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datasets:ior [2016/04/21 16:27]
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datasets:ior [2016/04/21 16:43]
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 ==== Innsbruck Object Relation Dataset ==== ==== Innsbruck Object Relation Dataset ====
  
-This dataset contains the set of possible object-object spatial relations. Learning object-object relations is a difficult problem with sparse, noisy, corrupted and incomplete information which makes it an interesting and challenging machine problem. We treated ​this problem as the learning missing edges in a multigraph ​problem.+This dataset contains the set of possible object-object spatial relations. Learning object-object relations is a difficult problem with sparse, noisy, corrupted and incomplete information which makes it an interesting and challenging machine ​learning ​problem. We formulate ​this problem as the problem of learning missing edges in a multigraph.
  
-**Keywords**:​ missing link prediction, data inputation, matrix completion, recommender systems, low-rank approximation+**Keywords**:​ missing link prediction, data imputation, matrix completion, recommender systems, low-rank approximation
  
  
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 The learning scenario based on which this database was created is a toy clean-up task in a room of kids, where an The learning scenario based on which this database was created is a toy clean-up task in a room of kids, where an
-agent needs to plan how to transform a messy child'​s room into a tidy one by moving objects to their storage locations and creating order. An agent can integrate knowledge ​on possible spatial relations of objects into the planning process and use it to re new ​the world model. Large numbers of objects and their potential interactions in this scenario make this task a large-scale problem. Estimating the missing relations based on those already known can accelerate planning procedures. ​+agent needs to plan how to transform a messy child'​s room into a tidy room by moving objects to their storage locations and creating order. An agent can integrate knowledge ​of possible spatial relations of objects into the planning process and use it to update ​the world model. Large numbers of objects and their potential interactions in this scenario make this task a large-scale problem. Estimating the missing relations based on those already known can accelerate planning procedures. ​
  
 {{research:​projects:​squirrel:​table.png?​300}} {{:​research:​projects:​squirrel:​drawing.png?​300|}} ​ {{research:​projects:​squirrel:​table.png?​300}} {{:​research:​projects:​squirrel:​drawing.png?​300|}} ​
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  ​**Dataset Features**  ​**Dataset Features**
  
-   *Dataset ​is generated ​based on the [[http://​shape.cs.princeton.edu/​benchmark/​|Princeton Shape Benchmark database]]  +   *The dataset ​is based on the [[http://​shape.cs.princeton.edu/​benchmark/​|Princeton Shape Benchmark database]]. 
-   *Dataset ​contains 4 sets for the each possible connection between objects (//in//, //on//, //below// and //next to//). The problem is formulated that all possible relations should be treated so two objects can have mulitple ​connections. ​+   *The dataset ​contains 4 sets for the each possible connection between objects (//in//, //on//, //below// and //next to//). The problem is formulated that all possible relations should be treated so two objects can have multiple ​connections. ​
    ​*Links between objects are determined by values:    ​*Links between objects are determined by values:
        ​***0** - no connection        ​***0** - no connection
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        ​***-1** - reverse connection        ​***-1** - reverse connection
        ​***empty** - unknown connection        ​***empty** - unknown connection
-   * You can downlaoad ​dataset [[https://​iis.uibk.ac.at/​public/​databases/​esann2015/​|here]]+   * You can download the dataset [[https://​iis.uibk.ac.at/​public/​databases/​esann2015/​|here]].
  
 **Reference** **Reference**
  
- "//​Learning missing edges via kernels in partially-known graphs//"​, Senka Krivic, Sandor Szedmak, Hanchen Xiong, Justus Piater, ​European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning 2015. [[https://​iis.uibk.ac.at/​public/​papers/​Krivic-2015-ESANN.pdf|PDF]] +Please cite this paper if you use this dataset: 
-Please cite this paper if you are using this dataset.+<​html>​ 
 +<div class="li CONF" id="​Krivic-2015-ESANN"​ title="​Krivic-2015-ESANN"><​p><​span class="​author"><​span class="​firstname">​Senka<​/span> <span class="​surname">​Krivić<​/span></​span>,​ <span class="​author"><​span class="​firstname">​Sandor</​span>​ <span class="​surname">​Szedmak</​span></​span>,​ <span class="​author"><​span class="​firstname">​Hanchen</​span>​ <span class="​surname">​Xiong</​span></​span>,​ <span class="​author"><​span class="​firstname">​Justus</​span>​ <span class="​surname">​Piater</​span></​span>,​ <span class="​parttitle">​Learning missing edges via kernels in partially-known 
 +      ​graphs. </span><​a href="​https://​www.elen.ucl.ac.be/​esann/">European Symposium on Artificial Neural 
 +      ​Networks, Computational Intelligence and Machine 
 +      ​Learning</a>, <span class="​pubdate">​2015</​span>​<span class="​actions">​ <a href="https://​iis.uibk.ac.at/​public/​papers/​Krivic-2015-ESANN.pdf">[PDF]</a> <a href="​javascript:​void(0)"​ onclick="​showHide('​Krivic-2015-ESANN',​ '​Abstract'​)">​[Abstract]</a> <a href="​javascript:​void(0)"​ onclick="​showHide('​Krivic-2015-ESANN',​ '​BibTeX'​)">​[BibTeX]</​a></​span></​p></​div>​ 
 +</​html>​
  
-**BibTex** 
- 
-  @InProceedings{Krivic-2015-ESANN,​ 
-  title = {{Learning missing edges via kernels in partially-known graphs}}, 
-  author = {Krivi\'​{c},​ Senka and Szedmak, Sandor and Xiong, Hanchen and Piater, Justus}, 
-  booktitle = {{European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning}}, 
-  year = 2015, 
-  url = {https://​iis.uibk.ac.at/​public/​papers/​Krivic-2015-ESANN.pdf} 
-} 
  
 **Acknowledgement** **Acknowledgement**
  
-This research has received funding from the European Community’s Seventh Framework Programme FP7/​2007-2013 (Speci c ​Programme Cooperation,​ Theme 3,​Information and Communication Technologies) under grant agreement no. 610532, ​ [[http://​www.squirrel-project.eu/​|Squirrel]] and no. 270273, [[http://​www.xperience.org/​|Xperience]].+This research has received funding from the European Community’s Seventh Framework Programme FP7/​2007-2013 (Specific ​Programme Cooperation,​ Theme 3,​Information and Communication Technologies) under grant agreement no. 610532, ​ [[http://​www.squirrel-project.eu/​|Squirrel]] and no. 270273, [[http://​www.xperience.org/​|Xperience]].
  
 **Contact** **Contact**
 [[senka.krivic@uibk.ac.at]] [[senka.krivic@uibk.ac.at]]
datasets/ior.txt · Last modified: 2018/09/03 19:35 (external edit)