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Sinan Ozdemir [Ozdemir - Principles of Data Science

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Sinan Ozdemir [Ozdemir Principles of Data Science

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Learn the techniques and math you need to start making sense of your dataAbout This BookEnhance your knowledge of coding with data science theory for practical insight into data science and analysisMore than just a math class, learn how to perform real-world data science tasks with R and PythonCreate actionable insights and transform raw data into tangible valueWho This Book Is ForYou should be fairly well acquainted with basic algebra and should feel comfortable reading snippets of R/Python as well as pseudo code. You should have the urge to learn and apply the techniques put forth in this book on either your own data sets or those provided to you. If you have the basic math skills but want to apply them in data science or you have good programming skills but lack math, then this book is for you.What You Will LearnGet to know the five most important steps of data scienceUse your data intelligently and learn how to handle it with careBridge the gap between mathematics and programming Learn about probability, calculus, and how to use statistical models to control and clean your data and drive actionable resultsBuild and evaluate baseline machine learning modelsExplore the most effective metrics to determine the success of your machine learning modelsCreate data visualizations that communicate actionable insightsRead and apply machine learning concepts to your problems and make actual predictionsIn DetailNeed to turn your skills at programming into effective data science skills? Principles of Data Science is created to help you join the dots between mathematics, programming, and business analysis. With this book, youll feel confident about askingand answeringcomplex and sophisticated questions of your data to move from abstract and raw statistics to actionable ideas.With a unique approach that bridges the gap between mathematics and computer science, this books takes you through the entire data science pipeline. Beginning with cleaning and preparing data, and effective data mining strategies and techniques, youll move on to build a comprehensive picture of how every piece of the data science puzzle fits together. Learn the fundamentals of computational mathematics and statistics, as well as some pseudocode being used today by data scientists and analysts. Youll get to grips with machine learning, discover the statistical models that help you take control and navigate even the densest datasets, and find out how to create powerful visualizations that communicate what your data means.Style and approachThis is an easy-to-understand and accessible tutorial. It is a step-by-step guide with use cases, examples, and illustrations to get you well-versed with the concepts of data science. Along with explaining the fundamentals, the book will also introduce you to slightly advanced concepts later on and will help you implement these techniques in the real world.

