临平区非遗体验场馆文化价值评价数据
收藏浙江省数据知识产权登记平台2024-11-05 更新2024-11-06 收录
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场馆管理者可依据文化价值评分数据针对临平区的不同非遗体验场馆进行文化价值优先级排序,合理分配资源投入和资源维护。利用文化价值评价数据,教育机构可以与高评价场馆合作,开发非遗体验教育项目,提高公众对本地非物质遗产的认识和参与度。根据场馆的文化价值评价数据,旅游服务商可以设计非遗主题文化旅游路线,将高评分场馆作为旅游路线的重点选择。步骤1,数据收集和预处理:从公司文化保障卡服务系统中自动抽取临平区域非遗体验场馆相关数据,包括场馆ID、历史背景介绍、文化活动频次、活动评价。通过数据清洗去除无效或错误记录,确保数据质量。
步骤2,历史背景评分,使用TF-IDF模型提取历史背景介绍中的关键词和短语,利用命名实体识别(NER)技术识别文本中的地点、人物、时间等实体,使用自然语言处理(NLP)技术,基于预定义的规则(如提及历史事件、著名人物等)为文本打分。
步骤3,文化活动频次评分计算采用线性公示,设定每月一次次为基准频次,得60分,每增加一次得20分。
步骤4,评价情感分数计算,使用预训练的BERT情感分析模型(一种基于深度学习的文本分析工具)对活动评价文本进行情感倾向分类,赋值情感分数。
步骤5,文化价值评分计算,使用加权求和的方法计算每个场馆的文化价值评分,公式为:文化价值评分 = α×历史背景评分+β×文化活动频次评分+γ×用户评价情感分数。α、β、γ 是权重因子,根据实际重要性分配和调整。
Venue managers can prioritize intangible cultural heritage (ICH) experience venues in Linping District based on cultural value scoring data, and rationally allocate resource investment and maintenance efforts. Educational institutions can cooperate with highly-rated venues to develop ICH experience education programs using cultural value evaluation data, thereby enhancing public awareness and participation in local intangible cultural heritage. Tourism service providers can design ICH-themed cultural tourism routes by taking highly-rated venues as key attractions based on the cultural value evaluation data of the venues.
Step 1: Data Collection and Preprocessing: Automatically extract data related to ICH experience venues in Linping District from the company's Cultural Security Card service system, including venue ID, historical background introduction, frequency of cultural activities, and activity reviews. Remove invalid or erroneous records through data cleaning to ensure data quality.
Step 2: Historical Background Scoring: Use the TF-IDF model to extract keywords and phrases from the historical background introduction, employ Named Entity Recognition (NER) technology to identify entities such as locations, persons, and time in the text, and score the text using natural language processing (NLP) technology based on predefined rules (e.g., mentions of historical events, famous figures, etc.).
Step 3: Cultural Activity Frequency Scoring: Adopt a linear formula, with the benchmark frequency set as once per month, which corresponds to a score of 60, and an additional 20 points for each extra activity.
Step 4: Evaluation Sentiment Score Calculation: Use a pre-trained BERT sentiment analysis model (a deep learning-based text analysis tool) to classify the sentiment tendency of activity review texts and assign sentiment scores.
Step 5: Cultural Value Score Calculation: Calculate the cultural value score of each venue using the weighted summation method, with the formula: Cultural Value Score = α×Historical Background Score + β×Cultural Activity Frequency Score + γ×User Evaluation Sentiment Score. Here, α, β, and γ are weight factors that are allocated and adjusted based on actual importance.
提供机构:
杭州码全信息科技有限公司
创建时间:
2024-10-21
搜集汇总
数据集介绍

特点
该数据集包含临平区非遗体验场馆的文化价值评价数据,涵盖533条记录,用于场馆管理、教育项目开发和旅游路线设计。数据通过TF-IDF模型、NER技术、NLP技术和BERT情感分析模型进行评分计算,最终得出文化价值评分。
以上内容由遇见数据集搜集并总结生成



