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Beyond Boundaries: Navigating Liquidity Frontiers with Advanced L-VaR Optimization Algorithms and Strategic Integration of Bid-Ask Modeling Spreads

Mazin A. M. Al Janabi ()
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Mazin A. M. Al Janabi: Calle Maranon 16

Chapter Chapter 8 in Liquidity Dynamics and Risk Modeling, 2024, pp 539-638 from Springer

Abstract: Abstract Exploring the complexities of contemporary machine learning methodologies, this chapter focuses on the computation of market and asset liquidity risks, especially within the dynamic realm of multiple-asset portfolios. With a sharp focus on theoretical foundations, we unveil robust processes designed to accurately measure the intricate interplay of liquidity and market risks. This contribution extends the boundaries of existing literature by furnishing generalized theoretical modeling algorithms that transcend traditional boundaries, offering versatile applications across various financial market scenarios. Our exploration underscores the pivotal role of these modeling algorithms in not only augmenting risk management practices but also catalyzing advancements in financial technology. By recognizing the inherent correlation between liquidity and market risks, we advocate for the integration of both components within a unified framework. Through meticulous theoretical groundwork and sophisticated modeling techniques, exemplified by the Liquidity-Adjusted Value-at-Risk (L-VaR) framework, we navigate the complex terrain of adverse price movements and transactions costTransactions cost, including the volatility of bid-ask spreads. Moreover, our proposed methodologies empower stakeholders to assess portfolio-level liquidity and market risks with heightened precision and foresight. This forward-looking approach holds significant promise for enhancing risk management strategies, particularly in navigating the intricacies of contemporary financial landscapes. As such, our endeavors not only contribute to the theoretical discourse but also pave the way for practical innovations, leveraging the synergy between financial technology and machine learning in the expansive realm of big data environments.

Keywords: Adverse Price Movements; Artificial Intelligence; Al Janabi Model; Economic Capital; Emerging Markets; Financial Engineering; Financial Risk Management; Financial Markets; Internet of Things (IoT); Liquidity; Liquidity Risk; Liquidity-Adjusted Value-at-Risk (L-VaR); Machine Learning; Market Risk; Optimal (coherent) Asset Allocations; Portfolio Management; Transactions Cost; Value-at-Risk (VaR) (search for similar items in EconPapers)
Date: 2024
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Persistent link: https://EconPapers.repec.org/RePEc:spr:sprchp:978-3-031-71503-7_8

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DOI: 10.1007/978-3-031-71503-7_8

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