Skip to content
View in the app

A better way to browse. Learn more.

Benchmark Six Sigma Forum

A full-screen app on your home screen with push notifications, badges and more.

To install this app on iOS and iPadOS
  1. Tap the Share icon in Safari
  2. Scroll the menu and tap Add to Home Screen.
  3. Tap Add in the top-right corner.
To install this app on Android
  1. Tap the 3-dot menu (⋮) in the top-right corner of the browser.
  2. Tap Add to Home screen or Install app.
  3. Confirm by tapping Install.
Message added by Mayank Gupta,

Multi-vari Chart is a visualization of the relationship between factors (input variables) and a response (output variable). It is used as a preliminary tool to investigate variation in the data, including cyclical variations and interactions between factors. It is a two-axis graph, with time moving on the X axis from left to right, and the response being plotted on the Y axis.

 

An application-oriented question on the topic along with responses can be seen below. The best answer was provided by Moushmi Kandori on 15th May 2023.

 

Applause for all the respondents - Amit Kumar Shukla, Vijay Tomar, Vidhya Rathinavelu, Moushmi Kandori, Ramjanam Singh.

Multi-vari chart

Featured Replies

Q 564. Multi-vari chart is a graphical representation of ANOVA data. Explain the basics of a Multi-vari chart and how to interpret the results using an example.

 

Note for website visitors -

Solved by Moushmi Kandori

If Multiple variables in a process or system can be analgised by using statistical process control tool- Anova, correlation chart or an interaction plot..

Chart on multiple variables give representation of patterns and relationships between them. On X-axis there will be 2 or more variable & on Y-axis measured value.

Multi-vari charts used mostly for manufacturing process to identify potential cause ( Vital x) and  effective ( Response-Y). This chart can be use healthcare and finance analyse the relationships between factor and response. . Interpretation of the chart involves analyzing the patterns and relationships between the variables, and identifying potential areas for improvement or further investigation.

Chart Quality- Variability on a single piece, Piece-to-piece variability Time-to-time variability

Example- We have 3 type of material used for parts. Due to raw material type, different cycle time or process time for production & will give impact strength. So data collection for same. And Raw Material cost(Rs/kg)  ABS>HIPS>PP.

 

Which material to be selected for production and why?

 

Raw Material Type

Cycle Time

Impact Strength

ABS

60

23

ABS

60

20

ABS

60

21

PP

60

22

PP

60

19

PP

60

20

HIPS

60

19

HIPS

60

18

HIPS

60

21

ABS

65

22

ABS

65

20

ABS

65

19

PP

65

24

PP

65

25

PP

65

22

HIPS

65

20

HIPS

65

19

HIPS

65

22

ABS

75

18

ABS

75

18

ABS

75

16

PP

75

21

PP

75

23

PP

75

20

HIPS

75

20

HIPS

75

22

HIPS

75

24

 

image.png

Interpreting the results

1.       ABS Material- lower cycle time and higher Impact Strength

2.       HIPS Material – Higher Cycle time- higher Impact Strength

3.       PP Material – Higher strength at Optimum cycle time.

Out of all three Raw material and cycle time.

1.       If Material Selection based on available time- ABS material can be selected for higher number of production for higher strength.

2.       If Cost is factor- PP material can be used for production.

Multi-vari chart is a graphical tool to find the variation and root cause in the data including cyclic variation and interaction. It is also the graphical representation of the relationship between factors and a response. Sources of variation can be found because of following reasons:

1.    Variation within Part (is also called Positional variation).

2.    Part to part variation (is also called cyclic variation).

3.    Time to time variation (is also called Temporal variation)

A multi-Vari is plotted on 2 axis, response (y) is plotted on the vertical axis however Factors are plotted on Horizontal axis. Consecutive measurements are plotted from left to right on horizontal axis.

Example and interpretation of Multi-Vari Charts: -

XYZ water company, A leading supplier of quality water wanted to check the purity of Water.

The following is the Table of Sample taken during different positions to check the Water Purity. A multi-vari chart was drawn using Minitab to check the source of variation in purity of water.

Shift

Piece (Sample)

Position (Sample Location)

% Purity

1

1

1

99

1

1

2

99

1

1

3

99

1

1

4

100

1

2

1

95

1

2

2

97

1

2

3

98

1

2

4

96

2

1

1

100

2

1

2

100

2

1

3

97

2

1

4

100

2

2

1

96

2

2

2

97

2

2

3

100

2

2

4

98

 

 image.png

 

 

Ø  On the Multi-vari charts, Cleary evident that Largest Variation occurs due to Variation in sample hence Part to part variation.

Ø  Within Position variation is also present however it is less compared to part-to-part variation

Ø  Shift to shift (Time to Time) variation is present, however not significant and less than the variation caused by part-to-part variation.

However further analysis of Variation done through ANOVA, and Part-to-part variation was found significant based on the p-values obtained.

 image.png

 

 

 

Multi vari chart is a graphical representation from which we cannot draw statistical inferences. It is  used to identify the multiple sources of common cause variations. We can check variations across piece to piece, variation on single piece and time to time using a multi vari chart
 
Piece to Piece helps identify variations within a part of the product/process
When we want to compare two different process/product, piece to piece can be used. 
Time to time variation is used to compare the variations between the different times of production
 
Interpreting the Multi Vari chart:
Means for each factor must be referred and the interaction of one factor with the other and the impact on the other can be understood by the studying the trend line that passes through the mean.
  • Solution

Introduction – One of six sigma's key objectives is to reduce variation, and comprehending these variations can be aided by using Multi-Vari charts.  Leonard Seder first described Multi-Vari charts in 1950. Later, it was widely used to comprehend stock market fluctuations. Then, Dorian Shainin began utilising it as a root cause analysis tool, which he referred to as Red X.

