开课单位--西蒙弗雷泽大学
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Motion planning of multiple agents in virtual environments[虚拟环境中多智能体的运动规划]
Kamal Gupta;Yi Li(西蒙弗雷泽大学) Describes and demonstrates in simulation the use of coordination graphs to avoid collisions of multiple agents in tasks requiring motion of multiple a...
热度:27
Kamal Gupta;Yi Li(西蒙弗雷泽大学) Describes and demonstrates in simulation the use of coordination graphs to avoid collisions of multiple agents in tasks requiring motion of multiple a...
热度:27
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Joint Cluster Analysis of Attribute and Relationship Data Without Priori Specification of the Number of Clusters [属性和关系数据的联合聚类分析没有群集数的先验的规范]
Flavia Moser(西蒙弗雷泽大学) 在许多应用中,属性和关系的数据是可用的,携带的互补信息的真实世界的实体。在这种情况下,一个联合分析两种类型的数据可以得到比经典的聚类算法,要么只使用属...
热度:56
Flavia Moser(西蒙弗雷泽大学) 在许多应用中,属性和关系的数据是可用的,携带的互补信息的真实世界的实体。在这种情况下,一个联合分析两种类型的数据可以得到比经典的聚类算法,要么只使用属...
热度:56
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Boosting with Incomplete Information[不完全信息的提高]
Yang Wang(西蒙弗雷泽大学) In real-world machine learning problems, it is very common that part of the input feature vector is incomplete: either not available, missing, or corr...
热度:45
Yang Wang(西蒙弗雷泽大学) In real-world machine learning problems, it is very common that part of the input feature vector is incomplete: either not available, missing, or corr...
热度:45
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Neighbor Query Friendly Compression of Social Networks[社交网络的邻居查询友好压缩]
Hossein Maserrat(西蒙弗雷泽大学) Compressing social networks can substantially facilitate mining and advanced analysis of large social networks. Preferably, social networks should be ...
热度:62
Hossein Maserrat(西蒙弗雷泽大学) Compressing social networks can substantially facilitate mining and advanced analysis of large social networks. Preferably, social networks should be ...
热度:62
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A Multi-Relational Approach to Spatial Classification[一种空间分类的多关系方法]
Richard Frank(西蒙弗雷泽大学) Spatial classification is the task of learning models to predict class labels based on the features of entities as well as the spatial relationships t...
热度:46
Richard Frank(西蒙弗雷泽大学) Spatial classification is the task of learning models to predict class labels based on the features of entities as well as the spatial relationships t...
热度:46
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Specularity and Shadow Interpolation via Robust Polynomial Texture Maps[通过强大的高光和阴影插值多项式纹理]
Nasim Hajari(西蒙弗雷泽大学) 通过强大的高光和阴影插值多项式纹理
热度:36
Nasim Hajari(西蒙弗雷泽大学) 通过强大的高光和阴影插值多项式纹理
热度:36
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Cleaning Disguised Missing Data: A Heuristic Approach [清洗伪装丢失数据:一种启发式方法 ]
Jian Pei(西蒙弗雷泽大学) In some applications such as filling in a customer information form on the web, some missing values may not be explicitly represented as such, but ins...
热度:66
Jian Pei(西蒙弗雷泽大学) In some applications such as filling in a customer information form on the web, some missing values may not be explicitly represented as such, but ins...
热度:66
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Mining Uncertain and Probabilistic Data: problems, Challenges, Methods, and Applications[挖掘不确定和概率数据:问题、挑战、方法和应用]
Jian Pei, Ming Hua(西蒙弗雷泽大学 ) Uncertain data are inherent in some important applications, such as environmental surveillance, market analysis, and quantitative economics research. ...
热度:39
Jian Pei, Ming Hua(西蒙弗雷泽大学 ) Uncertain data are inherent in some important applications, such as environmental surveillance, market analysis, and quantitative economics research. ...
热度:39
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Constraint-Driven Clustering [约束驱动的聚类]
Rong Ge(西蒙弗雷泽大学) Clustering methods can be either data-driven or need-driven. Data-driven methods intend to discover the true structure of the underlying data while ne...
热度:48
Rong Ge(西蒙弗雷泽大学) Clustering methods can be either data-driven or need-driven. Data-driven methods intend to discover the true structure of the underlying data while ne...
热度:48
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Saliency-Cognizant Error Concealment In Loss-Corrupted Streaming Video[丢失损坏的流媒体视频中的显着性 - 认知错误隐藏]
Hadi Hadizadeh(西蒙弗雷泽大学) Error concealment in packet-loss-corrupted streaming video is inherently an under-determined problem, as there are insufficient number of well-defined...
热度:44
Hadi Hadizadeh(西蒙弗雷泽大学) Error concealment in packet-loss-corrupted streaming video is inherently an under-determined problem, as there are insufficient number of well-defined...
热度:44
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