A statistical tool exists that determines the chi-square value required to achieve a specified probability level, given a particular number of degrees of freedom. This computational device functions in the reverse direction of a typical chi-square calculation. Instead of inputting observed and expected values to obtain a probability (p-value), one inputs the desired probability and degrees of freedom to ascertain the critical chi-square statistic. As an illustration, to find the chi-square value associated with a significance level of 0.05 and 10 degrees of freedom, this device would yield the critical chi-square value needed to reject the null hypothesis at that significance level.
This functionality provides considerable utility in hypothesis testing and experimental design. It allows researchers to determine the threshold for statistical significance before data collection, establishing a clear criterion for rejecting the null hypothesis. This proactive approach can improve the rigor and reproducibility of research findings. Historically, statistical tables were required for this task, but the development of computational tools has streamlined the process and reduced the potential for human error. It also facilitates calculations involving non-standard significance levels not always readily available in pre-calculated tables.