2021
DOI: 10.12928/telkomnika.v19i2.16738
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A hybrid analysis model supported by machine learning algorithm and multiple linear regression to find reasons for unemployment of programmers in Iraq

Abstract: The problem of unemployment is one of the most important problems faced by most countries of the world, and it is one of the intractable problems in developing countries, and in Iraq unemployment occupies great importance due to its high rates. This problem in itself is a serious condition, because it results from mismanagement and the structure of the economy, and despite its great importance, it has not been carefully monitored. There are studies and strategies that deal with the analysis and study of those … Show more

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Cited by 6 publications
(3 citation statements)
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“…The reasons supporting the selection of correlation and linear regression analyses are the aim of discerning variables' linear and causal relationships accordingly. Linear regression models are widely preferred over other methods in multiple occasions and sectors, frequently in cases of psychology (Gomila 2021), unemployment causes analysis (Abdulhamed et al 2021), health studies (Kumari and Yadav 2018), etc. Most importantly, the reasons for linear regression method's utilization are based on the effectiveness of representing causal effects estimation and when there is no apparent ground supporting the use of more complex nonlinear methods (Gomila 2021).…”
Section: Methodsmentioning
confidence: 99%
“…The reasons supporting the selection of correlation and linear regression analyses are the aim of discerning variables' linear and causal relationships accordingly. Linear regression models are widely preferred over other methods in multiple occasions and sectors, frequently in cases of psychology (Gomila 2021), unemployment causes analysis (Abdulhamed et al 2021), health studies (Kumari and Yadav 2018), etc. Most importantly, the reasons for linear regression method's utilization are based on the effectiveness of representing causal effects estimation and when there is no apparent ground supporting the use of more complex nonlinear methods (Gomila 2021).…”
Section: Methodsmentioning
confidence: 99%
“…At present, the types of sensors that can meet the demand include millimeter wave radar (24GHz or 77GHz), laser radar (single line or multiple lines), and camera (single or dual eyes) [8]. Each of the three types of sensors has its own focus on performance, so one can be selected separately, or multiple sensors can be used at the same time to complement each other, that is, through multi-sensor data fusion, further improve the accuracy of information acquisition and expand the scope of application of the system [9]. On the test vehicle studied in this paper, 77GHz long range millimeter wave radar is used to detect the traffic environment ahead.…”
Section: Operating Principle Of Automatic Emergency Braking (Aeb) Systemmentioning
confidence: 99%
“…Several studies related to the application of the a priori algorithm have been carried out including for clickstream data analyzing [1], reasons finding [2], display item maximizing [3], ozone profiling [4]. The main problem of the Apriori algorithm lies in the process of generating itemset candidates that uses the repetition of the database scanning as much (2 n -1)*(read external) times or (2 n -1)*(m/b block read), where k: a sum of the item, m: a sum of a database record, b: block size; in the context of calculating support count [5].…”
Section: Introductionmentioning
confidence: 99%