期刊文献+
共找到22篇文章
< 1 2 >
每页显示 20 50 100
Rethinking Domain-Specific Pretraining by Supervised or Self-Supervised Learning for Chest Radiograph Classification:A Comparative Study Against ImageNet Counterparts in Cold-Start Active Learning
1
作者 Han Yuan Mingcheng Zhu +3 位作者 Rui Yang Han Liu Irene Li Chuan Hong 《Health Care Science》 2025年第2期110-143,共34页
Objective:Deep learning(DL)has become the prevailing method in chest radiograph analysis,yet its performance heavily depends on large quantities of annotated images.To mitigate the cost,cold-start active learning(AL),... Objective:Deep learning(DL)has become the prevailing method in chest radiograph analysis,yet its performance heavily depends on large quantities of annotated images.To mitigate the cost,cold-start active learning(AL),comprising an initialization followed by subsequent learning,selects a small subset of informative data points for labeling.Recent advancements in pretrained models by supervised or self-supervised learning tailored to chest radiograph have shown broad applicability to diverse downstream tasks.However,their potential in cold-start AL remains unexplored.Methods:To validate the efficacy of domain-specific pretraining,we compared two foundation models:supervised TXRV and self-supervised REMEDIS with their general domain counterparts pretrained on ImageNet.Model performance was evaluated at both initialization and subsequent learning stages on two diagnostic tasks:psychiatric pneumonia and COVID-19.For initialization,we assessed their integration with three strategies:diversity,uncertainty,and hybrid sampling.For subsequent learning,we focused on uncertainty sampling powered by different pretrained models.We also conducted statistical tests to compare the foundation models with ImageNet counterparts,investigate the relationship between initialization and subsequent learning,examine the performance of one-shot initialization against the full AL process,and investigate the influence of class balance in initialization samples on initialization and subsequent learning.Results:First,domain-specific foundation models failed to outperform ImageNet counterparts in six out of eight experiments on informative sample selection.Both domain-specific and general pretrained models were unable to generate representations that could substitute for the original images as model inputs in seven of the eight scenarios.However,pretrained model-based initialization surpassed random sampling,the default approach in cold-start AL.Second,initialization performance was positively correlated with subsequent learning performance,highlighting the importance of initialization strategies.Third,one-shot initialization performed comparably to the full AL process,demonstrating the potential of reducing experts'repeated waiting during AL iterations.Last,a U-shaped correlation was observed between the class balance of initialization samples and model performance,suggesting that the class balance is more strongly associated with performance at middle budget levels than at low or high budgets.Conclusions:In this study,we highlighted the limitations of medical pretraining compared to general pretraining in the context of cold-start AL.We also identified promising outcomes related to cold-start AL,including initialization based on pretrained models,the positive influence of initialization on subsequent learning,the potential for one-shot initialization,and the influence of class balance on middle-budget AL.Researchers are encouraged to improve medical pretraining for versatile DL foundations and explore novel AL methods. 展开更多
关键词 chest radiograph analysis cold-start active learning COVID-19 psychiatric pneumonia radiology foundation model
暂未订购
Co_(3)O_(4)as an efficient passive NO_(x) adsorber for emission control during cold-start of diesel engines 被引量:3
2
作者 Jinhuang Cai Shijie Hao +3 位作者 Yun Zhang Xiaomin Wu Zhenguo Li Huawang Zhao 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2024年第2期1-7,共7页
