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Public policy analytics : code and context for data science in government / Ken Steif.

Loaned to Another Library JK468.A8 S72 2022
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Format:
Book
Author/Creator:
Steif, Ken, author.
Contributor:
Martin and Margy Meyerson Endowment Fund for the Built Environment.
Series:
Chapman & Hall/CRC data science series
Language:
English
Subjects (All):
Political planning--Data processing.
Political planning.
Politics and government--Data processing.
Politics and government.
United States--Politics and government--Data processing.
United States.
Physical Description:
xxi, 206 pages : illustrations (some color), maps (some color) ; 27 cm.
Place of Publication:
Boca Raton : CRC Press, Taylor & Francis Group, 2022.
Summary:
"Public Policy Analytics: Code & Context for Data Science in Government teaches readers how to address complex public policy problems with data and analytics using reproducible methods in R. Each of the eight chapters provides a detailed case study, showing readers: how to develop exploratory indicators; understand 'spatial process' and develop spatial analytics; how to develop 'useful' predictive analytics; how to convey these outputs to non-technical decision-makers through the medium of data visualization; and why, ultimately, data science and 'Planning' are one and the same. A graduate-level introduction to data science, this book will appeal to researchers and data scientists at the intersection of data analytics and public policy, as well as readers who wish to understand how algorithms will affect the future of government"-- Provided by publisher.
Contents:
Machine generated contents note: How governments make decisions
Context as the foundation
Data science as a planning tool
The importance of spatial thinking
Learning objectives
1.1. Why start with indicators?
1.1.1. Mapping and scale bias in areal aggregate data
1.2. Set up
1.2.1. Downloading and wrangling census data
1.2.2. Wrangling transit open data
1.2.3. Relating tracts and subway stops in space
1.3. Developing TOD indicators
1.3.1. TOD indicator maps
1.3.2. TOD indicator tables
1.3.3. TOD indicator plots
1.4. Capturing three submarkets of interest
1.5. Conclusion: Are Philadelphians willing to pay for TOD?
1.6. Assignment - Study TOD in your city
2.1. Introduction - Lancaster development
2.1.1. The bid-rent model
2.1.2. Set up Lancaster data
2.2. Identifying areas inside and outside of the Urban Growth Area
2.2.1. Associate each inside/outside buffer with its respective town
2.2.2. Building density by town and by inside/outside the UGA
2.2.3. Visualize buildings inside and outside the UGA
2.3. Return to Lancaster's bid-rent
2.4. Conclusion - On boundaries
2.5. Assignment - Boundaries in your community
3.1. Machine learning as a planning
3.1.1. Accuracy and generalizability
3.1.2. The machine learning process
3.1.3. The hedonic model
3.2. Data wrangling - Home price and crime data
3.2.1. Feature engineering - Measuring exposure to crime
3.2.2. Exploratory analysis - Correlation
3.3. Introduction to ordinary least squares regression
3.3.1. Our first regression model
3.3.2. More feature engineering and colinearity
3.4. Cross-validation and return to goodness of fit
3.4.1. Accuracy - Mean absolute error
3.4.2. Generalizability - Cross-validation
3.5. Conclusion - Our first model
3.6. Assignment - Predict house prices
4.1. On the spatial process of home prices
4.1.1. Set up and data wrangling
4.2. Do prices and errors cluster? The spatial lag
4.2.1. Do model errors cluster? - Moran's I
4.3. Accounting for neighborhood
4.3.1. Accuracy of the neighborhood model
4.3.2. Spatial autocorrelation in the neighborhood model
4.3.3. Generalizability of the neighborhood model
4.4. Conclusion - Features at multiple scales
5.1. New predictive policing tools
5.1.1. Generalizability in geospatial risk models
5.1.2. From broken windows theory to broken windows policing
5.1.3. Set up
5.2. Data wrangling: Creating the fishnet
5.2.1. Data wrangling: Joining burglaries to the fishnet
5.2.2. Wrangling risk factors
5.3. Feature engineering - Count of risk factors by grid cell
5.3.1. Feature engineering - Nearest neighbor features
5.3.2. Feature Engineering - Measure distance to one point
5.3.3. Feature Engineering - Create the final_net
5.4. Exploring the spatial process of burglary
5.4.1. Correlation tests
5.5. Poisson Regression
5.5.1. Cross-validated Poisson regression
5.5.2. Accuracy and generalzability
5.5.3. Generalizability by neighborhood context
5.5.4. Does this model allocate better than traditional crime hotspots?
5.6. Conclusion - Bias but useful?
5.7. Assignment - Predict risk
6.1. Bounce to work
6.2. Exploratory analysis
6.3. Logistic regression
6.3.1. Training/testing sets
6.3.2. Estimate a churn model
6.4. Goodness of fit
6.4.1. Roc curves
6.5. Cross-validation
6.6. Generating costs and benefits
6.6.1. Optimizing the cost/benefit relationship
6.7. Conclusion - Churn
6.8. Assignment - Target a subsidy
7.1. Introduction
7.1.1. The specter of disparate impact
7.1.2. Modeling judicial outcomes
7.1.3. Accuracy and generalizability in recidivism algorithms
7.2. Data and exploratory analysis
7.3. Estimate two recidivism models
7.3.1. Accuracy and generalizability
7.4. What about the threshold?
7.5. Optimizing 'equitable' thresholds
7.6. Assignment - Memo to the mayor
8.1. Introduction - Rideshare
8.2. Data wrangling - Rideshare
8.2.1. Lubridate
8.2.2. Weather data
8.2.3. Subset a study area using neighborhoods
8.2.4. Create the final space/time panel
8.2.5. Split training and test
8.2.6. What about distance features?
8.3. Exploratory Analysis - Rideshare
8.3.1. Trip_Count serial autocorrelation
8.3.2. Trip_Count spatial autocorrelation
8.3.3. Space/time correlation?
8.3.4. Weather
8.4. Modeling and validation using purrr ::map
8.4.1. A short primer on nested tibbles
8.4.2. Estimate a rideshare forecast
8.4.3. Validate test set by time
8.4.4. Validate test set by space
8.5. Conclusion - Dispatch
8.6. Assignment - Predict bike share trips.
Notes:
Includes bibliographical references and index.
Local Notes:
Acquired for the Penn Libraries with assistance from the Martin and Margy Meyerson Endowment Fund for the Built Environment.
Other Format:
ebook version :
ISBN:
9780367507619
0367507617
9780367516253
036751625X
OCLC:
1227691356
Publisher Number:
99988321581

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