Predictive Analytics Models That Support in Businesses Challenges
McKinsey’s research has revealed that the implementation of big data strategies has become a major reason for businesses’ growth and enhancing competitiveness, thanks to the improved process efficiency and the optimal use of resources.
The past few years have witnessed a great development in data science, especially with regard to (Predictive Analytics) solutions, which have become one of the most important tools that help companies to shine in today’s market, as companies help to understand their customers and their needs, which helps decision-makers within companies to take effective decisions.
The problem is that most companies, although they can collect data related to their customers’ behavior, there are few who can benefit from this data.
Big data also derives most of its value from the insights that it produces when analyzed such as finding patterns, deriving meaning, making decisions, and ultimately responding to the world with intelligence.
As big data technology continues to evolve, businesses are turning to predictive analytics to help them deepen engagement with customers, optimize processes, and reduce operational costs.
The combination of realtime data streams and predictive analytics—sometimes referred to as processing that never stops—has the potential to deliver significant competitive advantage for the business.
Analytics for big data is an emerging area, stimulated by advances in computer processing power, database technology, and tools for big data. Predictive analytics is a set of advanced technologies that enable organizations to use data—both stored and real-time—to move from a historical, descriptive view to a forward-looking perspective of what’s ahead.
Companies are facing problems of data integrity, because the data that needs to be analyzed comes from many sources, in a variety of different formats, and there is a greater challenge which is unreliable data, since big data is not 100% accurate, not only because it can contain false information, but because it can be frequent, and also may contain inconsistencies. This leads to unreliable results and incorrect conclusions based on the erroneous analysis.
The business intelligence system must be built, as each stage of data collection, storage and processing are done automatically, which prevents human errors.
Despite the tremendous development of marketing models that predict customer behavior, companies train their models on internal data only thus, models are isolated from the outside world.
The predictions created by these models cannot be accurate, as they operate as if they are present in the market, and do not depend on competitors’ analysis, demand trends, etc., so all these factors must be included in creating predictive models.
Leading companies can only collect ideas from their data, but for most companies, the true value of forecasts remains unclear, however, you should start to rely on data-based marketing, even if you don’t know how to do it in an ideal way. Within a year you will have a solid foundation to start building a model or trying another predictive method. You will be familiar with your data and see that making decisions about your advertising budgets based on expectations is more effective.