Table of contents for Identification for prediction and decision / Charles F. Manski.

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Contents
Preface
Introduction
 The Reflection Problem
 The Law of Decreasing Credibility
 Identification and Statistical Inference
 Prediction and Decisions
 Coping with Ambiguity
 Organization of the Book
 The Developing Literature on Partial Identification
PART I: PREDICTION WITH INCOMPLETE DATA
1. Conditional Prediction
1.1. Predicting Criminality
1.2. Probabilistic Prediction
 Conditional Distributions
 Best Predictors
 Specifying a Loss Function
1.3. Estimation of Best Predictors from Random Samples
 Covariates with Positive Probability
 Covariates with Zero Probability but on the Support
 Covariates off the Support
1.4. Extrapolation
 Invariance Assumptions and Shape Restrictions
 Testing and Using Theories
1.5. Predicting High School Graduation
Complement 1A. Best Predictors Under Square and Absolute Loss
 Square Loss
 Absolute Loss
Complement 1B. Nonparametric Regression Analysis
 Consistency of the Local-Average Estimate
 Choosing an Estimate
Complement 1C. Word Problems
2. Missing Outcomes
2.1. Anatomy of the Problem
 Identification of Event Probabilities
 Identification of Quantiles
2.2. Bounding the Probability of Exiting Homelessness
 Is the Cup Part Empty or Part Full?
2.3. Means of Functions of the Outcome
 Bounded Random Variables
 Unbounded Random Variables
2.4. Parameters that Respect Stochastic Dominance
2.5. Distributional Assumptions
 Missingness at Random
 Refutable and Non-refutable Assumptions
 Refutability and Credibility
2.6. Wage Regressions and the Reservation Wage Model of Labor Supply
 Homogeneous Reservation Wages
 Other Cases of Missingness by Choice 
2.7. Statistical Inference
 Sample Analogs of Identification Regions
 Confidence Sets
 Testing Refutable Assumptions
Complement 2A. Interval Measurement of Outcomes
 Measurement Devices with Bounded Range
Complement 2B. Jointly Missing Outcomes and Covariates
 Conditioning on a Subset of the Outcomes
 Illustration: Bounding the Probability of Employment and the Unemployment Rate
Complement 2C. Convergence of Sets to Sets
3. Instrumental Variables
3.1. Distributional Assumptions and Credible Inference
 Assumptions Using Instrumental Variables
3.2. Missingness at Random
 Conditioning is not Controlling
3.3. Statistical Independence
 Binary Outcomes
 Identifying Power
 Combining Multiple Surveys
3.4. Equality of Means
 Means Missing at Random
 Mean Independence
 
3.5. Inequality of Means
 	Means Missing Monotonically
 Monotone Regressions
Complement 3A. Imputations and Nonresponse Weights
 Imputations
 Nonresponse Weights
Complement 3B. Conditioning on the Propensity Score
Complement 3C. Word Problems
4. Parametric Prediction
4.1. The Normal-Linear Model of Market and Reservation Wages
4.2. Selection Models
 A Semiparametric Model
4.3. Parametric Models for Best Predictors
 Identification of the Parameters and the Best Predictor
 Linear-Index Models
 Statistical Inference
Complement 4A. Minimum-Distance Estimation of Partially Identified Models
5. Decomposition of Mixtures
5.1. The Inferential Problem and Some Manifestations
 The Problem in Abstraction
 Ecological Inference
 Contaminated Sampling
 The Task Ahead
5.2. Binary Mixing Covariates
 Inference on One Component Distribution
 Event Probabilities
 Parameters that Respect Stochastic Dominance
5.3. Contamination Through Imputation
 Income Distribution in the United States
 Corrupted Sampling
5.4. Instrumental Variables
 The Identification Region
Complement 5A. Sharp Bounds on Parameters that Respect Stochastic Dominance
6. Response-Based Sampling
6.1. The Odds Ratio and Public Health
 Relative and Attributable Risk
 The Rare-Disease Assumption
6.2. Bounds on Relative and Attributable Risk
 Relative Risk
 Attributable Risk
6.3. Information on Marginal Distributions
6.4. Sampling from One Response Stratum
 Using Administrative Records to Infer AFDC Transition Rates
6.5. General Binary Stratifications
 Sampling from Both Strata
 Sampling from One Stratum
PART II: ANALYSIS OF TREATMENT RESPONSE
7. The Selection Problem
7.1. Anatomy of the Problem
 Prediction Using the Empirical Evidence Alone
 Comparing Treatments
 Average Treatment Effects
 Distributional Assumptions
7.2. Sentencing and Recidivism
7.3. Randomized Experiments
 	Experiments in Practice
7.4. Compliance with Treatment Assignment
 Experiments without Crossover
 Experiments with Crossover
 Point Identification with Partial Compliance
 Intention to Treat
 The Effect of Treatment on Compliers
7.5. Treatment by Choice
 Outcome Optimization
 Parametric Selection Models
7.6. Treatment at Random in Non-Experimental Settings
 Association and Causation
 Sensitivity Analysis
7.7. Homogeneous Linear Response
 AThe@ Instrumental Variables Estimator
 Mean Independence and Over-identification
Complement 7A. Perspectives on Treatment Comparison
 Differences in Outcome Distributions or Distributions of Outcome Differences
 The Population to be Treated or the Sub-population of the Treated
Complement 7B. Word Problems
8. Linear Simultaneous Equations
8.1. Simultaneity in Competitive Markets
 	AThe@ Identification Problem in Econometrics
 Simultaneity is Selection
8.2. The Linear Market Model
 Credibility of the Assumptions
 Analysis of the Reduced Form
8.3. Games with Linear Reaction Functions
 Ehrlich, the Supreme Court, and the National Research Council
8.4. The Reflection Problem
 Endogenous, Contextual, and Correlated Effects
 The Linear-in-Means Model 
 Identification of the Parameters
 Inferring the Composition of Reference Groups
9. Monotone Treatment Response
9.1. Shape Restrictions
 Downward Sloping Demand
 Production Analysis
9.2. Bounds on Parameters that Respect Stochastic Dominance
 The General Result
 Means of Increasing Functions of the Outcome
 Upper Tail Probabilities
9.3. Bounds on Treatment Effects
 Average Treatment Effects
9.4. Monotone Response and Selection
 Interpreting the Statement AWage Increases with Schooling@
 Bounds on Mean Outcomes and Average Treatment Effects
9.5. Bounding the Returns to Schooling
 Data
 Statistical Considerations
 Findings
 
