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Tourism Route Recommendation Based on A Multi-Objective Evolutionary Algorithm Using Two-Stage Decomposition and Pareto Layering 被引量:1
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作者 Xiaoyao Zheng Baoting Han Zhen Ni 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2023年第2期486-500,共15页
Tourism route planning is widely applied in the smart tourism field.The Pareto-optimal front obtained by the traditional multi-objective evolutionary algorithm exhibits long tails,sharp peaks and disconnected regions ... Tourism route planning is widely applied in the smart tourism field.The Pareto-optimal front obtained by the traditional multi-objective evolutionary algorithm exhibits long tails,sharp peaks and disconnected regions problems,which leads to uneven distribution and weak diversity of optimization solutions of tourism routes.Inspired by these limitations,we propose a multi-objective evolutionary algorithm for tourism route recommendation(MOTRR)with two-stage and Pareto layering based on decomposition.The method decomposes the multiobjective problem into several subproblems,and improves the distribution of solutions through a two-stage method.The crowding degree mechanism between extreme and intermediate populations is used in the two-stage method.The neighborhood is determined according to the weight of the subproblem for crossover mutation.Finally,Pareto layering is used to improve the updating efficiency and population diversity of the solution.The two-stage method is combined with the Pareto layering structure,which not only maintains the distribution and diversity of the algorithm,but also avoids the same solutions.Compared with several classical benchmark algorithms,the experimental results demonstrate competitive advantages on five test functions,hypervolume(HV)and inverted generational distance(IGD)metrics.Using the experimental results of real scenic spot datasets from two famous tourism social networking sites with vast amounts of users and large-scale online comments in Beijing,our proposed algorithm shows better distribution.It proves that the tourism routes recommended by our proposed algorithm have better distribution and diversity,so that the recommended routes can better meet the personalized needs of tourists. 展开更多
关键词 Evolutionary algorithm multi-objective optimization Pareto optimization tourism route recommendation two-stage decomposition
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Existing Problems and Recommendations for Cultivation of Agricultural Science and Technology Talents in China 被引量:1
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作者 Hongxin LI Qunzhen QU 《Asian Agricultural Research》 2014年第10期61-63,67,共4页
China is a large agricultural country. Healthy and rapid development of agriculture plays an important role in overall socialist construction of China. To realize sustainable agricultural development,cultivation of ag... China is a large agricultural country. Healthy and rapid development of agriculture plays an important role in overall socialist construction of China. To realize sustainable agricultural development,cultivation of agricultural science and technology innovation talents should be strengthened. Through analyzing existing problems in cultivation of agricultural science and technology innovation talents and combining actual situation of China's agricultural development,this paper came up with pertinent recommendations for strengthening China's agricultural science and technology talent cultivation,including improving agricultural science and technology innovation talent cultivation system,implementing " government- industry- university- institute" talent cultivation mode,speeding up construction of experimental teaching demonstration center,and applying human resource theories. 展开更多
