版權(quán)說(shuō)明:本文檔由用戶提供并上傳,收益歸屬內(nèi)容提供方,若內(nèi)容存在侵權(quán),請(qǐng)進(jìn)行舉報(bào)或認(rèn)領(lǐng)
文檔簡(jiǎn)介
1、INTRODUCTION TO MINITAB VERSION 13Worksheet Conventions and Menu StructuresMinitab InteroperabilityGraphic CapabilitiesParetoHistogramBox PlotScatter PlotStatistical CapabilitiesCapability AnalysisHypothesis TestContingency TablesANOVADesign of Experiments (DOE) Minitab Training Agenda Worksheet For
2、mat and StructureSession WindowWorksheet Data WindowMenu BarTool BarText Column C1-T(Designated by -T)Numeric Column C3(No Additional Designation) Data Window Column ConventionsDate Column C2-D(Designated by -D)Column Names(Type, Date, Count & AmountEntered Data for Data Rows 1 through 4Data Entry A
3、rrowData Rows Other Data Window Conventions Menu Bar - Menu ConventionsHot Key Available (Ctrl-S)Submenu Available ( at the end of selection) Menu Bar - Key FunctionsWorksheet SavePrintData Import Menu Bar - Edit MenuKey FunctionsWorksheet SelectDeleteCopyPasteDynamic Links Menu Bar - Manip MenuKey
4、FunctionsData ManipulationSubset/SplitSortRankRow Data ManipulationColumn Data Manipulation Menu Bar - Calc MenuKey FunctionsCalculation CapabilitiesColumn CalculationsColumn/Row StatisticsData StandardizationData ExtractionData Generation Menu Bar - Stat MenuKey FunctionsAdvanced Statistical Tools
5、and GraphsHypothesis TestsRegressionDesign of ExperimentsControl ChartsReliability Testing Menu Bar - Graph MenuKey FunctionsData Plotting CapabilitiesScatter PlotTrend PlotBox PlotContour/3 D plottingDot PlotsProbability PlotsStem & Leaf Plots Menu Bar - Data Window Editor MenuKey FunctionsAdvanced
6、 Edit and Display OptionsData BrushingColumn SettingsColumn Insertion/MovesCell InsertionWorksheet SettingsNote: The Editor Selection is Context Sensitive. Menu selections will vary for:Data WindowGraphSession WindowDepending on which is selected. Menu Bar - Session Window Editor MenuKey FunctionsAd
7、vanced Edit and Display OptionsFont Connectivity Settings Menu Bar - Graph Window Editor MenuKey FunctionsAdvanced Edit and Display OptionsBrushing Graph ManipulationColorsOrientationFont Menu Bar - Window MenuKey FunctionsAdvanced Window Display OptionsWindow Management/Display Toolbar Manipulation
8、/Display Menu Bar - Help MenuKey FunctionsHelp and TutorialsSubject SearchesStatguide Multiple TutorialsMinitab on the WebMINITAB INTEROPERABILITY Minitab InteroperabilityExcelMinitabPowerPoint Starting with Excel.Load file “Sample 1 in Excel. Starting with Excel.The data is now loaded into Excel. S
9、tarting with Excel.Highlight and Copy the Data. Move to Minitab.Open Minitab and select the column you want to paste the data into. Move to Minitab.Select Paste from the menu and the data will be inserted into the Minitab Worksheet. Use Minitab to do the Analysis.Lets say that we would like to test
10、correlation between the Predicted Workload and the actual workload.Select Stat Regression. Fitted Line Plot. Use Minitab to do the Analysis.Minitab is now asking for us to identify the columns with the appropriate date.Click in the box for “Response (Y): Note that our options now appear in this box.
