Redirigiendo al acceso original de articulo en 22 segundos...
ARTÍCULO
TITULO

Decision Support Systems For Strategic Dispute Resolution

Anurag Agarwal    
Sridhar Ramamoorti    
Vaidyanathan Jayaraman    

Resumen

Disputes and lawsuits are quite common in business and are often a source of significant liabilities. We conjecture that measurement challenges and lack of adequate analysis tools have greatly inhibited the ability of the General Counsels offices in selecting the best mode for the resolution (i.e. litigation vs. out-of-court settlement) of business conflicts and disputes. Easily quantified direct costs (e.g., out-of-pocket expenses related to pursuing and defending against litigation) tend to be considered, whereas the more difficult-to-quantify indirect risks and costs (e.g., damaged relationships with customers and potential alliance partners, including reputational harm) which may be quite significant, tend to be ignored. We also hypothesize that the benefits of Alternative Dispute Resolution (ADR) strategies may have been muted because of the failure to assess the real magnitude of not-easily-quantified indirect risks and costs. We propose two Decision Support Systems (DSSs), one for a macro-level analysis and one for a micro-level (i.e. case by case analysis), to alleviate the measurement and analysis problem. In the proposed DSSs, the underlying decision engine makes use of operations research tools such as decision trees, logic modeling, Monte-Carlo Markov-Chain (MCMC) and fuzzy logic simulations. By providing the means to gather decision-relevant information, especially on difficult-to-measure soft costs, we have attempted to reduce the decision making risk for the General Counsels offices. In the process, we have also furnished some ways to reach more informed assessments to support litigation risk management strategies and decisions.

 Artículos similares

       
 
Achini Adikari, Su Nguyen, Rashmika Nawaratne, Daswin De Silva and Damminda Alahakoon    
The proliferation of online hotel review platforms has prompted decision-makers in the hospitality sector to acknowledge the significance of extracting valuable information from this vast source. While contemporary research has primarily focused on extra... ver más
Revista: Applied Sciences

 
Rafal Doniec, Eva Odima Berepiki, Natalia Piaseczna, Szymon Siecinski, Artur Piet, Muhammad Tausif Irshad, Ewaryst Tkacz, Marcin Grzegorzek and Wojciech Glinkowski    
Cardiovascular diseases (CVDs) are chronic diseases associated with a high risk of mortality and morbidity. Early detection of CVD is crucial to initiating timely interventions, such as appropriate counseling and medication, which can effectively manage ... ver más
Revista: Applied Sciences

 
Nikolaos T. Giannakopoulos, Marina C. Terzi, Damianos P. Sakas, Nikos Kanellos, Kanellos S. Toudas and Stavros P. Migkos    
Agriculture firms face an array of struggles, most of which are financial; thus, the role of decision making is discerned as highly important. The agroeconomic indexes (AEIs) of Agriculture Employment Rate (AER), Chemical Product Price Index (CPPI), Farm... ver más
Revista: Information

 
Shweta More, Moad Idrissi, Haitham Mahmoud and A. Taufiq Asyhari    
The rapid proliferation of new technologies such as Internet of Things (IoT), cloud computing, virtualization, and smart devices has led to a massive annual production of over 400 zettabytes of network traffic data. As a result, it is crucial for compani... ver más
Revista: Algorithms

 
Nosa Aikodon, Sandra Ortega-Martorell and Ivan Olier    
Patients in Intensive Care Units (ICU) face the threat of decompensation, a rapid decline in health associated with a high risk of death. This study focuses on creating and evaluating machine learning (ML) models to predict decompensation risk in ICU pat... ver más
Revista: Algorithms