关键词 AGRICULTURE CURRENT SITUATIONS and PROBLEMS Scient
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Present Situation, Existing Problems and Recommendations for Orchard Fertilization Technology
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作者 Shuwei WEI Shaomin WANG +5 位作者 Yao TONG Xiaochang DONG Ran DONG Hongwei WANG Kun RAN Yong ZHANG 《Asian Agricultural Research》 2019年第12期75-77,81,共4页
This paper summarizes the development process and research status of orchard fertilization technology,introduces many kinds of fertilization methods,such as soil testing and fertilizer recommendation method,and nutrit... This paper summarizes the development process and research status of orchard fertilization technology,introduces many kinds of fertilization methods,such as soil testing and fertilizer recommendation method,and nutrition diagnosis method,probes into the main problems existing in orchard fertilization,and puts forward some suggestions for solving them. The development of orchard fertilization technology in China is also projected. 展开更多
关键词 ORCHARD FERTILIZATION technology recommendationS
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Recommendation Algorithm Integrating CNN and Attention System in Data Extraction
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作者 Yang Li Fei Yin Xianghui Hui 《Computers, Materials & Continua》 SCIE EI 2023年第5期4047-4063,共17页
With the rapid development of the Internet globally since the 21st century,the amount of data information has increased exponentially.Data helps improve people’s livelihood and working conditions,as well as learning ... With the rapid development of the Internet globally since the 21st century,the amount of data information has increased exponentially.Data helps improve people’s livelihood and working conditions,as well as learning efficiency.Therefore,data extraction,analysis,and processing have become a hot issue for people from all walks of life.Traditional recommendation algorithm still has some problems,such as inaccuracy,less diversity,and low performance.To solve these problems and improve the accuracy and variety of the recommendation algorithms,the research combines the convolutional neural networks(CNN)and the attention model to design a recommendation algorithm based on the neural network framework.Through the text convolutional network,the input layer in CNN has transformed into two channels:static ones and non-static ones.Meanwhile,the self-attention system focuses on the system so that data can be better processed and the accuracy of feature extraction becomes higher.The recommendation algorithm combines CNN and attention system and divides the embedding layer into user information feature embedding and data name feature extraction embedding.It obtains data name features through a convolution kernel.Finally,the top pooling layer obtains the length vector.The attention system layer obtains the characteristics of the data type.Experimental results show that the proposed recommendation algorithm that combines CNN and the attention system can perform better in data extraction than the traditional CNN algorithm and other recommendation algorithms that are popular at the present stage.The proposed algorithm shows excellent accuracy and robustness. 展开更多
关键词 Data extraction recommendation algorithm CNN algorithm attention model
