/*! This file is auto-generated */ .wp-block-button__link{color:#fff;background-color:#32373c;border-radius:9999px;box-shadow:none;text-decoration:none;padding:calc(.667em + 2px) calc(1.333em + 2px);font-size:1.125em}.wp-block-file__button{background:#32373c;color:#fff;text-decoration:none} Problem 14 Medical personnel are required t... [FREE SOLUTION] | 91Ó°ÊÓ

91Ó°ÊÓ

Medical personnel are required to report suspected cases of child abuse. Because some diseases have symptoms that mimic those of child abuse, doctors who see a child with these symptoms must decide between two competing hypotheses: \(H_{0}:\) symptoms are due to child abuse \(H_{a}:\) symptoms are due to disease (Although these are not hypotheses about a population characteristic, this exercise illustrates the definitions of Type I and Type II errors.) The article "Blurred Line Between Illness, Abuse Creates Problem for Authorities" (Macon Telegraph, February 28,2000 ) included the following quote from a doctor in Atlanta regarding the consequences of making an incorrect decision: "If it's disease, the worst you have is an angry family. If it is abuse, the other kids (in the family) are in deadly danger." a. For the given hypotheses, describe Type I and Type II errors. b. Based on the quote regarding consequences of the two kinds of error, which type of error does the doctor quoted consider more serious? Explain.

Short Answer

Expert verified
Type I error is diagnosing a disease as child abuse when it is not. Type II error is failing to diagnose child abuse when it is actually present. The doctor considers Type II error more serious as per his quote because it entails a riskier consequence - not identifying actual child abuse is a deadly danger to other kids in the family.

Step by step solution

01

Define Type I and Type II Errors

A Type I error occurs when we reject the null hypothesis (\(H_{0}\)), even though it is true. Applied to this situation, a Type I error would occur if the symptoms were actually due to a disease (\(H_{0}\)), but the doctor incorrectly reports it as child abuse. A Type II error, on the other hand, happens when we fail to reject the null hypothesis even though the alternative hypothesis (\(H_{a}\)) is true. In this case, a Type II error would occur if the symptoms were actually due to child abuse, but the doctor incorrectly attributes it to a disease.
02

Interpret the Quote

Given the consequences in the quote provided, the doctor seems to consider a Type II error more serious. The reason is that misdiagnosing child abuse (which is actually happening) as a disease would lead to 'other kids (in the family) being in deadly danger.' Although diagnosing a disease as child abuse when the opposite is true (Type I error) might cause an uproar in the family, it is still less severe when compared to the deadly consequences of a Type II error in this context.

Unlock Step-by-Step Solutions & Ace Your Exams!

  • Full Textbook Solutions

    Get detailed explanations and key concepts

  • Unlimited Al creation

    Al flashcards, explanations, exams and more...

  • Ads-free access

    To over 500 millions flashcards

  • Money-back guarantee

    We refund you if you fail your exam.

Over 30 million students worldwide already upgrade their learning with 91Ó°ÊÓ!

Key Concepts

These are the key concepts you need to understand to accurately answer the question.

