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PaceXL 2 Summary of options and features This document is also available in html format. Please contact the publishers. Publishing details PaceXL Add-in for Statistics, Version 2 ISBN: 0-958-6201-1-3 © 2003 Authors: Robin G. Boyle and Hugh B. Sarjeant Published by: Cicada Bay Pty Ltd PO Box 343 Hampton Vic Australia 3188 Phone/Fax 61-3-9521 0319 Email: [email protected] www.pacexl.com TOPICS COVERED IN THIS DOCUMENT: Key features of PaceXL Charts and Graphs Ungrouped Data Tabulations and Histograms Grouped Data Probability Distributions Intervals and Tests Analysis of Variance Regression and Correlation Time Series Analysis Index Numbers Quality Control Charts PaceXL 2 Summary of Options Page 1 KEY FEATURES OF PACEXL PaceXL is a statistics and charts add-in for Microsoft Excel, designed for introductory and intermediate courses. PaceXL as an Add-in  PaceXL operates inside Excel using its own added-in menu and toolbars.  The full capabilities of Excel are retained.  Excel is used for the input of data, and for the output for calculations, graphs and reports.  PaceXL. works 'inside' Excel to streamline statistical analysis.  It provides an extended range of statistical and graphical options.  Several Excel workbooks using PaceXL can be open at once.  Several distinct data sets can be stored on the one worksheet.  In theory, over 200 variables and over 15,000 observations are permitted in a data set. Menu, toolbar and dialogs  PaceXL has its own menu item in the main Excel menu.  Special PaceXL toolbars are used for general options and for charts.  PaceXL options are activated by selecting from the PaceXL menu or toolbars.  Each selection opens its own dialog window, from which calculations and charts can be generated. Data Area and data types  PaceXL works by selecting a data matrix (called a Data Area) before calling up any option.  Column headers/labels in the Data Area are used as variable names for easy selection.  The user can switch between different options using the same variables and data set.  Variables in the Data Area itself can be numerical (age, height, weight, etc) or categorical (gender, country of residence, etc).  PaceXL identifies each of the two types.  PaceXL will attempt to allow for missing values automatically: a blank cell is taken to be a missing value. Analysing subsets and transformations  As columns are identified by name, variables are easily selected / deselected.  The 'Unstack' option breaks one variable into groups according to another index, or grouping, variable. (For example, weights of adults can be grouped into 'weights for males' and the 'weights for females'.)  The 'Select' option enables certain rows from the Data Area to be used in an analysis or for certain rows to be excluded. (For example, if we wished to perform a regression analysis on just 'males'; or to exclude an outlier observation set.)  Common mathematical transformations (square, square root, logarithms, reciprocal, etc) are available. Statistics options and results  PaceXL has specific statistics routines (see Contents).  All calculations from these routines are written to a single worksheet called the Results Sheet.  New calculations are placed under each other in the Results Sheet.  The Results Sheet can be renamed/saved. A new one is automatically created. Charts and charts  Hundreds of different types of charts and graphs can be calculated using PaceXL.  The Charts and Graphs dialog is a separate dialog which generates a wide range of charts not available directly in Excel (box plots, standard histogram, etc) and combination charts such as a box plot on top of a histogram, or a normal distribution over a dot plot.  Each of the statistics routines also generate charts and graphs specific to those routines, for example, residuals for regression.  Charts can be displayed in “large format” (suitable for lecture demonstrations).  The user still has access to all the Excel chart/graph options, and the Chart Wizard.  Many standard Excel charts (column, bar, etc) can also be generated through PaceXL. PaceXL 2 Summary of Options Page 2 Saving and opening files  PaceXL workbooks are normal Excel workbooks, and saved as disk files, and reopened, in the normal manner.  A Data Area still remains set, and the workbook can be used immediately with PaceXL.  The Results Sheet and associated results are also retained. Printing and print preview  PaceXL output is all captured in standard Excel worksheets.  Use normal Excel functions for printing and print preview. Help system  PaceXL has an extensive help system, including step-through instructions.  Help is context sensitive, meaning that if F1 is pressed while in a particular routine, Help in that routine is displayed. Sample data sets  Several sample data sets are available with PaceXL.  Some are used for demonstrating PaceXL concepts via the tours-tutorials.  