599 research outputs found
MiAMix: Enhancing Image Classification through a Multi-stage Augmented Mixed Sample Data Augmentation Method
Despite substantial progress in the field of deep learning, overfitting
persists as a critical challenge, and data augmentation has emerged as a
particularly promising approach due to its capacity to enhance model
generalization in various computer vision tasks. While various strategies have
been proposed, Mixed Sample Data Augmentation (MSDA) has shown great potential
for enhancing model performance and generalization. We introduce a novel mixup
method called MiAMix, which stands for Multi-stage Augmented Mixup. MiAMix
integrates image augmentation into the mixup framework, utilizes multiple
diversified mixing methods concurrently, and improves the mixing method by
randomly selecting mixing mask augmentation methods. Recent methods utilize
saliency information and the MiAMix is designed for computational efficiency as
well, reducing additional overhead and offering easy integration into existing
training pipelines. We comprehensively evaluate MiaMix using four image
benchmarks and pitting it against current state-of-the-art mixed sample data
augmentation techniques to demonstrate that MIAMix improves performance without
heavy computational overhead
Cross-Attribute Matrix Factorization Model with Shared User Embedding
Over the past few years, deep learning has firmly established its prowess
across various domains, including computer vision, speech recognition, and
natural language processing. Motivated by its outstanding success, researchers
have been directing their efforts towards applying deep learning techniques to
recommender systems. Neural collaborative filtering (NCF) and Neural Matrix
Factorization (NeuMF) refreshes the traditional inner product in matrix
factorization with a neural architecture capable of learning complex and
data-driven functions. While these models effectively capture user-item
interactions, they overlook the specific attributes of both users and items.
This can lead to robustness issues, especially for items and users that belong
to the "long tail". Such challenges are commonly recognized in recommender
systems as a part of the cold-start problem. A direct and intuitive approach to
address this issue is by leveraging the features and attributes of the items
and users themselves. In this paper, we introduce a refined NeuMF model that
considers not only the interaction between users and items, but also acrossing
associated attributes. Moreover, our proposed architecture features a shared
user embedding, seamlessly integrating with user embeddings to imporve the
robustness and effectively address the cold-start problem. Rigorous experiments
on both the Movielens and Pinterest datasets demonstrate the superiority of our
Cross-Attribute Matrix Factorization model, particularly in scenarios
characterized by higher dataset sparsity
Effect of grinding wheel on the dynamic performance of high-speed spindle system with an improved FE model
The grinding wheel is a key factor which should be considered in the process of predicting the dynamic performance of the high-speed spindle system. Currently, most research is mainly focuses on shaft and bearing using Timoshenko’s beam and Jones’ bearing model. In this research, considering the effect of grinding wheel on the dynamic behavior of the high-speed motorized spindle system, a dynamic model of spindle system has been established by utilizing the finite element method (FEM). The model is improved by optimizing the relevant parameters of spindle system and validated by measuring FRF using impact hammer test. The reported results are well matched (maximum error is 5 %). Using the improved model, the effect of grinding wheel on the critical speeds, mode shapes, centrifugal force and gyroscopic effects of spindle system are analyzed. In addition, the impact of different diameters, materials and fixed methods of grinding wheel on the dynamic property of spindle system are also carried out. The result shows the affect of grinding wheel and design guideline of the spindle and grinding wheel
Study of experimental modal analysis method of machine tool spindle system
Dynamic properties of the machine tools especially the spindle systems contribute greatly to the reliability of the machine tools. The increasing use of modal analysis as a standard tool to estimate the dynamic modal parameters means that both experienced and inexperienced analysts are faced with new challenges: uncertainty about the accuracy of results. Therefore, the key requirement for experimental modal analysis is a reliable, efficient and accurate experimental method in spindle system analysis. Several processes, such as reference and response selection in modal test however would make the system identification process for structural dynamics inaccurate. To investigate the results accuracy when applying experimental modal analysis on machine tool spindle, this work hence further studied the experimental setup itself based on the reference and response selection. The reference selection and reference optimization method is developed for the accuracy and efficiency improving purpose. First, by comparing results from different reference quantity and direction test, the method to select reference points is studied. Then the modal parameters are verified by the complex mode indicator functions and finite element analysis to study the influence of the reference on the modal analysis accuracy. Next, improved algorithm of response points optimization is developed based on the MAC matrix to minimize the number and location of measuring response points. Lastly, the general standard and method to select the reference and response points are put forward. The approach setting-up the experimental impact test provides reliable and accurate results and can reduce the testing time at the same time
