МУФАНГ – МАЛЬЦЕВСКАЯ СИММЕТРИЯ
In: Proceedings of the Estonian Academy of Sciences. Physics. Mathematics, Band 42, Heft 2, S. 157
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In: Proceedings of the Estonian Academy of Sciences. Physics. Mathematics, Band 42, Heft 2, S. 157
In: Proceedings of the Estonian Academy of Sciences. Physics. Mathematics, Band 40, Heft 2, S. 105
In: Proceedings of the Estonian Academy of Sciences, Band 59, Heft 4, S. 347
ISSN: 1736-7530
In: Proceedings of the Estonian Academy of Sciences. Physics, mathematics, Band 45, Heft 2/3, S. 128
Human personality plays a crucial role in decision-making and it has paramount importance when individuals negotiate with each other to reach a common group decision. Such situations are conceivable, for instance, when a group of individuals want to watch a movie together. It is well known that people influence each other's decisions, the more assertive a person is, the more influence they will have on the final decision. In order to obtain a more realistic group recommendation system (GRS), we need to accommodate the assertiveness of the different group members' personalities. Although pairwise preferences are long-established in group decision-making (GDM), they have received very little attention in the recommendation systems community. Driven by the advantages of pairwise preferences on ratings in the recommendation systems domain, we have further pursued this approach in this paper, however we have done so for GRS. We have devised a three-stage approach to GRS in which we 1) resort to three binary matrix factorization methods, 2) develop an influence graph that includes assertiveness and cooperativeness as personality traits, and 3) apply an opinion dynamics model in order to reach consensus. We have shown that the final opinion is related to the stationary distribution of a Markov chain associated with the influence graph. Our experimental results demonstrate that our approach results in high precision and fairness. ; The work of the third author is supported by both Spanish State Research Agency Project PID2019-10380RBI00/AEI/10.13039/501100011033 and Andalusian Government Project P20_00673. ; publishedVersion
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In: Proceedings of the Estonian Academy of Sciences, Band 59, Heft 4, S. 255
ISSN: 1736-7530
Cross-domain information exchange is necessary to obtain information superiority in the military domain, and should be based on assigning appropriate security labels to the information objects. Most of the data found in a defense network is unlabeled, and usually new unlabeled information is produced every day. Humans find that doing the security labeling of such information is labor-intensive and time consuming. At the same time there is an information explosion observed where more and more unlabeled information is generated year by year. This calls for tools that can do advanced content inspection, and automatically determine the security label of an information object correspondingly. This paper presents a machine learning approach to this problem. To the best of our knowledge, machine learning has hardly been analyzed for this problem, and the analysis on topical classification presented here provides new knowledge and a basis for further work within this area. Presented results are promising and demonstrates that machine learning can become a useful tool to assist humans in determining the appropriate security label of an information object
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