probabilistic term
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2021 ◽  
Vol 40 (5) ◽  
pp. 9583-9595
Author(s):  
Chenliang Li ◽  
Xiaobing Yu

Communities are the fundamental units of society, and community-based disaster management is the foundation of societal disaster management systems. It is important to implement disaster prevention and mobilize all residents in the community to participate in preparedness activities. However, people’s attitudes and understanding of these issues are often ambiguous because meteorological disaster prevention and mitigation (MDPM) is complex. A hybrid model based on probabilistic term sets (PLTSs) and PROMETHEE method is put forward to solve this problem. To solve the problem from the view of big data, the experimental data are from Baidu’s disaster prevention and mitigation questionnaires. The data of these questionnaires are aggregated through PLTSs. Then, the PROMETHEE method is used to learn about the public’s understanding of community meteorological disaster prevention and mitigation (CMDPM) information and their willingness to participate in activities. The results indicate that communities in East, Northwest, Southwest, and North China have a higher willingness to join volunteer services. The proposed model makes it more convenient for decision-makers (DMs) to describe problems by PLTSs and is more appropriate for individuals’ understanding and communication.


2020 ◽  
Vol 185 ◽  
pp. 102338
Author(s):  
Martin Avanzini ◽  
Ugo Dal Lago ◽  
Akihisa Yamada

Author(s):  
Martin Avanzini ◽  
Ugo Dal Lago ◽  
Akihisa Yamada

2009 ◽  
Vol 08 (02) ◽  
pp. 249-265 ◽  
Author(s):  
WEN ZHANG ◽  
TAKETOSHI YOSHIDA ◽  
XIJIN TANG

As a hybrid of N-gram in natural language processing and collocation in statistical linguistics, multi-word is becoming a hot topic in area of text mining and information retrieval. In this paper, a study concerning distribution of multi-words is carried out to explore a theoretical basis for probabilistic term-weighting scheme. Specifically, the Poisson distribution, zero-inflated binomial distribution, and G-distribution are comparatively studied on a task of predicting probabilities of multi-words' occurrences using these distributions, for both technical multi-words and nontechnical multi-words. In addition, a rule-based multi-word extraction algorithm is proposed to extract multi-words from texts based on words' occurring patterns and syntactical structures. Our experimental results demonstrate that G-distribution has the best capability to predict probabilities of frequency of multi-words' occurrence and the Poisson distribution is comparable to zero-inflated binomial distribution in estimation of multi-word distribution. The outcome of this study validates that burstiness is a universal phenomenon in linguistic count data, which is applicable not only for individual content words but also for multi-words.


2008 ◽  
Vol 11 (2) ◽  
pp. 139-164 ◽  
Author(s):  
Azadeh Shakery ◽  
ChengXiang Zhai

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