Marketing Research Module 8 Sampling Design Finalsize

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Ch apter Twelv e

Sampling: Final and Initial Sample Size Determination

© 2007 Prentice Hall

12-1

Cha pter Ou tl ine 1) Overview 2) Definitions and Symbols 3) The Sampling Distribution 4) Statistical Approaches to Determining Sample Size 5) Confidence Intervals i.

Sample Size Determination: Means

ii. Sample Size Determination: Proportions 6) Multiple Characteristics and Parameters 7) Other Probability Sampling Techniques © 2007 Prentice Hall

12-2

Ch apter O utl ine 8) Adjusting the Statistically Determined Sample Size 9) Non-response Issues in Sampling i.

Improving the Response Rates

ii. Adjusting for Non-response 10) International Marketing Research 11) Ethics in Marketing Research 12) Summary © 2007 Prentice Hall

12-3

Defi niti ons a nd S ymbo ls 





Para mete r: A par am et er is a summary description of a fixed characteristic or measure of the target population. A parameter denotes the true value which would be obtained if a census rather than a sample was undertaken. Statis tic : A st atistic is a summary description of a characteristic or measure of the sample. The sample statistic is used as an estimate of the population parameter. Fin ite Pop ulat ion Corre ction : The finite popu la tion cor re ction (fpc) is a correction for overestimation of the variance of a population parameter, e.g., a mean or proportion, when the sample size is 10% or more of the population size.

© 2007 Prentice Hall

12-4

Defi niti ons a nd S ymbo ls 

Pr eci sio n le vel : When estimating a population parameter by using a sample statistic, the pr eci si on le ve l is the desired size of the estimating interval. This is the maximum permissible difference between the sample statistic and the population parameter.



Co nfiden ce int erv al : The co nfide nce in ter va l is the range into which the true population parameter will fall, assuming a given level of confidence.



Co nfiden ce leve l: The conf id en ce lev el is the probability that a confidence interval will include the population parameter.

© 2007 Prentice Hall

12-5

Sym bol s f or Po pula ti on and Sam pl e Var ia bles Table 12.1 P op u la t ion

S am p le

M ea n

µ

X

P r op o rt io n



p

V a ria n ce

σ2

s2

St a n d a r d d ev ia tio n

σ

s

Siz e

N

n

St a n d a r d er ro r of t h e m ea n

σx

Sx

St a n d a r d er ro r of t h e p r op or t io n

σp

Sp

St a n d a r d iz ed v a ria t e (z ) Co effi ci en t o f v a ria t io n (C)  

© 2007 Prentice Hall

_

_

_

V aria b le

(X -µ )/ σ σ/ µ

_

(X -X )/ S

_

S/ X

12-6

Th e Conf ide nc e Int erval Appro ach Calculation of the confidence interval involves determining a distance below (X L) and above (X U) the population mean (X ), which contains a specified area of the normal curve (Figure 12.1). The z values corresponding to and may be calculated as    X ­ µ L zL = σx

zU =

where

X U ­ µ σx

zL

= -z and

zU=

+z. Therefore, the lower value of X is

X L = µ ­ zσx and the upper value of X is

X U = µ+ zσx © 2007 Prentice Hall

12-7

Th e Conf ide nc e Int erval Appro ach Note that µis estimated by X . The confidence interval is given by

X  ± zσx

We can now set a 95% confidence interval around the sample mean of $182. As a first step, we compute the standard error of the mean: σx = σn  = 55/ 300 = 3.18

From Table 2 in the Appendix of Statistical Tables, it can be seen that the central 95% of the normal distribution lies within + 1.96 z values. The 95% confidence interval is given by

X + 1.96 σx = 182.00 + 1.96(3.18) = 182.00 + 6.23 Thus the 95% confidence interval ranges from $175.77 to $188.23. The probability of finding the true population mean to be within $175.77 and $188.23 is 95%. © 2007 Prentice Hall