The Co_(3)O_(4)nanoparticles,dominated by a catalytically active(110)lattice plane,were synthesized as a low-temperature NO_(x) adsorbent to control the cold start emissions from vehicles.These nanoparticles boast a s... The Co_(3)O_(4)nanoparticles,dominated by a catalytically active(110)lattice plane,were synthesized as a low-temperature NO_(x) adsorbent to control the cold start emissions from vehicles.These nanoparticles boast a substantial quantity of active chemisorbed oxygen and lattice oxygen,which exhibited a NO_(x) uptake capacity commensurate with Pd/SSZ-13 at 100℃.The primary NO_(x) release temperature falls within a temperature range of 200-350℃,making it perfectly suitable for diesel engines.The characterization results demonstrate that chemisorbed oxygen facilitate nitro/nitrites intermediates formation,contributing to the NO_(x) storage at 100℃,while the nitrites begin to decompose within the 150-200℃range.Fortunately,lattice oxygen likely becomes involved in the activation of nitrites into more stable nitrate within this particular temperature range.The concurrent processes of nitrites decomposition and its conversion to nitrates results in a minimal NO_(x) release between the temperatures of 150-200℃.The nitrate formed via lattice oxygen mainly induces the NO_(x) to be released as NO_(2) within a temperature range of 200-350℃,which is advantageous in enhancing the NO_(x) activity of downstream NH_(3)-SCR catalysts,by boosting the fast SCR reaction pathway.Thanks to its low cost,considerable NO_(x) absorption capacity,and optimal release temperature,Co_(3)O_(4)demonstrates potential as an effective material for passive NO_(x) adsorber applications. 展开更多
关键词 Emission control cold-start Low-temperature adsorption Co_(3)O_(4) Nitrate formation
在线阅读 下载PDF
Cold-Start Link Prediction via Weighted Symmetric Nonnegative Matrix Factorization with Graph Regularization
3
作者 Minghu Tang Wei Yu +3 位作者 Xiaoming Li Xue Chen Wenjun Wang Zhen Liu 《Computer Systems Science & Engineering》 SCIE EI 2022年第12期1069-1084,共16页
Link prediction has attracted wide attention among interdisciplinaryresearchers as an important issue in complex network. It aims to predict the missing links in current networks and new links that will appear in futu... Link prediction has attracted wide attention among interdisciplinaryresearchers as an important issue in complex network. It aims to predict the missing links in current networks and new links that will appear in future networks.Despite the presence of missing links in the target network of link prediction studies, the network it processes remains macroscopically as a large connectedgraph. However, the complexity of the real world makes the complex networksabstracted from real systems often contain many isolated nodes. This phenomenon leads to existing link prediction methods not to efficiently implement the prediction of missing edges on isolated nodes. Therefore, the cold-start linkprediction is favored as one of the most valuable subproblems of traditional linkprediction. However, due to the loss of many links in the observation network, thetopological information available for completing the link prediction task is extremely scarce. This presents a severe challenge for the study of cold-start link prediction. Therefore, how to mine and fuse more available non-topologicalinformation from observed network becomes the key point to solve the problemof cold-start link prediction. In this paper, we propose a framework for solving thecold-start link prediction problem, a joint-weighted symmetric nonnegative matrixfactorization model fusing graph regularization information, based on low-rankapproximation algorithms in the field of machine learning. First, the nonlinear features in high-dimensional space of node attributes are captured by the designedgraph regularization term. Second, using a weighted matrix, we associate the attribute similarity and first order structure information of nodes and constrain eachother. Finally, a unified framework for implementing cold-start link prediction isconstructed by using a symmetric nonnegative matrix factorization model to integrate the multiple information extracted together. Extensive experimental validationon five real networks with attributes shows that the proposed model has very goodpredictive performance when predicting missing edges of isolated nodes. 展开更多