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Improving Recommendation for Effective Personalization in Context-Aware Data Using Novel Neural Network
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作者 R.Sujatha T.Abirami 《Computer Systems Science & Engineering》 SCIE EI 2023年第8期1775-1787,共13页
The digital technologies that run based on users’content provide a platform for users to help air their opinions on various aspects of a particular subject or product.The recommendation agents play a crucial role in ... The digital technologies that run based on users’content provide a platform for users to help air their opinions on various aspects of a particular subject or product.The recommendation agents play a crucial role in personalizing the needs of individual users.Therefore,it is essential to improve the user experience.The recommender system focuses on recommending a set of items to a user to help the decision-making process and is prevalent across e-commerce and media websites.In Context-Aware Recommender Systems(CARS),several influential and contextual variables are identified to provide an effective recommendation.A substantial trade-off is applied in context to achieve the proper accuracy and coverage required for a collaborative recommendation.The CARS will generate more recommendations utilizing adapting them to a certain contextual situation of users.However,the key issue is how contextual information is used to create good and intelligent recommender systems.This paper proposes an Artificial Neural Network(ANN)to achieve contextual recommendations based on usergenerated reviews.The ability of ANNs to learn events and make decisions based on similar events makes it effective for personalized recommendations in CARS.Thus,the most appropriate contexts in which a user should choose an item or service are achieved.This work converts every label set into a Multi-Label Classification(MLC)problem to enhance recommendations.Experimental results show that the proposed ANN performs better in the Binary Relevance(BR)Instance-Based Classifier,the BR Decision Tree,and the Multi-label SVM for Trip Advisor and LDOS-CoMoDa Dataset.Furthermore,the accuracy of the proposed ANN achieves better results by 1.1%to 6.1%compared to other existing methods. 展开更多
关键词 recommendation agents context-aware recommender systems collaborative recommendation personalization systems optimized neural network-based contextual recommendation algorithm
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Short Video Recommendation Algorithm Incorporating Temporal Contextual Information and User Context
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作者 Weihua Liu Haoyang Wan Boyuan Yan 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第4期239-258,共20页
With the popularity of 5G and the rapid development of mobile terminals,an endless stream of short video software exists.Browsing short-form mobile video in fragmented time has become the mainstream of user’s life.He... With the popularity of 5G and the rapid development of mobile terminals,an endless stream of short video software exists.Browsing short-form mobile video in fragmented time has become the mainstream of user’s life.Hence,designing an efficient short video recommendation method has become important for major network platforms to attract users and satisfy their requirements.Nevertheless,the explosive growth of data leads to the low efficiency of the algorithm,which fails to distill users’points of interest on one hand effectively.On the other hand,integrating user preferences and the content of items urgently intensify the requirements for platform recommendation.In this