Type I Error
In hypothesis testing, a Type I error is an important concept that helps us understand the risks involved in making decisions. It happens when we reject the null hypothesis (\(H_{0}\)) even though it is actually true. Essentially, we make a 'false alarm.' Let's say a doctor is reviewing a case to determine the cause of certain symptoms. If they conclude that these symptoms stem from child abuse, when they actually result from a disease, a Type I error has occurred.
This type of error can lead to unnecessary stress and consequences for the family involved. It’s akin to ringing the alarm bell when there's nothing wrong. Although it may cause upset or distress, it does not carry the same lethal risks as other errors might.
Understanding Type I errors is crucial for minimizing wrongful accusation scenarios. Decision-making processes are influenced by the desire to reduce these errors without being too cautious.
Type II Error
A Type II error represents a different kind of mistake in statistical decision-making. This error occurs when we fail to reject the null hypothesis (\(H_{0}\)), even though the alternative hypothesis (\(H_{a}\)) is true. We can think of this as a missed opportunity or a failure to detect the truth. Take, for example, a scenario where a doctor concludes that symptoms are merely due to a disease, when in fact they are signs of child abuse. Here, a Type II error has been made.
Such an error is especially significant because it involves underestimating a potentially harmful situation. In the context of medical diagnosis and child safety, a Type II error is highly dangerous. It means missing out on identifying real instances of child abuse, allowing harmful situations to persist.
It's crucial for medical professionals and researchers to weigh the consequences of Type II errors carefully. Adjusting hypothesis test parameters can sometimes help balance the risks associated with Type I and Type II errors.
Null Hypothesis
In statistics, the null hypothesis, often denoted as \(H_{0}\), serves as the starting point for hypothesis testing. It reflects a position of 'no effect' or 'no difference,' allowing us to assume that any observed effect is due to random chance unless evidence suggests otherwise. In scenarios such as medical investigations or legal examinations, this hypothesis acts as the default assumption.
In the context of medical diagnosis, if symptoms display characteristics commonly linked to child abuse, the null hypothesis might propose that these symptoms do indeed stem from abuse. Researchers and doctors would require substantial evidence to reject this hypothesis and accept the alternative—that symptoms are disease-related.
Null hypotheses are critical foundations. They allow scientists and analysts to build and test theories. By assuming no initial effect, they enable a fair test to see whether new evidence triggers rejecting this assumption.
Alternative Hypothesis
The alternative hypothesis, designated as \(H_{a}\), plays a vital role in hypothesis testing. This is what researchers and scientists use to propose a theory contrary to the null hypothesis. It suggests that there could be an actual effect or difference. When considering the example of a medical investigation for child abuse, the alternative hypothesis would be that symptoms arise due to disease and not abuse.
The alternative hypothesis is what one aims to support. To do this, sufficient evidence has to be gathered to convincingly show that the alternative is more plausible than the status quo (the null hypothesis).
Making sound conclusions inherently requires a balance between potentially plausible outcomes. By clearly defining an alternative hypothesis, it guides investigation efforts with increased precision and allows scientists to effectively challenge existing theories or assumptions if the data compellingly supports a different narrative.

One App. One Place for Learning.

All the tools & learning materials you need for study success - in one app.

Get started for free

Most popular questions from this chapter

Explain why the statement \(\bar{x}=50\) is not a legitimate hypothesis.

The Economist collects data each year on the price of a Big Mac in various countries around the world. The price of a Big Mac for a sample of McDonald's restaurants in Europe in May 2009 resulted in the following Big Mac prices (after conversion to U.S. dollars): \(\begin{array}{llllll}3.80 & 5.89 & 4.92 & 3.88 & 2.65 & 5.57\end{array}\) \(\begin{array}{ll}6.39 & 3.24\end{array}\) The mean price of a Big Mac in the U.S. in May 2009 was \(\$ 3.57\). For purposes of this exercise, assume it is reasonable to regard the sample as representative of European McDonald's restaurants. Does the sample provide convincing evidence that the mean May 2009 price of a Big Mac in Europe is greater than the reported U.S. price? Test the relevant hypotheses using \(\alpha=.05\).

In a study of computer use, 1000 randomly selected Canadian Internet users were asked how much time they spend using the Internet in a typical week (Ipsos Reid, August 9,2005 ). The mean of the sample observations was 12.7 hours. a. The sample standard deviation was not reported, but suppose that it was 5 hours. Carry out a hypothesis test with a significance level of .05 to decide if there is convincing evidence that the mean time spent using the Internet by Canadians is greater than 12.5 hours. b. Now suppose that the sample standard deviation was 2 hours. Carry out a hypothesis test with a significance level of .05 to decide if there is convincing evidence that the mean time spent using the Internet by Canadians is greater than 12.5 hours. c. Explain why the null hypothesis was rejected in the test of Part (b) but not in the test of Part (a).

The mean length of long-distance telephone calls placed with a particular phone company was known to be 7.3 minutes under an old rate structure. In an attempt to be more competitive with other long-distance carriers, the phone company lowered long-distance rates, thinking that its customers would be encouraged to make longer calls and thus that there would not be a big loss in revenue. Let \(\mu\) denote the mean length of long-distance calls after the rate reduction. What hypotheses should the phone company test to determine whether the mean length of long-distance calls increased with the lower rates?

The amount of shaft wear after a fixed mileage was determined for each of seven randomly selected internal combustion engines, resulting in a mean of 0.0372 inch and a standard deviation of 0.0125 inch. a. Assuming that the distribution of shaft wear is normal, test at level .05 the hypotheses \(H_{0}: \mu=.035\) versus \(H_{\dot{a}}: \boldsymbol{\mu}>.035 .\) b. Using \(\sigma=0.0125, \alpha=.05,\) and Appendix Table 5, what is the approximate value of \(\beta,\) the probability of a Type II error, when \(\mu=.04\) ? c. What is the approximate power of the test when \(\mu=.04\) and \(\alpha=.05 ?\)

See all solutions

Recommended explanations on Math Textbooks

View all explanations

What do you think about this solution?

We value your feedback to improve our textbook solutions.

Study anywhere. Anytime. Across all devices.