关键词 Link prediction cold-start nonnegative matrix factorization graph regularization
在线阅读 下载PDF
An Incremental Graph Pattern Matching Based Dynamic Cold-Start Recommendation Method
4
作者 Yanan Zhang Guisheng Yin Qiushi Zhao 《国际计算机前沿大会会议论文集》 2016年第1期48-50,共3页
In order to give accurate recommendations for cold-start user, researchers use social network to find similar users. These efforts assume that cold-start user’s social relationships are static. However social relatio... In order to give accurate recommendations for cold-start user, researchers use social network to find similar users. These efforts assume that cold-start user’s social relationships are static. However social relationships of cold-start user may change as time pass by. In order to give accurate and timely in manner recommendations for cold-start user, it is need to update social relationship continuously. In this paper, we proposed an incremental graph pattern matching based dynamic cold-start recommendation method (IGPMDCR), which updates similar users for cold-start user based on topology of social network, and gives recommendations based on the latest similar users’ records. The experimental results show that, IGPMDCR could give accurate and timely in manner recommendations for cold-start user. 展开更多
关键词 Dynamic cold-start RECOMMENDATION SOCIAL NETWORK INCREMENTAL graph pattern MATCHING Topology of SOCIAL NETWORK
在线阅读 下载PDF
推荐系统冷启动问题研究进展 被引量:16
5
作者 史海燕 倪云瑞 《图书馆学研究》 CSSCI 北大核心 2021年第12期2-10,共9页
文章从冷启动问题的基本应对策略、冷启动问题的具体应对方法和特定领域的冷启动问题3个方面梳理相关研究,发现对于各类冷启动问题已形成基本应对策略;主要方法包括基于内容和/或协作式过滤的方法、基于辅助数据的方法、基于用户参与的... 文章从冷启动问题的基本应对策略、冷启动问题的具体应对方法和特定领域的冷启动问题3个方面梳理相关研究,发现对于各类冷启动问题已形成基本应对策略;主要方法包括基于内容和/或协作式过滤的方法、基于辅助数据的方法、基于用户参与的方法等;多媒体信息推荐、标签推荐和跨领域推荐等领域中的冷启动问题值得关注;混合式方法的应用、情境信息与关联数据的应用、基于知识图谱的推荐方法与跨领域推荐方法的应用是需要深入研究的方向。 展开更多
关键词 推荐系统 新用户冷启动 新项目冷启动 新系统冷启动
原文传递
融合用户相似度与评分信息的协同过滤算法 被引量:5
6
作者 乔雨 李玲娟 《南京邮电大学学报(自然科学版)》 北大核心 2017年第3期100-105,共6页
推荐系统利用机器学习的技术进行信息过滤,准确地定位用户需要的信息,并且能够预测用户对目标项目的喜好程度。但是由于新用户和新项目的存在,传统的协同过滤推荐系统面临着冷启动问题的挑战。为了解决协同过滤推荐系统中用户冷启动问题... 推荐系统利用机器学习的技术进行信息过滤,准确地定位用户需要的信息,并且能够预测用户对目标项目的喜好程度。但是由于新用户和新项目的存在,传统的协同过滤推荐系统面临着冷启动问题的挑战。为了解决协同过滤推荐系统中用户冷启动问题,设计了融合用户相似度与评分信息的协同过滤算法(SR-CF)。该算法用基于人口统计学的推荐算法找出用户基本信息之间的相似度,再根据最速下降法对用户评分矩阵进行更新,从而产生对目标用户的推荐。基于Moive Lens公开数据集的实验结果表明,所设计的算法在保证推荐准确率的同时提高了推荐的覆盖率,能有效解决用户冷启动问题。 展开更多
关键词 推荐系统 用户冷启动 人口统计学 评分信息
在线阅读 下载PDF
推荐系统冷启动问题解决策略研究 被引量:24
7
作者 乔雨 李玲娟 《计算机技术与发展》 2018年第2期83-87,共5页
推荐系统利用机器学习技术进行信息过滤,快速准确地定位用户需要的信息,并且能够预测用户对目标项目的喜好程度。由于新用户与新项目的存在,传统的推荐系统在缺少数据信息的情况下面临着冷启动问题的挑战,导致系统无法为用户产生准确的... 推荐系统利用机器学习技术进行信息过滤,快速准确地定位用户需要的信息,并且能够预测用户对目标项目的喜好程度。由于新用户与新项目的存在,传统的推荐系统在缺少数据信息的情况下面临着冷启动问题的挑战,导致系统无法为用户产生准确的推荐。分析冷启动产生的原因,阐述解决冷启动问题的意义,从是否考虑冷启动类型等方面对目前推荐系统冷启动问题的研究成果进行分类总结,并尝试给出冷启动问题未来的研究重点与难点。目前较为普遍的处理方式是将多种数据源与多种推荐方法进行混合使用,从而提高系统推荐的准确度与效率,但是仍然存在着如在收集用户各类信息的同时如何保护个人隐私、如何建立推荐系统的效用评价等难点问题。 展开更多
关键词 推荐系统 协同过滤 用户冷启动 项目冷启动 解决策略
在线阅读 下载PDF
基于项目相关度的STI新群体冷启动推荐方法 被引量:1
8
作者 王磊 赵庆建 罗兴峰 《小型微型计算机系统》 CSCD 北大核心 2015年第3期450-453,共4页
针对推荐系统中相似偏好用户数量较少情况下的一类新群体冷启动问题开展研究,基于多元相关分析,对传统的尺度与平移不变(Scale and Translation Invariant,STI)的协同过滤推荐方法进行改进,提出一种基于项目相关度的STI推荐方法,以应对... 针对推荐系统中相似偏好用户数量较少情况下的一类新群体冷启动问题开展研究,基于多元相关分析,对传统的尺度与平移不变(Scale and Translation Invariant,STI)的协同过滤推荐方法进行改进,提出一种基于项目相关度的STI推荐方法,以应对推荐系统中的新群体冷启动问题.在此基础上,基于Movie Lens数据集对所提出的方法进行了性能分析,结果表明,所提出的方法较Pearson方法及ST1N1方法在解决新群体冷启动推荐的过程中具有更高的推荐准确率. 展开更多
关键词 推荐系统 冷启动 新群体 项目相关度 尺度与平移不变
在线阅读 下载PDF
融合关系挖掘与协同过滤的物品冷启动推荐算法 被引量:12
9
作者 任永功 石佳鑫 张志鹏 《模式识别与人工智能》 EI CSCD 北大核心 2020年第1期75-85,共11页
