• Title/Summary/Keyword: Job classification

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Research on Comparing the Size of the Data Workforce Across Countries (국가간 데이터직무 인력 규모 비교 연구)

  • Hyemi Um
    • Journal of Information Technology Applications and Management
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    • v.31 no.1
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    • pp.79-95
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    • 2024
  • In modern society, as data plays a crucial role at the levels of businesses, industries, and nations, the utilization of data becomes increasingly important. Consequently, governments are prioritizing the development and implementation of plans to cultivate data workforce, viewing the data industry as a cornerstone of national strategy. To enhance domestic capabilities and nurture workforce in the data industry, it is deemed necessary to conduct an objective comparative analysis with major foreign countries. Therefore, this study aims to analyze cases of domestic and international data industries and explore methods for quantitatively comparing data industry workforce across nations. Initially, the study distinguishes between "data industry workforce" and "data job-related workforce," particularly focusing on professionals handling data-related tasks. Subsequently, it compares the workforce sizes of data job-related workforce across nations, utilizing standardized occupational classification codes based on the International Standard Classification of Occupations(ISCO). However, it should be noted that countries employing their own unique occupational classification systems often require matching job titles with similar meanings for accurate comparison. Through this study, it is anticipated that policymakers will be able to establish future directions for cultivating data workforce based on comparable status.

Resume Classification System using Natural Language Processing & Machine Learning Techniques

  • Irfan Ali;Nimra;Ghulam Mujtaba;Zahid Hussain Khand;Zafar Ali;Sajid Khan
    • International Journal of Computer Science & Network Security
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    • v.24 no.7
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    • pp.108-117
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    • 2024
  • The selection and recommendation of a suitable job applicant from the pool of thousands of applications are often daunting jobs for an employer. The recommendation and selection process significantly increases the workload of the concerned department of an employer. Thus, Resume Classification System using the Natural Language Processing (NLP) and Machine Learning (ML) techniques could automate this tedious process and ease the job of an employer. Moreover, the automation of this process can significantly expedite and transparent the applicants' selection process with mere human involvement. Nevertheless, various Machine Learning approaches have been proposed to develop Resume Classification Systems. However, this study presents an automated NLP and ML-based system that classifies the Resumes according to job categories with performance guarantees. This study employs various ML algorithms and NLP techniques to measure the accuracy of Resume Classification Systems and proposes a solution with better accuracy and reliability in different settings. To demonstrate the significance of NLP & ML techniques for processing & classification of Resumes, the extracted features were tested on nine machine learning models Support Vector Machine - SVM (Linear, SGD, SVC & NuSVC), Naïve Bayes (Bernoulli, Multinomial & Gaussian), K-Nearest Neighbor (KNN) and Logistic Regression (LR). The Term-Frequency Inverse Document (TF-IDF) feature representation scheme proven suitable for Resume Classification Task. The developed models were evaluated using F-ScoreM, RecallM, PrecissionM, and overall Accuracy. The experimental results indicate that using the One-Vs-Rest-Classification strategy for this multi-class Resume Classification task, the SVM class of Machine Learning algorithms performed better on the study dataset with over 96% overall accuracy. The promising results suggest that NLP & ML techniques employed in this study could be used for the Resume Classification task.

Measurement and Modeling of Job Stress of Electric Overhead Traveling Crane Operators

  • Krishna, Obilisetty B.;Maiti, Jhareswar;Ray, Pradip K.;Samanta, Biswajit;Mandal, Saptarshi;Sarkar, Sobhan
    • Safety and Health at Work
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    • v.6 no.4
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    • pp.279-288
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    • 2015
  • Background: In this study, the measurement of job stress of electric overhead traveling crane operators and quantification of the effects of operator and workplace characteristics on job stress were assessed. Methods: Job stress was measured on five subscales: employee empowerment, role overload, role ambiguity, rule violation, and job hazard. The characteristics of the operators that were studied were age, experience, body weight, and body height. The workplace characteristics considered were hours of exposure, cabin type, cabin feature, and crane height. The proposed methodology included administration of a questionnaire survey to 76 electric overhead traveling crane operators followed by analysis using analysis of variance and a classification and regression tree. Results: The key findings were: (1) the five subscales can be used to measure job stress; (2) employee empowerment was the most significant factor followed by the role overload; (3) workplace characteristics contributed more towards job stress than operator's characteristics; and (4) of the workplace characteristics, crane height was the major contributor. Conclusion: The issues related to crane height and cabin feature can be fixed by providing engineering or foolproof solutions than relying on interventions related to the demographic factors.

