Inference: Conclusion with Confidence

Slides:



Advertisements
Similar presentations
CHAPTER 14: Confidence Intervals: The Basics
Advertisements

Confidence Intervals This chapter presents the beginning of inferential statistics. We introduce methods for estimating values of these important population.
Chapter 7 Confidence Intervals and Sample Sizes
ESTIMATING with confidence. Confidence INterval A confidence interval gives an estimated range of values which is likely to include an unknown population.
Many times in statistical analysis, we do not know the TRUE mean of a population of interest. This is why we use sampling to be able to generalize the.
AP Statistics Chapter 9 Notes.
Many times in statistical analysis, we do not know the TRUE mean of a population of interest. This is why we use sampling to be able to generalize the.
1 Chapter 6. Section 6-1 and 6-2. Triola, Elementary Statistics, Eighth Edition. Copyright Addison Wesley Longman M ARIO F. T RIOLA E IGHTH E DITION.
Population All members of a set which have a given characteristic. Population Data Data associated with a certain population. Population Parameter A measure.
Statistics 101 Chapter 10. Section 10-1 We want to infer from the sample data some conclusion about a wider population that the sample represents. Inferential.
10.1: Confidence Intervals – The Basics. Introduction Is caffeine dependence real? What proportion of college students engage in binge drinking? How do.
10.1: Confidence Intervals – The Basics. Review Question!!! If the mean and the standard deviation of a continuous random variable that is normally distributed.
Confidence Intervals: The Basics BPS chapter 14 © 2006 W.H. Freeman and Company.
+ The Practice of Statistics, 4 th edition – For AP* STARNES, YATES, MOORE Unit 5: Estimating with Confidence Section 10.1 Confidence Intervals: The Basics.
Section 10.1 Confidence Intervals
1 Section 10.1 Estimating with Confidence AP Statistics January 2013.
AP Statistics Chapter 10 Notes. Confidence Interval Statistical Inference: Methods for drawing conclusions about a population based on sample data. Statistical.
Lecture PowerPoint Slides Basic Practice of Statistics 7 th Edition.
Section 7-3 Estimating a Population Mean: σ Known.
1 Chapter 6. Section 6-1 and 6-2. Triola, Elementary Statistics, Eighth Edition. Copyright Addison Wesley Longman M ARIO F. T RIOLA E IGHTH E DITION.
Chapter 10: Confidence Intervals
Copyright © 1998, Triola, Elementary Statistics Addison Wesley Longman 1 Estimates and Sample Sizes Chapter 6 M A R I O F. T R I O L A Copyright © 1998,
+ The Practice of Statistics, 4 th edition – For AP* STARNES, YATES, MOORE Chapter 8: Estimating with Confidence Section 8.1 Confidence Intervals: The.
10.1 – Estimating with Confidence. Recall: The Law of Large Numbers says the sample mean from a large SRS will be close to the unknown population mean.
1 Copyright © 2010, 2007, 2004 Pearson Education, Inc. All Rights Reserved. Example: In a recent poll, 70% of 1501 randomly selected adults said they believed.
10.1 Estimating with Confidence Chapter 10 Introduction to Inference.
+ The Practice of Statistics, 4 th edition – For AP* STARNES, YATES, MOORE Chapter 8: Estimating with Confidence Section 8.1 Confidence Intervals: The.
CHAPTER 8 Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 6 Confidence Intervals.
Chapter 8: Estimating with Confidence
Chapter 6 Confidence Intervals.
Chapter 6 Inferences Based on a Single Sample: Estimation with Confidence Intervals Slides for Optional Sections Section 7.5 Finite Population Correction.
Inference: Conclusion with Confidence
Data Analysis and Statistical Software I ( ) Quarter: Autumn 02/03
CONCEPTS OF ESTIMATION
Introduction to Inference
CHAPTER 14: Confidence Intervals The Basics

Confidence Intervals: The Basics
Chapter 6 Confidence Intervals.
Chapter 10: Estimating with Confidence
Estimating a Population Proportion
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating With Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 12 Inference for Proportions
2/3/ Estimating a Population Proportion.
Chapter 8: Estimating with Confidence
Estimating a Population Mean:  Known
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Chapter 8: Confidence Intervals
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
Inference for Proportions
Chapter 8: Estimating with Confidence
Chapter 8: Estimating with Confidence
2.) A. Incorrect, the prob. Is either 0 or 1, but we don’t know which.
Chapter 8: Estimating with Confidence
Introduction to Inference
How Confident Are You?.
Presentation transcript:

Inference: Conclusion with Confidence Strand IV Inference: Conclusion with Confidence Statistical Inference: drawing conclusions about a population based upon the data collected from a sample of that population. To determine if our conclusion are correct/reasonable, we can use the concepts of probabilities to express the strength of our conclusions. In chapter 10, we will discuss confidence intervals which will allow us to estimate the value of a population parameter.

Section 10.1: Confidence Intervals A range of values in which the population value is likely to occur Usually given in the format: Estimate ( 𝑥 𝑜𝑟 𝑝 ) ± margin of error Confidence Level: the probability that the interval will capture the true parameter value in repeated samples (the probability that our estimation method is successful)

Example: The Sampling Distribution of the mean score ( ) of an SRS of 50 Big City University freshmen on an IQ test If we wanted to be 95% confident that we could estimate the mean IQ score for the population, we would use a margin of error equal to approximately 2 standard deviations from the estimated mean.

Conditions for Constructing a Confidence Interval for m These conditions MUST be checked and validated first… SRS: the data came from a simple random sample of the population of interest Normality: the sampling distribution of is approximately normal (Use CLT to prove this ) Independence: individual observations are independent when sampling without replacement and population ≥ 10 * sample size This also assumes that you know the value of s.

What would the critical values for 90%, 95%, and 99% be? Investigation: Let’s say that you want to create a confidence interval with an 80% confidence level for a SRS that is approximately normal and independent. Using z-scores can help us to find a confidence interval about the unknown mean (m). What would those z-score values be? z-score values that are used to create cutoff values for a confidence interval are called critical values (the positive value is represented as z*) What would the critical values for 90%, 95%, and 99% be?

The critical values are the number of standard deviations from the mean that will give you the confidence level you want. Since we know the 𝜎 for the population we can now find the confidence interval using a calculated sample mean ( ). IQ score example: For, 𝜇 𝑥 =112 𝑎𝑛𝑑 𝜎=15 , what would be the confidence interval at an 80% confident level?

Interpretations of Confidence Intervals and Confidence Levels This means that we are 80% confident that the TRUE mean IQ score of ALL freshmen at Big City University falls between 109.28 and 114.72. Confidence Level: Being “80% confident” means that 80% of the time, repeated samples of the same size will produce an interval that contains the TRUE mean.

Make the s value smaller Make the n (sample size) larger Often a high confidence level (95 or 99%), means that your interval must be very large (high margin of error). Ultimately, we would like to create a confidence interval with a high confidence level and very small margin of error. How can we control that??? Make the z* value smaller that causes you to accept a lower confidence level. Make the s value smaller this does make it easier to get a more accurate m, but is difficult to do Make the n (sample size) larger dividing by a larger number makes smaller and in turn the margin of error smaller Best Option!

So how do we find the desired sample size? Let m = the desired margin of error So, Now solve for n. Pg 640 #20b   The sample size must be at least 2653 people