针对新物品缺乏(非完全冷启动)或没有(完全冷启动)评分信息,协同过滤无法为新物品进行个性化推荐的问题,文中提出融合关系挖掘与协同过滤的推荐算法.首先,利用关系挖掘提取物品关系特征,根据属性之间的多种二元关系构建关系属性,丰富可... 针对新物品缺乏(非完全冷启动)或没有(完全冷启动)评分信息,协同过滤无法为新物品进行个性化推荐的问题,文中提出融合关系挖掘与协同过滤的推荐算法.首先,利用关系挖掘提取物品关系特征,根据属性之间的多种二元关系构建关系属性,丰富可用属性信息.然后,提出基于关系挖掘的近邻选取方法,增加邻近物品的多样性.最后,融合协同过滤方法,同时解决完全和非完全新物品冷启动问题,实现新物品的个性化推荐.在两个真实数据集上的实验表明,文中方法可以系统解决推荐系统中新物品的冷启动问题. 展开更多
关键词 推荐系统 协同过滤 关系挖掘 新物品冷启动
在线阅读 下载PDF
Learning from Scarcity:A Review of Deep Learning Strategies for Cold-Start Energy Time-Series Forecasting
10
作者 Jihoon Moon 《Computer Modeling in Engineering & Sciences》 2026年第1期26-76,共51页
Predicting the behavior of renewable energy systems requires models capable of generating accurate forecasts from limited historical data,a challenge that becomes especially pronounced when commissioning new facil-iti... Predicting the behavior of renewable energy systems requires models capable of generating accurate forecasts from limited historical data,a challenge that becomes especially pronounced when commissioning new facil-ities where operational records are scarce.This review aims to synthesize recent progress in data-efficient deep learning approaches for addressing such“cold-start”forecasting problems.It primarily covers three interrelated domains—solar photovoltaic(PV),wind power,and electrical load forecasting—where data scarcity and operational variability are most critical,while also including representative studies on hydropower and carbon emission prediction to provide a broader systems perspective.To this end,we examined trends from over 150 predominantly peer-reviewed studies published between 2019 and mid-2025,highlighting advances in zero-shot and few-shot meta-learning frameworks that enable rapid model adaptation with minimal labeled data.Moreover,transfer learning approaches combined with spatiotemporal graph neural networks have been employed to transfer knowledge from existing energy assets to new,data-sparse environments,effectively capturing hidden dependencies among geographic features,meteorological dynamics,and grid structures.Synthetic data generation has further proven valuable for expanding training samples and mitigating overfitting in cold-start scenarios.In addition,large language models and explainable artificial intelligence(XAI)—notably conversational XAI systems—have been used to interpret and communicate complex model behaviors in accessible terms,fostering operator trust from the earliest deployment stages.By consolidating methodological advances,unresolved challenges,and open-source resources,this review provides a coherent overview of deep learning strategies that can shorten the data-sparse ramp-up period of new energy infrastructures and accelerate the transition toward resilient,low-carbon electricity grids. 展开更多
关键词 cold-start forecasting zero-shot learning few-shot meta-learning transfer learning spatiotemporal graph neural networks energy time series large language models explainable artificial intelligence(XAI)
在线阅读 下载PDF
面向新领域的推荐系统综述 被引量:4
11
作者 让冉 邢林林 +1 位作者 张龙波 蔡红珍 《智能计算机与应用》 2023年第5期1-8,17,共9页
互联网时代的快速演进带来了数据信息的海量增长,推荐系统旨在海量数据中提升用户获取信息的有效性。同时推荐系统促进领域的发展并带来了新的机遇,现阶段各行业在应用中涌现出大量新领域下为用户进行个性化推荐的需求。然而,推荐系统... 互联网时代的快速演进带来了数据信息的海量增长,推荐系统旨在海量数据中提升用户获取信息的有效性。同时推荐系统促进领域的发展并带来了新的机遇,现阶段各行业在应用中涌现出大量新领域下为用户进行个性化推荐的需求。然而,推荐系统在新的领域进行实际场景应用,往往需要从零开始构架数据体系,这依赖专家对领域特征进行分析,总结获取新领域的数据关系,并且存在推荐系统应用领域限定性强、数据稀疏、冷启动等阻碍。本文旨在面向新领域推荐系统的构建这一主题进行综述,从新领域背景和挑战、新领域推荐方法、方法评估3个研究方向,介绍了相关工作的研究现状,给出了研究面向新领域技术应用的建议,并对新领域推荐的发展趋势进行展望,指出下一步需要开展的工作。 展开更多
关键词 推荐系统 新领域 数据稀疏 冷启动 协同过滤
在线阅读 下载PDF
Applying memetic algorithm-based clustering to recommender system with high sparsity problem 被引量:2
12
作者 MARUNG Ukrit THEERA-UMPON Nipon AUEPHANWIRIYAKUL Sansanee 《Journal of Central South University》 SCIE EI CAS 2014年第9期3541-3550,共10页
