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ACM SIGSPATIAL GIS 2017 : 25th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems : November 7-November 10, 2017, Redondo Beach, California, USA / / Erik Hoel [and four others], editors
ACM SIGSPATIAL GIS 2017 : 25th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems : November 7-November 10, 2017, Redondo Beach, California, USA / / Erik Hoel [and four others], editors
Pubbl/distr/stampa New York : , : ACM, , 2017
Descrizione fisica 1 online resource (677 pages)
Disciplina 910.285
Soggetto topico Geographic information systems
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Altri titoli varianti Association for Computing Machinery Special Interest Group on Spatial Information Geographic Information Systems 2017 : 25th Association for Computing Machinery Special Interest Group on Spatial Information International Conference on Advances in Geographic Information Systems : November 7-November 10, 2017, Redondo Beach, California, United States of America
Association for Computing Machinery Special Interest Group on Spatial Information Geographic Information Systems 2017
Proceedings of the 25th ACM SIGSPATIAL International Conference on Advances in Geographic Information Systems
Proceedings of the 25th Association for Computing Machinery Special Interest Group on Spatial Information International Conference on Advances in Geographic Information Systems
Record Nr. UNINA-9910376033603321
New York : , : ACM, , 2017
Materiale a stampa
Lo trovi qui: Univ. Federico II
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Advances in Spatial and Temporal Databases [[electronic resource] ] : 15th International Symposium, SSTD 2017, Arlington, VA, USA, August 21 – 23, 2017, Proceedings / / edited by Michael Gertz, Matthias Renz, Xiaofang Zhou, Erik Hoel, Wei-Shinn Ku, Agnes Voisard, Chengyang Zhang, Haiquan Chen, Liang Tang, Yan Huang, Chang-Tien Lu, Siva Ravada
Advances in Spatial and Temporal Databases [[electronic resource] ] : 15th International Symposium, SSTD 2017, Arlington, VA, USA, August 21 – 23, 2017, Proceedings / / edited by Michael Gertz, Matthias Renz, Xiaofang Zhou, Erik Hoel, Wei-Shinn Ku, Agnes Voisard, Chengyang Zhang, Haiquan Chen, Liang Tang, Yan Huang, Chang-Tien Lu, Siva Ravada
Edizione [1st ed. 2017.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2017
Descrizione fisica 1 online resource (XIV, 454 p. 206 illus.)
Disciplina 005.74
Collana Information Systems and Applications, incl. Internet/Web, and HCI
Soggetto topico Database management
Artificial intelligence
Computer science—Mathematics
Data mining
Database Management
Artificial Intelligence
Discrete Mathematics in Computer Science
Data Mining and Knowledge Discovery
ISBN 3-319-64367-3
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Intro -- Preface -- Organization -- Contents -- Routing and Trajectories -- Multi-user Itinerary Planning for Optimal Group Preference -- 1 Introduction -- 2 Problem Definition and Preliminaries -- 3 Proposed Solutions -- 3.1 Meeting Graph and Node Profit -- 3.2 Greedy Itinerary Construction -- 3.3 Optimal Itinerary Construction -- 3.4 Acceleration via Graph Compression -- 4 Related Work -- 5 Experiments -- 5.1 Experiment Design -- 5.2 Experimental Results -- 6 Discussions and Conclusion -- References -- Hybrid Best-First Greedy Search for Orienteering with Category Constraints -- 1 Introduction -- 2 Related Work -- 3 Problem Formalization -- 4 Best-First Search Strategy -- 4.1 Potential Score -- 4.2 Our Algorithm -- 4.3 Further Optimizations -- 5 Approximation Algorithms -- 5.1 Bounding the Score -- 5.2 Bounding the Run Time -- 6 Properties and Bounds -- 6.1 Correctness of Pruning -- 6.2 Lower Bounding the Score -- 6.3 Upper Bounding the Run Time -- 7 Experimental Evaluation -- 7.1 Data Sets -- 7.2 Effects of Parameters -- 7.3 Comparison with Competitors -- 8 Conclusion and Future Work -- References -- On Privacy in Spatio-Temporal Data: User Identification Using Microblog Data -- 1 Introduction -- 2 Related Work -- 2.1 User Identification -- 2.2 User Linkage -- 2.3 Spatial Privacy -- 3 Problem Definition -- 4 Trajectory Based User Identification -- 4.1 Trace Profile Modeling -- 4.2 Set Descriptors -- 4.3 Transition Descriptors -- 4.4 Classification -- 4.5 User Linkage -- 5 Experimental Evaluation -- 5.1 Accuracy Using Set Descriptors -- 5.2 Accuracy Using Frequent Transitions -- 5.3 Accuracy for Different Observation Counts -- 5.4 User Linkage Between Different Social Networks -- 5.5 Scalability -- 6 Conclusions -- References -- Big Spatial Data -- Sphinx: Empowering Impala for Efficient Execution of SQL Queries on Big Spatial Data.