Job Preference Analysis and Job Matching System Development for the Middle Aged Class (중장년층 일자리 요구사항 분석 및 인력 고용 매칭 시스템 개발)

  • Kim, Seongchan;Jang, Jincheul;Kim, Seong Jung;Chin, Hyojin;Yi, Mun Yong
    • Journal of Intelligence and Information Systems
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    • v.22 no.4
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    • pp.247-264
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    • 2016
  • With the rapid acceleration of low-birth rate and population aging, the employment of the neglected groups of people including the middle aged class is a crucial issue in South Korea. In particular, in the 2010s, the number of the middle aged who want to find a new job after retirement age is significantly increasing with the arrival of the retirement time of the baby boom generation (born 1955-1963). Despite the importance of matching jobs to this emerging middle aged class, private job portals as well as the Korean government do not provide any online job service tailored for them. A gigantic amount of job information is available online; however, the current recruiting systems do not meet the demand of the middle aged class as their primary targets are young workers. We are in dire need of a specially designed recruiting system for the middle aged. Meanwhile, when users are searching the desired occupations on the Worknet website, provided by the Korean Ministry of Employment and Labor, users are experiencing discomfort to search for similar jobs because Worknet is providing filtered search results on the basis of exact matches of a preferred job code. Besides, according to our Worknet data analysis, only about 24% of job seekers had landed on a job position consistent with their initial preferred job code while the rest had landed on a position different from their initial preference. To improve the situation, particularly for the middle aged class, we investigate a soft job matching technique by performing the following: 1) we review a user behavior logs of Worknet, which is a public job recruiting system set up by the Korean government and point out key system design implications for the middle aged. Specifically, we analyze the job postings that include preferential tags for the middle aged in order to disclose what types of jobs are in favor of the middle aged; 2) we develope a new occupation classification scheme for the middle aged, Korea Occupation Classification for the Middle-aged (KOCM), based on the similarity between jobs by reorganizing and modifying a general occupation classification scheme. When viewed from the perspective of job placement, an occupation classification scheme is a way to connect the enterprises and job seekers and a basic mechanism for job placement. The key features of KOCM include establishing the Simple Labor category, which is the most requested category by enterprises; and 3) we design MOMA (Middle-aged Occupation Matching Algorithm), which is a hybrid job matching algorithm comprising constraint-based reasoning and case-based reasoning. MOMA incorporates KOCM to expand query to search similar jobs in the database. MOMA utilizes cosine similarity between user requirement and job posting to rank a set of postings in terms of preferred job code, salary, distance, and job type. The developed system using MOMA demonstrates about 20 times of improvement over the hard matching performance. In implementing the algorithm for a web-based application of recruiting system for the middle aged, we also considered the usability issue of making the system easier to use, which is especially important for this particular class of users. That is, we wanted to improve the usability of the system during the job search process for the middle aged users by asking to enter only a few simple and core pieces of information such as preferred job (job code), salary, and (allowable) distance to the working place, enabling the middle aged to find a job suitable to their needs efficiently. The Web site implemented with MOMA should be able to contribute to improving job search of the middle aged class. We also expect the overall approach to be applicable to other groups of people for the improvement of job matching results.

A Study on the Influence of Job Factor on Organizational Commitment of Public Librarians (직무요인이 공공도서관 사서들의 조직몰입에 미치는 영향에 관한 연구)

  • Lee, Eun-Chul;Sim, Hyo-Jung
    • Journal of Korean Library and Information Science Society
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    • v.37 no.4
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    • pp.419-442
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    • 2006
  • The purpose of this study is to closely examine the level of effect the job factor has on the organizational commitment of public librarians. To do this, I have divided the job factors in to four categories, Job specification, Job satisfaction, Job Involvement, Job performance, and classified the level of organizational commitment into three categories affective, continuance, normative and examined the level of organizational commitment of public librarians for each classification, and also analyzed the relationship for each factors and their importance.

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A study on the usage & control status of Job Instructions of the domestic business companies (국내기업의 실무지침서 유지 및 활용실태에 관한 고찰)

  • Syn, Dong-Sig
    • Proceedings of the Safety Management and Science Conference
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    • 2007.11a
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    • pp.425-432
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    • 2007
  • In the policy management of the safety&health, the environment and the quality, the documentation of the management system is required in every international regulatory guides. In case of 3 level classification of the system documents, it generally will be identified such name as the manual, the procedure and the job instruction. Each document has the unique role and usage though, the job instructions, especially, would be developed to support the practical job worker. So, the job instructions should be reflect the latest know-how of the job-handling methods. And that, it should be used at any times by the practical job worker. This study is planned to survey the actual usage status of the job instructions of the domestic enterprises, and tried to suggest the effective way of maintaining the documents.

