five

Livelihoods Programme Monitoring Beneficiary Survey 2020 - Bangladesh

收藏
microdata.worldbank.org2023-01-20 更新2025-03-22 收录
下载链接:
https://microdata.worldbank.org/index.php/catalog/5342
下载链接
链接失效反馈
官方服务:
资源简介:
Abstract --------------------------- The UNHCR Livelihoods Monitoring Framework takes a program-based approach to monitoring, with the aim of tracking both outputs and the impact of UNHCR dollars spent on programming (either via partners or through direct implementation). The process for developing the indicators began in 2015 with a review of existing tools and approaches. Consultations were held with governments, the private sector, field-based staff and civil society partners to devise a set of common, standardized measures rooted in global good practices. Since 2017, a data collection (survey) has been rolled out globally, and the participating operations conducted a household surveys to a sample of beneficiaries of each livelihoods project implemented by UNHCR and its partner. The dataset consists of baseline and endline data from the same sample beneficiaries, in order to compare before and after the project implementation and thus to measure the impact. More info is available on the official website: https://lis.unhcr.org Analysis unit --------------------------- Households Kind of data --------------------------- Sample survey data [ssd] Sampling procedure --------------------------- The sampling was conducted by each participating operations based on general sampling guidance provided as the following: - At least 100 randomly selected beneficiaries for each project - Representativeness of sub-groups (gender, camp, etc.) should be kept as much as possible - Baseline and endline beneficiaries should be the same Mode of data collection --------------------------- Face-to-face [f2f] Research instrument --------------------------- Questionnaire contains the following sections: - partner information - general information on beneficiary - agriculture - self-employment - wage-employment

{'Questionnaire_contains_the_following_sections:': ': "问卷包含以下部分:', '-_self-employment': '- 自雇', 'Abstract': '联合国难民署生计监测框架采纳了基于项目的监测方法,旨在追踪项目产出以及联合国难民署投入项目(无论是通过合作伙伴还是直接实施)的美元资金的成效。', '-_partner_information': '- 合作伙伴信息', 'Mode_of_data_collection': '数据收集方式', '-_agriculture': '- 农业', 'Since_2017,a_data_collection_(survey)_has_been_rolled_out_globally,and_the_participating_operations_conducted_a_household_surveys_to_a_sample_of_beneficiaries_of_each_livelihoods_project_implemented_by_UNHCR_and_its_partner.': '自2017年以来,全球范围内开展了数据收集(调查),参与行动针对联合国难民署及其合作伙伴实施的每个生计项目的受益人样本进行了家庭调查。', 'Research_instrument': '研究工具', '-_wage-employment': '- 有薪就业', 'The_dataset_consists_of_baseline_and_endline_data_from_the_same_sample_beneficiaries,in_order_to_compare_before_and_after_the_project_implementation_and_thus_to_measure_the_impact.': '数据集由同一样本受益人的基线和终线数据组成,以便在项目实施前后进行比较,从而衡量影响。', '-_At_least_100_randomly_selected_beneficiaries_for_each_project': '- 每个项目至少随机选择100名受益人', 'The_process_for_developing_the_indicators_began_in_2015_with_a_review_of_existing_tools_and_approaches.': '指标开发的过程始于2015年,通过对现有工具和方法的审查而启动。', 'Consultations_were_held_with_governments,the_private_sector,field_based_staff_and_civil_society_partners_to_devise_a_set_of_common,standardized_measures_rooted_in_global_good_practices.': '与政府、私营部门、现场工作人员和民间社会合作伙伴进行了磋商,旨在制定一套基于全球优秀实践的普遍、标准化的衡量指标。', 'The_sampling_was_conducted_by_each_participating_operations_based_on_general_sampling_guidance_provided_as_the_following:': '抽样由每个参与行动根据以下提供的通用抽样指南进行。', '-_Representativeness_of_sub-groups_(gender,camp,etc.)_should_be_kept_as_much_as_possible': '- 应尽可能保持子群体(性别、营地等)的代表性', '-_general_information_on_beneficiary': '- 受益人的一般信息', 'More_info_is_available_on_the_official_website:_https://lis.unhcr.org': '更多详细信息可在官方网站上找到:https://lis.unhcr.org', 'Kind_of_data': '数据类型', '-_Baseline_and_endline_beneficiaries_should_be_the_same': '- 基线和终线受益人应保持一致', 'Analysis_unit': '分析单位', 'Sampling_procedure': '抽样程序'}
提供机构:
microdata.worldbank.org
5,000+
优质数据集
54 个
任务类型
进入经典数据集
二维码
社区交流群

面向社区/商业的数据集话题

二维码
科研交流群

面向高校/科研机构的开源数据集话题

数据驱动未来

携手共赢发展

商业合作