Overview
The geo-hallucination-checker skill is a hallucination and false-information detection tool.
It helps you review any piece of content (articles, landing pages, product descriptions, FAQs, GEO-optimized drafts, etc.) and:
- - Identify unsupported factual claims
- Flag fabricated or suspicious studies, reports, and statistics
- Highlight incorrect or overconfident conclusions
- Suggest safer, evidence-friendly rephrasings
The primary goal is to ensure that AI systems only cite truthful, well-grounded content and clearly mark anything that looks like hallucination risk.
Use this skill aggressively whenever there is any risk that the model might invent data, sources, or conclusions.
When to use this skill
Use geo-hallucination-checker whenever:
- - The user asks you to fact-check, verify, or validate content.
- The task involves medical, financial, legal, scientific, or technical claims.
- A draft includes numbers, percentages, dates, or strong superlatives (e.g., “the best”, “number one”, “guaranteed”, “clinically proven”).
- A text mentions studies, universities, journals, or institutions without clear, verifiable details.
- You are preparing GEO-optimized content that might be quoted by AI models and needs to be extra reliable.
- You are asked to rewrite content to avoid hallucinations or false claims.
If you are unsure whether hallucinations are a concern, assume they are and apply this skill.
Inputs this skill supports
This skill can be used on:
- - A single paragraph or answer
- A long-form article, blog post, or whitepaper
- A product page or landing page draft
- FAQ content or knowledge base articles
- Generated GEO content that will be cited by AI models
The user may also provide:
- - Explicit sources or references (links, documents, citations)
- Constraints (e.g., “do not use external web search”, “only use these PDFs as ground truth”)
Always respect any constraints the user provides.
Core workflow
When using this skill, follow this workflow:
- 1. Clarify the task mode
- If the user only asks to “check for hallucinations” or “verify content”, focus on
analysis.
- If the user asks you to “rewrite safely”, “make this citation-safe”, or “fix hallucinations”, perform
analysis first, then produce a
hallucination-safe rewrite.
- 2. Parse the content and extract claims
- Read the entire text carefully before judging specific parts.
- Break the content into
atomic factual claims. A claim is a statement that could, in principle, be checked as true or false.
- Ignore purely stylistic or obviously subjective language unless it is presented as an objective fact.
- 3. Check available evidence
- Prefer
explicit sources provided by the user (links, documents, citations).
- If tools are available and allowed, you may use them to consult:
- Official documentation or first-party sources
- Well-known reference material
- If you
cannot confidently verify a claim, treat it as
unsupported rather than assuming it is true.
- 4. Classify each claim
For each atomic factual claim, assign:
- status:
- Supported – clearly backed by the provided sources or well-established knowledge.
- Unsupported – no clear support; could be true, but you do not see evidence.
- Problematic – exaggerated, misleading, overconfident, or very unlikely without strong evidence.
- Contradicted – clearly conflicts with known facts or given sources.
- Speculative – forward-looking, predictive, or hypothetical, presented without clear caveats.
- risk_level:
- Low – unlikely to cause harm or serious misinformation.
- Medium – could mislead, but impact is moderate or limited.
- High – serious risk of harm, legal issues, medical/financial danger, or major reputational damage.
- reason:
- A short explanation of why you assigned that status and risk (e.g., “no source for extreme 500% performance claim”).
- suggested_fix:
- A concrete recommendation such as:
- “Remove this claim unless you can provide a real citation.”
- “Rephrase as a possibility, not a guarantee.”
- “Add a specific, verifiable source (e.g., link, DOI, report).”
- 5. Look for common hallucination patterns
Pay special attention to:
- Fabricated studies and journals
- Vague references like “a 2026 MIT study” or “Journal of Advanced AI Research” with no details.
- Journals or conferences that do not exist or sound suspiciously generic.
- Overconfident medical or scientific claims
- “Clinically proven to cure…”
- “Guaranteed to reduce X by 80%.”
- Overly precise unsourced statistics
- Very specific percentages, sample sizes, or timeframes with no citation.
- Superlatives and absolutes
- “The only solution that…”
- “Best in the world”, “100% safe”, “zero risk”.
- Misuse of authority
- Name-dropping famous institutions or companies without any concrete evidence.
Treat these as high-risk unless there is strong, clear evidence.
- 6. Produce a structured hallucination analysis
Always output a clear, structured analysis with two parts:
1. High-level summary
- Briefly describe:
- Overall hallucination risk (low/medium/high)
- The most critical issues to fix before publication or citation
2. Claim-level table
- Use a markdown table with the following columns:
- # – sequential index
- claim_text – the exact or paraphrased claim
- status – Supported / Unsupported / Problematic / Contradicted / Speculative
- risk_level – Low / Medium / High
- reason – a short explanation
- suggested_fix – what to do about it
Example structure (illustrative, not prescriptive content):
| # | claimtext | status | risklevel | reason | suggested_fix |
| - | ---------- | ------ | ---------- | ------ | ------------- |
| 1 | “Clinically proven to reduce depression by 80% in 2 weeks” | Problematic | High | No specific clinical trial or citation provided; extreme effect size is unlikely without strong evidence. | Add concrete trial details with citation or downgrade to cautious, non-clinical language. |
- 7. (Optional) Hallucination-safe rewrite
If the user explicitly requests a rewrite or safer version, after the table:
- Provide a section titled “Hallucination-safe version”.