Others may be useful to instructors for assignment and case study work. PaceXL 2 Summary of Options Page 3 PaceXL - CHART AND GRAPH – TYPES The Charts and Graphs dialog provides the options detailed below, grouped by page tab from the dialog window. One Variable Notes:  The charts from this tab use just one variable (column) from the Data Area  Charts are based around frequency counts of occurrences of individual values (or categories) For numerical variables:  Column chart  Bar chart  Pie chart  Dot plot  Polygon  Frequency curve  Frequency column  Ogive  Box plot  Pareto chart  Normal probability plot  Quick histogram For categorical variables:  Column chart  Bar chart  Pie chart  Pareto chart One or More 'Y' Notes:  These charts require at least two variables (columns) from the Data Area  Only one variable may be drawn on the horizontal (X) axis  The variable on the X axis may be either numerical or categorical  More than one may be drawn on the vertical (Y) axis  The variable(s) on the Y axis must be numerical  Many of the charts on this tab are matched directly by charts available from Excel's Chart Wizard Cross-tab (contingency table) or grouped (frequency distribution) input format recommended:  Column chart  Bar chart  Pie chart  Line chart  Area chart Numerical variables (raw / ungrouped) required or recommended:  Scatter  Multiple box plot  Confidence intervals Two or More 'X'  Scatter - Grouped Notes: PaceXL 2 Summary of Options Page 4 One numerical selected for the Y axis, one numerical variable selected for the X axis, one categorical / coded variable used as a grouping variable. In effect, a different scatter plot is drawn for each category / value in the grouping variable.  Scatter - Multiple 'X' Notes: Multiple pairs of Y and X variables are selected. Only numerical variables permitted. Scatter 'Matrix' Notes: Able to draw a scatter plot of each pair of variables included in the selection list. 'Line' of best fit options:  Linear  Parabolic / quadratic  Exponential  Cubic  Power  No fit PaceXL 2 Summary of Options Page 5 PaceXL - UNGROUPED DATA Ungrouped Data - Broad functions The Ungrouped Data routine is used for analysing 'raw' data, in particular, for calculating summary measures such as the mean and standard deviation, but also for ranking, checking for outliers, etc. for numerical variables, and for frequency counts for categorical variables. If you wish to group your raw data into frequency distributions or cross-tabs, use Tabulations and Histograms. If your data are already grouped, use Grouped Data. The Ungrouped Data routine provides the options detailed below, grouped by page tab from the dialog window. Numerical Data  Sample data - Summary measures (mean, standard deviation, etc.)  Population data - Summary measures (mean, standard deviation, etc.)  Percentile - for the percentage entered  Trimmed Mean - for the percentage entered Choose Measures  Add to or reduce the range of summary measures calculated Rank/Sort/Count  Rank and Percent Rank  Sort, Rank and Percent Rank  Frequency Count  Check Outliers  Normal Distribution Ranks  Test for Normal (goodness of fit) Categorical Data  Frequency count Plots For numerical variables:  Column chart  Bar chart  Pie chart  Dot plot  Polygon  Frequency curve  Frequency column  Ogive  Box plot  Pareto chart  Normal probability plot  Quick histogram For categorical variables:  Column chart  Bar chart  Pie chart  Pareto chart PaceXL 2 Summary of Options Page 6 PaceXL - TABULATIONS AND HISTOGRAMS Tabulations and Histograms - Broad functions The Tabulations and Histogram routine proceeds from the Ungrouped Data routine. It is used to group raw data into frequency distributions or two-way cross-tabs (or cross-classification tables or contingency tables). It also plots histograms and column graphs of those tables. If the data set is already in grouped form, use the Grouped Data routine. The Tabulations and Histograms routine provides the options detailed below, grouped by principal options from the dialog window. Frequency Interval option  Frequency distribution table for equal or unequal classes  Histogram for absolute, relative and cumulative frequencies This is the default tab of the dialog. It operates on just one variable at a time. Users can specify intervals for grouping values by entering the lower bounds of each class. (Only the first two are required if Equal Classes are selected). The histogram plot includes a wide range of combination plots (such as histogram-dot plot). Frequency Count option  Frequency count table of individual values (no grouping by intervals)  Frequency count plots (includes column, dot, box plot, quick histogram) Operates on one variable at a time. Counts how often each value occurs. This option is suitable for discrete numerical data or categorical data and is equivalent to the Frequency Count and Categorical options in 'Ungrouped Data'. Multiple Plots option  Frequency curve, polygon or histogram for two or more numerical variables grouped into classes Useful for comparing two or more distributions. Because histograms plot on top of each other, obscuring underlying plots, the default is the frequency curve. Classes are set in a similar way to Frequency Interval. Two Variable Cross-Tab option  Cross-tabs for total frequencies, percent of total, percent of rows and percent of columns  Column graphs of the above tables Operates on two variables at a time and in interval form. Numerical or categorical variables permitted. Either discrete or continuous numerical data can be used. For example, we may want a cross-tabulation of 'Gender' by 'Hours Worked' in 10-hour groups. The lower bounds of each interval for each variable are entered as for Frequency