Post on 22-Dec-2015
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Qualitative and Quantitative Sampling
Social Research Methods 2117 & 6501
Fall, 2006
November 22~30, 2006
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Sampling: The process of selecting observations (抽樣 : 選擇觀察對象的過程 )(The purpose: get a representative sample)
Think about the following questions:
Q: Can we observe every one?
Q: Can we generalize our findings?
The Key: probability sampling (機率抽樣 )
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A Brief History of Sampling: related to political polling( 抽樣的發展歷史與政治民意調查有關)
The stories of American presidential elections
Literary Digest & Gallop Poll
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Two Types of Sampling Methods:
Nonprobability Sampling
vs.
Probability Sampling
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Some Terms First Element & Population
(sampling) element: the unit of analysis or case in population (元素 : 母體的構成單元或分析單位 )
Population: the abstract idea of a large group of many cases from which a sample is drawn (母體 :理論上一研究的特定個案元素的集合體 )
A target population (a study population): from which the sample is actually selected, the specific pool of cases studies (目標母體或研究母體 :實際上從中抽取樣本的元素之集合體 )
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Nonprobability Sampling
Qualitative researchers tend to use nonprobability or nonrandom sample. Qualitative researchers’ concern: relevance
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Nonprobability Sampling Haphazard, Accidental, or Convenience Sam
pling (就近取得研究對象,便利抽樣 ) Quota Sampling (定額抽樣或限額抽樣 ) Purposive or judgmental Sampling
(立意或判斷抽樣法 : 以研究目的為基礎來抽樣,通常由專家來判斷,尋找特定或一般較難尋找的對象 )
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Nonprobability Sampling
Snowball Sampling (滾雪球抽樣法 : 適用於很難找到特殊的研究對象時,或研究對象屬於一特定的團體 )
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Nonprobability Sampling Deviant Case Sampling: locate unusual, different, or
peculiar cases that are not representative of the whole (找尋極端個案 )
Sequential Sampling: similar to purposive sampling, but the difference is to gather cases until the amount of new information or diversity of cases is filled (與立意抽樣法不同的是,繼續蒐集個案直到新資訊或個案差異、多元性滿足為止 )
Theoretical Sampling: what is sampled comes from grounded theory (依紮根理論選取樣本 )
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Probability Sampling : samples selected accord with probability theory (依機率理論抽出的樣本就是機率抽樣 )
The key: a sample must contain essentially the same variations that exist in the population To control conscious and unconscious sampling bias
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Probability Theory, Sampling Distribution Element & Population & a target population
(sampling) element: the unit of analysis or case in population (元素 : 母體的構成單元或分析單位 )
Population: the abstract idea of a large group of many cases from which a sample is drawn (母體 :理論上一研究的特定個案元素的集合體 )
Sampling ratio (抽樣比 ) Sampling frame (抽樣架構 ): a list of cases in a p
opulation, or the best approximation of it (類似母體元素的列表 )
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Probability Theory A parameter (母數或參數 ) vs. a statistic (統計值 ) a parameter: any characteristic of a population (母體既有變數的特徵描述 )
A statistic: information from the sample (樣本變數的特徵描述,用來推估母體 )
A random process: Equal chance of being selected
The purpose: to select a representative sample Can calculate the sampling error, s = √[(P*Q)/
n]
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The logic of sampling
The concept of sampling distribution (抽樣分布 ) The central limit theorem
Let’s play a game!
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Sampling distribution
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Sampling distribution
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More on Sampling Distribution We can estimate the sampling error Confidence intervals (信賴區間—估計母體母數數值的幅度 ) and confidence levels (信賴水準 ) Provide the basis for determining the approximate
sample size Be careful:
Theory vs. survey conditions Tend to overestimate the precision of estimates
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Types of Probability Samples Simple Random Sampling(簡單隨機取樣 ): a
basic sampling method Can use random numbers (亂數 ) or computer Seldom used in practice
Systematic Sampling (系統抽樣 ): every kth element is chosen Usually apply a random start (隨機開始的系統抽樣 ) Sampling interval and sampling ratio (抽樣間距與抽樣比率 ) Be careful about any periodicity in the list(注意元素排列的週期性 )
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Simple Random Sampling and Systematic Sampling
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Types of Probability Sampling Stratified Sampling: to obtain greater repr
esentativeness (分層抽樣 : 減少誤差以選取更具代表性的樣本 ) Elements drawn from homogeneous subsets of a pop
ulation (從母群內同質性的次群體中取樣 ) Select variables you want to represent accurately, ex:
gender, geographical locations, social class, ethnicity Implicit stratification in systematic sampling (系統抽樣隱含的分層性) Ex: 對大學生的抽樣
Oversample a specific stratum (對母體特定階層抽取超過比率的樣本 )
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Types of Probability Sampling (Multistage) Cluster Sampling [(多階段 )集群抽樣 )]: used when a list of elements of a population not available and/or the cost to reach a sample element very high A cluster (集群 ): a unit that contains final samplin
g elements but treated temporarily as a sampling element it self
The process: randomly sample clusters, then randomly sample elements
Draw several samples in stages
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Cluster Sampling Cluster sampling and sampling error: less expensive
but less accurate (集群抽樣成本較低,但是樣本較不正確,因其抽樣誤差較大 ) Each stage introduces sampling errors, so multistage cluste
r sample has more sampling errors than a one-stage random sample.
Cluster design: how to decide the # of clusters and the # of elements within clusters? The key: more clusters is better (多選取集群 ), why?
Within-household sampling: to select the individual within the household randomly
Stratification in multistage cluster sampling We can apply stratification techniques at each stage.
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Cluster Sampling—Probability Proportionate to Size (PPS) (隨樣本大小比例的隨機抽樣 ) Proportionate or unweighted cluster sampling:
because the size of each cluster is the same But the more common situation is for clusters
to be of different sizes. (常見的情況是集群大小不一致 )
So, we need to use probability proportionate to size (PPS) technique. The key: each element has an equal chance to be
selected into the sample
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Other Sampling Issues Random-Digit Dialing (RDD): used when the
general public is interviewed by telephone The sampling element in RDD is the phone numb
er Studying hidden populations: apply nonproba
bility and probability sampling Sample size: how large should a sample be?
A smaller population needs a bigger sampling ratio.
Consider three things: accuracy, variability, the # of different variables examined
Subgroups
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Other Sampling Issues Drawing Inferences (推論 )
Why sampling? Can draw inferences from the sample to the population.
Combining logics of sampling and measurement Validity and sampling error
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