- Rewrite the original content:
- Remove or soften high-risk claims.
- Replace overconfident language with cautious, transparent wording.
- Explicitly signal uncertainty where facts are not known (e.g., “Some users report…”, “Early results suggest…”).
- Do not invent:
- Study names, DOIs, journal titles, or URLs.
- Exact statistics or dates you cannot justify.
- If a strong claim is important but currently unsupported, suggest a placeholder note such as:
- “[Insert verified statistic with citation here]”
Constraints and safety rules
- Do not fabricate papers, DOIs, journal names, or institutional reports.
- If you are not sure a source exists, treat the claim as unsupported or problematic.
- - Err on the side of caution.
- It is better to mark a real claim as “Unsupported” than to let a hallucinated claim pass as fact.
- - Separate facts from marketing.
- Marketing language is acceptable
only if it is not masquerading as hard evidence.
- When in doubt, suggest softer, more honest language and disclose uncertainty.
- - Respect user constraints about tools and data.
- If the user forbids external web search or asks you to rely only on given documents, follow that rule strictly.
- Under such constraints, label claims based on what you can see, and explain that some might be true but remain “Unsupported” due to limited data.
How this skill interacts with other GEO skills
When used together with other GEO-oriented skills (e.g., content optimization, schema generation, or conversion optimization):
- - Run
geo-hallucination-checker after content is drafted but before finalizing output that might be cited. - Use the hallucination analysis to:
- Remove or soften risky claims.
- Add explicit “needs citation” notes where appropriate.
- Ensure all structured data (e.g., Schema.org fields) does not encode hallucinated facts.
If there is a conflict between persuasive copywriting and factual accuracy, prioritize factual accuracy and safety.
Output format summary
Unless the user specifies a different format, always:
- 1. Start with a short summary:
- Overall hallucination risk level.
- 2–5 bullets with the most important issues.
- 2. Provide a markdown table as described in the workflow section.
- 3. If requested, append a “Hallucination-safe version” that rewrites the content according to your analysis.
Aim for clarity and directness so that humans and AI systems can easily see which parts of the text are safe to cite and which require caution or correction.
概述
geo-hallucination-checker 技能是一种幻觉与虚假信息检测工具。
它可以帮助你审查任何内容(文章、落地页、产品描述、常见问题解答、GEO优化草稿等),并:
- - 识别无事实依据的主张
- 标记捏造或可疑的研究、报告和统计数据
- 指出错误或过度自信的结论
- 建议更安全、有据可依的改写方式
主要目标是确保AI系统仅引用真实、有充分依据的内容,并清晰标记任何可能存在幻觉风险的内容。
只要模型有可能编造数据、来源或结论,就应积极使用此技能。
何时使用此技能
在以下情况下使用 geo-hallucination-checker:
- - 用户要求你事实核查、验证或确认内容。
- 任务涉及医疗、金融、法律、科学或技术类主张。
