[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"article-zhihu-soft-copywriting-four-tips-en":3,"article-related-zhihu-soft-copywriting-four-tips-en":35,"series-tools-4591eda4-bde7-44ff-8707-d11c98c2619a":82},{"id":4,"title":5,"content":6,"summary":7,"source":8,"source_url":9,"author":10,"image_url":11,"keywords":12,"language":17,"translated_content":10,"views":18,"is_premium":19,"created_at":20,"updated_at":20,"cover_image":11,"published_at":21,"rewrite_status":22,"rewrite_error":10,"rewritten_from_id":23,"slug":24,"category":25,"related_article_id":26,"status":27,"google_indexed_at":10,"x_posted_at":10,"tweet_text":10,"title_rewritten_at":10,"title_original":10,"key_takeaways":28,"topic_cluster_id":32,"embedding":33,"is_canonical_seed":34},"4591eda4-bde7-44ff-8707-d11c98c2619a","知乎这篇软文教你写出能卖货的标题","\u003Cp data-speakable=\"summary\">我把知乎这篇软文拆成了可直接套用的写作模板。\u003C\u002Fp>\u003Cp>我以前也写过不少软文，最开始总觉得只要把产品夸到位就行。结果很快就发现不对劲：标题像说明书，正文像产品手册，读者一眼看穿，连停顿都不给我。更烦的是，很多“教写软文”的文章自己也写得像软文失败案例，满篇都是空话，像在告诉你“要有吸引力，要有结构，要自然植入”，听完等于没听。\u003C\u002Fp>\u003Cp>我后来回头看知乎这篇《\u003Ca href=\"https:\u002F\u002Fwww.zhihu.com\u002Fen\u002Farticle\u002F501269869\">How to Write Good Soft Copy, Remember These Four Tips\u003C\u002Fa>》，才意识到它其实不是在讲文学写作，而是在讲一套很实用的内容包装逻辑。它很直白，甚至有点老派，但确实把“怎么让人愿意看下去”拆得很清楚。原文作者是漓黎，页面里还挂着一串相关软文推广文章，明显是在同一个内容运营框架里反复输出。\u003C\u002Fp>\u003Ch2>先别急着写正文，标题才是第一道筛子\u003C\u002Fh2>\u003Cblockquote>“The first step is to come up with a creative, novel, and highly attractive title.”\u003C\u002Fblockquote>\u003Cp>这句话看着像废话，但我得承认，它说中了软文最容易翻车的地方。很多人把标题当成文章最后一步，写完正文再随便起一个。问题是，软文不是论文，没人有义务陪你慢慢进入状态。标题不够抓人，正文再认真也白搭。\u003C\u002Fp>\n\u003Cfigure class=\"my-6\">\u003Cimg src=\"https:\u002F\u002Fxxdpdyhzhpamafnrdkyq.supabase.co\u002Fstorage\u002Fv1\u002Fobject\u002Fpublic\u002Fcovers\u002Finline-1779146043429-ig5n.png\" alt=\"知乎这篇软文教你写出能卖货的标题\" class=\"rounded-xl w-full\" loading=\"lazy\" \u002F>\u003C\u002Ffigure>\n\u003Cp>原文还给了四个原则：标题不要太长；尽量贴近热点；击中痛点；可以用问句或反问句。说白了，标题不是内容摘要，而是入口设计。它的任务不是“准确”，而是“让人停一下”。\u003C\u002Fp>\u003Cp>我自己最常见的错误是把标题写得太完整，像在给编辑交作业。后来我改成先写三个版本：一个偏热点，一个偏痛点，一个偏冲突。比如同样是讲“软文怎么写”，你可以写成“4个软文标题套路，别再写成产品说明书了”，这就比“如何撰写优质软文”强太多。\u003C\u002Fp>\u003Cp>怎么应用？我建议你先把标题拆成三层：\u003C\u002Fp>\u003Cul>\u003Cli>对象是谁：新手、运营、品牌、老板、销售\u003C\u002Fli>\u003Cli>问题是什么：没人看、没人转、没人信、没人买\u003C\u002Fli>\u003Cli>结果是什么：更高点击、更自然植入、更像人话\u003C\u002Fli>\u003C\u002Ful>\u003Cp>把这三层拼起来，标题就不容易飘。