1,058 research outputs found
JSKETCH: Sketching for Java
Sketch-based synthesis, epitomized by the SKETCH tool, lets developers
synthesize software starting from a partial program, also called a sketch or
template. This paper presents JSKETCH, a tool that brings sketch-based
synthesis to Java. JSKETCH's input is a partial Java program that may include
holes, which are unknown constants, expression generators, which range over
sets of expressions, and class generators, which are partial classes. JSKETCH
then translates the synthesis problem into a SKETCH problem; this translation
is complex because SKETCH is not object-oriented. Finally, JSKETCH synthesizes
an executable Java program by interpreting the output of SKETCH.Comment: This research was supported in part by NSF CCF-1139021, CCF- 1139056,
CCF-1161775, and the partnership between UMIACS and the Laboratory for
Telecommunication Science
Tree Induction vs. Logistic Regression: A Learning-Curve Analysis
Tree induction and logistic regression are two standard, off-the-shelf methods
for building models for classification. We present a large-scale experimental
comparison of logistic regression and tree induction, assessing classification accuracy
and the quality of rankings based on class-membership probabilities. We
use a learning-curve analysis to examine the relationship of these measures to
the size of the training set. The results of the study show several remarkable
things. (I) Contrary to prior observations, logistic regression does not generally
outperform tree induction. (2) More specifically, and not surprisingly, logistic
regression is better for smaller training sets and tree induction for larger data
sets. Importantly, this often holds for training sets drawn from the same domain
(i.e., the learning curves cross), so conclusions about induction-algorithm
superiority on a given domain must be based on an analysis of the learning
curves. (3) Contrary to conventional wisdom, tree induction is effective at producing
probability-based rankings, although apparently comparatively less so
for a given training--set size than at making classifications. Finally, (4) the domains
on which tree induction and logistic regression are ultimately preferable
can be characterized surprisingly well by a simple measure of signal-to-noise
ratio.Information Systems Working Papers Serie
Adapted Tricycle
This Final Design Review document describes the senior design project carried out by a team of four mechanical engineering students from California Polytechnic State University, San Luis Obispo in conjunction with California Children’s Services for Savannah, a student at San Luis Obispo High School. The purpose of the project is to design an adaptive vehicle for Savannah that serves as a form of exercise and can be easily operated by her with little to no outside assistance. Background into Savannah’s condition is provided as well as previous designs of similar adaptive tricycles, document standards and specifications which constrain design solutions, outline the scope of the project as well as the needs and wants of the end user as understood by the team, and develop a path towards the final design through description of the design process. The final design described in this document is centered around the user’s strongest muscle group (her abdomen and back muscles) to provide all necessary tricycle functions. These functions include steering, powering and braking. In general, the steering mechanism will utilize bevel gears to actuate the front wheel of the tricycle, the powering system will be a ratcheting push bar that is harnessed to the user’s torso, and the braking system will be a brake pad on the front wheel that is engaged by leaning back in the seat. This document contains our team’s process for developing our final design, solid model of our final design, justification calculations, manufacturing plans and engineering drawings, and our schedule for completion of the final product. In addition, a summary of the effects of the COVID-19 pandemic on project completion is provided, including an outline of future documentation which will aid an outside party in development and completion of our intended design, as well as the team’s revised project direction and scope
Adapting Scrum to Managing a Research Group
Score is an adaptation of the Scrum agile software development methodology to the task of managing Ph.D. students in an academic research group. This paper describes Score, conceived in October 2006, and our experience using it. We have found that Score enables us---faculty and students---to be more efficient and thereby more productive, and enhances the cohesion of our research group
Intestinal Dipeptide Absorption Is Preserved During Thermal Injury and Cytokine Treatment
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/142293/1/jpen0520.pd
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