An MPEG-7 query language and a user preference model that allow semantic retrieval and filtering of multimedia content

2007 ◽  
Vol 13 (2) ◽  
pp. 131-153 ◽  
Author(s):  
Chrisa Tsinaraki ◽  
Stavros Christodoulakis
2020 ◽  
Vol 39 (4) ◽  
pp. 5905-5914
Author(s):  
Chen Gong

Most of the research on stressors is in the medical field, and there are few analysis of athletes’ stressors, so it can not provide reference for the analysis of athletes’ stressors. Based on this, this study combines machine learning algorithms to analyze the pressure source of athletes’ stadium. In terms of data collection, it is mainly obtained through questionnaire survey and interview form, and it is used as experimental data after passing the test. In order to improve the performance of the algorithm, this paper combines the known K-Means algorithm with the layering algorithm to form a new improved layered K-Means algorithm. At the same time, this paper analyzes the performance of the improved hierarchical K-Means algorithm through experimental comparison and compares the clustering results. In addition, the analysis system corresponding to the algorithm is constructed based on the actual situation, the algorithm is applied to practice, and the user preference model is constructed. Finally, this article helps athletes find stressors and find ways to reduce stressors through personalized recommendations. The research shows that the algorithm of this study is reliable and has certain practical effects and can provide theoretical reference for subsequent related research.


2019 ◽  
Vol 52 (2) ◽  
pp. 189-201
Author(s):  
TQ Khanh ◽  
P Bodrogi ◽  
X Guo

In Parts 1 and 2 of this work, an experiment was described in which subjects assessed their visual impressions of scene brightness (B), visual clarity (VC), colour preference (CP) and scene preference (SP) in a real room. In this room, the horizontal illuminance ( Ev), the correlated colour temperature (CCT) and the level of chroma enhancement caused by the spectrum of the light source (Δ C*) were changed systematically. In the present Part 3, these mean subjective B, VC, CP and SP scale values are re-analysed in terms of an alternative model based on a different set of independent variables: CCT, Δ C* and the circadian stimulus (CS). Contour map diagrams resulting from the new modelling equations are shown and compared with the conventional Kruithof-type representation.


Author(s):  
Yi Ren ◽  
Panos Y. Papalambros

We define preference elicitation as an interaction, consisting of a sequence of computer queries and human implicit feedback (binary choices), from which the user’s most preferred design can be elicited. The difficulty of this problem is that, while a human-computer interaction must be short to be effective, query algorithms usually require lengthy interactions to perform well. We address this problem in two steps. A black-box optimization approach is introduced: The query algorithm retrieves and updates a user preference model during the interaction and creates the next query containing designs that are both likely to be preferred and different from existing ones. Next, a heuristic based on accumulated elicitations from previous users is employed to shorten the current elicitation by querying preferred designs from previous users (the “crowd”) who share similar preferences to the current one.


Polibits ◽  
2011 ◽  
Vol 44 ◽  
pp. 45-51
Author(s):  
Andrey Ronzhin ◽  
Jesus Savage ◽  
Sergey Glazkov

2014 ◽  
Vol 687-691 ◽  
pp. 1474-1479
Author(s):  
Wei Dong Huang ◽  
Ji Dong Yang ◽  
Ya Fei Ouyang

By analyzing influence factors of the document that the retrieval system recommends to the user, a user preference model is established. Based on the correlation between the emergency vocabularies, which is adjusted by the user preference model, a vocabulary correlation matrix is put forward to extend the retrieval model. Furthermore, according to new retrieval results and records of user operation, the user preference model is optimized. Finally, the validity and usefulness of the keyword extension-based user preference model in the algorithm is verified.


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