\u003C\u002Fp>\u003Ch2>热点不是蹭热度，是借别人的注意力\u003C\u002Fh2>\u003Cp>原文第二点写得很实在：要及时关注热点，因为热点能带来更多流量推荐。它说得不花哨，但逻辑很清楚，软文本质上就是借势。你自己从零造注意力，成本高得离谱；借着别人已经在讨论的东西切入，效率高得多。\u003C\u002Fp>\u003Cp>这里有个容易被误解的地方。很多人一听“蹭热点”，脑子里就想到硬贴、乱贴、强行编故事。其实不是。真正有效的做法，是把热点当成入口，不是当成主题本身。你要做的是把产品、观点、行业经验塞进一个读者已经愿意点开的语境里。\u003C\u002Fp>\u003Cp>我见过最糟糕的写法，是标题用了热点，正文却完全跑题。读者点进来发现货不对板，马上退出。这样不仅没赚到流量，还把信任赔进去了。热点能帮你拿到第一次点击，但正文决定你有没有第二次机会。\u003C\u002Fp>\u003Cp>如果你要落地，我建议这么做：\u003C\u002Fp>\u003Cul>\u003Cli>先选一个和产品有关的热点，不要硬凑娱乐八卦\u003C\u002Fli>\u003Cli>把热点拆成“情绪词”而不是“新闻事实”\u003C\u002Fli>\u003Cli>正文前两段先回应热点，再把话题转回你的内容\u003C\u002Fli>\u003C\u002Ful>\u003Cp>这样写出来的软文，至少不会像临时拼凑的公关稿。\u003C\u002Fp>\u003Ch2>结构清楚，比文采好看更重要\u003C\u002Fh2>\u003Cblockquote>“A clear article structure is a basic requirement for a piece of writing to be readable.”\u003C\u002Fblockquote>\u003Cp>我很同意这一点。很多软文失败，不是因为不够会写，而是因为结构乱。读者不是来参加耐力测试的，你要是前言铺太久、观点来回跳、案例和结论互相打架，基本就没戏了。\u003C\u002Fp>\n\u003Cfigure class=\"my-6\">\u003Cimg src=\"https:\u002F\u002Fxxdpdyhzhpamafnrdkyq.supabase.co\u002Fstorage\u002Fv1\u002Fobject\u002Fpublic\u002Fcovers\u002Finline-1779146043870-mclh.png\" alt=\"知乎这篇软文教你写出能卖货的标题\" class=\"rounded-xl w-full\" loading=\"lazy\" \u002F>\u003C\u002Ffigure>\n\u003Cp>原文提到写作前要准备提纲和材料，这一点特别像我做内容方案时的习惯：先定骨架，再填肉。没有骨架，文章只会东一块西一块，像拼贴画。尤其是软文，结构越清楚，越容易把“推广”藏在“信息”里。\u003C\u002Fp>\u003Cp>我以前写过一篇产品介绍，前半段讲行业背景，后半段讲功能，最后突然插入购买链接。结果阅读数据很差。后来我复盘才发现，不是用户不接受广告，而是我把广告放得太突兀。结构如果没设计好，植入就会像硬塞。\u003C\u002Fp>\u003Cp>一个更稳的结构通常是这样的：\u003C\u002Fp>\u003Cul>\u003Cli>先抛出问题或冲突\u003C\u002Fli>\u003Cli>再解释为什么这个问题值得关注\u003C\u002Fli>\u003Cli>接着给出方法或方案\u003C\u002Fli>\u003Cli>最后把产品、服务或品牌自然放进去\u003C\u002Fli>\u003C\u002Ful>\u003Cp>你会发现，结构一顺，广告就没那么刺眼了。因为读者已经被内容带着走到那一步了。\u003C\u002Fp>\u003Ch2>图文搭配不是装饰，是让人继续往下读\u003C\u002Fh2>\u003Cp>原文说“Articles that combine text and images are the most popular among readers”，这话放到今天依然没过时。纯文本不是不能写，但如果你想让软文更像“内容”，而不是“公告”，图文搭配基本是标配。\u003C\u002Fp>\u003Cp>这里我想补一句自己的经验：图片的作用不是美化，而是切断疲劳。长段落会让人下意识跳读，图片、表格、截图、引用块都能帮读者停一下，重新进入内容。尤其是移动端阅读，屏幕一长，没视觉分隔就很容易把人看跑。\u003C\u002Fp>\u003Cp>不过图片也不是越多越好。很多软文喜欢堆图，结果每张图都在重复同一句广告语，读起来更烦。图文搭配真正有用的地方，是让图片承担信息分工，比如：\u003C\u002Fp>\u003Cul>\u003Cli>图片解释概念\u003C\u002Fli>\u003Cli>截图证明结果\u003C\u002Fli>\u003Cli>图表对比差异\u003C\u002Fli>\u003Cli>配图制造场景感\u003C\u002Fli>\u003C\u002Ful>\u003Cp>如果你写的是品牌内容，我建议每张图都回答一个问题：这张图是让读者理解、相信，还是停下来？如果三个都不是，那就删掉。\u003C\u002Fp>\u003Ch2>软植入不是藏得越深越好，而是别把读者当傻子\u003C\u002Fh2>\u003Cblockquote>“The advertisement content should not be revealed at the beginning.”