Amit Kothiyal
Max Planck Society
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Publication
Featured researches published by Amit Kothiyal.
MPRA Paper | 2014
David Aikman; Mirta Galesic; Gerd Gigerenzer; Sujit Kapadia; Konstantinos V. Katsikopoulos; Amit Kothiyal; Emma Murphy; Tobias Neumann
Distinguishing between risk and uncertainty, this paper draws on the psychological literature on heuristics to consider whether and when simpler approaches may outperform more complex methods for modelling and regulating the financial system. We find that: (i) simple methods can sometimes dominate more complex modelling approaches for calculating banks’ capital requirements, especially if limited data are available for estimating models or the underlying risks are characterised by fat-tailed distributions; (ii) simple indicators often outperformed more complex metrics in predicting individual bank failure during the global financial crisis; and (iii) when combining information from different indicators to predict bank failure, ‘fast-and-frugal’ decision trees can perform comparably to standard, but more information-intensive, regression techniques, while being simpler and easier to communicate.
Operations Research | 2014
Amit Kothiyal; Vitalie Spinu; Peter P. Wakker
This paper provides necessary and sufficient preference conditions for average utility maximization over sequences of variable length. We obtain full generality by using a new algebraic technique that exploits the richness structure naturally provided by the variable length of the sequences. Thus we generalize many preceding results in the literature. For example, continuity in outcomes, a condition needed in other approaches, now is an option rather than a requirement. Applications to expected utility, decisions under ambiguity, welfare evaluations for variable population size, discounted utility, and quasilinear means in functional analysis are presented.
Archive | 2011
Marcel J.L. de Heide; Amit Kothiyal
We present a theoretical framework which allows for the comparison of the effectiveness of tax measures, loans and funding, in supporting industry-oriented research. We estimate for each of the instruments the exact contribution required by a firm to decide on investing in R&D, given the costs and probability of success of the project, and the foreseen change in profit following successful implementation of the research results. We apply Prospect Theory to analyse the risk attitude of the firm. By comparing the contribution required, we identify the instrument which is most effective, and therefore preferred by a government. Our analysis indicates that there exists a critical value for the probability of success of the project for which the modality of the most effective instruments changes. For a probability of success smaller than the critical value, a tax measures offering support only in case of successful completion of the project is preferred. For a probability higher than the critical value, a loan is most effective. The value of the critical probability depends on the perception of risk and loss aversion of the firm involved in the research.
Journal of Risk and Uncertainty | 2011
Amit Kothiyal; Vitalie Spinu; Peter P. Wakker
Journal of Risk and Uncertainty | 2014
Amit Kothiyal; Vitalie Spinu; Peter P. Wakker
Journal of Multi-criteria Decision Analysis | 2010
Amit Kothiyal; Vitalie Spinu; Peter P. Wakker
The Journal of Risk Management | 2014
Hansjörg Neth; Björn Meder; Amit Kothiyal; Gerd Gigerenzer
Judgment and Decision Making | 2014
Pantelis P. Analytis; Amit Kothiyal; Konstantinos V. Katsikopoulos
Journal of Mathematical Psychology | 2013
Han Bleichrodt; Amit Kothiyal; Drazen Prelec; Peter P. Wakker
Archive | 2007
Han Bleichrodt; Peter P. Wakker; Amit Kothiyal