 

Definition – Multi-Vari charts analyse various sources of variation or classes of variation, according to their definition.  It is useful for early root cause analysis and helps us focus on the inputs that are producing issues.  These are sometimes referred to as multiattribute utility theory charts, and they assist people in comparing numerous options by outlining the advantages and disadvantages of each other.  This is just an another way to narrow down our inputs by analysing the process Xs or the inputs.  Especially in the early stages of data analysis, use a Multi-Vari chart to visually portray Analysis of Variance (ANOVA) data to analyse data, understand potential relationships, and root causes for variation. Multivariate graphs are particularly helpful for comprehending interactions.

 

 

Sources of Variation as we have in ANOVA:

 

Interaction Within Variables – This source let us understand the reasons for variation within a batch.  This is also called positional variation.  For instance, it is comparing within the variables if we observe variation within a batch on a given day.

 

Interaction Between Variables – This source explains the causes of the change between batches.  Additionally known as cyclical variation.  For instance, if we are seeing variation between Batch 1 and Batch 2, it is comparing between the variables.

 

Time-to-time Interaction – This provides the reasons between weeks or days or any time frame we want to analyse.  This is also called temporal or shift-to-shift variation.  For instance, if we are looking to find our variation across the Day 1 and Day 2, then the time factor comes into picture and it is Time-to-Time variation.

 

A Multi-Vari chart is a two-axis plot.  These graphs are used to examine a process's consistency or stability.  Time is represented on the chart's horizontal, or X-axis while the process output or reaction measurement is depicted on the vertical, or Y-axis.

 

The multiple measurements of each unit are plotted together. Consecutive measurements are plotted from left to right over time. A break in the horizontal groupings indicates a break in time during the sampling process.

 

Advantages

Ø  It gives us access to several sources of variation, such as within, between, and over time, and is comparable to the reproducibility and repeatability of ANOVA.

Ø  Despite the need for additional statistical analysis, it points us in the right path for determining the reasons of variations.

Ø  This is easily illustrable without the aid of any graphic programme.

 

Disadvantages

Ø  As was already said, Multi-Vari only provides preliminary sources of variations.

Ø  Given that it is merely a graphical tool, a thorough interpretation is not feasible.  ANOVA can be used to undertake statical procedures and uncover the underlying causes of sources of variation.

Ø  With discrete data, it is ineffective.  To measure the variances, we can only use continuously data.

 

Let's look at one of the industry examples of Quality scores broken down by week that was taken from various clients below.

image.png.32582142bcd27fe057ea7d686fd58ae2.png

 

 

Interpretation

·         Client 5: The Multi-Variance chart shows that Client-5 demonstrated strong Quality performance over the course of all four weeks, with very little variations in their weekly results.  

·         Client 2: The Multi-Variance chart shows that Client 2 has higher weekly variations and is also going lower than 90%.

·         Client 1 is performing similarly to Clients 2 and 4 in terms of quality, however there is more variance between the weeks.

·         Client 3: When compared to other clients, this client's quality is inconsistent and shows significant fluctuations.

A multi-vari chart depicts the focuses on the relations between response and factor, this typically shows the variance data analysis in graph manner, majorly during the initial stages of the data observation, relations, and possible root cases of the data variance. This graph basically analyses the process stability.

Multi-Vari chart is mainly used in services and manufacturing sectors. There are two types of multi-vari chart study:

Passive Nested observed without changing the routine of the process, whereas manipulated crossed observation is oriented towards intentional process changes for observation. This is basically a method of analysing the multivariate in statistical way to stimulate and observe the data, each individual data group is analysed on multiple variables and parameters.

Multi-Vari analysis focuses on logical subgrouping of the data set to analyse effects on continuous Y’s of category X’s. This can be measured with nested analysis of variance. Multi-Vari analysis is consist of tow or more dependent components Y1,Y2 together taken for independent variable X1,X2, so on.

This can be used in very structured way to study and implement in statistical control. Helps in finding the causes of process variation and quantify them.

Within shift, Operator to operator, Within operator, shift to shift, between the shifts etc..

This can be used in six sigma projects to analyse the VOC, Brainstorming, 5S systems, Kaizen, process benchmarking, Poka-Yoke and VSM etc.

With this graph we we can interpret the variation by studying pattern of lines and circles, at every variation within each line item, also between cyclical variations. This help in analysing the effect of various category groups input on a continuous output.

Best answer to this question has been given by Moushmi Kandori. Well done.

 

Vijay's answer is also a must read. 

Create an account or sign in to comment

Account

Navigation

Search

Search

Configure browser push notifications

Chrome (Android)
  1. Tap the lock icon next to the address bar.
  2. Tap Permissions → Notifications.
  3. Adjust your preference.
Chrome (Desktop)
  1. Click the padlock icon in the address bar.
  2. Select Site settings.
  3. Find Notifications and adjust your preference.