11、Select “Actual Workload and hit the select button.This will enter the “Actual Workload data in the Response (Y) data field. Use Minitab to do the Analysis.Now click in the Predictor (X): box. Then click on “Predicted Workload and hit the select button This will fill in the “Predictor (X): data field
12、.Both data fields should now be filled.Select OK. Use Minitab to do the Analysis.Minitab now does the analysis and presents the results.Note that in this case there is a graph and an analysis summary in the Session WindowLets say we want to use both in our PowerPoint presentation. Transferring the A
13、nalysis.Lets take care of the graph first.Go to Edit. Copy Graph. Transferring the Analysis.Open PowerPoint and select a blank slide.Go to Edit. Paste Special. Transferring the Analysis.Select “Picture (Enhanced Metafile) This will give you the best graphics with the least amount of trouble. Transfe
14、rring the Analysis.Our Minitab graph is now pasted into the powerpoint presentation. We can now size and position it accordingly. Transferring the Analysis.Now we can copy the analysis from the Session window.Highlight the text you want to copy.Select Edit. Copy. Transferring the Analysis.Now go bac
15、k to your powerpoint presentation.Select Edit. Paste. Transferring the Analysis.Well we got our data, but it is a bit large.Reduce the font to 12 and we should be ok. Presenting the results.Now all we need to do is tune the presentation.Here we position the graph and summary and put in the appropria
16、te takeaway. Then we are ready to present.Graphic Capabilities Pareto Chart.Lets generate a Pareto Chart from a set of data.Go to File Open Project. Load the file Pareto.mpj.Now lets generate the Pareto Chart. Pareto Chart.Go to:Stat Quality ToolsPareto Chart. Pareto Chart.Fill out the screen as fol
17、lows:Our data is already summarized so we will use the Chart Defects table. Labels in “CategoryFrequencies in “Quantity.Add title and hit OK. Pareto Chart.Minitab now completes our pareto for us ready to be copied and pasted into your PowerPoint presentation. Histogram.Lets generate a Histogram from
18、 a set of data.Go to File Open Project. Load the .Now lets generate the Histogram of the GPA results. Histogram.Go to:Graph Histogram Histogram.Fill out the screen as follows:Select GPA for our X value Graph VariableHit OK. Histogram.Minitab now completes our histogram for us ready to be copied and
19、pasted into your PowerPoint presentation.This data does not look like it is very normal.Lets use Minitab to test this distribution for normality. Histogram.Go to:Stat Basic StatisticsDisplay Descriptive Statistics. Histogram.Fill out the screen as follows:Select GPA for our Variable.Select Graphs. H
20、istogram.Select Graphical Summary.Select OK.Select OK again on the next screen. Histogram.Note that now we not only have our Histogram but a number of other descriptive statistics as well.This is a great summary slide.As for the normality question, note that our P value of .038 rejects the null hypo
21、thesis (P.05). So, we conclude with 95% confidence that the data is not normal. Histogram.Lets look at another “Histogram tool we can use to evaluate and present data.Go to File Open Project. Load the file overfill.mpj. Histogram.Go to:Graph Marginal Plot Histogram.Fill out the screen as follows:Sel
22、ect filler 1 for the Y Variable.Select head for the X VariableSelect OK. Histogram.Note that now we not only have our Histogram but a dot plot of each head data as well.Note that head number 6 seems to be the source of the high readings.This type of Histogram is called a “Marginal Plot. Boxplot.Lets
23、 look at the same data using a Boxplot. Boxplot.Go to:Stat Basic StatisticsDisplay Descriptive Statistics. Boxplot.Fill out the screen as follows:Select “filler 1 for our Variable.Select Graphs. Boxplot.Select Boxplot of data.Select OK.Select OK again on the next screen. Boxplot.We now have our Boxp
24、lot of the data. Boxplot.There is another way we can use Boxplots to view the data.Go to:Graph Boxplot. Boxplot.Fill out the screen as follows:Select “filler 1 for our Y Variable.Select “head for our X Variable.Select OK. Boxplot.Note that now we now have a box plot broken out by each of the various
25、 heads.Note that head number 6 again seems to be the source of the high readings. Scatter plot.Lets look at data using a Scatterplot.Go to File Open Project. Load the .Now lets generate the Scatterplot of the GPA results against our Math and Verbal scores. Scatter plot.Go to:Graph Plot. Scatter Plot
26、.Fill out the screen as follows:Select GPA for our Y Variable.Select Math and Verbal for our X Variables.Select OK when done. Scatter plot.We now have two Scatter plots of the data stacked on top of each otherWe can display this better by tiling the graphs. Scatter plot.To do this:Go to WindowTile.
