Use Data Mining to Predict If Your Product Will Crash and Burn

If you want to know how predictive analytics saves clients and separates good customers from failures then you are at the perfect place. You may feel like going against the marketing rule but it is possible in some instances that the positive consumer feedback and strong sales can be bad for the new product. Of course, if the consumers are paying for the new product then they must have a history of favoring items that fail. These shoppers are known as “harbingers of failure.”

According to the research, the people who purchased diet crystal Pepsi are more likely to have purchased Frito lay lemonade. That is the normal behavior that has been observed. The academic analysis is considered more post hoc as compared to contemporary business architectures ingesting data to lakes and warehouses after that pipelined for reporting and analysis from data science teams. There are many benefits of data mining in marketing and some of them are mentioned:

  1. Basket Analysis

Understand what products and services are often purchased together. The association rule learning says to use it as data mining.

  1. Product Recommendation

The product suggestions to individual users are based on data, this technique is used for the association rule learning with techniques such as content-based filtering and collaborative filtering.

  1. Customer Segmentation

In this technique, the data is presented in subgroups of customers or clients into subsets based on ordinary habits and characteristics. This is used in cluster analysis.

  1. Customer Lifetime Value

To quantify how much money a client is likely to create for the company. It is used in data mining as boosting and decision trees.

  1. Churn Prediction

Quantifying the possibility of the customer when the client will stop doing business with the company. It can be used for regression and classification.

Role Of Data Sciences For Increasing Social Life

The enhancement of social networks has transformed the way people socialize. The personal information is in the hands of social network engineers as they know your location, birthday, marital status, and whatnot. It is not correct to say that the LinkedIn connections and facebook friend lists do not mean much. At this current stage, most of the relationships begin online and then they go far longer. So there is a huge impact of social media on our lives but the real game is all about the data science behind all of these

Take the example of tinder that is the algorithmic matchmaker. It uses data sciences when singles match on tinder, they should thank the data scientist of the company who carefully works behind the scenes. The data sconce helps users to find the nearest user who matches their algorithm best. There are so many other examples of data science that are playing a significant role in the social world.

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