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,

Latin square design involves three factors in which the combination of the levels of any one of them and the levels of the other two appear once and only once. A Latin square design is often used to reduce the impact of two blocking factors by balancing out their contributions. A basic assumption is that these block factors do not interact with the factor of interest or with each other. This design is particularly useful when the assumptions are valid for minimizing the amount of experimentation.

 

An application-oriented question on the topic along with responses can be seen below. The best answer was provided by Rahul Arora on 14th Jun 2022.

 

Applause for all the respondents - Rahul Arora, Ravindra Kulkarni.

 

Also review the answer provided by Mr Venugopal R, Benchmark Six Sigma's in-house expert.

Featured Replies

Q 479. Latin Square design is a special kind of randomized design in DOE. Explain with examples, when is this kind of design generally used?   

 

Note for website visitors - Two questions are asked every week on this platform. One on Tuesday and the other on Friday.

Solved by Rahul.Arora2

  • Solution

My two cents on this:-

 

Let us understand the concept & limitations of the two conventional experimental designs & how latin square design takes care of those limitations through example from optical lens industry:-

 

Completely Randomised Design (CRD) or One Way ANOVA:

 

In CRD each experimental unit is randomly assigned to one of the treatment levels. For eg: Let us take an example from optical industry where we want to study the Impact of different varnish types (coating formulations) on the final yield of our lens coating process. Here the experimental unit is the lens on which coating will be done. Here each sample will be randomly allocated to a treatment group hence in this case let’s say we have 60 samples & three types of varnishes (let, say X,Y,Z) thus the entire samples will be divided into three groups of 20 each & one group will be subjected to Varnish X, other to Y & the third to Z. This can be shown as:-

 

Varnish X

Varnish Y

Varnish Z

Group B

Group A

Group C

 

We will be taking into account the variability within each unit in the overall sample (SS within) & the variability between groups subjected to the three varnish types X,Y,Z  (SS between)

 

Randomised Block Design (RBD) or Two Way ANOVA:

 

Now in the above example let’s say we observed that the suppliers (let’s say Supplier A,B,C) from which the varnishes (X,Y,Z) are imported also influences the final yield of our coating process. Here the supplier factor will become the blocking variable. In this case the units are first assigned to each block & each unit within the block will be subjected to all the treatments but cannot be assigned to other blocks & other treatments. Thus let’s say we have 180 samples , first we will divide these samples into three groups of 90 I.e. one for supplier A, one for Supplier B & one for supplier C & these three groups will be further subdivided into groups of 30 & one subgroup will be subjected to Varnish X, second with Y & third with Z & likewise for supplier B & C group.

 

 

Block

Varnish X

Varnish Y

Varnish Z

Group 1

Supplier A

Subgroup 1

Subgroup 3

Subgroup 2

Group 2

Supplier B

Subgroup 2

Subgroup 3

Subgroup 1

Group 3

Supplier C

Subgroup 3

Subgroup 1

Subgroup 2

 

Here we will be taking into account the variability within each unit in the overall sample (SS within), variability in groups amongst the blocks I.e. supplier A & B (SS blocks) & the the variability between groups basis the three varnish types X,Y,Z (SS between)

 

Latin Square Design:

 

Latin square Design takes care of above limitation with the fact that each experimental unit will get all the treatment but that treatment combination will be a square & each treatment combination occurs only once in a row & a column which is the underlying principle of Latin Square Design. Let us see below:-

 

Now considering the above example lets say we have a sample of 60 lenses & these will be divided into groups of 20 basis the supplier levels A,B,C as well as Varnish Types X,Y,Z.

 

Here each group will be subjected to a combination of each supplier & each varnish type but only once.

 

An important assumption to consider in Latin square Design is the levels in each of the factors considered should be the same like in this example where we have three levels of Suppliers (A,B,C) & three levels of medicine (X,Y,Z). Thus in this case it will be a 3x3 latin square .

 

 

Varnish X

Varnish Y

Varnish Z

Supplier A

Group B

Group A

Group C

Supplier B

Group C

Group B

Group A

Supplier C

Group A

Group C

Group B

 

Here we will be taking into account the variability within each unit in the overall sample (SS within), variability in groups amongst the blocks I.e. supplier A & B (SS blocks) & the the variability between groups basis the three varnish types X,Y,Z (SS between) & the variability due to each combination of block I.e. supplier & Treatment i.e. Varnish & Supplier.

Latin Square design helps us to control the variation in two directions. Factors are arranged in rows and columns. 

 

Below are couple of examples Latin Square Design is generally used.

