2013
DOI: 10.1016/j.ipm.2013.02.003
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Incorporating group recommendations to recommender systems: Alternatives and performance

Abstract: Proporcionaré una formalización completa del método propuesto. Explicaré cómo obtener el conjunto de k vecinos del grupo de usuarios y mostraré cómo obtener recomendaciones usando dichos vecinos. Asimismo, incluiré un ejemplo detallando cada paso del método propuesto en un sistema de recomendación compuesto por 8 usuarios y 10 items.Las principales características del método propuesto son: (a) es más rápido (más eficiente) que las alternativas proporcionadas por otros autores, y (b) es al menos tan exacto y pr… Show more

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Cited by 51 publications
(27 citation statements)
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References 146 publications
(211 reference statements)
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“…Group recommendation systems could be classified into two main categories [12,13]: those which perform an aggregation of individuals' preferences to obtain a possible group evaluation for each candidate item and those which perform an aggregation of individuals' models into a single group model and generate suggestions based on this model. In the first method, an individual-based recommendation system is first used to generate recommendations for each group member, then a group consensus function is used to merge the individual recommendations and select ones that are most suitable for the whole group.…”
Section: Group Recommendation Systems Grsmentioning
confidence: 99%
“…Group recommendation systems could be classified into two main categories [12,13]: those which perform an aggregation of individuals' preferences to obtain a possible group evaluation for each candidate item and those which perform an aggregation of individuals' models into a single group model and generate suggestions based on this model. In the first method, an individual-based recommendation system is first used to generate recommendations for each group member, then a group consensus function is used to merge the individual recommendations and select ones that are most suitable for the whole group.…”
Section: Group Recommendation Systems Grsmentioning
confidence: 99%
“…More recently, many scholars have conducted in-depth research on how to improve the effect of group recommendation, and put forward many related algorithms. Chao et al [8] the behavior of the nearest neighbors. But the method does not consider the role of the user in the group, which affects the quality of the recommendations.…”
Section: Related Workmentioning
confidence: 99%
“…Many scholars focused on existing and non-existing group recommendations, user interest modeling, group rating prediction accuracy and recommendation accuracy and other issues. They have put forward some recommendation algorithms and designed some experimental prototype system [5,6,7,8,9,10] . But much of the work does not take into consideration in the differences in the level of concern of different groups for each category of project, as well as differences in the level of concern among members of the same group for each category of item.…”
Section: Introductionmentioning
confidence: 99%
“…The experiment result is shown in Figure 4. The x-axis of Figure 4 is neighbour size, y-axis is MAE calculated by Equation (10). There are 5 curve in Figure 4,which reprents MAE of different cluster.…”
Section: User-based Lda Collaborative Filteringmentioning
confidence: 99%