10. The Mixing Problem
10.1. Extrapolation from Experiments to Rules With Treatment Variation
 From Marginals to Mixtures
10.2. Extrapolation from the Perry Preschool Experiment
 Prediction with the Experimental Evidence Alone
 Prediction with Assumptions
10.3. Identification of Event Probabilities with the Experimental Evidence Alone
10.4. Treatment-Response Assumptions
 Statistically Independent Outcomes
 Monotone Treatment Response
10.5. Treatment-Rule Assumptions
 Treatment at Random 
 Outcome Optimization
 Known Treatment Shares
10.6. Combining Assumptions
11. Planning Under Ambiguity
11.1. Studying Treatment Response to Inform Treatment Choice
 Partial Identification and Ambiguity
11.2. Criteria for Choice Under Ambiguity
 Dominance
 Bayes Rules
 	The Maximin Criterion
 The Minimax-Regret Criterion
11.3. Treatment Using Data from an Experiment with Partial Compliance
 The Illinois UI Experiment
11.4. An Additive Planning Problem
 The Choice Set
 The Objective Function and the Optimal Treatment Rule
 The Value of Covariate Information
 Non-Separable Planning Problems
11.5. Planning with Partial Knowledge of Treatment Response
 The Study Population and the Treatment Population
 Planning Under Ambiguity
11.6. Planning and the Selection Problem 
 Bayes Rules
 The Maximin Criterion
 The Minimax-Regret Rule
 Sentencing Juvenile Offenders
 
11.7. The Ethics of Fractional Treatment Rules
 Choosing Treatments for X-Pox
11.8. Decentralized Treatment Choice
 The Informational Argument for Decentralization
 Decentralized Treatment of X-Pox
Complement 11A. Minimax-Regret Rules for Two Treatments are Fractional
Complement 11B. Reporting Observable Variation in Treatment Response
Complement 11C. Word Problems
12. Planning with Sample Data
12.1. Statistical Induction
12.2. Wald=s Development of Statistical Decision Theory
 The Expected Welfare of a Statistical Treatment Rule
 The States of Nature
 Admissibility
 Implementable Criteria for Treatment Choice
 Unification of Identification, Statistical Inference, and Sample Design
12.3. Using a Randomized Experiment to Evaluate an Innovation
 The Setting
 The Admissible Treatment Rules
 Some Monotone Rules
 Savage on the Maximin and Minimax-Regret Criteria
PART III: PREDICTING CHOICE BEHAVIOR
13. Revealed Preference Analysis
13.1. Revealing the Preferences of an Individual
 Observation of One Choice Setting
 Observation of Multiple Choice Settings
 Application to General Choice Problems
 Thought Experiment or Practical Prescription for Prediction?
13.2. Random Utility Models of Population Choice Behavior
 Consistency with Utility Theory
 Prediction using Attributes of Alternatives and Decision Makers
 Incomplete Data and Conditional Choice Probabilities
 Practicality Through the Conditional Logit Model
 Other Distributional Assumptions
 
 Extrapolation
13.3. College Choice in America
 An Idealized Binary Choice Setting
 Predicting the Enrollment Effects of Student Aid Policy
 Power and Price of the Analysis
13.4. Random Expected-Utility Models
 Identification of the Decision Rules of Proposers in Ultimatum Games
 Rational Expectations Assumptions
 How do Youth Infer the Returns to Schooling?
Complement 13A. Prediction Assuming Strict Preferences
Complement 13B. Axiomatic Decision Theory
14. Measuring Expectations
14.1. Elicitation of Expectations from Survey Respondents
 Attitudinal Research
 Probabilistic Expectations in Cognitive Psychology
 Probabilistic Expectations in Economics
14.2. Illustrative Findings
 Response Rates and Use of the Percent-Chance Scale
 One-year-ahead Income Expectations
 Social Security Expectations
14.3. Using Expectations Data to Predict Choice Behavior
 Choice Expectations
 Using Expectations and Choice Data to Estimate Random Expected-Utility Models
14.4. Measuring Ambiguity
Complement 14A. The Predictive Power of Intentions Data: A Best-Case Analysis
 Rational Expectations Responses to Intentions Questions
 Prediction of Behavior Conditional on Intentions
 Prediction Not Conditioning on Intentions
 Interpreting Fertility Intentions
Complement 14B. Measuring Expectations of Facts
 Anchoring
15. Studying Human Decision Processes
15.1. As-If Rationality and Bounded Rationality
 The As-If Argument of Friedman and Savage
 Simon and Bounded Rationality
15.2. Choice Experiments
 Heuristics and Biases
 
 Widespread Irrationality or Occasional Cognitive Illusions?
15.3. Prospects for a Neuroscientific Synthesis
References

Library of Congress Subject Headings for this publication:

Forecasting -- Methodology.
Social prediction.
Decision making.