Review Analyzer
Customer reviews contain the most honest, unfiltered product feedback available — but reading hundreds of individual comments to find patterns is time-consuming and easy to get wrong. This skill systematically extracts sentiment trends, recurring pain points, and explicit feature requests from review data so you can prioritize what to fix in the product and what to address proactively in your listing copy and creator briefs.
Use when
- - You have accumulated 20 or more reviews on a TikTok Shop, Amazon, Shopee, or Shopify product listing and want to understand systematically what buyers love, tolerate, or actively dislike about the item.
- Your product rating has dropped below your target threshold and you need to diagnose which specific issues are driving negative reviews before you can design a fix or supplier conversation.
- You are planning a product version update, sourcing renegotiation, or packaging redesign and want to prioritize changes based on the frequency and severity of issues customers have actually reported.
- You are rewriting a product listing, preparing a creator brief, or building a FAQ section and want to address the most common buyer objections and confusion points preemptively in the copy.
What this skill does
Review Analyzer ingests raw customer review text — pasted directly, uploaded as a CSV, or copied from a product listing page — and applies a structured extraction framework to surface patterns across the entire review set. It categorizes each review by sentiment as positive, neutral, or negative, then tags every review with up to five topic labels drawn from a predefined ecommerce taxonomy covering packaging quality, product functionality, size and fit accuracy, delivery speed, instructions clarity, and value for money perception. It ranks pain points and praise themes by both frequency of mention and severity of customer frustration, identifies verbatim phrases most commonly used by unhappy customers which can be directly adapted into FAQ answers and listing copy improvements, and separates feature requests from quality complaints so each category can be routed to the appropriate team or action owner. The final output is structured for immediate action, not just summarized for awareness.
Inputs required
- - reviewstext (required): Raw customer review text in any format. Can be pasted as plain text, provided as a CSV with a review text column, or submitted as a bullet list copied from a product detail page. A minimum of ten reviews is required and thirty or more reviews is strongly recommended for statistically meaningful pattern detection.
- productname (optional): Product name or category description to help the skill apply the most relevant review taxonomy and filter out off-topic or misdirected review content. Example: silicone kitchen utensil set.
- ratingfilter (optional): Restrict analysis to reviews within a specific star rating range. Example: one to three stars only, to focus exclusively on identifying negative feedback drivers.
- outputgoal (optional): Specify the intended use of the analysis to tailor framing and emphasis. Options include listing copy improvement, product development roadmap, creator brief objection handling, or supplier quality brief.
Output format
The skill produces a four-section structured analysis report. The first section is a sentiment breakdown showing the percentage distribution of positive, neutral, and negative reviews alongside a one-sentence overall product health assessment. The second section is a ranked pain points list covering the top five to eight recurring issues sorted by frequency of mention, with representative verbatim quotes included for each issue to enable direct copy adaptation. The third section is a praise themes list showing what customers consistently highlight as product strengths, formatted for direct use in listing bullet points or creator talking point scripts. The fourth section is an action recommendations table that maps each identified pain point to a suggested resolution in one of three categories: product or sourcing change, listing copy update, or customer service response template. Each recommendation includes an estimated implementation effort level as low, medium, or high, and an estimated review score impact if the issue were resolved.
Scope
- - Designed for: TikTok Shop sellers, Amazon sellers, Shopify brand operators, and product development teams working with customer feedback at scale.
- Platform: Platform-agnostic — works with review text from TikTok Shop, Amazon, Shopee, Lazada, Shopify, and any other platform where customer reviews can be copied or exported.
- Language: English
Limitations
- - Requires review text to be provided manually as an input; the skill does not scrape or retrieve reviews directly from live platform pages.
- Pattern detection accuracy improves significantly with thirty or more reviews — small review sets below ten entries may produce frequency rankings that are not statistically representative.
- Does not automatically distinguish verified purchase reviews from unverified ones unless that distinction is explicitly included in the input data provided.
