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PREDICTIVE MODELING
DEVELOPMENT LIFE
CYCLE
BA303: PREDICTIVE MODELLING
Submitted by:
RAVI VERHWANI
(2K20/BAE/111)
PREDICTIVE MODELLING
Predictive analytics is leveraged to create
predictions about unknown future actions. It
uses numerous techniques, such as statistical
algorithms, data mining, statistics, modeling,
machine learning, and AI, to evaluate current
data and make forecasts about the future. It
aims to identify the possibility of future results
based on the available historical data.
Meaning
Phone Number
6 STEPS TO PREDICTIVE ANALYSIS
IDENTIFYING A
PROBLEM AND
DEFINING A
PROJECT
Understanding the industrial problem more deeply is the
first stage in building a model. In business, a problem
doesn't arise until a client runs into a problem while using
the services.
We must properly establish the project objectives in order
to determine the problem's intent and the prediction aim. In
order to move forward with an analytical approach, we
must first identify the challenges. Keep in mind that
superior outcomes always require a deeper comprehension
of the issue.
For instance, Citi Bank wishes to establish a consistent
system for approving or rejecting credit card applications
from its numerous daily applicants.
COLLECTION
OF DATA
After determining the issue facing the
company, the next step entails gathering
pertinent data from customers, either
through secondary sources like data
already held by the client or through
primary sources.
Depending on the nature of the objective
issue facing the company and its cost-
effectiveness.
DATA
PREPARATION AND
ANALYSIS
Preparing the data for predictive modelling
after data collection is crucial since it may
contain null values, missing data, and errors.
Secondly, divergent datasets with different
formats may exist and need to be converted
to the same format before joining the data.
Finally, we must identify independent and
dependent variables. Exploratory data
analysis techniques such as graphs and
statistical tools can be used to find trends
and confirm data assumptions.
FEATURE
SELECTION
The variables are reduced
based on the correlation
between two input variables.
With the help of statistical
tools like correlation, the
variables are reduced.
In order to improve the
model's effectiveness and
cost-effectiveness, feature
selection can be described
as the reduction of input
random variables.
The following crucial step entails
developing a model using different
methods, such as linear regression or
lasso regression, validating the
presumptions made, training the
model using training data, and then
testing the model once more using
test data to determine whether it is
functioning properly.
By dividing the population's data into
training and testing sets, the data for
training and testing are obtained.
ROC can be used to test the accuracy.
MODEL
BUILDING
MODEL DEPLOYMENT
AND ENHANCEMENT
ONCE THE MODEL HAS UNDERGONE
TRAINING AND TESTING, IT IS PUT TO USE IN
A REAL-WORLD SETTING TO ASSIST
BUSINESSES IN MAKING DECISIONS AND, IF
NECESSARY, TO FURTHER REFINE THE MODEL
BASED ON THE DEMANDS AND PURPOSES
FOR WHICH IT IS BEING DEVELOPED.
Predictive Modeling Development Life Cycle

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Predictive Modeling Development Life Cycle

  • 1. PREDICTIVE MODELING DEVELOPMENT LIFE CYCLE BA303: PREDICTIVE MODELLING Submitted by: RAVI VERHWANI (2K20/BAE/111)
  • 2. PREDICTIVE MODELLING Predictive analytics is leveraged to create predictions about unknown future actions. It uses numerous techniques, such as statistical algorithms, data mining, statistics, modeling, machine learning, and AI, to evaluate current data and make forecasts about the future. It aims to identify the possibility of future results based on the available historical data. Meaning
  • 3. Phone Number 6 STEPS TO PREDICTIVE ANALYSIS
  • 4. IDENTIFYING A PROBLEM AND DEFINING A PROJECT Understanding the industrial problem more deeply is the first stage in building a model. In business, a problem doesn't arise until a client runs into a problem while using the services. We must properly establish the project objectives in order to determine the problem's intent and the prediction aim. In order to move forward with an analytical approach, we must first identify the challenges. Keep in mind that superior outcomes always require a deeper comprehension of the issue. For instance, Citi Bank wishes to establish a consistent system for approving or rejecting credit card applications from its numerous daily applicants.
  • 5. COLLECTION OF DATA After determining the issue facing the company, the next step entails gathering pertinent data from customers, either through secondary sources like data already held by the client or through primary sources. Depending on the nature of the objective issue facing the company and its cost- effectiveness.
  • 6. DATA PREPARATION AND ANALYSIS Preparing the data for predictive modelling after data collection is crucial since it may contain null values, missing data, and errors. Secondly, divergent datasets with different formats may exist and need to be converted to the same format before joining the data. Finally, we must identify independent and dependent variables. Exploratory data analysis techniques such as graphs and statistical tools can be used to find trends and confirm data assumptions.
  • 7. FEATURE SELECTION The variables are reduced based on the correlation between two input variables. With the help of statistical tools like correlation, the variables are reduced. In order to improve the model's effectiveness and cost-effectiveness, feature selection can be described as the reduction of input random variables.
  • 8. The following crucial step entails developing a model using different methods, such as linear regression or lasso regression, validating the presumptions made, training the model using training data, and then testing the model once more using test data to determine whether it is functioning properly. By dividing the population's data into training and testing sets, the data for training and testing are obtained. ROC can be used to test the accuracy. MODEL BUILDING
  • 9. MODEL DEPLOYMENT AND ENHANCEMENT ONCE THE MODEL HAS UNDERGONE TRAINING AND TESTING, IT IS PUT TO USE IN A REAL-WORLD SETTING TO ASSIST BUSINESSES IN MAKING DECISIONS AND, IF NECESSARY, TO FURTHER REFINE THE MODEL BASED ON THE DEMANDS AND PURPOSES FOR WHICH IT IS BEING DEVELOPED.