Let’s come straight to the point on this one – there are only 2 types of variables you see – Continuous and Discrete. Further, discrete variables can divided into Nominal (categorical) and Ordinal. We did a post on how to handle categorical variables last week, so you would expect a similar post on continuous variable. Yes, you are right – In this article, we will explain all possible ways for a beginner to handle continuous variables while doing machine learning or statistical modeling.

But, before we actually start, first things first.

Simply put, if a variable can take any value between its minimum and maximum value, then it is called a continuous variable. By nature, a lot of things we deal with fall in this category: age, weight, height being some of them.

Just to make sure the difference is clear, let me ask you to classify whether a variable is continuous or categorical:

- Gender of a person
- Number of siblings of a Person
- Time on which a laptop runs on battery

Please write your answers in comments below.

While continuous variables are easy to relate to – that is how nature is in some ways. They are usually more difficult from predictive modeling point of view. Why do I say so? It is because the possible number of ways in which they can be handled.

For example, if I ask you to analyze sports penetration by gender, it is an easy exercise. You can look at percentage of males and females playing sports and see if there is any difference. Now, what if I ask you to analyze sports penetration by age? How many possible ways can you think to analyze this – by creating bins / intervals, plotting, transforming and the list goes on!

Hence, handling continuous variable in usually a more informed and difficult choice. Hence, this article should be extremely useful to beginners.

Binning refers to dividing a list of continuous variables into groups. It is done to discover set of patterns in continuous variables, which are difficult to analyze otherwise. Also, bins are easy to analyze and interpret. But, it also leads to loss of information and loss of power. Once the bins are created, the information gets compressed into groups which later affects the final model. Hence, it is advisable to create small bins initially.

This would help in minimal loss of information and produces better results. However, I’ve encountered cases where small bins doesn’t prove to be helpful. In such cases, you must decide for bin size according to your hypothesis.We should consider distribution of data prior to deciding bin size.

For example: Let’s take up the inbuilt data set state.x77 in R to create bins:

#load data data <- data.frame(state.x77)

#check data head(data)

#plot Frost variable and check the data points are all over qplot(y = Frost, data = data, colour = 'blue')

#use cut() to create bins of equal sizes bins <- cut(data$Frost, 3, include.lowest = TRUE) bins

#add labels to bins bins <- cut(data$Frost, 3, include.lowest = TRUE, labels = c('Low','Medium','High')) bins

In simpler words, it is a process of comparing variables at a ‘neutral’ or ‘standard’ scale. It helps to obtain same range of values. Normally distributed data is easy to read and interpret. As shown below, in a normally distributed data, 99.7% of the observations lie within 3 standard deviations from the mean. Also, the mean is zero and standard deviation is one. Normalization technique is commonly used in algorithms such as k-means, clustering etc.

A commonly used normalization method is z-scores. Z score of an observation is the number of standard deviations it falls above or below the mean. It’s formula is shown below.

x = observation, μ = mean (population), σ = standard deviation (population)

For example: Randy scored 76 in maths test. Katie score 86 in science test. Maths test has (mean = 70, sd = 2). Science test has (mean = 80, sd = 3). Who scored better? You can’t say Katie is better since her score is much higher than mean. Since, both values are at different scales, we’ll normalize these value at z scale and evaluate their performance.

z(Randy) = (76 – 70)/2 = 3

z(Katie) = (86 – 80)/3 = 2

**Interpretation:** Hence, we infer than Randy scored better than Katie. Because, his score is 3 standard deviations away from the class mean whereas Katie’s score is just 2 standard deviations away from mean.

Transformation is required when we encounter highly skewed data. It is suggested not to work on skewed data in its raw form. Because, it reduces the impact of low frequency values which could be equally significant. At times, skewness is influenced by presence of outliers. Hence, we need to be careful while using this approach. The technique to deal with outliers is explained in next sections.

There are various types of transformation methods. Some are Log, sqrt, exp, Box-cox, power etc. The commonly used method is Log Transformation. Let’s understand this using an example.

**For example:** I’ve score of 22 students. I plot their scores and find out that distribution is left skewed. To reduce skewness, I take log transformation (shown below). As you can see after transformation, the data is no longer skewed and is ready for further treatment.