Sinan Ozdemir [Ozdemir: author's other books


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Index
A
  • A/B test
    • about /
  • Adam Optimizer
    • about /
  • addition rule /
  • alternative hypothesis
    • about /
  • anomaly detection /
  • ARIMA /
  • arithmetic mean /
    • about /
  • arithmetic symbols
    • about /
    • summation /
    • proportional /
    • dot product /
B
  • back-propagation /
  • bar charts
    • about /
  • basic Python, example
    • about /
    • single Tweet, parsing /
  • Bayes formula
    • about /
  • Bayes theorem
    • about /
    • examples /
    • applications /
    • titanic dataset /
    • medical studies example /
  • bi-modal
    • about /
  • bias/variance tradeoff
    • extreme cases /
    • working, with error functions /
  • bias variance tradeoff
    • about /
    • error, due to bias /
    • error, due to variance /
  • big data
    • about /
  • binary classifier /
  • binomial random variable
    • about /
    • restaurant openings example /
    • blood types example /
  • box plots
    • about /
    • creating /
C
  • Cartesian graph /
  • causation
    • versus correlation /
  • central limit theorem
    • about /
  • centroid
    • about /
  • chi-square goodness of fit test
    • about /
    • asuumptions /
    • example /
  • chi-square test for association/independence
    • about /
    • assumptions /
  • classification
    • about /
  • classification tree
    • fitting /
  • cluster
    • about /
  • clustering
    • about /
  • coefficient of variation
    • about /
    • employee salaries example /
  • collectively exhaustive /
  • collectively exhaustive events
    • about /
    • examples /
  • communication
    • about /
  • complementary events /
  • compound events
    • about /
    • example /
  • conditional probability
    • about /
  • confidence
    • about /
  • confidence intervals
    • about /
  • confounding factor /
  • confusion matrix /
  • continuous data
    • about /
    • example /
  • continuous random variable
    • about /
  • correlation
    • versus causation /
  • correlation coefficients
    • about /
  • cross validation error
    • versus training error visualization /
  • CSV (comma separated value) /
D
  • data
    • organized data /
    • unorganized data /
    • types /
    • levels /
  • data, obtaining
    • about /
    • observational /
    • experimental /
  • data exploration
    • about /
    • basic questions /
    • yelp dataset /
    • titanic dataset /
  • data mining
    • about /
  • data model
    • about /
  • data points
    • about /
  • data preprocessing
    • example /
    • word/phrase counts /
    • relative length of text /
    • topics, picking /
  • data sampling
    • about /
    • probability sampling /
    • random sampling /
    • unequal probability sampling /
  • data science
    • about /
    • need for /
    • Sigma Technologies example /
    • steps /
    • interesting question, asking /
    • data, obtaining /
    • data, exploring /
    • data, modeling /
    • results, communicating /
    • results, visualizing /
  • data science, case studies
    • about /
    • government paper pushing automation /
    • marketing dollars /
    • job descriptions /
  • data science Venn diagram
    • about /
    • math/statistics /
    • computer programming /
    • domain knowledge /
  • decision trees
    • about /
    • versus random forests /
  • Deep Neural Network Classifier (DNNClassifier)
    • about /
  • dimension reduction
    • about /
    • cons /
  • discrete data
    • about /
    • example /
  • discrete random variables
    • about /
    • types /
    • binomial random variable /
    • geometric random variable /
    • Poisson random variable /
    • continuous random variable /
  • domain knowledge /
  • Domain Knowledge /
  • dot product
    • about /
  • dummy variables
    • about /
E
  • Empirical rule
    • about /
    • example /
  • ensembling techniques /
  • entity movement /
  • entropy
    • about /
  • error functions
    • about /
  • Euler's number /
  • event
    • about /
  • exploration tips, for qualitative data
    • about /
    • nominal level columns /
    • filtering /
    • ordinal level columns /
  • exploratory data analysis (EDA)
    • about /
  • exponent
    • about /
    • examples /
  • extra-marital affairs case study
    • about /
  • extreme cases, bias/variance tradeoff
    • underfitting /
    • overfitting /
F
  • false negative
    • about /
  • false negatives /
  • false positive
    • about /
  • false positives /
  • feature extraction /
    • about /
    • pros /
  • feature selection
    • about /
  • filtering
    • about /
  • Frequentist approach
    • about /
    • marketing stats example /
    • law of large numbers /
G
  • geometric random variable
    • about /
    • weather example /
  • gini index
    • about /
  • global score /
  • graphs
    • about /
    • Cartesian graph /
    • scatter plots /
    • line graphs /
    • bar charts /
    • histograms /
    • box plots /
  • grid searching
    • about /
H
  • histograms
    • about /
    • plotting /
  • hypothesis test
    • about /
    • conducting /
    • one sample t-tests /
    • type II error /
    • type I error /
  • hypothesis test, for categorical values
    • about /
    • chi-square goodness of fit test /
    • chi-square test for association/independence /
I
  • independent events
    • examples /
  • intersection /
  • interval level, of data
    • about /
    • example /
    • mathematical operations /
    • measures of center /
    • measures of variation /
J
  • jaccard measure /
K
  • k-fold cross validation
    • about /
  • K-means clustering
    • about /
    • example /
  • K-Nearest Neighbors (KNN) algorithm
    • about /
  • K folds cross validation
    • about /
    • features /
  • KPI (key performance indicator)
    • about /
L
  • labeled data /
  • levels, data
    • nominal /
    • ordinal /
    • interval /
    • ratio /
  • likelihood
    • about /
  • likert scale
    • about /
  • linear algebra
    • about /
    • matrix multiplication /
  • linear regression
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