1 Introduction -- 2 Background on Impala -- 3 Architecture -- 4 Query Parser -- 4.1 Geometry Data Type -- 4.2 Spatial Functions -- 4.3 Spatial Operations -- 4.4 Spatial Indexing -- 5 Spatial Indexing -- 5.1 Index Construction in Sphinx -- 5.2 Importing SpatialHadoop Indexes -- 6 Query Planner -- 6.1 Range Query Plans -- 6.2 Spatial Join Plans -- 7 Query Executor -- 7.1 R-tree Scanner -- 7.2 Spatial Join Operator -- 8 Experiments -- 8.1 Index Construction -- 8.2 Range Query -- 8.3 Spatial Join -- 9 Related Work -- 10 Conclusion -- References -- ST-Hadoop: A MapReduce Framework for Spatio-Temporal Data -- 1 Introduction -- 2 Related Work -- 3 ST-Hadoop Architecture -- 4 Language Layer -- 5 Indexing Layer -- 5.1 Concept of Hierarchy -- 5.2 Index Construction -- 5.3 Phase I: Sampling -- 5.4 Phase II: Temporal Slicing -- 5.5 Phase III: Spatial Indexing -- 5.6 Phase IV: Physical Writing -- 6 Operations Layer -- 6.1 Spatio-Temporal Range Query -- 6.2 Spatio-Temporal Join -- 7 Experiments -- 7.1 Spatiotemporal Range Query -- 7.2 Index Construction -- 7.3 Spatiotemporal Join -- 8 Conclusion -- References -- GeoWave: Utilizing Distributed Key-Value Stores for Multidimensional Data -- Abstract -- 1 Introduction -- 2 Related Work -- 3 Contributions -- 3.1 Locality Preservation of Multi-dimensional Values -- 3.2 Spatial Subsampling for Map Rendering -- 3.3 Managing Data Variety and Complexity -- 3.4 Key-Value Store Parity -- 4 Experimental Evaluation -- 4.1 Locality Preservation Performance -- 4.2 Map Pixel-Based Spatial Subsampling Performance -- 4.3 Differences in Multi-range Scans Among Key-Value Stores -- 5 Conclusions -- References -- Indexing and Aggregation -- Sweeping-Based Temporal Aggregation -- 1 Introduction -- 2 Related Work -- 3 Problem Formalization -- 3.1 Temporal Relations -- 3.2 Temporal Aggregation on Constant Intervals.
