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Chapter 6 Introduction to Inferential Statistics Sampling and Sampling Designs

Chapter 6 Introduction to Inferential Statistics Sampling and Sampling Designs. What are samples?. Population 母體. Sample 樣本. Sampling 抽樣.  σ 2. Ѕ 2. Generalization 推論. Parameter 參數. Statistic 統計量. 誤差. Differences between parameters and statistics=error sampling error 抽樣誤差

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Chapter 6 Introduction to Inferential Statistics Sampling and Sampling Designs

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  1. Chapter 6 Introduction to Inferential StatisticsSampling and Sampling Designs

  2. What are samples?

  3. Population 母體 Sample 樣本 Sampling 抽樣  σ2 Ѕ2 Generalization 推論 Parameter 參數 Statistic 統計量

  4. 誤差 • Differences between parameters and statistics=error • sampling error 抽樣誤差 • non-sampling error 非抽樣誤差 (also called measurement error)

  5. Sampling error • the degree to which a given sample differs from the population • sampling error tends to be high with small sample sizes and will decrease as sample size increases

  6. Target Population • group to which you wish to generalize the results of the study • should be defined as specifically as possible

  7. sampling frame sample population

  8. Sampling Techniques • Nonprobability Sampling (nonrandom sampling) 非隨機抽樣 • Probability Sampling (random sampling) 隨機抽樣

  9. Nonprobability sampling • Convenience sampling 方便抽樣 • getting people who are most conveniently available • fast & low cost • Volunteers 自願樣本 • units are self-selected

  10. Characteristics of nonprobability samples • members of the population DO NOT have an equal chance of being selected • results cannot be generalized beyond the group being tested

  11. Probability Sampling • sample should represent the population • using random selection methods

  12. Types of Probability Sampling • Simple random sampling簡單隨機抽樣 • Systematic sampling系統式抽樣 • Stratified sampling 分層隨機抽樣 • Cluster sampling 部落抽樣

  13. Simple Random Sampling • every unit in the population has an equal and known probability of being selected as part of the sample (抽籤) • e.g. in obtaining a sample of 10 subjects from a population of 1,000 people, everyone in the population would have a 1/100 chance of being selected (or p of .01)

  14. 亂數表

  15. Characteristics of simple random sampling • Unbiased: 母體內每一個體被抽到的機會均等 • Independence : 母體內某一個個體被抽到不會影響其他個體被抽到的機會

  16. Limitations of simple random samples • not practical for large populations • Simple random sampling becomes difficult when we dont have a list of the population

  17. Systematic Sampling系統性抽樣 • a type of probability sampling in which every kth member of the population is selected • k=N/n N = size of the population n = sample size

  18. For example: You want to obtain a sample of 200 from a population of 10,000. You would select every 50th (or kth) person from the list. k = 10000/200=50

  19. Advantages/disadvantages of systematic sampling • Assuming availability of a list of population members • Randomness of the sample depends on randomness of the list • periodicity bias: 當母體個體排序出現某一週期性或規則時, systematic sampling 會有週期性誤差(periodicity bias)

  20. Stratified Random Sample分層隨機抽樣 • Prior to random sampling, the population is divided into subgroups, called strata, e.g., gender, ethnic groups, professions, etc.依母體特性將個體分層(Strata) & 每一個體只屬一層 • Subjects are then randomly selected from each strata再從每一層中隨機抽取樣本(using simple random sampling)

  21. Sample

  22. Should select variables that are related to the dependent variable • Homogeneity is very high within the strata. • Heterogeneity is very high between the stratas

  23. Why use stratified samples? • permits examination of subgroups by ensuring sufficient numbers of subjects within subgroups 確保樣本包含母體中各種不同特性的個體,增加樣本的代表性 • generally more convenient than a simple random sample

  24. Potential disadvantages • Sometimes the exact composition of the population is often unknown • with multiple stratifying variables, sampling designs can become quite complex

  25. Types of Stratified Sampling • Proportionate Stratified Random Sampling 比例分層隨機抽樣 • Disproportionate Stratified Random Sampling非比例分層隨機抽樣

