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Scalable Solutions and Applications for Policy Learning in Machine Learning and Economics.
Scalable Solutions and Applications for Policy Learning in Machine Learning and Economics.
- 자료유형
- 학위논문
- Control Number
- 0017163760
- International Standard Book Number
- 9798342115704
- Dewey Decimal Classification Number
- 615.58
- Main Entry-Personal Name
- Kanodia, Ayush.
- Publication, Distribution, etc. (Imprint
- [S.l.] : Stanford University., 2024
- Publication, Distribution, etc. (Imprint
- Ann Arbor : ProQuest Dissertations & Theses, 2024
- Physical Description
- 202 p.
- General Note
- Source: Dissertations Abstracts International, Volume: 86-04, Section: B.
- General Note
- Advisor: Athey, Susan;Brunskill, Emma.
- Dissertation Note
- Thesis (Ph.D.)--Stanford University, 2024.
- Summary, Etc.
- 요약Counterfactual policies derived from models of human behavior estimated from data are used for firm decision-making and economic policy-making. This dissertation presents work at the intersection of Machine Learning and Economics which advances our ability to estimate these models, and learn and evaluate policies derived from them. We develop new methods, and use this novel methodology to investigate diverse domain specific research questions.I first focus on methods. I discuss torch-choice, a library for flexible, fast choice modeling with PyTorch, which implements the multinomial logit and nested logit models, designed for both estimation and prediction. torch-choice allows researchers to scale these choice models to very large dataset sizes. Following this, I discuss policytree, an algorithm which learns decision tree policies via globally optimal search. policytree asymptotically improves upon the current state of the art tree based policy optimization algorithm.I then move to domain specific research. In the context of demand modeling in retail, I present research which evaluates the economic value of data used to estimate demand models to perform counterfactual retail pricing. Using a shopping panel dataset, we develop a hierarchical Bayesian Matrix Factorization model, produce a customer level personalized pricing policy from it, and estimate its profitability from observational data. We compare the profitability of policies derived from models of different sizes, estimated over different amounts of training data varied over different dimensions.Second, we build a personalized recommendation system for children's reading in an education context. Through an A/B experiment, we show that serving personalized recommendations increases the consumption of reading content, compared to a baseline system where human content editors select stories. We also show that heavy users with long histories of content interactions who prefer niche content benefit more than infrequent, newer users who like popular content.Finally, in the context of labor modeling, I introduce LABOR-LLM, a transfer learning approach which adapts a pre-trained Large Language Model (LLM) to the task of predicting an individual's next job. Our approach outperforms both traditional econometric and state of the art specialized labor transformer models, allowing us to bypass large scale model training on resume datasets, demonstrating that LLMs can serve as base models for both labor market and potentially other econometric modeling tasks.
- Subject Added Entry-Topical Term
- Clinical trials.
- Subject Added Entry-Topical Term
- Large language models.
- Subject Added Entry-Topical Term
- Pharmaceutical sciences.
- Added Entry-Corporate Name
- Stanford University.
- Host Item Entry
- Dissertations Abstracts International. 86-04B.
- Electronic Location and Access
- 로그인을 한후 보실 수 있는 자료입니다.
- Control Number
- joongbu:658339