3.3 Temporal Aggregation on Fixed Intervals -- 4 Sweeping-Based Temporal Aggregation -- 4.1 Endpoint Index -- 4.2 Temporal Aggregation on Constant Intervals -- 4.3 Temporal Aggregation on Fixed Intervals -- 5 Empirical Evaluation -- 5.1 Environment -- 5.2 Competitors -- 5.3 Test Workloads -- 5.4 Results -- 6 Conclusion -- References -- Indexing the Pickup and Drop-Off Locations of NYC Taxi Trips in PostgreSQL -- Lessons from the Road -- 1 Introduction -- 2 Studied Spatial Database Indexing Schemes -- 2.1 Generalized Search Tree (GiST-Spatial) -- 2.2 Block Range Index (BRIN-Spatial) -- 2.3 Hippo-Spatial -- 3 Experimental Environment -- 4 Studying the Indexing Overhead -- 4.1 Index Size -- 4.2 Index Initialization Time -- 5 Evaluating the Query Response Time -- 5.1 Varying the Spatial Range Query Selectivity Factor -- 5.2 Varying the Spatial Range Area Size -- 6 Studying the Index Maintenance Overhead -- 6.1 Insertion Time -- 6.2 Deletion Time -- 6.3 Hybrid Workload Performance -- 7 Summary of Results -- 8 Key Insights and Learned Lessons -- References -- Towards Spatially- and Category-Wise k-Diverse Nearest Neighbors Queries -- 1 Introduction -- 2 Related Work -- 3 Problem Definition -- 4 Proposed Solutions -- 4.1 Recursive Range Filtering (RRF) -- 4.2 Pair Graph Solution (PG) -- 4.3 From Conventional Skylines to Linear Skylines -- 5 Experiments -- 5.1 Spatial Diversity -- 5.2 Categorical Diversity -- 5.3 Effectiveness and Efficiency -- 6 Conclusion -- References -- Spatio-Temporal Functional Dependencies for Sensor Data Streams -- 1 Introduction -- 2 Preliminaries -- 3 Database Modeling for Sensor Data -- 3.1 Granularity Aware Sensor Database -- 3.2 Spatio-Temporal Functional Dependency (STFD) -- 3.3 Reasoning on STFDs -- 3.4 Normalization -- 3.5 Semantic Value Assumption -- 4 Prototype for Sensor Database -- 4.1 Implementation.
4.2 Ongoing Experiments -- 5 Related Work -- 6 Conclusion -- References -- Recommendation -- Location-Aware Query Recommendation for Search Engines at Scale -- 1 Introduction -- 2 Preliminaries and Definitions -- 2.1 Query Log -- 2.2 Obtaining Locations from a Query Log -- 2.3 Query-Flow Graph -- 2.4 Term-Query-Flow Graph -- 3 Location-Aware Query Recommendation -- 4 Location-Aware PPR -- 4.1 BCA with Online Transition Matrix -- 5 Experimental Evaluation -- 5.1 Dataset -- 5.2 Methodology -- 5.3 User Study -- 5.4 Effectiveness -- 5.5 Efficiency -- 6 Related Work -- 7 Conclusion -- References -- Top-k Taxi Recommendation in Realtime Social-Aware Ridesharing Services -- 1 Introduction -- 2 Related Work -- 2.1 Static Ridesharing -- 2.2 Dynamic Ridesharing -- 2.3 Trust-Conscious Ridesharing -- 3 Problem Formulation -- 3.1 Definitions -- 3.2 Spatial and Social Scores -- 3.3 Solution Overview -- 4 Candidate Taxis Searching -- 4.1 Edge-Based Candidates Selection -- 4.2 Grid-Based Candidates Selection -- 5 Taxi Scheduling and Top-k Taxi Selection -- 5.1 Overall Procedure of Top-k Taxis Selection -- 5.2 Spatial Score Upper Bounds -- 5.3 Time-Dependent Fastest Path Calculation -- 5.4 Optimal Schedule -- 5.5 Hopping Algorithm -- 6 Experimental Evaluation -- 6.1 Experimental Settings -- 6.2 Experimental Results -- 7 Conclusion -- References -- P-LAG: Location-Aware Group Recommendation for Passive Users -- 1 Introduction -- 2 Problem Definition -- 3 Vector Extraction -- 3.1 Topic Vector Extraction -- 3.2 Topic Vector Analysis -- 4 Indexing and Search for P-LAG -- 4.1 Basic R-tree Approach -- 4.2 TAR-tree Approach: Topic-Aware R-tree -- 4.3 Vector Compression in the TAR-tree -- 5 Experimental Evaluation -- 5.1 Datasets -- 5.2 Efficiency Analysis -- 5.3 Effectiveness -- 5.4 Storage Requirements -- 6 Related Work -- 7 Conclusion -- References -- Data Mining.
