Bootstrap Tilting Inference and
Large Data Sets
RES850 NSF Tilting II
Phase I project intends to develop user friendly component
software for classical econometric estimation and inference
based on simulation methods. In the last decade different
simulation-based methods have been developed to tackle complex
economic/statistical models which cannot be estimated by conventional
methods such as MLE and GMM. Although these simulation-based
estimators have desirable theoretical properties, they have
remained to be research topics in academia and have not become
useful tools for practitioners because of lack user friendly
software. We plan to study three leading applications for
simulation-based methods: multinomial probit model for cross-sectional
data, multiperiod multinomial probit model for panel data,
and stochastic volatility models for time series data. We
will use extensive Monte Carlo experiments to explore finite
sample properties of various aspects of estimation and inference,
with an aim of improving and stabilizing the current algorithms.
The user friendly component software will be developed using
the state-of-art JavaBean technology and provide intuitive
graphical user interface.
The JavaBeans will also be supplied as S-PLUS functions to
gain a broad user base. The software will help worldwide economists
and practitioners in other fields such as financial industry,
social sciences, and biotechnology to conduct flexible and
extensible model estimation and inference.
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