Interval. A 'Chi-Square Test of Independence' is given as an option: note that it uses an alpha level of 5%. The p-value from the test is also shown, which can be used to compare to other alpha levels if required. Cross-tabulations can be graphed. For example, Percent of Row and Percent of Column tables can be plotted as column graphs, thus providing an alternative to the tables for identifying whether relationships exist between two variables. PaceXL 2 Summary of Options Page 7 PaceXL - GROUPED DATA Grouped Data - Broad functions The Grouped Data routine is used when data are already in grouped form, either as a frequency distribution or as a cross-tab. (A cross-tab is also known as either a two-way cross-tabulation or a contingency table). With Frequency Distributions, the Data Area may include more than one frequency column (for example, frequencies for males and for females and for the two combined). (Note that the Tabulations and Histograms dialog is used for grouping ungrouped/raw data into frequency distributions and cross-tabs. Once the data are grouped, the output from 'Tabulations and Histograms' is similar to that obtained from 'Grouped Data'.) The Grouped Data routine provides the options detailed below, grouped by page tab from the dialog window. Frequency Distribution With frequency distributions, the Data Area must include two data columns, including one column for the midpoints of the classes for each interval. (The midpoints should not be included as the Row Headers.) Output available includes:  Sample data - Summary measures (mean, standard deviation, etc.)  Population data - Summary measures (mean, standard deviation, etc.)  Percentile - For the percentage entered  Table/Plot: Single column - this generates a frequency distribution or histogram for the selected column of frequencies  Goodness of fit: Normal  Multiple Plots - Frequency curve, polygon or histogram for two or more frequencies plotted on the one graph Choose Measures  Add to or reduce the range of summary measures calculated Two Variable Cross-Tab  Cross-tabs for total frequencies, percent of total, percent of rows and percent of columns  Column graphs of the above tables  Test of independence PaceXL 2 Summary of Options Page 8 PaceXL - PROBABILITY DISTRIBUTIONS Probability Distributions - Broad functions The two broad functions of the Probability Distributions routine are to:  calculate probabilities for a given probability distribution  calculate values of the 'variable' corresponding to given probabilities for a particular distribution A Data Area is not required for any calculations. Probability distributions available The eight distributions available are:  Uniform distribution  Binomial distribution  Poisson distribution  Normal distribution  Standard normal distribution  t distribution  Chi-Square distribution  F distribution Uses of this routine The probability distribution routines can be used in a number of ways but in particular:  to replace or extend probability tables of the type given in the back of textbooks  to help solve standard textbook-type problems involving probability distributions Performing calculations In each case you need to:  enter the parameters for the distribution, and  either a probability value or the values of the 'variable' Calculations are displayed in the dialog itself. Updating is immediate, once a value of a parameter or input value is updated. Use the Update button to update values once an input has been altered. You can repeat calculations for the same distribution or change distributions. However, after changing distributions, defaults are reset. Saving results  Current calculations will be written to the Results Sheet when the Save Results button is clicked.  Plots of distributions can be saved using the normal Save Plot options Plots of distributions Plots are available for each distribution as calculations are performed. Plots can be in:  normal format on the Results Sheet, or  large format as a Chart Sheet. Plots are updated immediately with any change in input or with the scroll bars. That is, the plots are linked to the dialog window. The Dialog box can be reduced in size using the 'Less Dialog' button in order to view more of a particular plot. Scroll-bars PaceXL 2 Summary of Options Page 9 The scroll-bars can be used to examine incremental values in key parameters and input values. For example, the standard deviation for the normal distribution can be altered gradually by clicking the scroll-bar. If the plot is shown, the height/width of the distribution will gradually alter. Note that the scroll bars may jump to a default value before returning to your required value. This can apply to calculations and to plots. Two X values Two values for X may be entered for the normal, uniform, binomial and Poisson distributions (and two z values for the standard normal distribution). The probability between these two values is calculated and can be shown on a plot. What-if possibilities Using the scroll-bars, and other display options, 'what-if' situations can be investigated. For example, gradually changing a parameter and viewing the effects on a result or plot. Or plotting a normal distribution over a t distribution and altering the degrees of freedom, etc. PaceXL 2 Summary of Options Page 10 PaceXL - INTERVALS AND