  26. Proportionate Sampling • strata sample sizes are proportional to population subgroup sizes按母體比例抽取樣本 • e.g., if a group represents 25% of the population, the stratum representing that group will comprise 25% of the sample

  27. Disproportionate Sampling • strata sample sizes are not proportional to population subgroup sizes每層抽出之樣本數不能與母體之特徵比例相呼應 • may be used to achieve equal sample sizes across strata

  28. For example: Suppose a researcher plans to conduct a survey regarding various attitudes of Agricultural College Students at Tunghai U. He wishes to compare perceptions across 4 major groups but finds some of the groups are quite small relative to the overall student population. As a result, he decides to over-sample minority students. For example, although Hospitality students only represent 10% of the Agricultural student population, he uses a disproportional stratified sample so that Hospitality students will comprise 25% of his sample.

  29. Cluster Sampling部落抽樣 • used when subjects are randomly sampled from within a "cluster" or unit (e.g., classroom, school, country, etc) • 將母體分為若干部落 (cluster),在自所有部落中隨機抽取若干部落樣本並對這些抽取的部落作抽查

  30. Cluster 1 Cluster 2 Cluster 1 Cluster 4 Cluster 5 Cluster 3 Cluster 3 Cluster k Population Sample

  31. Example • 台中市民眾對薛凱莉事件看法 • 將台中市依“里”為部落分成許多里 • 隨機抽取3個里然後對此3個里的居民作全面性的訪問 • Compare using cluster sampling technique and simple sampling technique

  32. Why use cluster samples? • They're easier to obtain than a simple random or systematic sample of the same size

  33. Disadvantages of Cluster Sampling • Less accurate than other sampling techniques (selection stages, accuracy) • Generally leads to violation of an assumption that subjects are independent

  34. Sampling Distribution 抽樣分配

  35. For the most part in social science, we want to know about the population. In reality, the parameters are often unknown. • The best thing we can do is to “guess” what our population should be like based on the info we get from a sample • results of a sample=the results of a population???

  36. Sampling Distributions抽樣分配 • The “bridge” b/w information from the sample to the population • a theoretical, probabilistic distribution of all possible samples of a given size, 在母體中重複抽取固定大小的隨機樣本,所有隨機樣本的統計值的機率分配稱為抽樣分配

  37. Population Sampling distribution Sample The relationship b/w population, sampling distribution, and sample.

  38.  = 100 etc. for all possible samples of a given N from the population

  39. Sampling Distribution 定理 • 當母體為normal distribution, 我們重複抽取固定大小的隨機樣本時, 則此一抽樣分配會趨近normal distribution 並且有一平均值及標準差

  40. 以五名學生的考試成績(91, 92, 93, 94,95)為母體, 母體的mean 為 93。試比較從5名學生(母體)中隨機抽取2位學生作為樣本(n=2)和隨機抽取3位學生作為樣本之抽樣分配

  41. When n=2

  42. When n=3

  43. Sampling distribution of sample mean • Mean of the sampling distribution =  • St.D. of the sampling distribution (Standard Error ) = σ2/N • Standard error (樣本平均數的標準誤)告訴我們樣本平均數對母體平均數的估計有多準確 • N, Standard Error

  44. Central Limit Theorem 中央極限定理 • 無論母體分配是否為normal distribution, 當我們重複抽取固定大小的隨機樣本時,只要樣本的N夠大 (N100),則此一抽樣分配也會趨近normal distribution • If n is sufficiently large X ~N(, 2/n)

  45. Summary of Sampling Distribution • 若母體的分配式常態分配,則樣本平均的抽樣分配亦為常態分配 • 若母體的分配不是常態,則樣本平均的抽樣分配再樣本夠大時會近似常態分配 • 樣本平均值的平均會等於母體平均值 • 樣本標準差的平均會比母體標準差小

  46. Exercise • 假設王品牛排每位顧客等待主菜的時間呈常態分配,平均等待時間為10分鐘,標準差為2分鐘。某餐旅研究生作服務品質調查,隨機抽選16名顧各瞭解其等待時間,試問該16名顧客平均等待時間超過11分鐘的機率為何?

  47. Sampling distribution of sample proportion( ) • Mean of the sampling distribution of  = P • Standard error of the sampling distribution of  =

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