\u003C\u002Fblockquote>\u003Cp>原文对“植入”的描述很典型，意思是广告别一上来就摊牌，要藏在内容里，慢慢露出来。这个思路没错，但我得说一句，很多人把“藏”理解成“骗”，这就离谱了。\u003C\u002Fp>\u003Cp>软文的本质不是欺骗，而是延迟揭示。读者先获得信息，再慢慢接受品牌出现，这样才不会在第一屏就产生防御心理。问题在于，很多文章把广告藏得太深，深到整篇看完都不知道它到底想卖什么。那也不行。\u003C\u002Fp>\u003Cp>我自己的标准很简单：读者应该在读到中后段时，能自然意识到“哦，原来这篇文章是在讲这个产品\u002F服务\u002F品牌”。如果他完全没察觉，那可能是植入太弱；如果他一开头就反感，那就是植入太硬。\u003C\u002Fp>\u003Cp>怎么把握这个度？我一般用三步：\u003C\u002Fp>\u003Cul>\u003Cli>前30%只讲问题和场景，不提卖点\u003C\u002Fli>\u003Cli>中间40%开始引入方法和对比\u003C\u002Fli>\u003Cli>后30%再把产品放进解决方案里\u003C\u002Fli>\u003C\u002Ful>\u003Cp>这样做的好处是，广告不是插进去的，而是顺着内容长出来的。读者接受的是解决问题的过程，不是生硬的推销动作。\u003C\u002Fp>\u003Ch2>这篇知乎软文真正教我的，是内容运营的底层顺序\u003C\u002Fh2>\u003Cp>如果把原文四点连起来看，它其实在讲一个很朴素的顺序：先让人点进来，再让人读下去，然后让人接受你的信息，最后才轮到转化。这个顺序看着简单，但很多内容团队就是会反着来，先急着卖，再想怎么让人愿意看。\u003C\u002Fp>\u003Cp>我现在回头看，觉得这篇文章最大的价值不在于“软文写作技巧”本身，而在于它把内容当成了一个漏斗。标题负责入口，热点负责借势，结构负责留存，植入负责转化。每一步都很普通，但拼起来就很实用。\u003C\u002Fp>\u003Cp>这也是为什么我不太喜欢那种只会喊口号的写作教程。真正能用的东西，往往都很朴素，甚至有点老。但它们能落地，能复用，能让你少交学费。\u003C\u002Fp>\u003Cp>如果你现在也在写软文，我建议先别追求“写得高级”。先把这四件事做对：标题能点、话题能接、结构能顺、广告能藏。做到这四步，你的内容至少不会像一篇自我感动的宣传稿。\u003C\u002Fp>\u003Ch2>你可以直接套用的软文写作模板\u003C\u002Fh2>\u003Cpre>\u003Ccode># 软文写作模板：4步写出能读下去的推广内容\n\n## 1. 标题\n- 形式A：{热点\u002F场景} + {痛点} + {结果}\n- 形式B：{数字}个{方法\u002F技巧}，帮你{解决问题}\n- 形式C：为什么{常见做法}总是{负面结果}？\n\n示例：\n- 4个软文标题套路，别再写成产品说明书了\n- 为什么你的推广文章没人看？问题通常在开头\n- 3个方法，把广告写得不像广告\n\n## 2. 开头\n- 先抛出一个真实问题\n- 再用一句话说明这个问题为什么重要\n- 不要一上来介绍产品\n\n示例：\n我以前也把软文写得像说明书，结果读者根本不看。后来我才发现，标题和开头决定了80%的阅读命运。\n\n## 3. 正文结构\n### 第一段：问题\n描述用户正在经历什么困难。\n\n### 第二段：原因\n解释为什么这个问题会发生。\n\n### 第三段：方法\n给出3-4个可执行的解决步骤。\n\n### 第四段：自然植入\n把产品、服务或品牌放进方法里，而不是单独拉出来卖。\n\n## 4. 植入规则\n- 前30%不提广告\n- 中间40%引入解决方案\n- 后30%再出现品牌或产品\n- 不要用夸张口号替代真实价值\n\n## 5. 图文搭配\n- 每2-4个小节配一张图或一张截图\n- 图要补充信息，不要重复文案\n- 图注写清楚这张图说明什么\n\n## 6. 结尾\n- 回到用户问题\n- 总结方法\n- 再给出下一步动作\n\n示例结尾：\n如果你也在写软文，先别急着卖。先把标题、结构和植入顺序理顺，文章才会像内容，而不是广告传单。\n\u003C\u002Fcode>\u003C\u002Fpre>\u003Cp>这套模板不是为了让你写出“看起来很会写”的文章，而是让你少犯那些一眼就能看穿的错误。你可以直接拿去改成自己的行业版本：教育、家装、医美、B2B、工具软件，都能套。\u003C\u002Fp>\u003Cp>我最后再补一句，这篇知乎原文虽然写得比较基础，但它的思路是对的。它提醒我，软文不是比谁更会煽情，而是谁更懂读者怎么停留、怎么接受、怎么继续往下看。\u003C\u002Fp>\u003Cp>原始内容来自知乎文章 \u003Ca href=\"https:\u002F\u002Fwww.zhihu.com\u002Fen\u002Farticle\u002F501269869\">How to Write Good Soft Copy, Remember These Four Tips\u003C\u002Fa>，我这篇是基于原文观点做的拆解和重写，不是原文复述。文中的模板和应用建议是我根据原文思路整理出来的，方便你直接复制到自己的内容工作流里。