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堆垛机相关专利价值评价数据

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浙江省数据知识产权登记平台2023-12-26 更新2024-05-08 收录
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数据包中主要包括了国内堆垛机相关的专利,根据自有算法对专利数据进行了评价,可用于横向、纵向了解堆垛机相关专利数据变化情况,有助于了解堆垛机知识产权工作成果;通过现有专利价值的评估,帮助企业及早做好专利保护;了解堆垛机的技术发展趋势,有助于企业避免重复研发,避免企业开发的技术侵犯他人的知识产权。1.数据采集:通过第三方知识产权检索网站,对国内堆垛机相关的发明专利数量、实用新型数量、外观设计数量进行采集。2.数据处理:对采集到的原始数据进行处理,通过去除重复和有缺失的数据,对数据进行清理分类。3.数据计算:专利价值度评价模型采用层次分析法,基于层次分析(AHP)的主观赋值方法,对各个指标的主观确定权重,技术/法律/市场/战略/经济价值得分=∑各方面对应各个指标 * 对应权重,技术价值:被审查员引证数,引用专利国别数,引用非专利文献数,引证专利数,IPC部数,IPC小类数;法律价值:独权数、主权项数字数、权项数、说明书页数、布局国家数、PCT国际申请、存活期;市场价值:同族数、剩余有效期;战略价值:无效次数、ETSI标准、专利奖;经济价值:转让次数、许可次数、质押次数算;专利得分为五个方面的价值得分累加总和。利用IFS函数对专利进行价值判定,专利价值度=IFS(专利得分>45, "超高价值专利",专利得分>20, "高价值专利",专利得分>10, "一般价值专利",专利得分>0, "无价值专利",) ,为本领域技术人员提供研发决策依据和技术规避作优先参考。

This dataset primarily contains domestic patents related to stackers. The patent data is evaluated with a self-developed algorithm, allowing users to analyze the changes in stacker-related patent data from both horizontal and vertical dimensions, and facilitating the understanding of achievements in stacker-related intellectual property work. Through the evaluation of current patent values, it helps enterprises proactively implement patent protection measures; additionally, grasping the technological development trends of stackers enables enterprises to avoid redundant R&D and prevent their developed technologies from infringing on others' intellectual property rights. 1. Data Collection: Relevant patent statistics including the quantities of invention patents, utility model patents, and design patents related to domestic stackers are collected via third-party intellectual property retrieval platforms. 2. Data Processing: The collected raw data is processed by eliminating duplicate and incomplete records, followed by data cleaning and classification. 3. Data Calculation: The patent value evaluation model adopts the Analytic Hierarchy Process (AHP), a subjective assignment method, to subjectively define the weights of each indicator. The score for each of the five value dimensions (technical, legal, market, strategic, and economic) is calculated as the sum of each indicator's value multiplied by its corresponding weight: - Technical value indicators: number of citations by examiners, number of cited patent countries, number of cited non-patent literatures, number of cited patents, number of IPC divisions, number of IPC subclasses; - Legal value indicators: number of independent claims, word count of independent claims, total number of claims, number of pages in the specification, number of layout countries, PCT international applications, patent survival period; - Market value indicators: number of patent families, remaining validity period; - Strategic value indicators: number of invalidation proceedings, ETSI standards, patent awards; - Economic value indicators: number of transfers, number of licenses, number of pledges. The total patent score is the cumulative sum of the scores from the five value dimensions. The IFS function is utilized to determine the patent value tier, with the formula defined as: `Patent Value Degree = IFS(Patent Score > 45, "Ultra-high Value Patent", Patent Score > 20, "High Value Patent", Patent Score > 10, "General Value Patent", Patent Score > 0, "No Value Patent")` This dataset provides R&D decision-making references and priority guidance for technical infringement avoidance for technical personnel in this field.
提供机构:
知产方舟(杭州)科技有限公司
创建时间:
2023-11-24
搜集汇总
数据集介绍
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特点
该数据集包含6691条堆垛机相关专利的价值评价数据,通过层次分析法对专利的技术、法律、市场、战略和经济价值进行评分,并根据总分对专利价值进行分类。数据每年更新一次,适用于了解堆垛机技术发展趋势和专利保护策略。
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