Computational Linguistics Applications in AI-Based Investment and Cost Structuring Models
Abstract
Artificial intelligence is an influential technological paradigm that is quickly and comprehensively transforming financial decision-making systems worldwide. This study aims to focus on computational and economic implications of computational linguistics techniques and to enrich the existing literature in AI-driven investment modeling. Empirically, we draw on a cross-sectional research project, assessing the predictive power of linguistic data processing algorithms and the experiences of financial analysts in cost structuring contexts. A regression-based model consisting of semantic, syntactic, and pragmatic dimensions was created and estimated through correlation and multivariate regression analysis. The findings indicate that natural language processing efficiency and machine learning advancements have significant impacts on investment planning accuracy. Computational linguistics is deeply embedded in algorithmic financial models and reshapes cost forecasting frameworks through data-driven semantic interpretation. Closing the research gaps would contribute to the development of much-needed intelligent financial infrastructures. AI-enabled linguistics modeling promotes scalable optimization and context-aware applications of financial analytics, and realizes cost transparency improvements in automated investment systems. This paper offers computational insights and reflections to provide financial analysts with key information to best apply linguistically driven AI tools while being aware of contextual modeling constraints. This future research agenda provides ample scope for future empirical investigation and interdisciplinary science on semantic modeling, cost structuring, investment forecasting, and automated financial systems.