There are two types of data mining that can be used for the models describing the importance category or to estimate prospective data generation. The two types of data mining areas under one are Classification and the other is Prediction. 

Classification and Prediction in data mining are the two types that are connected with data mining. Data is relevant to most of all the business enterprises to expand their financial gain and to grasp the industries.

  1. What is Classification?
  2. What is a Prediction?
  3. Difference between Classification & Prediction.

1) What is Classification?

Classification is too familiar to the level or the class note of a new observation or information. In classification, without a label data or the information is given to the model, it should find the class in a specified place.

Classification and Prediction are two forms of data mining that can be used to abstract models describing significant data classes or to predict future data direction.

  • Determines the class of an element in the datasheet.
  • Concerned about the class label. 
  • Identifies the class label and using that class label classification model is created. 
  • In the real-life of the world, the Bank or Financial Institute is required to resolve whether giving advances to a particular person is risky or not. In this example, a model is built to detect the explicit note.

2) What is a Prediction?

The second way to operate data mining is Prediction. It is repeatedly used to detect several data. Same thing as over in classification, the behaviour of data set holds the inputs and similar numerical output values. Compatible with the behaviour of the dataset, the algorithm (division) gets the model or a predictor.

When the new information is given, the model should detect a numerical output. Despite the classification, this procedure does not have the class label or notes. The model estimates the current valued action or command value. 

Regression (Growth) in most cases is used for Predication. Predicting the price of a house rely on cases such as the number of the apartment, the total region, and so on is an illustration for predication. An organization has the power to find the amount of banknotes payout by the person during a negotiation.

  • Determines missing or unknown elements in a datasheet. 
  • The classification model is built to predict the outcome. 
  • Does not depend on the class label. 
  • Predictions are made using both regression and classification models.

3) Difference between Classification & Prediction.

  • Classification is the method of recognizing to which group; a new process belongs to a background of a training data set containing a new process of observing whose group membership is familiar.
  • Predication is the method of recognizing the missing or not available numerical data for a new process of observing.
  • A classifier is built to detect explicit labels.
  • A predictor will be build that predicts a current valued job or command value.
  • In classification, authenticity depends on detecting the class label correctly.
  • In predication, the authenticity depends on how well a given predictor can guess the value of a predicated attribute for new data.
  • In classification, the sample can be called the classifier.
  • In predication, the sample can be called the predictor.


Extracting significant information from a big size of data set is called data mining. This section talks about two procedures of data analysis in data mining such as one is classification and the other is predication. The quickness, scalability, and weakness are remarkable outcomes in classification and prediction procedures. 

Classification is measured as recognized forms or class labels of the new observation.  Predication is measured as recognized as the missing or not available numerical data for a new observation. That is the variation between classification and prediction.

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