27、Scatter plot.Now we can see both Scatter plots of the data Scatter plot.There is another way we can generate these scatter plots.Go to:Graph Matrix Plot. Scatter Plot.Fill out the screen as follows:Click in the “Graph variables blockHighlight all three available data setsClick on the “Select button.
28、Select OK when done. Scatter plot.We now have a series of Scatter plots, each one corresponding to a combination of the data sets availableNote that there appears to be a strong correlation between Verbal and both Math and GPA data.Minitab Statistical ToolsPROCESS CAPABILITY ANALYSISLets do a proces
29、s capability study.Open Minitab and load the .SETTING UP THE TEST.Go to Stat Quality Tools. Capability Analysis (Weibull).Select “Torque for our single data column.Enter a lower spec of 10 and an upper spec of 30. Then select “OK.SETTING UP THE TEST.Note that the data does not fit the normal curve v
30、ery well.Note that the Long Term capability (Ppk) is 0.43. This equates to a Z value of 3*0.43=1.29 standard deviations or sigma values.This equates to an expected defect rate PPM of 147,055.INTERPRETING THE DATA.HYPOTHESIS TESTINGLoad the file normality.mpj.Setting up the test in MinitabChecking th
31、e Data for Normality.Its important that we check for normality of data samples.Lets see how this works.Go to STAT. Basic Statistics. Normality Test.Set up the TestWe will test the “Before column of data.Check Anderson-DarlingClick OKAnalyzing the ResultsSince the P value is greater than .05 we can a
32、ssume the “Before data is normalNow repeat the test for the “After Data (this is left to the student as a learning exercise.)Checking for equal variance.We now want to see if we have equal variances in our samples.To perform this test, our data must be “stacked.To accomplish this go to Manip Stack S
33、tack Columns.Select both of the available columns (Before and After) to stack.Type in the location where you want the stacked data. In this example we will use C4.Type in the location where you want the subscripts stored In this example we will use C3.Select OK.Checking for equal variance.Now that w
34、e have our data stacked, we are ready to test for equal variances.Go to Stat ANOVA. Test for equal Variances.Checking for equal variance.Setting up the test.Our response will be the actual receipt performance for the two weeks we are comparing. In this case we had put the stacked data in column C4.O
35、ur factors is the label column we created when we stacked the data (C3).We set our Confidence Level for the test (95%).Then select “OK.Here, we see the 95% confidence intervals for the two populations. Since they overlap, we know that we will fail to reject the null hypothesis.The F test results are
36、 shown here. We can see from the P-Value of .263 that again we would fail to reject the null hypothesis. Note that the F test assumes normalityNote that we get a graphical summary of both sets of data as well as the relevant statistics. Analyzing the data.Levenes test also compares the variance of t
37、he two samples and is robust to nonnormal data. Again, the P-Value of .229 indicates that we would fail to reject the null hypothesis.Here we have box plot representations of both populations.Lets test the data with a 2 Sample t Test- -Under Stat Basic Statistics. We see several of the hypothesis te