Business Logic adds precision to output of a model. Data alone can’t suggest you patterns which understanding its business can. Hence, in companies, data scientists often prefer to spend time with clients and understand their business and market. This not only helps them to make an informed decision. But, also enables them to think outside the data. Once you start thinking, you are no longer confined within data.

**For example:** You work on a data set from Airlines Industry. You must find out the trends, behavior and other parameters prior to data modeling.

Once you have got the business logic, you are ready to make smart moves. Many a times, data scientists confine themselves within the data provided. They fail to think differently. They fail to analyze the hidden patterns in data and create new variables. But, you must practice this move. You wouldn’t be able to create new features, unless you’ve explored the data to depths. This method helps us to add more relevant information to our final model. Hence, we obtain increase in accuracy.

**For example:** I have a data set where you’ve following variables: Age, Sex, Height, Weight, Area, Blood Group, Date of Birth. Here we can make use of our domain knowledge. We know that (Height*Weight) can give us BMI Index. Hence, we’ll create HW = (Height*Weight) as a new variable. HW is nothing but BMI (Body Mass Index). Similarly, you can think of new variables in your data set.

Data are prone to outliers. Outlier is an abnormal value which stands apart from rest of data points. It can happen due to various reasons. Most common reason include challenges arising in data collection methods. Sometime the respondents deliberately provide incorrect answers; or the values are actually real. Then, how do we decide? You can any of these methods:

- Create a box plot. You’ll get Q1, Q2 and Q3. (
**data points > Q3 + 1.5IQR**) and (**data points < Q1 – 1.5IQR**) will be considered as outliers. IQR is Interquartile Range.**IQR = Q3-Q1** - Considering the scope of analysis, you can remove the top 1% and bottom 1% of values. However, this would result in loss of information. Hence, you must be check impact of these values on dependent variable.

Treating outliers is a tricky situation – one where you need to combine business understanding and understanding of data. For example, if you are dealing with age of people and you see a value age = 200 (in years), the error is most likely happening because the data was collected incorrectly, or the person has entered age in months. Depending on what you think is likely, you would either remove (in case one) or replace by 200/12 years.

Sometime data set has too many variables. May be, 100, 200 variables or even more. In such cases, you can’t build a model on all variables. Reason being, 1) It would be time consuming. 2) It might have lots of noise 3) A lot of variables will tell similar information

Hence, to avoid such situation we use PCA a.k.a Principal Component Analysis. It is nothing but, finding out few ‘**principal**‘ variables which explain significant amount of variation in dependent variable. Using this technique, a large number of variables are reduced to few significant variables. This technique helps to reduce noise, redundancy and enables quick computations.

In PCA, components are represented by PC1 or Comp 1, PC2 or Comp 2.. and so on. Here, PC1 will have highest variance followed by PC2, PC3 and so on. Our motive should be to select components with eigen values greater than 1. Eigen values are represented by ‘Standard Deviation’. Let check this out in R below:

#set working directory >setwd('C:/Users/manish/desktop/Data')

#load data from package >data(Boston, package = 'MASS')

>myData <- Boston

#descriptive statistics >summary(myData)

#check correlation table and analyze which variables are highly correlated. >cor(myData)

#Principal Component Analysis >pcaData <- princomp(myData, scores = TRUE, cor = TRUE) >summary(pcaData) #check that var comp1 > comp2 and so on. And we find that Comp 1, Comp 2 #and Comp3 have values higher than 1

#loadings - This represents the contribution of variables in each factor. Higher the #number higher is the contribution of a particular variable in a factor >loadings(pcaData)

#screeplot of eigen values ( Value of standard deviation is considered as eigen values) >screeplot(pcaData, type = 'line', main = 'Screeplot')

#Biplot of score variables >biplot(pcaData)

#Scores of the components >pcaData$scores[1:10,]

Factor Analysis was invented by Charles Spearman (1904). This is a variable reduction technique. It is used to determine factor structure or model. It also explains the maximum amount of variance in the model. Let’s say some variables are highly correlated. These variables can be grouped by their correlations i.e. all variables in a particular group can be highly correlated among themselves but have low correlation with variables of other group(s). Here each group represents a single underlying construct or factor. Factor analysis is of two types:

- EFA (Exploratory Factor Analysis) – It identifies and summarizes the underlying correlation structure in a data set
- CFA (Confirmatory Factor Analysis) – It attempts to confirm hypothesis using the correlation structure and rate ‘goodness of fit’.