Grid-Based Colocation Mining Algorithms on GPU for Big Spatial Event Data: A Summary of Results -- 1 Introduction -- 2 Problem Statement -- 2.1 Basic Concepts -- 2.2 Problem Definition -- 3 Proposed Approach -- 3.1 Algorithm Overview -- 3.2 Cell-Aggregate-Based Upper Bound Filter -- 3.3 Refinement Algorithms -- 4 Evaluation -- 4.1 Results on Synthetic Data -- 4.2 Results on Real World Dataset -- 5 Discussion -- 6 Conclusion and Future Work -- References -- Detecting Isodistance Hotspots on Spatial Networks: A Summary of Results -- 1 Introduction -- 2 Problem Statement -- 2.1 Basic Concepts -- 2.2 Problem Formulation -- 3 BaseNIHD: A Baseline Algorithm Using Known Algorithmic Refinements -- 4 NPP: An Algorithm Based on Network Partitioning and Upper-Bound Pruning -- 5 Theoretical Analysis -- 6 Case Studies on Real World Crime Data -- 6.1 Robberies Occurred in Pinellas County, Florida -- 6.2 Assaults Occurred in Fremont, Washington -- 7 Experimental Evaluation -- 7.1 Experimental Setup -- 7.2 Experimental Results -- 8 Conclusion and Future Work -- References -- Detection and Prediction of Natural Hazards Using Large-Scale Environmental Data -- 1 Introduction -- 1.1 Roadmap -- 2 Framework for Natural Hazards Detection -- 2.1 Environmental Tensor Factorization -- 2.2 Classifying Natural Hazards -- 3 Spatio-Temporal Tensor Sparsification -- 3.1 Algorithmic procedure -- 4 Experimental Evaluation -- 4.1 Global Climate Data -- 4.2 Finding Synthetic Spatio-Temporal Outliers -- 4.3 Finding Natural Hazards on Real Data -- 5 Related Work -- 5.1 Spatio-Temporal Outlier Detection -- 5.2 Classification and Prediction -- 5.3 Tensor Factorization -- 6 Conclusion -- References -- Localization and Spatial Allocation -- FF-SA: Fragmentation-Free Spatial Allocation -- 1 Introduction -- 2 Problem Statement: Fragmentation-Free Spatial Allocation -- 3 Challenges.
4 Related Work and Limitations.
Record Nr. UNINA-9910483017603321
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2017
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Advances in Spatial and Temporal Databases [[electronic resource] ] : 15th International Symposium, SSTD 2017, Arlington, VA, USA, August 21 – 23, 2017, Proceedings / / edited by Michael Gertz, Matthias Renz, Xiaofang Zhou, Erik Hoel, Wei-Shinn Ku, Agnes Voisard, Chengyang Zhang, Haiquan Chen, Liang Tang, Yan Huang, Chang-Tien Lu, Siva Ravada
Advances in Spatial and Temporal Databases [[electronic resource] ] : 15th International Symposium, SSTD 2017, Arlington, VA, USA, August 21 – 23, 2017, Proceedings / / edited by Michael Gertz, Matthias Renz, Xiaofang Zhou, Erik Hoel, Wei-Shinn Ku, Agnes Voisard, Chengyang Zhang, Haiquan Chen, Liang Tang, Yan Huang, Chang-Tien Lu, Siva Ravada
Edizione [1st ed. 2017.]
Pubbl/distr/stampa Cham : , : Springer International Publishing : , : Imprint : Springer, , 2017
Descrizione fisica 1 online resource (XIV, 454 p. 206 illus.)