\u003C\u002Fp>","我拆开知乎这篇软文，提炼出一套能直接套用的软文写作模板。","www.zhihu.com","https:\u002F\u002Fwww.zhihu.com\u002Fen\u002Farticle\u002F501269869",null,"https:\u002F\u002Fxxdpdyhzhpamafnrdkyq.supabase.co\u002Fstorage\u002Fv1\u002Fobject\u002Fpublic\u002Fcovers\u002Finline-1779146043429-ig5n.png",[13,14,15,16],"软文写作","标题技巧","内容营销","广告植入","en",0,false,"2026-05-18T23:13:43.175468+00:00","2026-05-18T23:13:43.168+00:00","done","dfef218e-6b79-41fd-813a-a9717e4fa05d","zhihu-soft-copywriting-four-tips-en","tools","eb8ba5dd-3093-4c8e-8625-bfd5f11f3800","published",[29,30,31],"标题先于正文，决定读者会不会停下来。","热点是借势入口，不是硬贴主题。","结构和植入顺序，决定软文像内容还是像广告。","eeb40ab6-14b9-4a15-b8ba-13f66609c974","[-0.006183976,0.012685826,0.033231124,-0.080562584,0.01967701,0.0046516564,-0.0025267135,0.0051919087,0.012235352,0.020777924,-0.016930262,-0.01363398,0.01022008,-0.027760101,0.11116282,0.0024190592,0.022122981,0.009955454,0.013259865,0.0044845846,0.01596348,-0.0014161791,0.025687024,-0.021194583,0.009363462,0.008055195,0.014877012,0.01238518,0.019017795,-0.038729675,0.0077708713,0.04694204,0.03399754,0.02794214,0.010475197,0.019955518,0.027430888,-0.006488592,0.0047647604,0.029534405,-0.008845422,0.006494999,0.0067701074,-0.010370544,0.021613285,-0.0022161482,-0.003907347,-0.005285397,0.0077851247,0.014673193,0.00853821,0.030895174,-0.016216556,-0.15922745,-0.014293728,0.02491863,-0.010167666,-0.010908322,0.0074806893,-0.0010099527,-0.010700685,0.020492334,-0.029405558,-0.025573414,-0.0011999076,-0.010065051,0.003599008,0.022914596,0.017551264,-0.013718039,0.013248423,0.004733426,-0.01341171,-0.029336276,-0.006311551,-0.023750978,0.0028627892,-0.0038226724,0.00089855044,-0.005834022,0.011433548,-0.016214008,-0.020855423,0.013694361,-0.00092338055,-0.0034484575,0.01266458,0.017873358,0.019298946,0.024505561,0.013204829,0.031022632,-0.0063897576,-0.03417265,0.016994927,0.0012553381,-0.012799746,-0.0028743688,0.006050691,-0.008746055,-0.0060573984,-0.023251519,0.012626777,-0.015899463,-0.0067576016,0.0064671705,0.015719391,-0.034589566,0.0020514978,-0.01925344,0.030863106,0.0006350372,0.01105465,0.025819141,-0.029281579,-0.13890807,-0.01762319,0.0038094756,-0.023011839,0.0038896413,-0.026551683,0.005028926,0.011004483,0.013860397,0.013786404,-0.01175602,-0.022793222,0.0012074359,-0.0011985976,-0.0026121777,-0.03163052,-0.005915942,-0.018501151,0.027133161,-0.006943645,-0.0033879825,-0.005489734,-0.036267757,-0.02256662,-0.042713225,0.01138089,0.01724298,0.0017342938,-0.0014314395,-0.02612043,-0.008261547,-0.016564503,0.02304909,-0.0051325844,-0.021681333,