paper,we propose a collaborative filtering algorithm,integrating time context information and user context,which pours attention into expanding and discovering user interest.In the first place,we introduce the temporal context information into the typical collaborative filtering algorithm,and leverage the popularity penalty function to weight the similarity between recommended short videos and the historical short videos.There remains one more point.We also introduce the user situation into the traditional collaborative filtering recommendation algorithm,considering the context information of users in the generation recommendation stage,and weight the recommended short-formvideos of candidates.At last,a diverse approach is used to generate a Top-K recommendation list for users.And through a case study,we illustrate the accuracy and diversity of the proposed method. 展开更多
关键词 recommendation algorithm user contexts short video temporal contextual information
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Explainable Rules and Heuristics in AI Algorithm Recommendation Approaches——A Systematic Literature Review and Mapping Study
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作者 Francisco JoséGarcía-Penlvo Andrea Vázquez-Ingelmo Alicia García-Holgado 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第8期1023-1051,共29页
The exponential use of artificial intelligence(AI)to solve and automated complex tasks has catapulted its popularity generating some challenges that need to be addressed.While AI is a powerfulmeans to discover interes... The exponential use of artificial intelligence(AI)to solve and automated complex tasks has catapulted its popularity generating some challenges that need to be addressed.While AI is a powerfulmeans to discover interesting patterns and obtain predictive models,the use of these algorithms comes with a great responsibility,as an incomplete or unbalanced set of training data or an unproper interpretation of the models’outcomes could result in misleading conclusions that ultimately could become very dangerous.For these reasons,it is important to rely on expert knowledge when applying these methods.However,not every user can count on this specific expertise;non-AIexpert users could also benefit from applying these powerful algorithms to their domain problems,but they need basic guidelines to obtain themost out of AI models.The goal of this work is to present a systematic review of the literature to analyze studies whose outcomes are explainable rules and heuristics to select suitable AI algorithms given a set of input features.The systematic review follows the methodology proposed by Kitchenham and other authors in the field of software engineering.As a result,9 papers that tackle AI algorithmrecommendation through tangible and traceable rules and heuristics were collected.The reduced number of retrieved papers suggests a lack of reporting explicit rules and heuristics when testing the suitability and performance of AI algorithms. 展开更多
关键词 SLR systematic literature review artificial intelligence machine learning algorithm recommendation HEURISTICS explainability
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Blockchain technology‑based FinTech banking sector involvement using adaptive neuro‑fuzzy‑based K‑nearest neighbors algorithm
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作者 Husam Rjoub Tomiwa Sunday Adebayo Dervis Kirikkaleli 《Financial Innovation》 2023年第1期1765-1787,共23页
