Application of Significance Levels for Decision Making in Financial Planning

Angelina Shyltsyna

Citation: Angelina Shyltsyna, "Application of Significance Levels for Decision Making in Financial Planning", Universal Library of Business and Economics, Volume 02, Issue 02.

Copyright: This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.

Abstract

This study aims to systematize and substantiate the application of significance levels a in the financial decision-making process and develop a unified approach for adapting traditional statistical criteria to the modern characteristics of economic data. This work synthesizes the historical progression of formalized hypothesis testing—from Pearson’s ?²-test and Fisher’s p = 0.05 threshold to contemporary adjustments for heavy-tailed distributions and autocorrelated series. The relevance of this research is driven by the dramatic increase in volumes of high-frequency and nonlinear financial data, which undermines classical asymptotic assumptions. Using examples of the tail dependencies in the S&P 500 and the autocorrelation of weekly NYSE returns, we demonstrate that, without accounting for nonstandard distributional forms and series memory, the probability of false inferences substantially exceeds the declared risk levels. The article details methods for multiple comparison corrections, bootstrap and Monte Carlo simulations, and practical VaR back-testing schemes according to Basel’s “traffic-light” methodology. The novelty of this work lies in the comprehensive integration of classical and modern statistical techniques: in addition to conventional p-value thresholds, we propose adaptive boundaries for heavy tails, incorporate adjustments for autocorrelation and heteroskedasticity, and integrate Bayesian and Holm corrections. Practical case studies in event-driven M&A analyses and marketing A/B tests illustrate how adapting the a level enhances strategy reliability and prevents the proliferation of false positives. Our principal conclusion is that rigorous and well-justified application of the significance level a, taking into account the data structure and the nature of the hypotheses under test, transforms the statistical test from a formal procedure into an effective tool for financial planning. Correct selection between one-tailed and two-tailed criteria, adjustment for autocorrelation, application of multiple-test corrections, and simulation techniques enable a balanced trade-off between Type I and Type II errors, thereby minimizing operational costs and strengthening confidence in analytical outcomes. This article will be of value to financial analysts, risk managers, and developers of algorithmic strategies.


Keywords: Significance Level, P-Value, Hypothesis Testing, Financial Planning, Risk Management, Bootstrap, Monte Carlo, Heavy Tails.

Download doi https://doi.org/10.70315/uloap.ulbec.2025.0202001