- 草稿中包含数字、百分比、日期或强烈的最高级表述(例如“最佳”、“第一”、“保证”、“临床证明”)。
- 文本提及研究、大学、期刊或机构,但缺乏清晰、可验证的细节。
- 你正在准备GEO优化内容,这类内容可能被AI模型引用,需要格外可靠。
- 你被要求重写内容以避免幻觉或虚假主张。
如果你不确定是否存在幻觉风险,请假设存在并应用此技能。
此技能支持的输入
此技能可用于:
- - 单个段落或回答
- 长篇文章、博客文章或白皮书
- 产品页面或落地页草稿
- 常见问题解答内容或知识库文章
- 将被AI模型引用的生成式GEO内容
用户还可以提供:
- - 明确的来源或参考文献(链接、文档、引用)
- 约束条件(例如“不要使用外部网络搜索”、“仅使用这些PDF作为事实依据”)
始终尊重用户提供的任何约束条件。
核心工作流程
使用此技能时,请遵循以下工作流程:
- 1. 明确任务模式
- 如果用户仅要求“检查幻觉”或“验证内容”,则专注于
分析。
- 如果用户要求你“安全地重写”、“使此引用安全”或“修复幻觉”,则先进行
分析,然后生成
无幻觉的改写版本。
- 2. 解析内容并提取主张
- 在判断具体部分之前,先仔细阅读整篇文本。
- 将内容分解为
原子事实主张。主张是指原则上可以被验证为真或假的陈述。
- 忽略纯风格性或明显主观的语言,除非其被呈现为客观事实。
- 3. 检查可用证据
- 优先使用
用户提供的明确来源(链接、文档、引用)。
- 如果工具可用且允许,你可以使用它们查阅:
- 官方文档或第一手来源
- 知名参考资料
- 如果你
无法自信地验证某个主张,则将其视为
无依据,而不是假设其为真。
- 4. 对每个主张进行分类
对于每个原子事实主张,分配:
- 状态:
- 有依据 – 明确由提供的来源或公认知识支持。
- 无依据 – 无明确支持;可能为真,但你未看到证据。
- 有问题 – 夸大、误导、过度自信,或在缺乏强有力证据的情况下极不可能。
- 矛盾 – 与已知事实或给定来源明显冲突。
- 推测性 – 前瞻性、预测性或假设性,且未明确说明注意事项。
- 风险等级:
- 低 – 不太可能造成伤害或严重错误信息。
- 中 – 可能误导,但影响中等或有限。
- 高 – 存在严重的伤害、法律问题、医疗/财务风险或重大声誉损害风险。
- 原因:
- 简要说明为什么你分配了该状态和风险(例如,“500%性能的极端主张无来源”)。
- 建议修复:
- 具体建议,例如:
- “除非能提供真实引用,否则删除此主张。”
- “改写为可能性,而非保证。”
- “添加具体、可验证的来源(例如链接、DOI、报告)。”
- 5. 寻找常见的幻觉模式
特别注意:
- 捏造的研究和期刊
- 模糊引用,如“2026年MIT研究”或“高级AI研究杂志”,无详细信息。
- 不存在或听起来过于泛泛的期刊或会议。
- 过度自信的医疗或科学主张
- “临床证明可治愈……”
- “保证将X降低80%。”
- 过于精确但无来源的统计数据
- 非常具体的百分比、样本量或时间范围,无引用。
- 最高级和绝对化表述
- “唯一的解决方案……”
- “世界最佳”、“100%安全”、“零风险”。
- 滥用权威
- 提及知名机构或公司的名称,但无任何具体证据。
除非有强有力、清晰的证据,否则将这些视为高风险。
- 6. 生成结构化的幻觉分析
始终输出清晰、结构化的分析,包含两部分:
1. 高层摘要
- 简要描述:
- 整体幻觉风险(低/中/高)
- 在发布或引用前需要修复的最关键问题
2. 主张级表格
- 使用包含以下列的Markdown表格:
- # – 序号
- claim_text – 确切或改写的主张文本
- status – 有依据 / 无依据 / 有问题 / 矛盾 / 推测性
- risk_level – 低 / 中 / 高
- reason – 简短解释
- suggested_fix – 如何处理
示例结构(说明性,非规定性内容):
| # | claimtext | status | risklevel | reason | suggested_fix |
| - | ---------- | ------ | ---------- | ------ | ------------- |
| 1 | “临床证明可在2周内将抑郁症状降低80%” | 有问题 | 高 | 未提供具体临床试验或引用;若无强有力证据,极端效果量级极不可能。 | 添加具体试验细节及引用,或降级为谨慎的非临床语言。 |
- 7. (可选)无幻觉改写
如果用户明确要求改写或更安全的版本,在表格之后:
- 提供标题为 “无幻觉版本” 的部分。
- 重写原始内容:
- 删除或弱化高风险主张。
- 用谨慎、透明的措辞替换过度自信的语言。
- 在事实未知时明确表示不确定性(例如“一些用户报告……”、“早期结果表明……”)。
- 不要编造:
- 研究名称、DOI、期刊标题或URL。
- 你无法证明的精确统计数据或日期。
- 如果某个重要主张目前无依据,建议添加占位符注释,例如:
- “[在此插入经验证的统计数据及引用]”
约束条件与安全规则
- 不要捏造论文、DOI、期刊名称或机构报告。
- 如果你不确定某个来源是否存在,则将主张视为无依据或有问题。
- 将真实主张标记为“无依据”,总比让幻觉主张作为事实通过要好。
- 营销语言只有在
不伪装成硬证据时才可接受。
- 如有疑问,建议使用更温和、更诚实的语言,并披露不确定性。
- 如果用户禁止外部网络搜索或要求你仅依赖给定文档,则严格遵守该规则。
- 在此类约束下,根据你所看到的内容标记主张,并解释某些主张可能为真,但因数据有限仍为“无依据”。
此技能如何与其他GEO技能交互
当与其他面向GEO的技能(例如内容优化、Schema生成或转化优化)一起使用时:
- - 在内容起草之后、最终确定可能被引用的输出之前,运行 geo-hallucination-checker。
- 使用幻觉分析来:
- 删除或弱化风险主张。
- 在适当位置添加明确的“需要引用”注释。
- 确保所有结构化数据(例如Schema.org字段)不编码幻觉事实。
如果说服性文案与事实准确性之间存在冲突,优先考虑事实准确性和安全性。
输出格式摘要
除非用户指定不同格式,否则始终:
- 1. 以简短摘要开头:
- 整体幻觉风险等级。
- 2–5个要点,列出最重要的问题。
- 2. 按照工作流程部分所述提供Markdown表格。
- 3. 如果要求,附加一个“无幻觉版本”,根据你的分析重写内容。
目标是清晰直接,使人类和AI系统都能轻松看出文本的哪些部分可以安全引用,哪些需要谨慎或修正。