The study aims to investigate the financial technology(FinTech)factors influencing Chinese banking performance.Financial expectations and global realities may be changed by FinTech’s multidimensional scope,which is l... The study aims to investigate the financial technology(FinTech)factors influencing Chinese banking performance.Financial expectations and global realities may be changed by FinTech’s multidimensional scope,which is lacking in the traditional financial sector.The use of technology to automate financial services is becoming more important for economic organizations and industries because the digital age has seen a period of transition in terms of consumers and personalization.The future of FinTech will be shaped by technologies like the Internet of Things,blockchain,and artificial intelligence.The involvement of these platforms in financial services is a major concern for global business growth.FinTech is becoming more popular with customers because of such benefits.FinTech has driven a fundamental change within the financial services industry,placing the client at the center of everything.Protection has become a primary focus since data are a component of FinTech transactions.The task of consolidating research reports for consensus is very manual,as there is no standardized format.Although existing research has proposed certain methods,they have certain drawbacks in FinTech payment systems(including cryptocurrencies),credit markets(including peer-to-peer lending),and insurance systems.This paper implements blockchainbased financial technology for the banking sector to overcome these transition issues.In this study,we have proposed an adaptive neuro-fuzzy-based K-nearest neighbors’algorithm.The chaotic improved foraging optimization algorithm is used to optimize the proposed method.The rolling window autoregressive lag modeling approach analyzes FinTech growth.The proposed algorithm is compared with existing approaches to demonstrate its efficiency.The findings showed that it achieved 91%accuracy,90%privacy,96%robustness,and 25%cyber-risk performance.Compared with traditional approaches,the recommended strategy will be more convenient,safe,and effective in the transition period. 展开更多
关键词 FinTech Economic growth Blockchain technology Adaptive neural fuzzy based KNN algorithm Rolling window autoregressive lag modelling
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个性化推荐算法的法律风险规制 被引量:1
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作者 谢永江 杨永兴 刘涛 《北京科技大学学报(社会科学版)》 2024年第1期77-85,共9页
信息爆发增长催生了个性化推荐算法技术的兴起。个性化推荐算法在解决信息过载和长尾问题、满足用户个性化需求、提高互联网信息服务效率的同时,也引发了用户意思自治受限、隐私泄露、信息茧房、算法歧视等诸多法律风险,亟需法律作出必... 信息爆发增长催生了个性化推荐算法技术的兴起。个性化推荐算法在解决信息过载和长尾问题、满足用户个性化需求、提高互联网信息服务效率的同时,也引发了用户意思自治受限、隐私泄露、信息茧房、算法歧视等诸多法律风险,亟需法律作出必要的回应。为此,应当在诚信原则、自主原则、公正原则、比例原则的指导下,树立开放的隐私保护观,强化算法告知义务与用户拒绝权利,完善算法解释权,构建算法审计制度,以降低个性化推荐算法所带来的法律风险。 展开更多
关键词 个性化推荐 算法 法律风险 法律规制
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The Symbiotic Relationship Unraveling the Interplay between Technology and Artificial Intelligence(An Intelligent Dynamic Relationship)
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作者 Bahman Zohuri Farhang Mossavar-Rahmani 《Journal of Energy and Power Engineering》 2023年第2期63-68,共6页
This article investigates the dynamic relationship between technology and AI(artificial intelligence)and the role that societal requirements play in pushing AI research and adoption.Technology has advanced dramaticall... This article investigates the dynamic relationship between technology and AI(artificial intelligence)and the role that societal requirements play in pushing AI research and adoption.Technology has advanced dramatically throughout the years,providing the groundwork for the rise of AI.AI systems have achieved incredible feats in various