A new recommendation method was presented based on memetic algorithm-based clustering. The proposed method was tested on four highly sparse real-world datasets. Its recommendation performance is evaluated and compared... A new recommendation method was presented based on memetic algorithm-based clustering. The proposed method was tested on four highly sparse real-world datasets. Its recommendation performance is evaluated and compared with that of the frequency-based, user-based, item-based, k-means clustering-based, and genetic algorithm-based methods in terms of precision, recall, and F1 score. The results show that the proposed method yields better performance under the new user cold-start problem when each of new active users selects only one or two items into the basket. The average F1 scores on all four datasets are improved by 225.0%, 61.6%, 54.6%, 49.3%, 28.8%, and 6.3% over the frequency-based, user-based, item-based, k-means clustering-based, and two genetic algorithm-based methods, respectively. 展开更多
关键词 memetic algorithm recommender system sparsity problem cold-start problem clustering method
在线阅读 下载PDF
基于互信息的鲁棒跨域推荐系统 被引量:2
13
作者 刘昱康 于学军 《贵州大学学报(自然科学版)》 2022年第4期75-80,共6页
由于大量新用户和新产品的出现,跨域推荐系统已经成为解决推荐系统冷启动问题的关键。然而,现有的跨域推荐系统都假设其训练数据中不存在任何的错误标注,但是在现实情况下,该假设很难得到满足,这就导致了跨域推荐系统在相当多的真实推... 由于大量新用户和新产品的出现,跨域推荐系统已经成为解决推荐系统冷启动问题的关键。然而,现有的跨域推荐系统都假设其训练数据中不存在任何的错误标注,但是在现实情况下,该假设很难得到满足,这就导致了跨域推荐系统在相当多的真实推荐场景下的表现很难令人满意。为了减少现实情况下错误标注对跨域推荐系统的影响,提高真实推荐场景下跨域推荐系统推荐结果的准确性,本文提出了一种基于互信息的鲁棒跨域推荐系统,该推荐系统由域分离网络和互信息鲁棒风险两个模块构成。域分离网络模块很好地解决了源域与目标域差异的问题;在互信息鲁棒风险模块中,提出了一个基于互信息的风险函数来过滤掉数据中的错误标注,使用该风险函数所训练出的跨域推荐系统可以很好地处理训练数据中存在的错误信息,使跨域推荐系统能更好地应用在各种真实的推荐场景下。本文采用对比试验的方法,在真实的数据集上将所提出的方法与几种现有的推荐方法进行了比较,试验表明,现有的推荐方法在现实情况下很难不受到错误标注的影响,而本文提出的方法很好地应对了错误标注的影响,具有更优越的性能。 展开更多
关键词 推荐系统 新用户 冷启动问题 鲁棒性 互信息
在线阅读 下载PDF
Graph-enhanced neural interactive collaborative filtering 被引量:1
14
作者 Xie Chengyan Dong Lu 《Journal of Southeast University(English Edition)》 EI CAS 2022年第2期110-117,共8页
To improve the training efficiency and recommendation accuracy in cold-start interactive recommendation systems,a new graph structure called item similarity graph is proposed on the basis of real data from a public da... To improve the training efficiency and recommendation accuracy in cold-start interactive recommendation systems,a new graph structure called item similarity graph is proposed on the basis of real data from a public dataset.The proposed graph is built from collaborative interactions and a deep reinforcement learning-based graph-enhanced neural interactive collaborative filtering(GE-ICF)model.The GE-ICF framework is developed with a deep reinforcement learning framework and comprises an embedding propagation layer designed with graph neural networks.Extensive experiments are conducted to investigate the efficiency of the proposed graph structure and the superiority of the proposed GE-ICF framework.Results show that in cold-start interactive recommendation systems,the proposed item similarity graph performs well in data relationship modeling,with the training efficiency showing significant improvement.The proposed GE-ICF framework also demonstrates superiority in decision modeling,thereby increasing the recommendation accuracy remarkably. 展开更多
关键词 interactive recommendation systems cold-start graph neural network deep reinforcement learning
在线阅读 下载PDF
Deep Learning Enabled Autoencoder Architecture for Collaborative Filtering Recommendation in IoT Environment 被引量:1
15
作者 Thavavel Vaiyapuri 《Computers, Materials & Continua》 SCIE EI 2021年第7期487-503,共17页
