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中国高考录取分数线数据

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CnOpenData2024-05-23 收录
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资源简介:
高考录取分数线,是指普通高等学校招生全国统一考试录取分数线。该分数线,每年高考结束后,由省级教育招生主管部门统计后公布。高考录取分数线分为本科线和专科线。全国各个地方的录取线分科类、分批次确定,科类一般分为文科类、理科类、音乐类(文、理)、美术类(文、理)、体育类等,每一科类又各分为提前批、第一批、第二批等等。  CnOpenData推出中国高考录取分数线数据,从批次、学校、专业等三方面汇总高考录取情况,涵盖生源地、学校所在地、年份、分类、批次、分科、分数线、学校、专业、录取人数、最高/低分等字段,为相关研究提供优质的数据资源。

The college admission cutoff score refers to the minimum admission score threshold for universities and colleges via the National College Entrance Examination (NCEE, commonly referred to as Gaokao). These cutoff scores are compiled and released by provincial-level education and enrollment administrative departments annually right after the conclusion of the Gaokao. Gaokao admission cutoff scores are divided into two main categories: undergraduate program cutoff scores and vocational college program cutoff scores. Admission cutoff scores across different regions in China are determined based on subject categories and admission batches. Subject categories generally include arts, science, music (for arts/science candidates), fine arts (for arts/science candidates), physical education, and others. Each subject category is further subdivided into early admission batch, first batch, second batch, and other batches. CnOpenData has released the China Gaokao Admission Cutoff Score Dataset, which summarizes Gaokao admission conditions from three dimensions: admission batch, universities/colleges, and majors. The dataset covers fields such as candidates' origin region, university/college location, year, category, admission batch, subject category, cutoff score, university/college name, major name, enrollment quantity, highest and lowest admission scores, etc., providing high-quality data resources for relevant academic researches.
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CnOpenData
搜集汇总
数据集介绍
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背景与挑战
背景概述
该数据集汇总了中国高考录取分数线信息,从批次、学校、专业三个维度提供了2014年至2025年的详细数据,涵盖生源地、年份、分类、批次、文理分科、分数线、录取人数等关键字段。其特点是多角度覆盖录取过程,时间跨度完整,字段丰富,适用于教育政策分析、学校评估等相关研究。
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