38、sts which we discussed in class. In this example we will be using a 2 Sample t Test.Go to Stat. Basic Statistics. 2 Sample t.Since we already have our data stacked, we will load C4 for our samples and C3 for our subscripts.Setting up the test.Since we have already tested for equal variances, we can
39、check off this boxNow select Graphs.Setting up the test.We see that we have two options for our graphical output. For this small a sample, Boxplots will not be of much value so we select “Dotplots of data and hit “OK. Hit OK again on the next screen.In the session window we have each populations sta
40、tistics calculated for us.Note that here we have a P value of .922. We therefore find that the data does not support the conclusion that there is a significant difference between the means of the two populations. Interpreting the results.The dotplot shows how close the datapoints in the two populati
41、ons fall to each other. The close values of the two population means (indicated by the red bar) also shows little chance that this hypothesis could be rejected by a larger sample Interpreting the results.Paired ComparisonsIn paired comparisons we are trying to “pair observations or treatments. An ex
42、ample would be to test automatic blood pressure cuffs and a nurse measuring the blood pressure on the same patient using a manual instrument. It can also be used in measurement system studies to determine if operators are getting the same mean value across the same set of samples.Lets look at an exa
43、mple: 2_Hypothesis_Testing_Shoe_wear.mpj2_Hypothesis_Testing_Shoe_wear.mpjIn this example we are trying to determine if shoe material “A wear rate is different from shoe material “B.Our data has been collected using ten boys, whom were asked to wear one shoe made from each material.Ho: Material “A w
44、ear rate = Material “B wear rateHa: Material “A wear rate Material “B wear rate Paired ComparisonGo to Stat. Basic Statistics Paired t. Paired ComparisonSelect the samplesGo to Graphs. Paired ComparisonSelect the Boxplot for our graphical output.Then select OK. Paired ComparisonWe see how the 95% co
45、nfidence interval of the mean relates to the value we are testing. In this case, the value falls outside the 95% confidence interval of the data mean. This gives us confirmation that the shoe materials are significantly different. CONTINGENCY TABLES(CHI SQUARE)Entering the data.Enter the data in a t
46、able format. For this example, load the Table.mpj.Lets set up a contingency table.Contingency tables are found under Stat. Tables Chi Square Test. Select the columns which contain the table. Then select “OKSetting up the test.Note that you will have the critical population and test statistics displa
47、yed in the session window. Minitab builds the table for you. Note that our original data is presented and directly below, Minitab calculates the expected values. Here, Minitab calculates the Chi Square statistic for each data point and totals the result. The calculated Chi Square statistic for this
48、problem is 30.846. Performing the Analysis.ANalysis Of VArianceANOVALets set up the analysisLoad the file Anova example.mpjStack the data in C4 and place the subscripts in C5Set up the analysis.Select StatANOVAOne waySelect C4 Responses C5 FactorsThen select Graphs.Set up the analysis.Choose boxplot
49、s of data.Then OKSet up the analysis.Note that the P value is less than .05that means that we reject the null hypothesisAnalyzing the results.Lets Look At Main Effects.Choose StatANOVAMain Effects Plot.Main EffectsSelectC4 ResponseC5 FactorsOKAnalyzing Main Effects.Formulation 1 Has Lowest Fuel Cons