-0.018358467,-0.027013464,-0.011849385,0.018788131,0.003712968,-0.042004842,0.0049861497,0.0096703535,0.002812349,-0.008242533,-0.01628498,0.018836318,-0.026817225,0.022916066,-0.022756498,0.030738516,0.0047333147,-0.0021376577,0.015253021,0.018742504,-0.009076101,0.010416314,0.0073416005,-0.010355828,0.002865595,-0.0038398013,-0.020628002,-0.003789413,0.02422168,0.034332346,-0.007822327,-0.00013201847,0.023827117,-0.00013254394,0.013418824,-0.0069245505,0.011457465,0.010338789,0.026424164,-0.0057360292,0.004812952,-0.01371857,0.025331367,-0.021632167,-0.009221955,-0.024883391,-0.017253233,0.0037952438,0.016911909,0.011841102,0.006331326,0.00070434326,0.019195713,-0.03551196,0.0060119685,-0.0056875004,-0.011887895,-0.018949205,0.03489895,-0.001257275,-0.015117007,0.021216625,0.026448755,0.004126783,-0.01165206,-0.016260354,0.0048575797,-0.022278726,-0.021272792,-0.020026207,0.035805136,-0.018309778,0.025994949,0.04654348,-0.011852451,0.0052032666,-0.008702596,-0.02767397,-0.012793753,-0.014375062,0.020503232,0.011975473,0.01888205,-0.00096118415,0.0023711622,0.019167477,-0.0041872663,0.005429597,0.0024271123,0.015847275,-0.016764631,-0.005807451,0.01723819,0.004068915,0.0076771425,-5.973238e-05,0.00068131904,0.016235273,0.014287236,-0.034393717,-0.0003606815,-0.030900005,0.01942911,-0.010655521,-0.0055995956,-0.013054512,-0.03576718,0.008782979,0.024386762,-0.013908846,-0.0006368218,-0.020681111,0.014731445,0.009828716,0.0015974008,-0.02504092,0.0011415223,0.028092807,-0.005720247,0.01202169,0.0029292307,0.013511199,-0.03398474,-0.026232008,0.012657411,-0.010537117,-0.07300217,0.046308763,0.017074754,-0.024254367,-0.0128870495,-0.007491092,0.0053222706,0.01880145,-0.031509344,0.029106477,-0.0124493325,-0.0037768984,0.019930122,-0.009901735,-0.00076443166,0.025871096,-0.01077097,-0.0011565896,0.00044946373,-0.0051822597,-0.0036595326,-0.02383599,-0.031949755,-0.020985728,0.025695741,-0.005685128,0.01780744,0.02723915,0.0040630843,-0.00261138,0.004963446,0.032214444,0.024887089,0.0077225287,-0.0072964868,0.002945967,0.009798748,0.0116124395,-0.010900357,-0.008012719,0.0022096217,-0.006085057,0.0035099653,0.014429933,-0.013722809,0.01103778,-0.0026629206,0.010431635,-0.01841848,0.028733034,0.007319819,-0.0019601628,0.009002039,-0.03674984,0.028490998,0.024676748,0.0067919604,-0.008175533,0.014885209,-0.009387149,-0.0068498272,0.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