 

1.     Trials in agriculture. If there is a agricultural land, the fertility of this land might change in both directions, East – West and North – South due to the moisture levels in the air or soil of the land. In this example of the agricultural land, we might have blocked it in columns and rows. Now, each row is a level of row factor and each column a level of column factor. We can remove the variation in both the directions if we consider both rows and columns as factors in our design.

 

2.     Trials in greenhouses where pots are arranged in a straight line perpendicular to the walls such that the distance between the pots and the wall are the sources of variability.

Benchmark Six Sigma Expert View by Venugopal R
 

Readers are expected to have some exposure to 'Design of Experiments' to be able to relate some terminologies in this answer for 'Latin Square Design'.

 

Experiments are designed to study whether a response (output) is dependent on certain factors (inputs) and also to establish the extent of relationship. It is possible that when we design and perform an experiment with planned settings of an input factor, there could be some known 'noise factors' which are likely to influence the behavior of the output. Such 'noise factors are also referred to as nuisance factors'. They are factors that we are not interested to study, but we may be concerned that they might interfere and bias our results.

 

If we suspect the presence of one 'noise factor', it is a common practice to use a 'Randomized Block Design'. The below example will illustrate such a situation.

 

It is believed the concepts of ‘Design of Experiments’ originated from field of agriculture. We will understand the Randomized Block Design, followed by Latin Square Design using an example relating to ‘yield of a crop’. However, the concept can be applied to other situations dealing with ‘nuisance factors’.

 

We are limiting our discussion to the Experimental Design portion and not discussing the Analysis portion here.

 

RANDOMIZED BLOCK DESIGN

 

Imagine that we are interested to study the impact of 'fertilizer dozes' on the yield for a crop. We have divided the land into 24 plots (8 x 3) available as shown below. Eight different dozes of fertilizer (A, B, C, D, E, F, G, H) are to be tried out.

 

However, it so happens that there is a river flowing on the left side of the land. Now we suspect whether the presence of the river will result in higher moisture content for the plots closer to the river. To study any possible impact due to the possible moisture variation we divide the plots into 3 vertical blocks, each block representing the different moisture content (High, Medium and Low).

 

image.png.bb06ce03094100321c467a9fa69f1423.png

 

Within each block we perform all the treatments based on the 8 fertilizer dozes, but with random distribution. Such a design is referred to as 'Randomized Block Design (RBD). The RBD will help to address one noise factor. 

 

LATIN SQUARE DESIGN

 

Instead of one Noise factor, if we have two Noise Factors; for example, we have river that runs along the West side and a road that runs along the North side. We suspect that the river contributes to varied levels of moisture content as we move from west to east along the land. Whereas, we also suspect that the road is contributing to varied levels of pollution while moving from North to South across the land. 

 

We suspect two nuisance factors. viz. Moisture levels and Pollution levels. Will the plots closer to the river be influenced by higher moisture content and the plots closer to the road be influenced by higher pollution content? To consider the possible impacts due to these two suspected noise factors, we use an experimental design as shown below.

 

image.png.a5d00b5820687e54585278aa9d88e28d.png

 

As seen, the design is in the form of a square, with equal number of rows and columns. The treatment for each plot is represented by an alphabet. In this case we can try out 4 different dozes of fertilizers viz. A, B, C and D. Such a design is known as 'Latin Square Design'.

 

Each cell in the Latin Square design can accommodate only one treatment. It may be noticed that all the treatments (A,B,C and D) are covered in each row, as well as each column. The number of blocks has to be the same, horizontally and vertically, for both the noise factors. The Latin Square design is used when we suspect two noise factors and want to study whether those noise factors cause (an undesired) influence on the response.

 

Another example for Latin Square application is shown below:

 

The output of interest is the rate of sales for 3 variants (A, B, and C) of a product. The noise factors suspected are the type of cities and the type of dealer promotion schemes. We have considered 3 blocking with respect to the city types and 3 blocking with respect to the dealer promotion scheme. The Latin Square design may be applied as below:

 

image.png.f3f23cb32a24db46bc76fa58328280e8.png

  • Author

Rahul Arora has provided the winning response for today's question. Viewers are advised to go through the Benchmark Six Sigma expert response by Mr. Venugopal as well. 

 

If you have responded but your answer is not approved, there are high chances that it failed the plagiarism (copied from elsewhere over the internet) test. 

 

Please pay attention to the following text mentioned under each question 
 

  • When you respond to the question, your answer will not be visible till it is reviewed. Only non-plagiarised (plagiarism below 5-10%) responses will be approved. If you have doubts about plagiarism, please check your answer with a plagiarism checker tool like https://smallseotools.com/plagiarism-checker/ before submitting. 

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.