283 research outputs found
Robust and Sparse Regression via -divergence
In high-dimensional data, many sparse regression methods have been proposed.
However, they may not be robust against outliers. Recently, the use of density
power weight has been studied for robust parameter estimation and the
corresponding divergences have been discussed. One of such divergences is the
-divergence and the robust estimator using the -divergence is
known for having a strong robustness. In this paper, we consider the robust and
sparse regression based on -divergence. We extend the
-divergence to the regression problem and show that it has a strong
robustness under heavy contamination even when outliers are heterogeneous. The
loss function is constructed by an empirical estimate of the
-divergence with sparse regularization and the parameter estimate is
defined as the minimizer of the loss function. To obtain the robust and sparse
estimate, we propose an efficient update algorithm which has a monotone
decreasing property of the loss function. Particularly, we discuss a linear
regression problem with regularization in detail. In numerical
experiments and real data analyses, we see that the proposed method outperforms
past robust and sparse methods.Comment: 25 page
Shirakami: A Hybrid Concurrency Control Protocol for Tsurugi Relational Database System
Modern real-world transactional workloads such as bills of materials or
telecommunication billing need to process both short transactions and long
transactions. Recent concurrency control protocols do not cope with such
workloads since they assume only classical workloads (i.e., YCSB and TPC-C)
that have relatively short transactions. To this end, we proposed a new
concurrency control protocol Shirakami. Shirakami has two sub-protocols.
Shirakami-LTX protocol is for long transactions based on multiversion
concurrency control and Shirakami-OCC protocol is for short transactions based
on Silo. Shirakami naturally integrates them with write preservation method and
epoch-based synchronization. Shirakami is a module in Tsurugi system, which is
a production-purpose relational database system
Impact of domestic travel restrictions on transmission of COVID-19 infection using public transportation network approach
The international spread of COVID-19 infection has attracted global attention, but the impact of local or domestic travel restriction on public transportation network remains unclear. Passenger volume data for the domestic public transportation network in Japan and the time at which the first confirmed COVID-19 case was observed in each prefecture were extracted from public data sources. A survival approach in which a hazard was modeled as a function of the closeness centrality on the network was utilized to estimate the risk of importation of COVID-19 in each prefecture. A total of 46 prefectures with imported cases were identified. Hypothetical scenario analyses indicated that both strategies of locking down the metropolitan areas and restricting domestic airline travel would be equally effective in reducing the risk of importation of COVID-19. While caution is necessary that the data were limited to June 2020 when the pandemic was in its initial stage and that no other virus spreading routes have been considered, domestic travel restrictions were effective to prevent the spread of COVID-19 on public transportation network in Japan. Instead of lockdown that might seriously damage the economy, milder travel restrictions could have the similar impact on controlling the domestic transmission of COVID-19. © 2021, The Author(s)
Changes in health care access during the COVID-19 pandemic: Estimates of national Japanese data, June 2020-October 2021
The COVID-19 pandemic has disrupted health care access around the world, both for inpatients and outpatients. We applied a quasi-Poisson regression to national, monthly data on the number of outpatients, number of inpatients, length of average hospital stay, and the number of new hospitalizations from March 2015 to October 2021 to assess how these outcomes changed between June 2020 to October 2021. The number of outpatient visits were lower-than-predicted during the early phases of the pandemic but normalized by the fall of 2021. The number of inpatients and new hospitalizations were lower-than-predicted throughout the pandemic, and deficits in reporting continued to be observed in late 2021. The length of hospital stays was within the predicted range for all beds, but when stratified by bed type, was higher than predicted for psychiatric beds, lower-than-predicted for tuberculosis beds, and showed variable changes in long-term care insurance beds. Health care access in Japan was impacted by the COVID-19 pandemic
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