Skip to content

chinmayeeguru/Lead-Scoring-Logistic-Regression-Model

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

9 Commits
 
 
 
 

Repository files navigation

Objective

This case study was aimed to build a Logistic Regression model for a company X Education to predict which of the customers are likely to convert (i.e.: take up their online courses) and which are not. The business requirement was to assign a lead score to each of the leads such that the customers with higher lead score have a higher conversion chance and the customers with lower lead score have a lower conversion chance.

Process

Below steps were performed to arrive at the final model:

  • Inspected the data and performed missing value analysis and imputations, wherever needed.
  • Outlier analysis was performed and no noticeable outliers were found.
  • Identified the categorical variables and converted them to dummy variables using One Hot Encoding methodology, in data preparation step. Since, the Specialization column had ‘Select ‘value, it was dropped manually. Rest all categorical variables were dropped using ‘dropfirst’ option.
  • The Train-Test was split in 70-30 ratio and performed Min-Max Scaling on the numerical variables.
  • In the model building step, the RFE approach was used to select 15 columns and based on the p-values and VIF manual feature elimination was performed to arrive at the final model where all p-values were less than 0.05 and VIF<2.

image

image

  • The business aspects were also taken into consideration while selecting the variables for the model. The top 5 features after model building were:
  1. TotalVisits
  2. Total Time Spent on Website
  3. Lead Origin_Lead Add Form
  4. Lead Source_Olark Chat
  5. Lead Source_Welingak Website
  • Model Evaluation was performed to check for its accuracy, sensitivity and specificity. ROC curve was plotted by taking the cut-off as 0.5 and the area under the curve was equal to 0.86.

image

  • In-order to find the optimal threshold the values of accuracy, sensitivity and specificity were plotted together and the threshold was found to be at 0.42. At this value the Accuracy, Sensitivity and Specificity were found to be around 79%.

image

  • Finally, after performing predictions against the test data, the Accuracy, Sensitivity and Specificity were found to be around 78%.
  • As per the Conversion probability obtained, the lead score was calculated for each lead and assigned it accordingly.

Insights and Recommendations to the Business

  • The highest contributing columns to the Conversion probability were Total visits followed by Total time spent on the Website and Lead_Origin_Add form. The sales team should focus on these columns going forward to achieve a higher conversion rate.

  • We need to target professionals who spend most of their time on the website by making dedicated phone calls to them and if they seem interested could also offer some joining discounts.

  • To make the lead conversion more aggressive, the team can consider a cut-off giving high sensitivity or Recall value. The team may consider a probability threshold of 0.4 to achieve their target of 80% conversion rate.

  • The sales team need not make unnecessary calls to leads those are not going to be converted, in order to reduce Type 1 error. In this case the team may consider a cut-off of 0.7 or 0.8 in order to achieve a low False Positive Rate (FPR) or high Specificity