Fractional cumulative Residual Inaccuracy in the Quantile Framework and its Appications
By: Iona Ann Sebastian, S. M. Sunoj
Potential Business Impact:
Finds differences between complex systems.
Fractional cumulative residual inaccuracy (FCRI) measure allows to determine regions of discrepancy between systems, depending on their respective fractional and chaotic map parameters. Most of the theoretical results and applications related to the FCRI of the lifetime random variable are based on the distribution function approach. However, there are situations in which the distribution function may not be available in explicit form but has a closed-form quantile function (QF), an alternative method of representing a probability distribution. Motivated by these, the present study is devoted to introduce a quantile-based FCRI and study its various properties. We also deal with non-parametric estimation of quantile-based FCRI and examine its validity using simulation studies and illustrate its usefulness in measuring the discrepancy between chaotic systems and in measuring the discrepancy in two different time regimes using Nifty 50 dataset.
Similar Papers
Model-Free Assessment of Simulator Fidelity via Quantile Curves
Methodology
Measures how well computer simulations match real life.
Quantile-based Fractional Generalized Cumulative Past Entropy
Statistics Theory
Measures how long things will work before breaking.
Conformal Prediction for Compositional Data
Machine Learning (Stat)
Guarantees accurate predictions for parts of a whole.