TESTS Intervals and Tests - Broad functions The Intervals and Tests routine is used for inferential statistics for one or two sample situations. It is one of the most powerful of the PaceXL statistics options. Input may come from a Data Area or from Summary Measures. Numerical variables and categorical variables are permitted. The Intervals and Tests option provides the options detailed below. (Functions are grouped by operation, type of calculation, etc.) Variable type Calculations may be performed on:  Numerical variables  Categorical variables One or two samples Calculations can involve:  'One Sample' data: just one variable or category/attribute involved  'Two Sample' data: two variables or categories/attributes involved Calculation types There are three main types of calculations:  Confidence Interval  Hypothesis Test  Sample Size Numerical variables In this tab, calculations are performed for numerical variables with the following options:  One Sample, Mean: using the t distribution  One Sample, Mean: using the z distribution  One Sample, Variance/SD: using the Chi-square distribution  One Sample, Median: Sign test  Two Sample, difference between Means, Equal Variances: using the t distribution  Two Sample, difference between Means, Unequal Variances: using the t distribution  Two Sample, difference between Means, Dependent Samples: using the t distribution  Two Sample, difference between Variances/SDs: using the F distribution  Two Sample, difference between Medians: Wilcoxon Rank Sum, using the z distribution Note that PaceXL uses the t distribution as the default distribution, even for large sample sizes (30 or more). 'Categorical' variables In this tab, calculations are performed for categorical variables (including numerical coded categorical variables) with the following options:  One Sample, Proportion: using the z distribution  Two Sample, difference between Proportions: using the z distribution With categorical variables, an attribute value may need to be selected, eg 'Male' or 'Female', or '0' or '1'. Parametric v nonparametric methods Statistical inference techniques are sometimes categorized as:  parametric methods  nonparametric methods The Intervals and Tests routines includes both categories of techniques. PaceXL 2 Summary of Options Page 11 Finite population correction If a population is not large:  the Finite Population Size correction factor can be employed for one sample tests Data source The input source for the sample data can be:  via the Data Area (the variables in the Data Area are listed for selection and PaceXL automatically calculates sample summary measures for each variable selected)  via Summary Measures (if the sample summary measures are already known the user enters the values directly into the dialog) Extra input required Extra input may be required in the form of selecting or entering the:  Confidence coefficient  Level of significance (alpha)  Value of the population parameter for the Null Hypothesis  Required Margin of Error  Estimates of population parameters  Sample size, mean, standard deviation, etc. Results Calculations are written to the Results Sheet and include:  Full details of the type of calculation performed  Details of the data input  A summary of the intermediate calculations and key results  A final result or suggested conclusion Unstack/Select Note that Unstacking and Selecting from a Data Area are options for this routine. These options provide a powerful means of analysing subsets of your data, for example, testing for any difference between Male and Female respondents Calculating the sample size Two choices for calculating the required sample size, n are:  numerical variable and estimating the population mean  categorical variable and estimating the population proportion Plots The following plots are available:  hypothesis tests (for selected numerical variable tests or categorical variable tests)  confidence intervals for one or more numerical variables  box plots for one or more numerical variables  single variable plots for numerical variables (box plots, dot plots, quick histogram) and categorical variables PaceXL 2 Summary of Options Page 12 PaceXL - ANALYSIS OF VARIANCE Analysis of Variance - Broad functions The Analysis of Variance routine is used for one factor and two factor analysis of variance. The options available with the Analysis of Variance routine are given below. One Factor  Standard one factor ANOVA output  Summary measures for input data Options include:  Confidence interval calculations  Multiple comparisons  Repeated measures Two Factor Data are assumed to be in Stacked format and an Index variable must be included in the Data Area.  