Springback analysis of AA5754 after hot stamping: experiments and FE modelling
In this paper, the springback of the aluminium alloy AA5754 under hot stamping conditions was characterised under stretch and pure bending conditions. It was found that elevated temperature stamping was beneficial for springback reduction, particularly when using hot dies. Using cold dies, the flange springback angle decreased by 9.7 % when the blank temperature was increased from 20 to 450 °C, compared to the 44.1 % springback reduction when hot dies were used. Various other forming conditions were also tested, the results of which were used to verify finite element (FE) simulations of the processes in order to consolidate the knowledge of springback. By analysing the tangential stress distributions along the formed part in the FE models, it was found that the springback angle is a linear function of the average through-thickness stress gradient, regardless of the forming conditions used
Degradation Modeling and RUL Prediction Using Wiener Process Subject to Multiple Change Points and Unit Heterogeneity
Degradation modeling is critical for health condition monitoring and remaining useful life prediction (RUL). The prognostic accuracy highly depends on the capability of modeling the evolution of degradation signals. In many practical applications, however, the degradation signals show multiple phases, where the conventional degradation models are often inadequate. To better characterize the degradation signals of multiple-phase characteristics, we propose a multiple change-point Wiener process as a degradation model. To take into account the between-unit heterogeneity, a fully Bayesian approach is developed where all model parameters are assumed random. At the offline stage, an empirical two-stage process is proposed for model estimation, and a cross-validation approach is adopted for model selection. At the online stage, an exact recursive model updating algorithm is developed for online individual model estimation, and an effective Monte Carlo simulation approach is proposed for RUL prediction. The effectiveness of the proposed method is demonstrated through thorough simulation studies and real case study
A semiparametric likelihood-based method for regression analysis of mixed panel-count data
Panel-count data arise when each study subject is observed only at discrete time points in a recurrent event study, and only the numbers of the event of interest between observation time points are recorded (Sun and Zhao, 2013). However, sometimes the exact number of events between some observation times is unknown and what we know is only whether the event of interest has occurred. In this article, we will refer this type of data to as mixed panel-count data and propose a likelihood-based semiparametric regression method for their analysis by using the nonhomogeneous Poisson process assumption. However, we establish the asymptotic properties of the resulting estimator by employing the empirical process theory and without using the Poisson assumption. Also, we conduct an extensive simulation study, which suggests that the proposed method works well in practice. Finally, the method is applied to a Childhood Cancer Survivor Study that motivated this study
Multiple-Change-Point Modeling and Exact Bayesian Inference of Degradation Signal for Prognostic Improvement
Prognostics play an increasingly important role in modern engineering systems for smart maintenance decision-making. In parametric regression-based approaches, the parametric models are often too rigid to model degradation signals in many applications. In this paper, we propose a Bayesian multiple-change-point (CP) modeling framework to better capture the degradation path and improve the prognostics. At the offline modeling stage, a novel stochastic process is proposed to model the joint prior of CPs and positions. All hyperparameters are estimated through an empirical two-stage process. At the online monitoring and remaining useful life (RUL) prediction stage, a recursive updating algorithm is developed to exactly calculate the posterior distribution and RUL prediction sequentially. To control the computational cost, a fixed-support-size strategy in the online model updating and a partial Monte Carlo strategy in the RUL prediction are proposed. The effectiveness and advantages of the proposed method are demonstrated through thorough simulation and real case studies
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