12-8

95 % Co nfi den ce Inter va l Figure 12.1

0. 47 5

_ XL © 2007 Prentice Hall

0. 47 5

_ X

_ XU 12-9

Sam pl e Size Determi nat ion for Means and Pr opor ti ons Table 12.2 `Steps

Means

Proportions

1. Specify the level of precision

D = ±$5.00

D = p - ∏ = ±0.05

2. Specify the confidence level (CL)

CL = 95%

CL = 95%

z value is 1.96

z value is 1.96

Estimate σ: σ = 55

Estimate ∏: ∏ = 0.64

n = σ2z2/D2 = 465

n = ∏(1-∏) z2/D2 = 355

6. If the sample size represents 10% of the population, apply the finite population correction

nc = nN/(N+n-1)

nc = nN/(N+n-1)

7. If necessary, reestimate the confidence interval by employing s to estimate σ

= Χ ± zsx-

= p ± zsp

8. If precision is specified in relative rather than absolute terms, determine the sample size by substituting for D.

D = Rµ n = C2z2/R2

D = R∏ n = z2(1-∏)/(R2∏)

3. Determine the z value associated with CL 4. Determine the standard deviation of the population 5. Determine the sample size using the formula for the standard error

© 2007 Prentice Hall

_

12-10

Sam pl e Size fo r Esti mat ing Multiple Par am et ers

Table 12.3

Variable Mean Household Monthly Expense On Department store shopping Clothes Gifts Confidence level

95%

95%

95%

z value

1.96

1.96

1.96

$5

$5

$4

Standard deviation of the population (σ)

$55

$40

$30

Required sample size (n)

465

246

217

Precision level (D)

© 2007 Prentice Hall

12-11

Adjus ting the St at is tic all y Determ ined Sam ple Size In cid en ce rate refers to the rate of occurrence or the percentage, of persons eligible to participate in the study.

In general, if there are c qualifying factors with an incidence of Q1 , Q2 , Q3 , ...QC ,each expressed as a proportion: Incidence rate Initial sample size .

© 2007 Prentice Hall

= Q1 x Q2 x Q3 ....x QC =

Final sample size 12-12

Im pr ovi ng Response Fig. 12.2

Ra tes

Met hod s of Im pro vi ng Resp onse Rat es

Red uci ng Refusal s

Pr io r Mo tivat ing Incent ives Not ific at ion Resp ond ent s

Re duc ing Not -at -Homes

Quest io nnai re Des ign and Ad mini st rat io n

Fol low-U p Ot her Fac il itat ors

Ca llback s

© 2007 Prentice Hall

12-13

Arbi tr on Responds to Lo w Resp ons e Ra tes Arbitron, a major marketing research supplier, was trying to improve response rates in order to get more meaningful results from its surveys. Arbitron created a special cross-functional team of employees to work on the response rate problem. Their method was named the “breakthrough method,” and the whole Arbitron system concerning the response rates was put in question and changed. The team suggested six major strategies for improving response rates: 1. 2. 3. 4. 5. 6.

Maximize the effectiveness of placement/follow-up calls. Make materials more appealing and easy to complete. Increase Arbitron name awareness. Improve survey participant rewards. Optimize the arrival of respondent materials. Increase usability of returned diaries.

Eighty initiatives were launched to implement these six strategies. As a result, response rates improved significantly. However, in spite of those encouraging results, people at Arbitron remain very cautious. They know that they are not done yet and that it is an everyday fight to keep those response rates high. © 2007 Prentice Hall

12-14

Adj us ti ng for Nonr espo nse 

Subsamp lin g of Nonres po nden ts – the researcher contacts a subsample of the nonrespondents, usually by means of telephone or personal interviews.



In repl ace men t, the nonrespondents in the current survey are replaced with nonrespondents from an earlier, similar survey. The researcher attempts to contact these nonrespondents from the earlier survey and administer the current survey questionnaire to them, possibly by offering a suitable incentive.

© 2007 Prentice Hall

12-15

Adj us ti ng for Nonr espo nse 

In su bst itut ion, the researcher substitutes for nonrespondents other elements from the sampling frame that are expected to respond. The sampling frame is divided into subgroups that are internally homogeneous in terms of respondent characteristics but heterogeneous in terms of response rates. These subgroups are then used to identify substitutes who are similar to particular nonrespondents but dissimilar to respondents already in the sample.