Disciplina 005.74
Collana Information Systems and Applications, incl. Internet/Web, and HCI
Soggetto topico Database management
Artificial intelligence
Computer science—Mathematics
Data mining
Database Management
Artificial Intelligence
Discrete Mathematics in Computer Science
Data Mining and Knowledge Discovery
ISBN 3-319-64367-3
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Intro -- Preface -- Organization -- Contents -- Routing and Trajectories -- Multi-user Itinerary Planning for Optimal Group Preference -- 1 Introduction -- 2 Problem Definition and Preliminaries -- 3 Proposed Solutions -- 3.1 Meeting Graph and Node Profit -- 3.2 Greedy Itinerary Construction -- 3.3 Optimal Itinerary Construction -- 3.4 Acceleration via Graph Compression -- 4 Related Work -- 5 Experiments -- 5.1 Experiment Design -- 5.2 Experimental Results -- 6 Discussions and Conclusion -- References -- Hybrid Best-First Greedy Search for Orienteering with Category Constraints -- 1 Introduction -- 2 Related Work -- 3 Problem Formalization -- 4 Best-First Search Strategy -- 4.1 Potential Score -- 4.2 Our Algorithm -- 4.3 Further Optimizations -- 5 Approximation Algorithms -- 5.1 Bounding the Score -- 5.2 Bounding the Run Time -- 6 Properties and Bounds -- 6.1 Correctness of Pruning -- 6.2 Lower Bounding the Score -- 6.3 Upper Bounding the Run Time -- 7 Experimental Evaluation -- 7.1 Data Sets -- 7.2 Effects of Parameters -- 7.3 Comparison with Competitors -- 8 Conclusion and Future Work -- References -- On Privacy in Spatio-Temporal Data: User Identification Using Microblog Data -- 1 Introduction -- 2 Related Work -- 2.1 User Identification -- 2.2 User Linkage -- 2.3 Spatial Privacy -- 3 Problem Definition -- 4 Trajectory Based User Identification -- 4.1 Trace Profile Modeling -- 4.2 Set Descriptors -- 4.3 Transition Descriptors -- 4.4 Classification -- 4.5 User Linkage -- 5 Experimental Evaluation -- 5.1 Accuracy Using Set Descriptors -- 5.2 Accuracy Using Frequent Transitions -- 5.3 Accuracy for Different Observation Counts -- 5.4 User Linkage Between Different Social Networks -- 5.5 Scalability -- 6 Conclusions -- References -- Big Spatial Data -- Sphinx: Empowering Impala for Efficient Execution of SQL Queries on Big Spatial Data.
1 Introduction -- 2 Background on Impala -- 3 Architecture -- 4 Query Parser -- 4.1 Geometry Data Type -- 4.2 Spatial Functions -- 4.3 Spatial Operations -- 4.4 Spatial Indexing -- 5 Spatial Indexing -- 5.1 Index Construction in Sphinx -- 5.2 Importing SpatialHadoop Indexes -- 6 Query Planner -- 6.1 Range Query Plans -- 6.2 Spatial Join Plans -- 7 Query Executor -- 7.1 R-tree Scanner -- 7.2 Spatial Join Operator -- 8 Experiments -- 8.1 Index Construction -- 8.2 Range Query -- 8.3 Spatial Join -- 9 Related Work -- 10 Conclusion -- References -- ST-Hadoop: A MapReduce Framework for Spatio-Temporal Data -- 1 Introduction -- 2 Related Work -- 3 ST-Hadoop Architecture -- 4 Language Layer -- 5 Indexing Layer -- 5.1 Concept of Hierarchy -- 5.2 Index Construction -- 5.3 Phase I: Sampling -- 5.4 Phase II: Temporal Slicing -- 5.5 Phase III: Spatial Indexing -- 5.6 Phase IV: Physical Writing -- 6 Operations Layer -- 6.1 Spatio-Temporal Range Query -- 6.2 Spatio-Temporal Join -- 7 Experiments -- 7.1 Spatiotemporal Range Query -- 7.2 Index Construction -- 7.3 Spatiotemporal Join -- 8 Conclusion -- References -- GeoWave: Utilizing Distributed Key-Value Stores for Multidimensional Data -- Abstract -- 1 Introduction -- 2 Related Work -- 3 Contributions -- 3.1 Locality Preservation of Multi-dimensional Values -- 3.2 Spatial Subsampling for Map Rendering -- 3.3 Managing Data Variety and Complexity -- 3.4 Key-Value Store Parity -- 4 Experimental Evaluation -- 4.1 Locality Preservation Performance -- 4.2 Map Pixel-Based Spatial Subsampling Performance -- 4.3 Differences in Multi-range Scans Among Key-Value Stores -- 5 Conclusions -- References -- Indexing and Aggregation -- Sweeping-Based Temporal Aggregation -- 1 Introduction -- 2 Related Work -- 3 Problem Formalization -- 3.1 Temporal Relations -- 3.2 Temporal Aggregation on Constant Intervals.