评论分析器
客户评论包含了最真实、未经筛选的产品反馈——但要通过阅读数百条个人评论来发现规律既耗时又容易出错。本技能系统性地从评论数据中提取情感趋势、反复出现的痛点和明确的功能需求,以便您能够优先确定产品中需要修复的问题,以及在商品详情文案和创作者简报中需要主动应对的内容。
使用场景
- - 您在TikTok Shop、Amazon、Shopee或Shopify产品页面上积累了20条或更多评论,希望系统了解买家对该产品的喜爱、容忍或明确不喜欢的方面。
- 您的产品评分已降至目标阈值以下,需要在设计修复方案或与供应商沟通之前,诊断哪些具体问题导致了负面评论。
- 您正在规划产品版本更新、采购重新谈判或包装重新设计,希望根据客户实际反馈问题的出现频率和严重程度来优先确定变更事项。
- 您正在重写产品详情页、准备创作者简报或构建常见问题解答部分,希望在文案中预先解决最常见的买家异议和困惑点。
本技能的功能
评论分析器接收原始客户评论文本——可直接粘贴、以CSV格式上传或从产品详情页复制——并应用结构化提取框架来呈现整个评论集中的规律。它按情感将每条评论分类为正面、中性或负面,然后为每条评论标记最多五个主题标签,这些标签来自预定义的电商分类体系,涵盖包装质量、产品功能、尺寸合身度、配送速度、说明清晰度和性价比感知。它按提及频率和客户挫败感严重程度对痛点和赞美主题进行排序,识别不满客户最常使用的原话短语,这些短语可直接改编为常见问题解答和商品详情文案改进内容,并将功能需求与质量投诉分开,以便每个类别可以分配给相应的团队或负责人。最终输出结构化为可直接采取行动的内容,而不仅仅是总结供参考。
所需输入
- - reviewstext(必需):任何格式的原始客户评论文本。可以纯文本形式粘贴、以包含评论文本列的CSV形式提供,或作为从产品详情页复制的项目符号列表提交。至少需要十条评论,强烈建议三十条或以上评论以获得具有统计意义的模式检测结果。
- productname(可选):产品名称或类别描述,帮助技能应用最相关的评论分类体系并过滤掉离题或错误导向的评论内容。示例:硅胶厨房工具套装。
- ratingfilter(可选):将分析限制在特定星级评分范围内的评论。示例:仅限一至三星,以专注于识别负面反馈驱动因素。
- outputgoal(可选):指定分析的预期用途,以调整框架和重点。选项包括商品详情文案改进、产品开发路线图、创作者简报异议处理或供应商质量简报。
输出格式
本技能生成一份包含四个部分的结构化分析报告。第一部分是情感分析,显示正面、中性和负面评论的百分比分布,以及一句整体产品健康评估。第二部分是按排名排列的痛点列表,涵盖前五到八个反复出现的问题,按提及频率排序,每个问题附有代表性原话引用,以便直接进行文案改编。第三部分是赞美主题列表,显示客户一致强调的产品优势,格式可直接用于商品详情要点或创作者谈话要点脚本。第四部分是行动建议表格,将每个识别出的痛点映射到三类建议解决方案之一:产品或采购变更、商品详情文案更新或客户服务回复模板。每条建议包含预估的实施工作量等级(低、中或高),以及如果问题得到解决后预估的评分影响。
适用范围
- - 适用对象:TikTok Shop卖家、Amazon卖家、Shopify品牌运营者以及大规模处理客户反馈的产品开发团队。
- 平台:平台无关——适用于来自TikTok Shop、Amazon、Shopee、Lazada、Shopify以及任何其他可以复制或导出客户评论的平台。
- 语言:英语
局限性
- - 需要手动提供评论文本作为输入;本技能不会直接从实时平台页面抓取或检索评论。
- 模式检测准确率在三十条或以上评论时显著提高——少于十条评论的小型评论集可能产生不具有统计代表性的频率排名。
- 除非输入数据中明确包含该区分信息,否则不会自动区分已验证购买的评论和未验证的评论。