Let’s do exploratory analysis in R. As we run PCA previously, we inferred that Comp 1, Comp 2 and Comp 3. We’ve now identified the components. Below is the code for EFA:

#Exploratory Factor Analysis #Using PCA we've determined 3 factors - Comp 1, Comp 2 and Comp 3 >pcaFac <- factanal(myData, factors = 3, rotation = 'varimax') >pcaFac

#To find the scores of factors >pcaFac.scores <- factanal(myData, factors = 3, rotation = 'varimax', scores = 'regression' ) >pcaFac.scores >pcaFac.scores$scores[1:10,]

Note: VARIMAX rotation involves shift in coordinates which maximizes the sum of the variances of the squared loadings. It rotates the alignment of coordinates orthogonally.

Presence of Data Time variable in a data set usually give lots of confidence. Seriously! It does. Because, in data-time variable, you get lots of scope to practice the techniques learnt above. You can create bins, you can create new features, convert its type etc. Date & Time is commonly found in this format:

DD-MM-YYY HH:SS or MM-DD-YYY HH:SS

Considering this format, let’s quickly glance through the techniques you can undertake while dealing with data-time variables:

Have a look at the date format above. I’m sure you can easily figure out the possible new variables. If you have still not figure out, no problem. Let me tell you. We can easily break the format in different variables namely:

- Date
- Month
- Year
- Time
- Days of Month
- Days of Week
- Days of Year

I’ve listed down the possibilities. You aren’t required to create all the listed variables in every situation. Create only those variables which only sync with your hypothesis. Every variable would have an impact( high / low) on dependent variable. You can check it using correlation matrix.

Once you have extracted new variables, you can now create bins. For example: You’ve ‘Months’ variable. You can easily create bins to obtain ‘quarter’, ‘half-yearly’ variables. In ‘Days’, you can create bins to obtain ‘weekdays’. Similarly, you’ll have to explore with these variables. Try and Repeat. Who knows, you might find a variable of highest importance.

You can also convert date to numbers and use them as numerical variables. This will allow you to analyze dates using various statistical techniques such as correlation. This would be difficult to undertake otherwise. On the basis of their response to dependent variable, you can then create their bins and capture another important trend in data.

There are three good options for date-time data types: built-in POSIXt, chron package, lubridate package. POSIXt has two types, namely POSIXct and POSIXlt. “ct” can stand for calendar time and “lt” is local time.

# create a date as.Date("2015-12-1")

# specify the format as.Date("11/30/2015", format = "%m/%d/%Y")

# take a difference - Sys.Date() gives present day date Sys.Date() - as.Date("2014-12-01")

#using POSIXlt - find current time as.POSIXlt(Sys.time())

#finds class of each data time component unclass(as.POSIXlt(Sys.time()))

# create POSIXct variables as.POSIXct("080406 10:11", format = "%y%m%d %H:%M")

# convert POSIXct variables to character strings format(as.POSIXct("080406 10:11", format = "%y%m%d %H:%M"), "%m/%d/%Y %I:%M %p")

You can’t explore data unless you are curious and patience. Some people are born with them. Some acquire them with experience. In anyway, the techniques listed above would help you to explore continuous variables at any level. I’ve tried to keep the explanation simple. I’ve also shared R codes. However, I haven’t shared their output. You can run these codes. Try to infer the findings.

In this article, I’ve shared 8 methods to deal with continuous variables. These include binning, variable creation, normalization, transformation, principal component analysis, factor analysis etc. Additionally, I’ve also shared the techniques to deal with date time variables.

Did you find this article helpful ? Did I miss out on any technique? Which is the best technique of all? Share your comments / suggestions in the comments section below.