© 2007 Prentice Hall

12-16

Ad ju sti ng f or No nr es ponse 

Sub jecti ve Est ima tes – When it is no longer feasible to increase the response rate by subsampling, replacement, or substitution, it may be possible to arrive at subjective estimates of the nature and effect of nonresponse bias. This involves evaluating the likely effects of nonresponse based on experience and available information.



Tren d anal ysi s is an attempt to discern a trend between early and late respondents. This trend is projected to nonrespondents to estimate where they stand on the characteristic of interest.

© 2007 Prentice Hall

12-17

Use of Tre nd Analys is in Adjus ting fo r N onrespo ns e Table 12.4 Per centag e Re sp onse

Avera ge Do ll ar Ex pend itu re

Per centag e of P revio us Wave’s R es pon se

First Mailing

12

412

__

Second Mailing

18

325

79

Third Mailing

13

277

85

Nonresponse

(57)

(230)

91

Total

100

275

© 2007 Prentice Hall

12-18

Adj us ti ng for Nonr espo nse 

Wei ghti ng attempts to account for nonresponse by assigning differential weights to the data depending on the response rates. For example, in a survey the response rates were 85, 70, and 40%, respectively, for the high-, medium-, and low income groups. In analyzing the data, these subgroups are assigned weights inversely proportional to their response rates. That is, the weights assigned would be (100/85), (100/70), and (100/40), respectively, for the high-, medium-, and low-income groups.

© 2007 Prentice Hall

12-19

Adju sti ng f or No nr esp onse 

Imp uta tio n involves imputing, or assigning, the characteristic of interest to the nonrespondents based on the similarity of the variables available for both nonrespondents and respondents. For example, a respondent who does not report brand usage may be imputed the usage of a respondent with similar demographic characteristics.

© 2007 Prentice Hall

12-20

Finding Proba bi lit ies Co rr espondi ng to Kn own Val ues Figure 12A.1

 

Area between µ and µ + 1σ = 0.3431 Area between µ and µ + 2σ = 0.4772 Area between µ and µ + 3σ = 0.4986 

Area is 0.3413

 

© 2007 Prentice Hall

µ+3σZ

Sc ale

µ­3σ

µ­2σ

µ­1σ

µ

µ+1σ

µ+2σ

35

40

45

50

55

60

65 (µ=50, σ =5)

­3

­2

­1

0

+1

+2

+3

Z Scale 12-21

Finding Proba bi lit ies Co rr espondi ng to Kn own Val ues

Figure 12A.2

Area is 0.500

Area is 0.450

Area is 0.050

X

50

X Scale Z Scale

-Z

© 2007 Prentice Hall

0

12-22

Finding Value s Cor respo nding to Kno wn Pr oba bil it ies : Confidenc e In terva l Fig. 12A.3

Area is 0.475

Area is 0.475

Area is 0.025

X -Z

© 2007 Prentice Hall

Area is 0.025 X Scale

50 0

-Z

Z Scale 12-23

Opinio n Pla ce Bases It s Opini ons on 100 0 Res ponde nt s Marketing research firms are now turning to the Web to conduct online research. Recently, four leading market research companies (ASI Market Research, Custom Research, Inc., M/A/R/C Research, and Roper Search Worldwide) partnered with Digital Marketing Services (DMS), Dallas, to conduct custom research on AOL. DMS and AOL will conduct online surveys on AOL's Opinion Place, with an average base of 1,000 respondents by survey. This sample size was determined based on statistical considerations as well as sample sizes used in similar research conducted by traditional methods. AOL will give reward points (that can be traded in for prizes) to respondents. Users will not have to submit their e-mail addresses. The surveys will help measure response to advertisers' online campaigns. The primary objective of this research is to gauge consumers' attitudes and other subjective information that can help media buyers plan their campaigns. © 2007 Prentice Hall

12-24

Opi ni on P lace B ase s I ts Opi ni ons on 10 00 R espon den ts Another advantage of online surveys is that you are sure to reach your target (sample control) and that they are quicker to turn around than traditional surveys like mall intercepts or in-home interviews. They also are cheaper (DMS charges $20,000 for an online survey, while it costs between $30,000 and $40,000 to conduct a mall-intercept survey of 1,000 respondents).

© 2007 Prentice Hall

12-25

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