3.3 Temporal Aggregation on Fixed Intervals -- 4 Sweeping-Based Temporal Aggregation -- 4.1 Endpoint Index -- 4.2 Temporal Aggregation on Constant Intervals -- 4.3 Temporal Aggregation on Fixed Intervals -- 5 Empirical Evaluation -- 5.1 Environment -- 5.2 Competitors -- 5.3 Test Workloads -- 5.4 Results -- 6 Conclusion -- References -- Indexing the Pickup and Drop-Off Locations of NYC Taxi Trips in PostgreSQL -- Lessons from the Road -- 1 Introduction -- 2 Studied Spatial Database Indexing Schemes -- 2.1 Generalized Search Tree (GiST-Spatial) -- 2.2 Block Range Index (BRIN-Spatial) -- 2.3 Hippo-Spatial -- 3 Experimental Environment -- 4 Studying the Indexing Overhead -- 4.1 Index Size -- 4.2 Index Initialization Time -- 5 Evaluating the Query Response Time -- 5.1 Varying the Spatial Range Query Selectivity Factor -- 5.2 Varying the Spatial Range Area Size -- 6 Studying the Index Maintenance Overhead -- 6.1 Insertion Time -- 6.2 Deletion Time -- 6.3 Hybrid Workload Performance -- 7 Summary of Results -- 8 Key Insights and Learned Lessons -- References -- Towards Spatially- and Category-Wise k-Diverse Nearest Neighbors Queries -- 1 Introduction -- 2 Related Work -- 3 Problem Definition -- 4 Proposed Solutions -- 4.1 Recursive Range Filtering (RRF) -- 4.2 Pair Graph Solution (PG) -- 4.3 From Conventional Skylines to Linear Skylines -- 5 Experiments -- 5.1 Spatial Diversity -- 5.2 Categorical Diversity -- 5.3 Effectiveness and Efficiency -- 6 Conclusion -- References -- Spatio-Temporal Functional Dependencies for Sensor Data Streams -- 1 Introduction -- 2 Preliminaries -- 3 Database Modeling for Sensor Data -- 3.1 Granularity Aware Sensor Database -- 3.2 Spatio-Temporal Functional Dependency (STFD) -- 3.3 Reasoning on STFDs -- 3.4 Normalization -- 3.5 Semantic Value Assumption -- 4 Prototype for Sensor Database -- 4.1 Implementation.
4.2 Ongoing Experiments -- 5 Related Work -- 6 Conclusion -- References -- Recommendation -- Location-Aware Query Recommendation for Search Engines at Scale -- 1 Introduction -- 2 Preliminaries and Definitions -- 2.1 Query Log -- 2.2 Obtaining Locations from a Query Log -- 2.3 Query-Flow Graph -- 2.4 Term-Query-Flow Graph -- 3 Location-Aware Query Recommendation -- 4 Location-Aware PPR -- 4.1 BCA with Online Transition Matrix -- 5 Experimental Evaluation -- 5.1 Dataset -- 5.2 Methodology -- 5.3 User Study -- 5.4 Effectiveness -- 5.5 Efficiency -- 6 Related Work -- 7 Conclusion -- References -- Top-k Taxi Recommendation in Realtime Social-Aware Ridesharing Services -- 1 Introduction -- 2 Related Work -- 2.1 Static Ridesharing -- 2.2 Dynamic Ridesharing -- 2.3 Trust-Conscious Ridesharing -- 3 Problem Formulation -- 3.1 Definitions -- 3.2 Spatial and Social Scores -- 3.3 Solution Overview -- 4 Candidate Taxis Searching -- 4.1 Edge-Based Candidates Selection -- 4.2 Grid-Based Candidates Selection -- 5 Taxi Scheduling and Top-k Taxi Selection -- 5.1 Overall Procedure of Top-k Taxis Selection -- 5.2 Spatial Score Upper Bounds -- 5.3 Time-Dependent Fastest Path Calculation -- 5.4 Optimal Schedule -- 5.5 Hopping Algorithm -- 6 Experimental Evaluation -- 6.1 Experimental Settings -- 6.2 Experimental Results -- 7 Conclusion -- References -- P-LAG: Location-Aware Group Recommendation for Passive Users -- 1 Introduction -- 2 Problem Definition -- 3 Vector Extraction -- 3.1 Topic Vector Extraction -- 3.2 Topic Vector Analysis -- 4 Indexing and Search for P-LAG -- 4.1 Basic R-tree Approach -- 4.2 TAR-tree Approach: Topic-Aware R-tree -- 4.3 Vector Compression in the TAR-tree -- 5 Experimental Evaluation -- 5.1 Datasets -- 5.2 Efficiency Analysis -- 5.3 Effectiveness -- 5.4 Storage Requirements -- 6 Related Work -- 7 Conclusion -- References -- Data Mining.
