400 research outputs found
Learning Effective Changes for Software Projects
The primary motivation of much of software analytics is decision making. How
to make these decisions? Should one make decisions based on lessons that arise
from within a particular project? Or should one generate these decisions from
across multiple projects? This work is an attempt to answer these questions.
Our work was motivated by a realization that much of the current generation
software analytics tools focus primarily on prediction. Indeed prediction is a
useful task, but it is usually followed by "planning" about what actions need
to be taken. This research seeks to address the planning task by seeking
methods that support actionable analytics that offer clear guidance on what to
do. Specifically, we propose XTREE and BELLTREE algorithms for generating a set
of actionable plans within and across projects. Each of these plans, if
followed will improve the quality of the software project.Comment: 4 pages, 2 figures. This a submission for ASE 2017 Doctoral Symposiu
Finite-Horizon Optimal Transmission Policies for Energy Harvesting Sensors
In this paper, we derive optimal transmission policies for energy harvesting
sensors to maximize the utility obtained over a finite horizon. First, we
consider a single energy harvesting sensor, with discrete energy arrival
process, and a discrete energy consumption policy. Under this model, we show
that the optimal finite horizon policy is a threshold policy, and explicitly
characterize the thresholds, and the thresholds can be precomputed using a
recursion. Next, we address the case of multiple sensors, with only one of them
allowed to transmit at any given time to avoid interference, and derive an
explicit optimal policy for this scenario as well.Comment: Appeared in IEEE ICASSP 201
SOURCE OF GROUNDWATER IRON AND MANGANESE IN CHANDRAPUR DISTRICT, CENTRAL INDIA
Groundwater sampling was carried out by grab sampling method from 36 sampling locations from the Chandrapur district in three seasons i.e. winter, summer, and post-monsoon. The samples were analysed for physicochemical parameters and heavy metals i.e. iron and manganese. Data obtained from the study area was interpreted by using multivariate statistical analysis i.e. principal component analysis, cluster analysis, correlation matrix and one way ANOVA to ascertain source apportionment of these two heavy metals. The results of the multivariate analysis revealed that iron and manganese both were associated with the lithogenic source. Groundwater irons concentration was higher when compared with manganese and at a number of sampling locations it was above the stipulated standard of BIS (Bureau of Indian Standards) (0.3 mg/L)
Reciprocity for Kato-Saito idele class group with modulus
We introduce an etale fundamental group with modulus and construct a
reciprocity homomorphism from the Kato-Saito idele class group with modulus to
this fundamental group. This is the K-theoretic analogue of the reciprocity for
the cycle-theoretic idele class group with modulus due to Kerz-Saito, and plays
a central role in showing the isomorphism between the two idele class groups.
It also provides a new interpretation of the already known etale fundamental
group with modulus due to Deligne and Laumon.Comment: 49 pages. Title and abstract changed. This is first part of
arXiv:2008.05719 which is split into two separate paper
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