Exploring the Path to Enhance the Employment Guidance Ability of College Counselors in the New Era
DOI:
https://doi.org/10.53469/jeet.2023.03(10).03Keywords:
New Era, Counselors, Specialization, Employment guidance abilityAbstract
With the continuous expansion of enrollment in universities, the number of college students graduating each year is increasing, and the employment situation for college students is becoming increasingly severe. Conducting employment guidance for college students is an important measure and means to enhance their employability and increase employment rates. College counselors are an important force in the employment guidance work of college students, and their ability to provide employment guidance is crucial. This article systematically elaborates on the current situation of counselor employment guidance work in the context of the new era, as well as the paths to improve counselor employment guidance ability. Although the relevant provisions of the administrative agreement in China are still in the new stage, although the theoretical field is developed late, in fact, there are relevant legal acts in practice. So far, the theoretical circle of our country has not reached a conclusion on the nature and system of administrative agreement, and has formed a unified view on the remedies of administrative agreement disputes. The special dual nature of administrative act provides a variety of possibilities for the study of its relief means.
References
Xi Baohui. Path to Improve the Employment Guidance Ability of College Counselors [J]. Think Tank Times, 2019 (18): 84+90
Hu Xiaoyue. Analysis of Improving the Employment Guidance Ability of College Counselors [J]. International Public Relations, 2019 (04): 76
Yao Yuqun. Investigation and Research on Employment Guidance for College Students [J]. Employment of Chinese College Students. 2005 (13): 38-41
Ren Qian. Research on the Changes in Employment Situation and Quality Cultivation of College Students [D]. Shanghai: Fudan University, 2004:24
Yang Lin Research on Vocational Literacy Education and Evaluation for College Students [J] Education and Occupation. 2010 (24): 179-180
Tu Jinyuan, Research on the Musical Style Characteristics and Performance Skills of Erhu Music Meng Feng, Master's Thesis of Wuhan Conservatory of Music, June 2012
Qiu Shuang, ""Analysis of the Performance and Creation of"" Capriccio No. 2- Mengfeng "","" Northern Music "", pp. 203-204, Issue 3, 2017
Cai Yuanxun, Creation Characteristics and Performance Analysis of Erhu Capriccio Meng Feng, Master's Thesis of School of Music, Jiangxi Normal University, June 2017
Guo Mengyu, ""The Performing Technique and Artistic Treatment of Gao Shaoqing's Capriccio No. 2- Meng Feng"", Master's Thesis, School of Music, Jiangsu University of Science and Technology, June 2019
J.Q. Peng, H.T. Wu, W. Wang: Impact of agricultural mechanization level on staple food production of farm households, China Agricultural Resources and Zoning, Vol.42 (2021) No.1, p.51-59. (In Chinese).
T. Peng: Impact of rural labor outflow on food production in Henan Province, Southern Agricultural Machinery, Vol.51 (2020) No.5, p.2-3+6. (In Chinese).
R.X Zhao, H.X Wang, Y.X Dong: Impact of climate change on grain yield and trend analysis in Guanzhong, Chinese Journal of Ecological Agriculture, Vol.28 (2020) No.4, p.467-479. (In Chinese).
Z.L Wang, H.F. Xiao: Analysis of the role of chemical fertilizer application on grain yield growth, Problems of Agricultural Economy, (2008) No.8, p.65-68. (In Chinese).
P.L Liu, W.J Wu, Y.Y Wan, et al: Analysis of influencing factors and gray prediction of grain yield -- based on data from main producing areas in Anhui Province, Journal of Xi'an University of Architecture and Technology (Social Science Edition), Vol.38 (2019) No.4, p.58-63. (In Chinese).
Y.S Zhou Y.H Xiao, R.S Huang: Grain yield prediction in Guangxi based on multiple linear regression, Southern Journal of Agriculture, Vol.42 (2011) No.9, p.1165-1167. (In Chinese).
C.C Zhang, S.D Chen: Application of BP neural network in grain yield prediction in Henan Province, Hubei Agricultural Science, Vol.53 (2014) No.8, p.1969-1971. (In Chinese).
J. Tinsina, D.J. Connor: Productivity and Management of Rice-wheat Cropping System: lissues and Challenges, Field Crops Research, Vol.82 (2001) No.69, p.93-132.
A. Dobermann: Factors Causing Field Variation of Direct-seeded Flooded Rice, Geoderma, Vol.25 (1994) No.62, p.125-150.
Petersen: Real-Time Prediction of Crop Yields From MODIS Relative Vegetation Health: A Continent-Wide Analysis of Africa, Remote Sensing, Vol.10 (2013) No.11, p.29-32.
Kern, et al: Statistical modelling of crop yield in Central Europe using climate data and remote sensing vegetation indices, Agricultural and Forest Meteorology, Vol.23 (2013) No.260, p.300-320.
[12] C.R Xing: Research on grain yield prediction method in Anhui Province based on machine learning (MS., Anhui University, China, 2019).
[13] N.Y Deng, Y.J Tian: Support vector machines: theory, algorithms and extensions (Science Press, China 2009).
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2023 Ziyue Ding
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.