Grid-Based Colocation Mining Algorithms on GPU for Big Spatial Event Data: A Summary of Results -- 1 Introduction -- 2 Problem Statement -- 2.1 Basic Concepts -- 2.2 Problem Definition -- 3 Proposed Approach -- 3.1 Algorithm Overview -- 3.2 Cell-Aggregate-Based Upper Bound Filter -- 3.3 Refinement Algorithms -- 4 Evaluation -- 4.1 Results on Synthetic Data -- 4.2 Results on Real World Dataset -- 5 Discussion -- 6 Conclusion and Future Work -- References -- Detecting Isodistance Hotspots on Spatial Networks: A Summary of Results -- 1 Introduction -- 2 Problem Statement -- 2.1 Basic Concepts -- 2.2 Problem Formulation -- 3 BaseNIHD: A Baseline Algorithm Using Known Algorithmic Refinements -- 4 NPP: An Algorithm Based on Network Partitioning and Upper-Bound Pruning -- 5 Theoretical Analysis -- 6 Case Studies on Real World Crime Data -- 6.1 Robberies Occurred in Pinellas County, Florida -- 6.2 Assaults Occurred in Fremont, Washington -- 7 Experimental Evaluation -- 7.1 Experimental Setup -- 7.2 Experimental Results -- 8 Conclusion and Future Work -- References -- Detection and Prediction of Natural Hazards Using Large-Scale Environmental Data -- 1 Introduction -- 1.1 Roadmap -- 2 Framework for Natural Hazards Detection -- 2.1 Environmental Tensor Factorization -- 2.2 Classifying Natural Hazards -- 3 Spatio-Temporal Tensor Sparsification -- 3.1 Algorithmic procedure -- 4 Experimental Evaluation -- 4.1 Global Climate Data -- 4.2 Finding Synthetic Spatio-Temporal Outliers -- 4.3 Finding Natural Hazards on Real Data -- 5 Related Work -- 5.1 Spatio-Temporal Outlier Detection -- 5.2 Classification and Prediction -- 5.3 Tensor Factorization -- 6 Conclusion -- References -- Localization and Spatial Allocation -- FF-SA: Fragmentation-Free Spatial Allocation -- 1 Introduction -- 2 Problem Statement: Fragmentation-Free Spatial Allocation -- 3 Challenges.
4 Related Work and Limitations.
Record Nr. UNISA-996466176303316
Cham : , : Springer International Publishing : , : Imprint : Springer, , 2017
Materiale a stampa
Lo trovi qui: Univ. di Salerno
Opac: Controlla la disponibilità qui
Proceedings of the ACM SIGSPATIAL International Workshop on GeoStreaming (IWGS) 2012 : November 6, 2012, Redondo Beach, CA, USA
Proceedings of the ACM SIGSPATIAL International Workshop on GeoStreaming (IWGS) 2012 : November 6, 2012, Redondo Beach, CA, USA
Autore Ali Mohamed
Pubbl/distr/stampa [Place of publication not identified], : ACM, 2012
Descrizione fisica 1 online resource (131 pages)
Disciplina 910.285
Collana ACM Conferences
Soggetto topico Geography
Earth & Environmental Sciences
Geography-General
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Altri titoli varianti International Workshop on GeoStreaming 2012 : proceedings of the Association for Computing Machinery Special Interest Group on Spatial Information International Workshop on GeoStreaming : November 6, 2012, Redondo Beach, CA, USA
Proceedings of the 3rd ACM SIGSPATIAL International Workshop on GeoStreaming
Proceedings of the 3rd Association for Computing Machinery Special Interest Group on Spatial Information International Workshop on GeoStreaming
Record Nr. UNINA-9910375879603321
Ali Mohamed  
[Place of publication not identified], : ACM, 2012
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui