Books tagged: bayesian

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Found 3 results

Deep Modelling with Multiple Machine Learning Methodologies
Price: $189.00 USD. Words: 33,860. Language: English. Published: June 3, 2019. Categories: Essay » Technology, Nonfiction » Computers & Internet » Computer science
This research combines machine learning techniques and statistical techniques to develop an Autonomy Artificial Intelligence Prediction System for Panoramic Enhanced Cost Estimation. With this approach, the prediction powers of the COCOMO parametric software cost model are shown to be significantly improved while the variability is decreased with respect to the dataset being analyzed.
Tell Me The Odds: A 15 Page Introduction To Bayes Theorem
Price: Free! Words: 4,380. Language: English. Published: September 19, 2017. Categories: Nonfiction » Education & Study Guides » Experimental methods
Bayes Theorem is a way of updating probability as you get new information. Essentially, you make an initial guess, and then get more data to improve it. Bayes Theorem has a ton of real world applications, from estimating your risk of a heart attack to making recommendations on Netflix. If you want to learn the basics of Bayes Theorem as quickly as possible, this is a good book for you
Process Performance Models - Statistical, Probabilistic & Simulation
Price: Free! Words: 7,640. Language: English. Published: July 16, 2014. Categories: Nonfiction » Computers & Internet » Software development & engineering / general, Nonfiction » Computers & Internet » Mathematical & statistical software
Explains the various techniques of PPM development, simulation and optimization. All the explanations are given with IT industry and usage of alternate techniques to build PPM to suit even smaller organizations. Application of Statistical, Probablistic and Simulation models are elaborated.