Learn Significance Test with Examples & Questions

Recent questions in Significance tests
College StatisticsAnswered question
Jude Hunt Jude Hunt 2022-05-27

I have "solved" a question in mathematical statistics, but unfortunately received an incorrect answer and I would appreciate any help in understanding why my method did not work in this case. The question is as follows:
In city A, 500 randomly selected people were tested for antibodies to covid-19, which resulted in 110 giving positive results. In city B, a random sample of 500 people was also drawn, and here 91 had positive results. Can it be said that it is statistically certain that city A has a larger population share with antibodies than city B? (Justify your answer with an appropriate test. Use 5% significance level.)
I started by producing P ( A ) = 110 500 = 0.22 and respectively P ( B ) = 91 500 = 0.182.
Then I chose to continued with a one-sided hypothesis testing where I assumed that the data was binomially distributed according to B i n ( n = 500 , p ), with H 0 : P = 0.182  and  H 1 :> 0.182.
And finally brought out the one-sided interval according to: I p = λ α P ( A ) ( 1 P ( A ) ) n [ 0.189 , ] ..And concluded that H 0 should be rejected since 0.182 is not included in the interval. But according to the results, H 0 should not be rejected and they have also used a different method than I did. Why is this method not applicable in my case?
Note: At first I thought that errors were because I only used α and not α 2 in the calculation, however, even if I were to replace this, 0.182 is not in the interval.

College StatisticsAnswered question
quorums15lep quorums15lep 2022-05-08

The US government is interested in understanding what predicts death rates. They have a set of data that includes the number of deaths in each state, the number of deaths resulting from vehicle accidents (VEHICLE), the number of people dying from diabetes (DIABETES), the number of deaths related to the flu (FLU) and the number of homicide deaths (HOMICIDE).
Your run a regression to predict deaths and get the following output: 
At alpha=0.05, what is indicated by the significance F in this problem? 
A. The regression model does not significantly predict deaths. 
B. The regression model significantly predicts deaths. 
C. Two of the four independent variables significantly predict deaths. 
D. Three of the four independent variables significantly predict deaths. 
Multiple R0.874642613R Square0.764999351Adjusted R Square0.744564512Standart Error62.97881926Obsevations51 

ANOVA

 dfSSMSFSignificanceFRegression4593934..928148483.73237.436035146.36772F14Residual46182451.2571?3966ю331676   Total50776386.1851   

  CoefficientsStandartErrortStartPvalueLower95%Upper95%Intecept240.800228551.133929614.7092063982.31605E05137.8729666343.7274903VEHICLE3.0427829811.5823262211.9229808240.060685930.1422745066.227840468DIABETES11.242122651.6590664896.7761736651.97533E087.90259501714.58165028FLU12.323045842.0570122155.9907499572..9897E078.18249500716.46359668HOMICIDE1.3621284562.1135628170.6444702970.5224715012.8922528375.616509749

College StatisticsAnswered question
Defensorentx9 Defensorentx9 2022-05-07

Is Edwin Jaynes correct about statistics?
I've recently been reading Edwin Jaynes's book, Probability Theory: The Logic of Science, and I was struck by Jaynes's hostile view of what he dubs "orthodox statistics." He repeatedly claims that much of statistics is a giant mess, and argues that many commonplace statistical techniques are ad hoc devices which lack a strong theoretical footing. He blames historical giants like Karl Pearson and Ronald Fisher for the field's sorry state, and champions Bayesian methods as a healthier alternative.
From my personal perspective, his arguments make a lot of sense. However, there are a number of factors that prevent me from taking his criticism of statistics at face value. Despite the book's being published in 2003, the majority of its contents were written in the mid 20th century, making it a little dated. The field of statistics is reasonably young, and I'm willing to bet it's changed significantly since he levied his critiques.
Furthermore, I'm skeptical of how he paints statistics as having these giant methodological rifts between "frequentists" and "Bayesians." From my experience with other fields, serious methodological disagreement between professionals is almost nonexistent, and where it does exist it is often exaggerated. I'm also always skeptical of anyone who asserts that an entire field is corrupt--scientists and mathematicians are pretty intelligent people, and it's hard to believe that they were as clueless during Jaynes's lifetime as he claims.
Questions:
1. Can anyone tell me if Jaynes's criticisms of statistics were valid in the mid 20th century, and furthermore whether they are applicable to statistics in the present day? For example, do serious statisticians still refuse to assign probabilities to different hypotheses, merely because those probabilities don't correspond to any actual "frequencies?"
2. Are "frequentists" and "Bayesians" actual factions with strong disagreements about statistics, or is the conflict exaggerated?

Almost all significance test practice problems that you will encounter below help to find solutions to your questions as the answers deal with the same equations that have been used. Start with any significance test example and you will understand that you only have to change variables to determine each value. It's exactly what makes significance test equation so popular as it provides help with more advanced probability concepts. As you look through significance test questions, look for similar patterns as these are where you must start regardless of whether you deal with a complex engineering project or statistical analysis.