Analyzing safety level and recognizing flaws of commercial centers through data mining approach

Author(s):  
Abdorrahman Haeri

The construction industry, including buildings and commercial centers, is a dynamic industry with diverse and complex nature, which makes its safety provision difficult. The aim of this study is to evaluate the safety status of commercial centers and their classification based on common features; and to uncover the hidden relationships between characteristics of the commercial centers under study by means of data mining techniques. Data required for this study were collected based on a 75-item checklist designed for this study. Indeed, this study included 108 commercial centers. Thereafter, the commercial centers under study were divided into three categories, labeled unsafe, normal, and safe by means of K-means algorithm. The results obtained from the implementation of classification method showed that the two resources, namely, fire protection systems and buildings, played a critical role in the safety of studied commercial centers. The results of in-depth analysis on unsafe commercial centers indicated that these centers have common weaknesses. These weak areas include such items as deficiency of the standards required for the equipment associated with some resources, insufficient training in the use of firefighting equipment, the necessity of the employment of redundant approaches for exit from the building in emergency conditions, and non-feasibility of conducting of operations for firefighting vehicles and lifts. Urban planners and managers and safety officials of the buildings, particularly commercial centers, can apply the results of this study as strategic guidelines.

Author(s):  
Deeya Tangri

Nowadays, the Health care industry is one of the fastest-growing industries. As we already know, health care has researched very widely, introducing many medical data that is not easy to mine. Data mining is an approach that helps to discover essential data from massive data or collection of data. So, in medical Science, there is a need for tools that help analyses the data, extract the significant result from massive data, and discover efficient use of information. Generally, three things are mandatory in medical for every patient. First is patient details, diagnosis and medications. Converting these data into a basic pattern for predicting the patient disease helps in early diagnosis. This research mainly focuses on the data mining approach, which is widely considered in the medical field.


2013 ◽  
Vol 38 (3) ◽  
pp. 159-174
Author(s):  
Joanna Gancarczyk ◽  
Joanna Sobczyk

Abstract In this paper a new approach to image segmentation was discussed. A model based on a data mining algorithm set on a pixel level of an image was introduced and implemented to solve the task of identification of craquelure and retouch traces in digital images of artworks. Both craquelure and retouch identification are important steps in art restoration process. Since the main goal is to classify and understand the cause of damage, as well as to forecast its further enlargement, a proper tool for a precise detection of the damaged area is needed. However, the complex nature of the pattern is a reason why a simple, universal detection algorithm is not always possible to be implemented. Algorithms presented in this work apply mining structures which depend of expandable set of attributes forming a feature vector, and thus offer an elastic structure for analysis. The result obtained by our method in craquelure segmentation was improved comparing to the results achieved by mathematical morphology methods, which was confirmed by a qualitative analysis.


Author(s):  
Mehran Amiri ◽  
Abdollah Ardeshir ◽  
Mohammad Hossein Fazel Zarandi ◽  
Elahe Soltanaghaei

2019 ◽  
Vol 105 ◽  
pp. 102833 ◽  
Author(s):  
Shuo Bai ◽  
Mingchao Li ◽  
Rui Kong ◽  
Shuai Han ◽  
Heng Li ◽  
...  

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