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Understanding Cost Function
Understanding Gradient Descent
Math Behind Gradient Descent
Assumptions of Linear Regression
Implement Linear Regression from Scratch
Train Linear Regression in Python
Implementing Linear Regression in R
Diagnosing Residual Plots in Linear Regression Models
Generalized Linear Models
Introduction to Logistic Regression
Odds Ratio
Implementing Logistic Regression from Scratch
Introduction to Scikit-learn in Python
Train Logistic Regression in python
Multiclass using Logistic Regression
How to use Multinomial and Ordinal Logistic Regression in R ?
Challenges with Linear Regression
Introduction to Regularisation
Implementing Regularisation
Ridge Regression
Lasso Regression

Introduction to Stacking
Implementing Stacking
Variants of Stacking
Implementing Variants of Stacking
Introduction to Blending
Bootstrap Sampling
Introduction to Random Sampling
Hyper-parameters of Random Forest
Implementing Random Forest
Out-of-Bag (OOB) Score in the Random Forest
IPL Team Win Prediction Project Using Machine Learning
Introduction to Boosting
Gradient Boosting Algorithm
Math behind GBM
Implementing GBM in python
Regularized Greedy Forests
Extreme Gradient Boosting
Implementing XGBM in python
Tuning Hyperparameters of XGBoost in Python
Implement XGBM in R/H2O
Adaptive Boosting
Implementing Adaptive Boosing
LightGBM
Implementing LightGBM in Python
Catboost
Implementing Catboost in Python

Introduction to Clustering
Applications of Clustering
Evaluation Metrics for Clustering
Understanding K-Means
Implementation of K-Means in Python
Implementation of K-Means in R
Choosing Right Value for K
Profiling Market Segments using K-Means Clustering
Hierarchical Clustering
Implementation of Hierarchial Clustering
DBSCAN
Defining Similarity between clusters
Build Better and Accurate Clusters with Gaussian Mixture Models

Introduction to Machine Learning Interpretability
Framework and Interpretable Models
model Agnostic Methods for Interpretability
Implementing Interpretable Model
Understanding SHAP
Out-of-Core ML
Introduction to Interpretable Machine Learning Models
Model Agnostic Methods for Interpretability
Game Theory & Shapley Values

Deploying Machine Learning Model using Streamlit
Deploying ML Models in Docker
Deploy Using Streamlit
Deploy on Heroku
Deploy Using Netlify
Introduction to Amazon Sagemaker
Setting up Amazon SageMaker
Using SageMaker Endpoint to Generate Inference
Deploy on Microsoft Azure Cloud
Introduction to Flask for Model
Deploying ML model using Flask

Actually, there are more types that categorical and continuous. There are ordinal variables, where the data has a definite order to it. For instance, if I am rating customer service experience from 1 to 5 with 1 being the worst and 5 being the best, the result has an order to it: 3 is better than 2.

Hi Edmund Appreciate your suggestion. I've updated the same.

Good Summary.

Can we use PCA for categorical variable also? Say, we have 10 variables; 4 categorical and 6 numeric; categorical variables have levels 3,4,2,6 respectively; Now, 1) Once we create dummies from that then we may 3+4+2+6 = 15 dummies + 4 numeric; All dummies are binary codes; 2) Eventually we have now 19 numerics (can we treat dummies as numeric? I doubt here also as they are mere binary codes 0/1;) 3) Now if we perform cor() or hetcor() and then pca() then is that fine?? I am sure I am not accurate in this steps but is there any major mistakes in the steps?

A good exmaple but if you can show the same using SPSS that will be helpful

Good one, in Outliers section, Create a box plot. You’ll get Q1, Q2 and Q3. (data points > Q3 + 1.5IQR) and (data points < Q3 – 1.5IQR) will be considered as outliers. Lower boundary should be Q1-1.5IQR where as in the post mentioned as Q3-1.5IQR.

Hi Vamshi Thank you so much for highlighting this error. I've considered it.

Please answer this Q: can R studio handle huge data.??. am using SVM function directly on 6 lakh rows and its getting hanged. Should I code SVM line by line and then try or is there some other method ???

Good article. The graph on right skew. I thinks it's a left skewed data before transformation

Hi John My bad. Corrected now. Thanks.

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Can you please add same topic covered by Python?

Gender of a person--Categorical Number of siblings of a Person-Continuos Time on which a laptop runs on battery-Continuos

Gender of a person- Categorical Number of siblings of a Person= Continuous Time on which a laptop runs on battery- Continuous

In plot of students scores, if we change their order, we’ll have a different result. I mean: why students plotting have to obey a certain ordem?

Very interesting topic.