The era of the Internet of things(IoT)has marked a continued exploration of applications and services that can make people’s lives more convenient than ever before.However,the exploration of IoT services also means t... The era of the Internet of things(IoT)has marked a continued exploration of applications and services that can make people’s lives more convenient than ever before.However,the exploration of IoT services also means that people face unprecedented difficulties in spontaneously selecting the most appropriate services.Thus,there is a paramount need for a recommendation system that can help improve the experience of the users of IoT services to ensure the best quality of service.Most of the existing techniques—including collaborative filtering(CF),which is most widely adopted when building recommendation systems—suffer from rating sparsity and cold-start problems,preventing them from providing high quality recommendations.Inspired by the great success of deep learning in a wide range of fields,this work introduces a deep-learning-enabled autoencoder architecture to overcome the setbacks of CF recommendations.The proposed deep learning model is designed as a hybrid architecture with three key networks,namely autoencoder(AE),multilayered perceptron(MLP),and generalized matrix factorization(GMF).The model employs two AE networks to learn deep latent feature representations of users and items respectively and in parallel.Next,MLP and GMF networks are employed to model the linear and non-linear user-item interactions respectively with the extracted latent user and item features.Finally,the rating prediction is performed based on the idea of ensemble learning by fusing the output of the GMF and MLP networks.We conducted extensive experiments on two benchmark datasets,MoiveLens100K and MovieLens1M,using four standard evaluation metrics.Ablation experiments were conducted to confirm the validity of the proposed model and the contribution of each of its components in achieving better recommendation performance.Comparative analyses were also carried out to demonstrate the potential of the proposed model in gaining better accuracy than the existing CF methods with resistance to rating sparsity and cold-start problems. 展开更多
关键词 Neural collaborative filtering cold-start problem data sparsity multilayer perception generalized matrix factorization autoencoder deep learning ensemble learning top-K recommendations
在线阅读 下载PDF
A Well-Built Hybrid Recommender System for Agricultural Products in Benue State of Nigeria 被引量:1
16
作者 Agaji Iorshase Onyeke Idoko Charles 《Journal of Software Engineering and Applications》 2015年第11期581-589,共9页
Benue State of Nigeria is tagged the Food Basket of the country due to its heavy production of many classes of food. Situated in the North Central Geo-Political area of the country, its food production ranges from roo... Benue State of Nigeria is tagged the Food Basket of the country due to its heavy production of many classes of food. Situated in the North Central Geo-Political area of the country, its food production ranges from root crops, fruits to cereals. Recommender systems (RSs) allow users to access products of interest, given a plethora of interest on the Internet. Recommendation techniques are content-based and collaborative filtering. Recommender systems based on collaborative filtering outshines content-based systems in the quality of their recommendations, but suffers from the cold start problem, i.e., not being able to recommend items that have few or no ratings. On the other hand, content-based recommender systems are able to recommend both old and new items but with low recommendation quality in relation to the user’s preference. This work combines collaborative filtering and content based recommendation into one system and presents experimental results obtained from a web and mobile application used in the simulation. The work solves the problem of serendipity associated with content based (RS) as well as the problem of ramp-up associated with collaborative filtering. The results indicate that the quality of recommendation is promising and is competitive with collaborative technique recommending items that have been seen before and also effective at recommending cold-start products. 展开更多
关键词 PREFERENCE Rating Filtering Serendipity Ramp-Up cold-start SKIP GRAM
暂未订购
Thermal Modeling of a Novel Heated Tip Injector for Otto Cycle Engines Powered by Ethanol
17