disciplines thanks to advancements in computer power,data availability,and complex algorithms.On the other hand,society’s needs for efficiency,enhanced healthcare,environmental sustainability,and personalized experiences have worked as powerful accelerators for AI’s progress.This article digs into how technology empowers AI and how societal needs dictate its progress,emphasizing their symbiotic relationship.The findings underline the significance of responsible AI research,which considers both technological prowess and ethical issues,to ensure that AI continues to serve the greater good. 展开更多
关键词 technology AI SOCIETY evolution advancements computing power data availability algorithms efficiency healthcare environmental sustainability personalized experiences automation machine learning natural language processing image recognition predictive analysis cloud computing BD(big data) user experience innovation ethical considerations responsible AI development
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算法嵌入政府治理:逻辑、风险与规制 被引量:1
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作者 周晓丽 姬晓暄 《西安交通大学学报(社会科学版)》 北大核心 2024年第1期52-61,共10页
伴随着现代信息技术的迅猛发展,智能算法在推动经济社会不断发展的同时也成为推动国家治理现代化的重要驱动力。现阶段如何推进算法技术更有效地嵌入政府治理,在充分发挥技术效益的同时反制技术滥用,实现公共价值最大化目标是亟须关注... 伴随着现代信息技术的迅猛发展,智能算法在推动经济社会不断发展的同时也成为推动国家治理现代化的重要驱动力。现阶段如何推进算法技术更有效地嵌入政府治理,在充分发挥技术效益的同时反制技术滥用,实现公共价值最大化目标是亟须关注的时代命题。从“技术—权力—规则”三个维度搭建研究算法嵌入政府治理的分析框架,探索算法技术赋能政府治理的价值意蕴与运作逻辑。聚焦算法技术黑箱阻滞公共责任认定、算法权力削弱政府与民众自主性、算法规则偏好导致治理正义性减损等风险与挑战,提出在实践中要推进技术适度透明化以明晰责任关系链条、规范算法权力运作并坚持人本主义治理理念、明确算法规则决策限度以强化治理正义性等实践进路。 展开更多
关键词 算法 政府治理 算法技术 算法规则 算法权力
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“共赢”vs.“牺牲”:道德消费叙述框架对消费者算法推荐信任的影响
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作者 徐岚 陈全 +1 位作者 崔楠 辜红 《心理学报》 CSCD 北大核心 2024年第2期179-193,共15页
消费者在做出道德消费选择时,要面对丰富的道德产品,复杂地权衡功利利益和道德利益。算法决策推荐可以减轻道德消费决策的复杂性,但是消费者在涉及道德伦理的权衡决策中对算法存在不信任,因为算法是一种典型的以功利论来处理道德权衡问... 消费者在做出道德消费选择时,要面对丰富的道德产品,复杂地权衡功利利益和道德利益。算法决策推荐可以减轻道德消费决策的复杂性,但是消费者在涉及道德伦理的权衡决策中对算法存在不信任,因为算法是一种典型的以功利论来处理道德权衡问题的方式。本研究提出采用“共赢”(vs.“牺牲”)叙述框架对道德消费中的算法推荐信任有积极影响,消费者对功利论式道德观念的接受程度中介了上述积极效应。实验1发现“共赢”(vs.“牺牲”)叙述框架会增加消费者选择算法推荐的意愿。实验2验证了“共赢”(vs.“牺牲”)叙述框架对消费者算法推荐信任的正向影响,以及功利论式道德观念接受度的中介作用。实验3进一步识别了上述影响的边界条件,即道德消费的“共赢”(vs.“牺牲”)叙述框架仅会增强消费者对算法替代型决策推荐的信任,但是并不会改变消费者对于算法增强型决策推荐信任。 展开更多
关键词 道德消费 算法推荐 道义论 功利论 框架效应
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数字资源的信息过滤与精准推荐算法
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作者 郭笃凌 闫长青 《印刷与数字媒体技术研究》 CAS 北大核心 2024年第1期113-121,共9页
为了解决如何利用无限容量的数字资源与有限的用户信息及时而精准地向用户推荐可用的电子资源等问题,本研究设计了一种可以过滤不良信息的准确推荐算法。该算法为基于协同过滤与内容推荐的混合推荐算法,其中,协同过滤算法提取用户的特征... 为了解决如何利用无限容量的数字资源与有限的用户信息及时而精准地向用户推荐可用的电子资源等问题,本研究设计了一种可以过滤不良信息的准确推荐算法。该算法为基于协同过滤与内容推荐的混合推荐算法,其中,协同过滤算法提取用户的特征,计算用户间的相似度并对相应的资源进行打分估计从而根据估分进行推荐;而基于内容推荐的算法用于处理用户无法求算相似度的冷启动问题,不良信息利用基于内容推荐的算法提取关键词并与不良关键词库对照,然后从前述推荐结果去掉不良信息;算法还考虑了用户兴趣随时间变化的问题。使用大规模图书馆数字资源数据集对本研究算法进行测试,结果表明,使用本研究算法,邻居数的增加对推荐精度有改善作用;对使用平均相似度和加权相似度的结果比较表明,加权相似度可以获得更好的推荐效果;加入时间因素,可以有效改进推荐精度,进而实现了对不良信息的过滤,保证了资源的质量。本研究算法基本实现了精准推荐,可适用于大数据环境下数字资源的推荐操作。 展开更多
关键词 数字资源 推荐系统 相似性度量 混合推荐算法
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基于元学习个性化推荐研究综述
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作者 吴国栋 刘旭旭 +2 位作者 毕海娇 范维成 涂立静 《计算机工程与科学》 CSCD 北大核心 2024年第2期338-352,共15页
推荐系统作为缓解“信息过载”的工具,为用户过滤冗余信息并提供个性化服务,近年来得到了广泛应用。然而,实际推荐场景中,通常存在冷启动与不同推荐算法难以根据实际环境自适应选择等问题。元学习因其具有基于少量训练样本快速学会新知... 推荐系统作为缓解“信息过载”的工具,为用户过滤冗余信息并提供个性化服务,近年来得到了广泛应用。然而,实际推荐场景中,通常存在冷启动与不同推荐算法难以根据实际环境自适应选择等问题。元学习因其具有基于少量训练样本快速学会新知识和技能的优点,被越来越多地应用于推荐系统相关研究中。对现有基于元学习技术缓解推荐系统冷启动问题以及自适应推荐问题的主要研究进行探讨。首先,分析了基于元学习推荐在上述2个方面已取得的相关研究进展;然后,指出了现有元学习推荐研究存在难以适应复杂任务分布、计算代价高和容易陷入局部最优等问题;最后,对元学习在推荐系统领域的一些最新研究方向进行了展望。 展开更多
