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Mastering Java Machine Learning
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Any effort to apply machine learning to a large-sized problem requires the collaborative effort of a number of roles, each abiding by a set of systematic processes designed for rigor, efficiency, and robustness. The following roles and processes ensure that the goals of the endeavor are clearly defined at the outset and the correct methodologies are employed in data analysis, data sampling, model selection, deployment, and performance evaluation—all as part of a comprehensive framework for conducting analytics consistently and with repeatability.
Participants play specific parts in each step. These responsibilities are captured in the following four roles:
CRISP (Cross Industry Standard Process) is a well-known high-level process model for data mining that defines the analytics process. In this section, we have added some of our own extensions to the CRISP process that make it more comprehensive and better suited for analytics using machine learning. The entire iterative process is demonstrated in the following schematic figure. We will discuss each step of the process in detail in this section.
As may be observed from the preceding diagram, the entire process is an iterative one. After a model or set of models has been deployed, business and environmental factors may change in ways that affect the performance of the solution, requiring a re-evaluation of business goals and success criteria. This takes us back through the cycle again.
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