2,342,929 research outputs found
A Score-level Fusion Method for Eye Movement Biometrics
This paper proposes a novel framework for the use of eye movement patterns
for biometric applications. Eye movements contain abundant information about
cognitive brain functions, neural pathways, etc. In the proposed method, eye
movement data is classified into fixations and saccades. Features extracted
from fixations and saccades are used by a Gaussian Radial Basis Function
Network (GRBFN) based method for biometric authentication. A score fusion
approach is adopted to classify the data in the output layer. In the evaluation
stage, the algorithm has been tested using two types of stimuli: random dot
following on a screen and text reading. The results indicate the strength of
eye movement pattern as a biometric modality. The algorithm has been evaluated
on BioEye 2015 database and found to outperform all the other methods. Eye
movements are generated by a complex oculomotor plant which is very hard to
spoof by mechanical replicas. Use of eye movement dynamics along with iris
recognition technology may lead to a robust counterfeit-resistant person
identification system.Comment: 11 pages, 6 figures, In press, Pattern Recognition Letter
Estimating Marginal Hazard Ratios by Simultaneously Using A Set of Propensity Score Models: A Multiply Robust Approach
The inverse probability weighted Cox model is frequently used to estimate marginal hazard ratios. Its validity requires a crucial condition that the propensity score model is correctly specified. To provide protection against misspecification of the propensity score model, we propose a weighted estimation method rooted in empirical likelihood theory. The proposed estimator is multiply robust in that it is guaranteed to be consistent when a set of postulated propensity score models contains a correctly specified model. Our simulation studies demonstrate satisfactory finite sample performance of the proposed method in terms of consistency and efficiency. We apply the proposed method to compare the risk of postoperative hospitalization between sleeve gastrectomy and Roux-en-Y gastric bypass using data from a large medical claims and billing database.We further extend the development to multi-site studies to enable each site to postulate multiple site-specific propensity score models
A Study on Ranking Method in Retrieving Web Pages Based on Content and Link Analysis: Combination of Fourier Domain Scoring and Pagerank Scoring
Ranking module is an important component of search process which sorts through relevant pages. Since collection of Web pages has additional information inherent in the hyperlink structure of the Web, it can be represented as link score and then combined with the usual information retrieval techniques of content score. In this paper we report our studies about ranking score of Web pages combined from link analysis, PageRank Scoring, and content analysis, Fourier Domain Scoring. Our experiments use collection of Web pages relate to Statistic subject from Wikipedia with objectives to check correctness and performance evaluation of combination ranking method. Evaluation of PageRank Scoring show that the highest score does not always relate to Statistic. Since the links within Wikipedia articles exists so that users are always one click away from more information on any point that has a link attached, it it possible that unrelated topics to Statistic are most likely frequently mentioned in the collection. While the combination method show link score which is given proportional weight to content score of Web pages does effect the retrieval results
Toward Explainable Fashion Recommendation
Many studies have been conducted so far to build systems for recommending
fashion items and outfits. Although they achieve good performances in their
respective tasks, most of them cannot explain their judgments to the users,
which compromises their usefulness. Toward explainable fashion recommendation,
this study proposes a system that is able not only to provide a goodness score
for an outfit but also to explain the score by providing reason behind it. For
this purpose, we propose a method for quantifying how influential each feature
of each item is to the score. Using this influence value, we can identify which
item and what feature make the outfit good or bad. We represent the image of
each item with a combination of human-interpretable features, and thereby the
identification of the most influential item-feature pair gives useful
explanation of the output score. To evaluate the performance of this approach,
we design an experiment that can be performed without human annotation; we
replace a single item-feature pair in an outfit so that the score will
decrease, and then we test if the proposed method can detect the replaced item
correctly using the above influence values. The experimental results show that
the proposed method can accurately detect bad items in outfits lowering their
scores
Method of Score Equality and Sample Size
This study is aimed to obtain information of different score variance result of equating linear method and equipercentile method for sample size 200, 400, and 800 in Ujian Akhir Sekolah Berstandar Nasional (UASBN). The research is important in considering the test device of UASBN shaped packages of different tests. Scores obtained from different packages can not be directly inferred the existence of differences in ability between them, because the difficulty level of the package used influencing these differrences. To overcome the differences are doing through equating. The method used is an experiment of two variables, equating method and the number of respondents. The experiments are not conducted during the learning process, but conducted after the score and the pattern of the answers obtained through UASBN. The population examinee UASBN SD/MI 2008/2009 for IPA subject matter at East Jakarta. Sampling uses random replacement technique. The hypothesis is tested using similarity variance. The results with α = 0,05 shows: (1) score variance equipercentile method (σ2ekp200) is not different to score variance linear method (σ2lin200) for the sample size 200, (2) score variance equipercentile method (σ2ekp400) is not different to score variance equating linear method (σ2lin400) for the sample size 400, and (3) score variance equipercentile method (σ2ekp800) is not different to score variance equating linear method (σ2lin800) for the sample size 800
Bayesian Sparse Propensity Score Estimation for Unit Nonresponse
Nonresponse weighting adjustment using propensity score is a popular method
for handling unit nonresponse. However, including all available auxiliary
variables into the propensity model can lead to inefficient and inconsistent
estimation, especially with high-dimensional covariates. In this paper, a new
Bayesian method using the Spike-and-Slab prior is proposed for sparse
propensity score estimation. The proposed method is not based on any model
assumption on the outcome variable and is computationally efficient. Instead of
doing model selection and parameter estimation separately as in many
frequentist methods, the proposed method simultaneously selects the sparse
response probability model and provides consistent parameter estimation. Some
asymptotic properties of the proposed method are presented. The efficiency of
this sparse propensity score estimator is further improved by incorporating
related auxiliary variables from the full sample. The finite-sample performance
of the proposed method is investigated in two limited simulation studies,
including a partially simulated real data example from the Korean Labor and
Income Panel Survey.Comment: 38 pages, 3 table
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