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Human Resource Management of Institutional Household - To the Application for Job Analysis of Healthy Families Center Worker (공공가정의 인적자원 관리방안 - 건강가정사 직무분석에의 적용)

  • Song, Hye-Rim
    • Journal of Family Resource Management and Policy Review
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    • v.13 no.1
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    • pp.23-39
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    • 2009
  • This study was an attempt to examine the basic scheme required for the job analysis of healthy family-center workers in the context of human resource management. For this purpose, factors including frequency, importance, priority, and difficulty were examined. The job classification and concrete job activities were extracted from the interviews of eight healthy family-center workers, and these factors were then analyzed from the recordings. From the results of this study, 28 job tasks were collected and the four job types were classified. The results can be used for job analysis and human resource development (HRD). This study suggests that various methods should be used for job analysis and that a large number of samples should be utilized for the further studies.

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An Implementation of Smart Job Matching System Catch Job Based on Cloud System (클라우드 기반의 스마트 직업 매칭 서비스 Catch Job 구현)

  • Yoon, Kyung-Seob;Kim, Dong-Hyun;Kim, Jung-Tae
    • Proceedings of the Korean Society of Computer Information Conference
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    • 2015.01a
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    • pp.143-145
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    • 2015
  • 본 논문은 대기업에 편중된 구직 상황을 해결하기 위해 대학교의 학생 정보를 통해 중소기업과의 취업으로 연계하는 스마트 매칭 시스템의 설계를 제안한다. 기존 취업 포탈 사이트 에서는 업종과 직종을 직접 찾아들어가야 하는 매칭 시스템을 제공하고 있다. 이 문제를 해결하기 위해 대학교 DB에 있는 학생 정보를 직업들과 매칭하여 주는 스마트 매칭 시스템의 개발을 목적으로 한다. 따라서 제안한 스마트 매칭 시스템은 업종과 직종을 찾아 들어가야 하는 기존에 시스템을 로그인만 하면 바로 학과 정보, 지역 정보에 맞는 채용 공고를 자동으로 보여주는 방식으로 변경하여 대학생과 중소기업 간의 취업률을 높일 것으로 예측한다.

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A Novel Classification Model for Employees Turnover Using Neural Network for Enhancing Job Satisfaction in Organizations

  • Tarig Mohamed Ahmed
    • International Journal of Computer Science & Network Security
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    • v.23 no.7
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    • pp.71-78
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    • 2023
  • Employee turnover is one of the most important challenges facing modern organizations. It causes job experiences and skills such as distinguished faculty members in universities, rare-specialized doctors, innovative engineers, and senior administrators. HR analytics has enhanced the area of data analytics to an extent that institutions can figure out their employees' characteristics; where inaccuracy leads to incorrect decision making. This paper aims to develop a novel model that can help decision-makers to classify the problem of Employee Turnover. By using feature selection methods: Information Gain and Chi-Square, the most important four features have been extracted from the dataset. These features are over time, job level, salary, and years in the organization. As one of the important results of this research, these features should be planned carefully to keep organizations their employees as valuable assets. The proposed model based on machine learning algorithms. Classification algorithms were used to implement the model such as Decision Tree, SVM, Random Frost, Neuronal Network, and Naive Bayes. The model was trained and tested by using a dataset that consists of 1470 records and 25 features. To develop the research model, many experiments had been conducted to find the best one. Based on implementation results, the Neural Network algorithm is selected as the best one with an Accuracy of 84 percents and AUC (ROC) 74 percents. By validation mechanism, the model is acceptable and reliable to help origination decision-makers to manage their employees in a good manner.

IT Jobs in the Era of Digital Transformation: Big Data Analytics

  • Ho Lee;Jaewon Choi
    • Asia pacific journal of information systems
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    • v.29 no.4
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    • pp.717-730
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    • 2019
  • The era of digital transformation (or the fourth industrial revolution) has been triggered by the rapid development of software (SW) technologies. In this era, several studies suspected rapid changes in job structures occurring around the world. Thus, there is a growing need for acquiring the skill sets required for the future. However, there are no specific studies on how existing jobs are changing. To cope with this ambiguity of job changes, this paper aims to investigate how the current job structure is changing in response to digital transformation. To identify the dynamic nature of job change over time, we conducted an analysis based on job posting data. As a result, nine job occupations and fifteen jobs were found.