employing data mining to explore association rules in drug addicts

Authors

farzaneh zahedi

mohammad-reza zare-mirakabad

abstract

drug addiction is a major social, economic, and hygienic challenge that impacts on all the community and needs serious threat. available treatments are successful only in short-term unless underlying reasons making individuals prone to the phenomenon are not investigated. nowadays, there are some treatment centers which have comprehensive information about addicted people. therefore, given the huge data sources, data mining can be used to explore knowledge implicit in them, their results can be employed as a knowledge base of decision support systems to make decisions regarding addiction prevention and treatment. we studied participants of such clinics including 471 participants, where 86.2% were male and 13.8% were female. the study aimed to extract rules from the collected data by using association models. results can be used by rehab clinics to give more knowledge regarding relationships between various parameters and help them for better and more effective treatments. e.g. according to the findings of the study, there is a relationship between individual characteristics and lsd abuse, individual characteristics, the kind of narcotics taken, and committing crimes, family history of drug addiction and family member drug addiction.

Upgrade to premium to download articles

Sign up to access the full text

Already have an account?login

similar resources

Employing data mining to explore association rules in drug addicts

Drug addiction is a major social, economic, and hygienic challenge that impacts on all the community and needs serious threat. Available treatments are successful only in short-term unless underlying reasons making individuals prone to the phenomenon are not investigated. Nowadays, there are some treatment centers which have comprehensive information about addicted people. Therefore, given the ...

full text

data mining rules and classification methods in insurance: the case of collision insurance

assigning premium to the insurance contract in iran mostly has based on some old rules have been authorized by government, in such a situation predicting premium by analyzing database and it’s characteristics will be definitely such a big mistake. therefore the most beneficial information one can gathered from these data is the amount of loss happens during one contract to predicting insurance ...

15 صفحه اول

The application of data mining to explore association rules between metabolic syndrome and lifestyles.

This study used an efficient data mining algorithm, called DCIP (the data cutting and inner product method), to explore association rules between the lifestyles of factory workers in Taiwan and the metabolic syndrome. A total of 1,216 workers in four companies completed a lifestyle questionnaire. Results of the questionnaire survey were integrated into the workers' health examination reports to...

full text

Prediction of chronic kidney disease in Isfahan with extracting association rules using data mining techniques

Background: Millions of deaths occur around the world each year due to lack of access to appropriate treatment for chronic kidney disease patients. Given the importance and mortality rate of this disease, early and low-cost prediction is very important. The researchers intend to identify chronic kidney disease through the optimal combination of techniques used in different stages of data mining...

full text

Data Mining: A Novel Outlook to Explore Knowledge in Health and Medical Sciences

Today medical and Healthcare industry generate loads of diverse data about patients, disease diagnosis, prognosis, management, hospitals’ resources, electronic patient health records, medical devices and etc. Using the most efficient processing and analyzing method for knowledge extraction is a key point to cost-saving in clinical decision making. Data mining, sometimes called data or knowledge...

full text

Mining spatial association rules in census data

In this paper we propose a method for the discovery of spatial association rules, that is, association rules involving spatial relations among (spatial) objects. The method is based on a multi-relational data mining approach and takes advantage of the representation and reasoning techniques developed in the field of inductive logic programming (ILP). In particular, the expressive power of predi...

full text

My Resources

Save resource for easier access later


Journal title:
journal of ai and data mining

Publisher: shahrood university of technology

ISSN 2322-5211

volume 2

issue 2 2014

Hosted on Doprax cloud platform doprax.com

copyright © 2015-2023