I'm talking about mathematical equations, greek notation, and meticulously defined concepts that make it difficult to develop an interest in the subject. There are certainly some factors that make learning statistics hard. You can’t solve real-world problems with machine learning if you don’t have a good grip of statistical fundamentals. The core of machine learning is centered around statistics. Statistics is an important prerequisite for applied machine learning, as it helps us select, evaluate and interpret predictive models. Now, statistics and machine learning are two closely related areas of study. Inferential Statistics - this offers methods to study experiments done on small samples of data and chalk out the inferences to the entire population (entire domain).Descriptive Statistics - this offers methods to summarise data by transforming raw observations into meaningful information that is easy to interpret and share.Statistics is a set of mathematical methods and tools that enable us to answer important questions about data. How to s tudy statistics to become a practitioner rather than a test-taker.What c urriculum you should follow to master these topics.Statistics in relation with machine learning. Through this post, I intend to shed some light on the following: There are also very few good books and courses that teach these statistical methods from a data science perspective. Not many data scientists are formally trained in statistics. Data professionals need to be trained to use statistical methods not only to interpret numbers but to uncover such abuse and protect us from being misled. In this hyper-connected world, data are being generated and consumed at an unprecedented pace.Īs much as we enjoy this superconductivity of data, it invites abuse as well.
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