Standard two factor ANOVA output with interaction  Summary measures for input data Plots  Box plots for all samples, including values  Confidence intervals using pooled standard deviation  Confidence intervals using individual sample standard deviations PaceXL 2 Summary of Options Page 13 PaceXL - REGRESSION AND CORRELATION Regression and Correlation - Broad functions The Regression and Correlations routine is used for exploring for relationships between variables using regression modelling, correlation and scatter plots. Models are generated by simply selecting and deselecting variables as required from the dialog window. Examples of the types of output include:  regression model with standard output  optional full table of residuals  correlation matrices  'scatter matrix' plot option  prediction intervals  residual plots, including histogram, normal curve and box plot options  automated regression options including stepwise and best subsets The Regression and Correlation routine provides the options detailed below, grouped by page tab from the dialog window. Correlation Produces the following matrices for the pairs of variables chosen:  pairwise linear correlation coefficients  t statistics for zero correlation  probability values (p-values) for zero correlation  r-squared (optional) Matrices can be printed as three (or four) separate tables, or printed as a table with three (four) rows per combination. Scatter  Draws scatter plots for every pair of variables chosen in the list  Fit options include linear, quadratic, exponential, cubic and no fit Regression This is the default, and principal, tab of the Regression and Correlation dialog. It is used to generate all regression models, including automated methods. Once a mode has been generated, predictions and plots can be made for that model. Input includes:  Y (dependent variable)  X (independent or explanatory) variable(s)  confidence % level required  which residuals to be analysed for normality Standard Output includes the following:  regression equation and model  regression coefficients, including p-values and confidence limits  variance inflation factor (VIF) for each explanatory variable  summary measures, such as R-squared, adjusted R-squared, standard error of estimate, Durbin-Watson  ANOVA table PaceXL 2 Summary of Options Page 14 Optional output including:  fitted results  residuals, including standardized residuals, studentized (TResiduals), leverage, Cook's distance  flagging of observations for influence analysis Optional table of:  intermediate calculations, including sums of cross-products Optional calculation:  with intercept  no intercept Optional input: confidence interval % Predictions Provides intervals for:  mean of Y (confidence interval)  individual Y (prediction interval) Predictions relate to the latest regression model generated. Regression Plots Produces the following plots:  Fitted  Residuals  Adjusted residuals  standardized residuals  Residuals v Normal  Prediction Bands (for simple regression - one explanatory variable) Automated Methods This tab is used to select, and set up, 'automated' regression methods. The default is multiple regression. Automated options are:  stepwise regression  forward selection  backward elimination  best subsets (with Cp statistics) The output level can be set to:  brief  medium  full The variables to be included in the model are selected from the Regression tab. Select and New Variable  Select can be used to choose / exclude rows from the Data Area  Unstack cannot be used  Temporary variables can be created (squared, logs, etc) for inclusion in regression models PaceXL 2 Summary of Options Page 15 PaceXL - TIME SERIES ANALYSIS Time Series - Broad functions The Time Series Analysis routine is used for analysing time series data. A range of calculation and plotting methods are available for exploring past behaviour, and for forecasting. Annual and sub-annual (monthly, quarterly, etc) data can be analysed. Data period:  PaceXL attempts to keep track of time periods and sub-periods  Except for 'Seasonal Analysis' the data can be annual or sub-annual, or some other period (such as, five-yearly) Number of variables:  Except for Plot Series, only one variable is analysed at a time Accuracy of fit measures given:  R-squared  MSE (Mean Square Error)  MAD (Mean Absolute Deviation)  RMSE (Root Mean Square Error)  MAPE (Mean Absolute Percentage Error) Forecasts available for:  trend fitting  exponential Smoothing  autoregression Plots available for all tabs:  including fitted results and residuals  semi-log options  trend fits The Time Series Analysis routine provides the options detailed below, grouped by page tab on the dialog window. Set Period Data period choices:  year  half year, quarter, month, week or day  other (for example, hourly data for a day, or daily data for a five-day week, or five-yearly) Data period input:  year/period of first observation  number of first year or sub-period Plot Series Options for plotting past data for one or more variables:  arithmetic scale  semi-log scale  percentage change  index form  trend  trend: semi-log PaceXL 2 Summary of Options Page 16 Differences Calculation and/or plot options:  first differences  second differences  percentage differences  index form Moving Average Calculation and/or plot options:  moving average  percent of moving average  absolute and percent residuals  moving average differences  trend fits Moving averages are centered for an even number of periods per cycle. Seasonal Analysis Calculation and/or plot options:  seasonal indexes  seasonally adjusted (deseasonalized) results  absolute and percent residuals  trend fits Conditions and notes:  with Seasonal Analysis, annual data are not permitted  seasonal indexes are calculated using the modified mean method  there must be 2 or more sub-periods per main period (year/cycle)  there must be at least four complete years/cycles of data because  cycles may be lost