50、umptionDESIGN OF EXPERIMENTS (DOE) FUNDAMENTALSFirst Create an Experimental Design.Go to StatDOE Factorial.Create Factorial Design.First Create an Experimental Design.Select 2 Level Factorial design with 3 factorsThen go to Display Available Designs.Bowling Example (continued)We can now see the avai
51、lable experimental designs. We will be using the Full (Factorial) for 3 factors and we can see that it will require 8 runsNow, select OK and go back to the main screen.Once at the main screen select Designs.Bowling Example (continued)Select your design. We will be using the Full (Factorial) and agai
52、n we can see that it will require 8 runsNow, select OK and go back to the main screen.Once at the main screen select Factors.Bowling Example (continued)Fill in the names for your factors. Then fill in the actual conditions for low (-) or high (+)Now, select OK and go back to the main screen.Once at
53、the main screen select Options.Bowling Example (continued)Remove the option to Randomize Runs. Now, select OK and go back to the main screen.Once at the main screen select OK.Bowling Example (continued)Minitab has now designed our experiment for us. Now, type your Data from each of your experimental
54、 treatments into C8.We are now ready to analyze the resultsBowling Example (continued)Go toStat.DOEFactorial.Analyze Factorial Design.Bowling Example (continued)Highlight your Data column and use Select to place it in the Responses box. Then, select the Terms Option.Bowling Example (continued)Note t
55、hat Selected Terms has all of the available choices already selected. We need do nothing further. Select OK.Then, at the main screen select GraphsBowling Example (continued)Select your Effects Plots and reset your Alpha to .05.Select OK to return to the main screen and then select OK again.Bowling Example (continued)Note that only one effect has a significance greater than 95%.All the remaining factors
溫馨提示
- 1. 本站所有資源如無(wú)特殊說(shuō)明,都需要本地電腦安裝OFFICE2007和PDF閱讀器。圖紙軟件為CAD,CAXA,PROE,UG,SolidWorks等.壓縮文件請(qǐng)下載最新的WinRAR軟件解壓。
- 2. 本站的文檔不包含任何第三方提供的附件圖紙等,如果需要附件,請(qǐng)聯(lián)系上傳者。文件的所有權(quán)益歸上傳用戶所有。
- 3. 本站RAR壓縮包中若帶圖紙,網(wǎng)頁(yè)內(nèi)容里面會(huì)有圖紙預(yù)覽,若沒(méi)有圖紙預(yù)覽就沒(méi)有圖紙。
- 4. 未經(jīng)權(quán)益所有人同意不得將文件中的內(nèi)容挪作商業(yè)或盈利用途。
- 5. 人人文庫(kù)網(wǎng)僅提供信息存儲(chǔ)空間,僅對(duì)用戶上傳內(nèi)容的表現(xiàn)方式做保護(hù)處理,對(duì)用戶上傳分享的文檔內(nèi)容本身不做任何修改或編輯,并不能對(duì)任何下載內(nèi)容負(fù)責(zé)。
- 6. 下載文件中如有侵權(quán)或不適當(dāng)內(nèi)容,請(qǐng)與我們聯(lián)系,我們立即糾正。
- 7. 本站不保證下載資源的準(zhǔn)確性、安全性和完整性, 同時(shí)也不承擔(dān)用戶因使用這些下載資源對(duì)自己和他人造成任何形式的傷害或損失。
最新文檔
- 2024年房產(chǎn)認(rèn)購(gòu)專(zhuān)項(xiàng)協(xié)議范本
- 2024年成品油銷(xiāo)售協(xié)議模板
- 2023-2024學(xué)年珠海市全國(guó)大聯(lián)考(江蘇卷)高三第二次數(shù)學(xué)試題試卷
- 2024年高效代理合作招募協(xié)議模板
- 2024年幼教崗位聘用協(xié)議范本
- 彩鋼瓦安裝工程協(xié)議模板2024年
- 2024年海水產(chǎn)品長(zhǎng)期供應(yīng)協(xié)議模板
- 2024年度潤(rùn)滑油分銷(xiāo)協(xié)議范本
- 文書(shū)模板-《硬件設(shè)計(jì)合同》
- 2024房產(chǎn)居間服務(wù)協(xié)議模板
- 神經(jīng)系統(tǒng)腫瘤
- 危重癥患者疼痛與意識(shí)狀態(tài)的評(píng)估
- 城市生命線安全風(fēng)險(xiǎn)綜合監(jiān)測(cè)預(yù)警平臺(tái)解決方案
- 景觀藝術(shù)設(shè)計(jì)智慧樹(shù)知到期末考試答案章節(jié)答案2024年天津美術(shù)學(xué)院
- 中藥獨(dú)活課件
- 2024春期國(guó)開(kāi)電大法學(xué)本科《知識(shí)產(chǎn)權(quán)法》在線形考(第一至四次形考任務(wù))試題及答案
- 骨科術(shù)后疼痛護(hù)理
- 產(chǎn)科醫(yī)生進(jìn)修匯報(bào)
- 八年級(jí)語(yǔ)文(完整版)標(biāo)點(diǎn)符號(hào)及使用練習(xí)題及答案
- 城市觀光車(chē)項(xiàng)目可行性研究報(bào)告
- “三新”背景下2025屆高考政治一輪復(fù)習(xí)策略 課件
評(píng)論
0/150
提交評(píng)論