作者 Alexandre Rezende Jose Roberto Simoes-Moreira 《Energy and Power Engineering》 2012年第2期85-91,共7页
This work presents a thermal modeling of a new cold-start system technology designed for Otto cycle combustion based on the electromagnetic heating principle. Firstly, the paper presents a state-of-the-art review and ... This work presents a thermal modeling of a new cold-start system technology designed for Otto cycle combustion based on the electromagnetic heating principle. Firstly, the paper presents a state-of-the-art review and presents the context of automobile industry where heated injectors are necessary. The novel method of electromagnetic heating principle to solve the cold-start problem is still in the development phase and it enables engine starting at low temperatures in vehicles powered by ethanol or flex-fuel vehicles (FFV). This new system technology should be available as an alternative to replace the existing system. Currently, the cold-start system uses an auxiliary gasoline tank, which brings some inconvenience for the user. Secondly, the aim was also to create a physical model that takes into consideration all the parameters involved on the heating process such as power heating and average heat transfer coefficient. The study is based on the lumped system theory to model the ethanol heating process. From the analysis, two ordinary differential equations arise, which allowed an analytical solution. Particularly, an ethanol heating curve inside the injector was obtained, an important parameter in the process. Comparison with experimental data from other authors is also provided. Finally, a sensitivity analysis of controlling parameters such as heating power and heat transfer coefficient variation. The paper is concluded with suggestions for further studies. 展开更多
关键词 ETHANOL cold-start System Electromagnetic Heating Heated Fuel Injector
暂未订购
A knowledge graph attention network for the cold-start problem in intelligent manufacturing:Interpretability and accuracy improvement
18
作者 Ziye Zhou Yuqi Zhang +5 位作者 Shuize Wang David San Martin Yongqian Liu Yang Liu Chenchong Wang Wei Xu 《Materials Genome Engineering Advances》 2025年第2期24-36,共13页
In the rolling production of steel,predicting the performance of new products is challenging due to the low variety of data distributions resulting from standardized manufacturing processes and fixed product categorie... In the rolling production of steel,predicting the performance of new products is challenging due to the low variety of data distributions resulting from standardized manufacturing processes and fixed product categories.This scenario poses a significant hurdle for machine learning models,leading to what is commonly known as the“cold-start problem”.To address this issue,we propose a knowledge graph attention neural network for steel manufacturing(SteelKGAT).By leveraging expert knowledge and a multi-head attention mechanism,SteelKGAT aims to enhance prediction accuracy.Our experimental results demonstrate that the SteelKGAT model outperforms existing methods when generalizing to previously unseen products.Only the SteelKGAT model accurately captures the feature trend,thereby offering correct guidance in product tuning,which is of practical significance for new product development(NPD).Additionally,we employ the Integrated Gradients(IG)method to shed light on the model's predictions,revealing the relative importance of each feature within the knowledge graph.Notably,this work represents the first application of knowledge graph attention neural networks to address the cold-start problem in steel rolling production.By combining domain expertise and interpretable predictions,our knowledge-informed SteelKGAT model provides accurate insights into the mechanical properties of products even in cold-start scenarios. 展开更多
关键词 attention mechanisms cold-start problem graph neural network interpretable machine learning knowledge graph materials design mechanical performance
