover image Journal of Organizational and End User Computing
Journal of Organizational and End User Computing  Volume 36, Issue 1
May 2024
2271 pages

Publisher

IGI Global

United States

Publication History

Published: 18 December 2023

Author Tags

  1. CNN
  2. Deep Learning
  3. GRU
  4. GTO
  5. Innovation Management
  6. Risk Investment Assessment
  7. RNN
  8. Venture Capital Evaluation

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