40 research outputs found
On Statistical Discrimination as a Failure of Social Learning: A Multi-Armed Bandit Approach
We analyze statistical discrimination in hiring markets using a multi-armed
bandit model. Myopic firms face workers arriving with heterogeneous observable
characteristics. The association between the worker's skill and characteristics
is unknown ex ante; thus, firms need to learn it. Laissez-faire causes
perpetual underestimation: minority workers are rarely hired, and therefore,
underestimation towards them tends to persist. Even a slight population-ratio
imbalance frequently produces perpetual underestimation. We propose two policy
solutions: a novel subsidy rule (the hybrid mechanism) and the Rooney Rule. Our
results indicate that temporary affirmative actions effectively mitigate
discrimination caused by insufficient data
Finite-time Analysis of Globally Nonstationary Multi-Armed Bandits
We consider nonstationary multi-armed bandit problems where the model
parameters of the arms change over time. We introduce the adaptive resetting
bandit (ADR-bandit), which is a class of bandit algorithms that leverages
adaptive windowing techniques from the data stream community. We first provide
new guarantees on the quality of estimators resulting from adaptive windowing
techniques, which are of independent interest in the data mining community.
Furthermore, we conduct a finite-time analysis of ADR-bandit in two typical
environments: an abrupt environment where changes occur instantaneously and a
gradual environment where changes occur progressively. We demonstrate that
ADR-bandit has nearly optimal performance when the abrupt or global changes
occur in a coordinated manner that we call global changes. We demonstrate that
forced exploration is unnecessary when we restrict the interest to the global
changes. Unlike the existing nonstationary bandit algorithms, ADR-bandit has
optimal performance in stationary environments as well as nonstationary
environments with global changes. Our experiments show that the proposed
algorithms outperform the existing approaches in synthetic and real-world
environments
A Robust Transferable Deep Learning Framework for Cross-sectional Investment Strategy
Stock return predictability is an important research theme as it reflects our
economic and social organization, and significant efforts are made to explain
the dynamism therein. Statistics of strong explanative power, called "factor"
have been proposed to summarize the essence of predictive stock returns.
Although machine learning methods are increasingly popular in stock return
prediction, an inference of the stock returns is highly elusive, and still most
investors, if partly, rely on their intuition to build a better decision
making. The challenge here is to make an investment strategy that is consistent
over a reasonably long period, with the minimum human decision on the entire
process. To this end, we propose a new stock return prediction framework that
we call Ranked Information Coefficient Neural Network (RIC-NN). RIC-NN is a
deep learning approach and includes the following three novel ideas: (1)
nonlinear multi-factor approach, (2) stopping criteria with ranked information
coefficient (rank IC), and (3) deep transfer learning among multiple regions.
Experimental comparison with the stocks in the Morgan Stanley Capital
International (MSCI) indices shows that RIC-NN outperforms not only
off-the-shelf machine learning methods but also the average return of major
equity investment funds in the last fourteen years