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Netherlands survey on criminality and law enforcement 1996

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Mendeley Data2024-04-26 更新2024-06-27 收录
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https://ssh.datastations.nl/citation?persistentId=doi:10.17026/dans-xxk-xwsh
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This survey contains a large amount of information dealing with events spanning the life course. Demographic and social characteristics / perception of crime in neighbourhood: incivility of neighbourhood, fear of crime / victimisation: sexual offences, assault, threat, burglary, bicycle theft, car theft, theft from car, theft/damage car exterior, pickpocketing, other theft, vandalism, hit-and-run accident, telephone harassment, other crimes, frequencies of victimisation 1995, traffic accidents / perceived risk of victimisation, respect for the law, relative importance goals of sentencing, satisfaction with police / offending: fare dodging, drunk driving, switching price tags, shop lifting, vandalism, fencing, bicycle theft, tax fraud, social security fraud, insurance fraud, theft at work, theft from car/home, hit-und-run driving, theft of money, inflicting injury with weapon / norm deviant behaviour / perceived risk of being caught / leisure time / living situation / capital punishment / death penalty / religion / integration in neighbourhood / attitudes towards criminality and law enforcement / sentences / indirect victimisation / estimated level of crime / accidents / quality of relationships, early youth, characteristics father, mother, head of household. Background variables: basic characteristics/ place of birth/ residence/ household characteristics/ occupation/employment/ income/capital assets/ education/ religion

本调查数据集涵盖了大量涉及生命历程各阶段事件的相关信息,内容包含人口与社会特征及社区犯罪认知:社区失序行为、犯罪恐惧;受害经历涉及性犯罪、袭击、威胁、入室盗窃、自行车盗窃、汽车盗窃、车内盗窃、车辆外部盗窃/损毁、扒窃、其他盗窃、故意毁坏财物、肇事逃逸事故、电话骚扰及其他犯罪,同时涵盖1995年受害频次、交通事故、感知受害风险、守法意识、量刑目标的相对重要性、对警方的满意度;犯罪行为类型包括逃票、醉酒驾驶、调换商品价格标签、入店行窃、故意毁坏财物、销赃、自行车盗窃、税务欺诈、社会保障欺诈、保险欺诈、职场盗窃、车内/居家盗窃、肇事逃逸、盗窃钱财、持械伤人;此外还涉及偏离规范的越轨行为、被抓获的感知风险、闲暇时间、居住状况、死刑、宗教信仰、社区融入情况、对犯罪与执法的态度、量刑、间接受害、预估犯罪水平、事故、人际关系质量、早年青年时期特征以及父亲、母亲、户主的相关特征;背景变量包括基本特征、出生地、居住地、家庭特征、职业/就业状况、收入/金融资产、教育程度、宗教信仰。
创建时间:
2023-06-28
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