due to use of a centered moving average  two cycles are lost due to the modified mean method  thus if the data being analysed are quarterly data, there must be 16 or more data points  note that 'Actual Y as a Percentage of Moving Average' calculations, which are used to calculate seasonal indexes, can be obtained from the Moving Average option Trend Fitting Trend types:  linear  exponential  quadratic Calculation and/or plot options:  trend equation only  full calculations  seasonal adjustment option for sub-annual data  forecasts only  all trends summary (for the trend types given above)  absolute and percent residuals  seasonalized trends (sub-annual data) PaceXL 2 Summary of Options Page 17 Exponential Smoothing Calculation and/or plot options:  single exponential smoothing  double exponential smoothing  triple exponential smoothing models  seasonal adjustment option for sub-annual data  different alphas summary (0.1, 0.2 to 0.9)  absolute and percent residuals  seasonalized forecasts ('sub-annual' data) Conditions and notes:  one constant (alpha) for single and triple smoothing  two constants (alpha and gamma) for double smoothing  the triple exponential model is not a specific model, but is included for demonstration/example purposes Autoregression Calculation and/or plot options:  lags of 1 to 12 permitted  one predictor lag included for lag value  all predictor lags included  autocorrelation coefficients  fitted and residuals plots PaceXL 2 Summary of Options Page 18 PaceXL - INDEX NUMBERS Index Numbers - Broad functions The Index Numbers routine has two broad functions.  The first is the calculation of index numbers. This option includes calculating unweighted and weighted index numbers (price or quantity) based on inputs of prices and quantities.  The second is the use of price index numbers. This option allows for deflating a value series using a price index series, calculating percentage changes in an index series (for example, calculating the percentage rate of change in the Consumer Price Index to provide an estimate of the period inflation rate), and deriving other index series. The Index Numbers routine provides the options detailed below, grouped by page tab from the dialog window. Calculating Indexes Index types:  price indexes  quantity indexes Weighting:  unweighted  weighted (based on selection of a quantities column) Output options:  indexes only  full calculations Notes: To calculate price (quantity) indexes, select the column for base period prices and the given (latest) period prices, and the quantities period. Unweighted indexes  unweighted aggregate of prices index  unweighted average of price relatives index Weighted indexes  weighted aggregate price index  weighted average of price relatives index PaceXL cannot detect the period to which the weights belong. However, by selecting the appropriate weights in the Data Area, a Laspeyres Index (base year weights) or a Paasche Index (latest year weights) can be calculated. Using indexes One value series and one price series:  deflated series using a value and price series  percentage changes in the value and price series  various index forms of both series  plots of these calculations Two or more value series and one price series:  deflated results  percentage changes  index forms of results  plots of these calculations PaceXL 2 Summary of Options Page 19 PaceXL - QUALITY CONTROL CHARTS Quality Control Charts - Broad functions This is mainly a plotting routine, but calculations underlying these plots can also be generated. Control charts can be drawn for numerical variables and categorical variables (or attributes). The Quality Control Charts routine provides the options detailed below, grouped by page tab from the dialog window. Numerical Variables Chart types and calculations:  X-Bar chart  s chart  R chart Options with one/some of the above (Exclusions permitted):  Pooled SD (standard deviation)  SD-Bar  R-Bar  Population SD (standard deviation)  Population mean  Tests for non-conformity (X-Bar chart only) Test available for X-Bar chart for non-conformance:  Test 1: One or more means more than 3 sigmas from CL (center line)  Test 2: Nine means in a row on same side of CL  Test 3: Six means in a row, all increasing or all decreasing  Test 4: Fourteen means in a row, alternating up and down  Test 5: Two out of three means more than 2 sigmas from CL on same side  Test 6: Four out of five means more than 1 sigma from CL on same side  Test 7: Fifteen means in a row within 1 sigma either side of CL  Test 8: Eight means in a row more than 1 sigma either side of CL Attributes (categorical variables) Chart types and calculations:  p chart  np chart  C chart  U chart Options with one/some of the above (Exclusions permitted):  Population proportion, p  Population mean  Tests for non-conformity (p chart only) Test available for p chart for non-conformance:  Test 1: One or more proportions more than 3 sigmas from CL  Test 2: Nine proportions in a row on same side of CL  Test 3: Six proportions in a row, all increasing or all decreasing  Test 4: Fourteen proportions in a row, alternating up and down Factors  Prints table of factors for control charts Exclusions  Samples can be excluded from the analysis from the Numerical Variables or Attributes tab PaceXL 2 Summary of Options Page 20