关键词 元学习 个性化推荐 冷启动 自适应算法选择
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如何实现“黑箱”下的算法治理?——平台推荐算法监管的测量实验与策略探索
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作者 张楠 闫涛 张腾 《公共行政评论》 北大核心 2024年第1期25-44,M0003,共21页
近年来,平台推荐算法的快速发展和广泛应用深刻改变了互联网信息内容的供给方式,同时也引发了一系列算法风险与现实问题。平台推荐算法治理与监管成为政府规范算法应用的重点内容之一,无论是算法备案制度的探索,还是实现算法透明化的设... 近年来,平台推荐算法的快速发展和广泛应用深刻改变了互联网信息内容的供给方式,同时也引发了一系列算法风险与现实问题。平台推荐算法治理与监管成为政府规范算法应用的重点内容之一,无论是算法备案制度的探索,还是实现算法透明化的设想,均面临着一定的困难和挑战。在不打开算法“黑箱”的前提下,平台推荐算法规制与监管是否有可行之道?论文基于机器行为学思想,采用实验方法,以用户视角对推荐结果进行跟踪记录,通过实验数据的对比分析,验证了平台推荐算法结果差异的可测性。基于实验结果,论文提出了通过对不同平台推荐结果进行大规模数据测试和检验,测量平台推荐算法运行逻辑与推荐效果,从而实现“黑箱”下有效的逆向监管,以期丰富未来算法治理的选择。 展开更多
关键词 推荐算法 算法治理 算法监管 机器行为学
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算法推荐技术赋能青少年民族团结进步教育的逻辑理路、价值意蕴与实践路径
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作者 田钒平 曹媛媛 《湖北民族大学学报(哲学社会科学版)》 北大核心 2024年第1期1-10,共10页
算法推荐技术是引领新时代青少年民族团结进步教育高质量开展的新兴力量。算法推荐技术与青少年民族团结进步教育在条件、过程、结果上的关联耦合,为充分发挥算法推荐技术的积极功能,提升青少年民族团结进步教育实效,提供了适切性与可... 算法推荐技术是引领新时代青少年民族团结进步教育高质量开展的新兴力量。算法推荐技术与青少年民族团结进步教育在条件、过程、结果上的关联耦合,为充分发挥算法推荐技术的积极功能,提升青少年民族团结进步教育实效,提供了适切性与可行性。通过精准传递、精准生产、精准过滤等优势赋能,算法推荐技术可以助力青少年民族团结进步教育实现对象大众化、内容智慧化和方式生活化。深化算法推荐理念认识、加强算法推荐素养教育、健全算法推荐技术规范,可以促进算法推荐技术势能充分释放,使之成为青少年民族团结进步教育现代化的强大技术支撑。 展开更多
关键词 算法推荐技术 青少年民族团结进步教育 教育数字化 算法治理
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高职院校奖助金推荐系统研究及资助对象行为分析
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作者 严志 王涛 《湖南邮电职业技术学院学报》 2024年第1期56-60,共5页
随着高校数字化建设的不断深入,如何从海量教育数据中挖掘出与奖助金评判相关的数据及评判方法值得深思。以学生在校成绩、消费情况、贫困程度、社团活动、奖惩及竞赛等数据为基础,设计奖助金推荐系统,以决策树算法为依托,对学生的奖助... 随着高校数字化建设的不断深入,如何从海量教育数据中挖掘出与奖助金评判相关的数据及评判方法值得深思。以学生在校成绩、消费情况、贫困程度、社团活动、奖惩及竞赛等数据为基础,设计奖助金推荐系统,以决策树算法为依托,对学生的奖助金评判进行分析研究,并对获评对象在校活动进行监督分析,结果表明奖助金推荐系统可以为高校决策提供管理依据。 展开更多
关键词 奖助金 推荐系统 决策树算法 行为分析
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著作权视域下深度合成算法技术的法律规制 被引量:1
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作者 蔡琳 杨广军 《西北工业大学学报(社会科学版)》 2024年第1期108-119,共12页
深度合成算法技术由于其趣味性与便捷性,满足了民众的多元化需求,集中应用于社交媒体、影视娱乐等领域。然而,深度合成算法技术激发用户创新内容的同时,在著作权领域也引发了一系列困境与挑战。通过梳理分析现行著作权法难以将深度合成... 深度合成算法技术由于其趣味性与便捷性,满足了民众的多元化需求,集中应用于社交媒体、影视娱乐等领域。然而,深度合成算法技术激发用户创新内容的同时,在著作权领域也引发了一系列困境与挑战。通过梳理分析现行著作权法难以将深度合成物纳入“作品”的范畴、现行合理使用制度难以判定对原作品的“深度合成行为”以及现行著作权法难以协调深度合成“作品”与原作品的保护边界这三大亟待解决的困境,并提出相应的著作权法规制路径,从而实现著作权保护与深度合成算法技术应用的平衡发展。 展开更多
关键词 深度合成算法技术 著作权法 困境 法律规制
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服装个性化定制中信息技术的应用与展望
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作者 王静 王小艺 +1 位作者 兰翠芹 许继平 《丝绸》 CAS CSCD 北大核心 2024年第1期96-108,共13页
随着人们个性化需求的不断增加,服装个性化定制已成为时尚发展趋势之一。信息技术在推动服装个性化定制发展中扮演着重要的角色,可以收集和处理用户的个性化信息,并将其转化为具体的设计和生产方案。文章首先对服装产业信息技术的研究... 随着人们个性化需求的不断增加,服装个性化定制已成为时尚发展趋势之一。信息技术在推动服装个性化定制发展中扮演着重要的角色,可以收集和处理用户的个性化信息,并将其转化为具体的设计和生产方案。文章首先对服装产业信息技术的研究进展进行总结,阐述新一代信息技术在服装产业的应用情况;其次分析了信息技术在服装个性化定制领域的应用现状,按照定制流程分别总结信息技术在提高生产效率、降低成本和满足用户需求方面的优势及不足;最后根据目前服装个性化定制在数据共享、协同设计和柔性生产等方面的需求,从建模技术和系统平台构建两个方面对服装个性化定制发展进行展望。 展开更多
关键词 服装产业 信息技术 个性化定制 用户需求 个性化设计与推荐 智能生产
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社交媒体时代“回音室”与“过滤泡”之辨析
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作者 蒋忠波 薛丹阳 《新闻与传播评论》 北大核心 2024年第3期101-114,共14页
在国内研究对信息茧房、回音室、过滤泡三者概念常常混用的情况下,相较于信息茧房较高的关注度,国内对后两者的研究还远远不够,二者的异同也未得到细致辨析。经过对回音室、过滤泡相关研究进行文献计量分析,并从概念提出的背景、概念的... 在国内研究对信息茧房、回音室、过滤泡三者概念常常混用的情况下,相较于信息茧房较高的关注度,国内对后两者的研究还远远不够,二者的异同也未得到细致辨析。经过对回音室、过滤泡相关研究进行文献计量分析,并从概念提出的背景、概念的内涵、操作化和研究结论方面深入辨析,发现二者概念的相同点在于:它们所描述的信息环境是相似的,即在网络技术的支持之下,一个由与个体喜好/倾向相匹配的同质化信息构成的信息环境。而不同之处在于:回音室强调受众主动选择与己具有相同倾向的个体进行交流互动,从而陷入只能听到自己声音的回音室中,其实质是观点同质化,所导致的后果是受众观点的极化,受众本身常被视为是主动性的;过滤泡强调算法推荐导致受众陷入同质化信息环境之中,其实质是信息接触单一化,导致的主要后果包括受众认知的窄化和观点的极化,受众往往被视为是被动性的。 展开更多
关键词 回音室 过滤泡 算法推荐
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