在线阅读 下载PDF
Item Cold-Start Recommendation with Personalized Feature Selection 被引量:1
19
作者 Yi-Fan Chen Xiang Zhao +2 位作者 Jin-Yuan Liu Bin Ge Wei-Ming Zhang 《Journal of Computer Science & Technology》 SCIE EI CSCD 2020年第5期1217-1230,共14页
The problem of recommending new items to users(often referred to as item cold-start recommendation)remains a challenge due to the absence of users’past preferences for these items.Item features from side information ... The problem of recommending new items to users(often referred to as item cold-start recommendation)remains a challenge due to the absence of users’past preferences for these items.Item features from side information are typically leveraged to tackle the problem.Existing methods formulate regression methods,taking item features as input and user ratings as output.These methods are confronted with the issue of overfitting when item features are high-dimensional,which greatly impedes the recommendation experience.Availing of high-dimensional item features,in this work,we opt for feature selection to solve the problem of recommending top-N new items.Existing feature selection methods find a common set of features for all users,which fails to differentiate users1 preferences over item features.To personalize feature selection,we propose to select item features discriminately for different users.We study the personalization of feature selection at the level of the user or user group.We fulfill the task by proposing two embedded feature selection models.The process of personalized feature selection filters out the dimensions that are irrelevant to recommendations or unappealing to users.Experimental results on real-life datasets with high-dimensional side information reveal that the proposed method is effective in singling out features that are crucial to top-N recommendation and hence improving performance. 展开更多
关键词 high-dimensionality item cold-start top-TV recommendation personalized feature selection
原文传递
Application of self-adaptive temperature recognition in cold-start of an air-cooled proton exchange membrane fuel cell stack 被引量:3
20
作者 Xianxian Yu Huawei Chang +2 位作者 Junjie Zhao Zhengkai Tu Siew Hwa Chan 《Energy and AI》 2022年第3期12-23,共12页
The Self-adaptive control of the temperature can achieve the start of fuel cell at different operating temperatures, which is very important for the successful cold-start of the air-cooled PEMFC. The temperature distr... The Self-adaptive control of the temperature can achieve the start of fuel cell at different operating temperatures, which is very important for the successful cold-start of the air-cooled PEMFC. The temperature distribution characteristics during the cold-start process were analyzed based on adaptive temperature recognition control in this paper. Preheating model and cold-start model were established and the optimal balance between the hot air flow rate and the temperature required to promote a uniform temperature distribution in the stack was explored in the preheating stage. Finally, the non-equilibrium mass transfer, as well as the temperature rise in the catalyst layer and gas diffusion layer with different current densities, were analyzed in the start-up stage. The results indicate that the air-cooled PEMFC stack can be successfully started up at -40 ◦C within 10 min by means of external gas heating. The current density and air velocity have significant impacts on the temperature of aircooled PEMFC stack. Dynamic analysis of air-cooled PEMFCs and real-time monitoring are suitable for machine learning and self-adaptive control to set the operation parameters to achieve successful cold start. Optimize the matching of load current and cathode inlet speed to achieve thermal management in low temperature environment. 展开更多
关键词 Proton exchange membrane fuel cell Air-cooled stack Metallic bipolar plate cold-start Gas heating
在线阅读 下载PDF
上一页 1 2 下一页 到第
使用帮助 返回顶部