原始数据:

程序:

#统计词频
library(wordcloud)#  F:/master2017/ch4/weibo170.cut.txttext <- readLines("F:/master2017/ch4/weibo170.cut.txt")
txtList <- lapply(txt, strsplit," ")
txtChar <- unlist(txtList)
txtChar <- gsub(pattern = "\"", replacement = "", txtChar)
data <- as.data.frame(table(txtChar))
ordfreq <- data[order(data$freq,decreasing = T),]
ordfreqcolors=brewer.pal(9,"Set1")
wordcloud(words=ordfreq$word,freq=ordfreq$freq,min.freq=1,scale=c(3,.5),max.words=500,colors=colors)

结果:  

原始文件:weibo170.cut.txt

"南航" "急救门" "其实" "里面" "很多" "事" "外行" "根本" "不" "了解" "120" "999" "区别" "医生" "南航" "工作人员" "抬" "人" "都" "讳莫如深" "了解" "根本原因" "才" "谈得上" "解决" "看热闹"
"看了" "报道" "后" "内心" "震撼" "气愤" "伤痛" "上帝" "上帝" "下场" "幸好" "这位" "旅客" "还会" "爬行" "庆幸" "万幸" "真能" "误治" "失去" "生命" "相关" "人员" "不要" "作" "苍白" "无聊" "解释" "只能" "增加" "人们" "讥讽" "气愤"
"人民日报" "痛批" "莫非" "救人" "还分" "领空" "领地"
"人在旅途" "遭遇" "急病" "各方" "都" "应" "时间" "赛跑" "抢救" "生命" "这起" "事件" "中" "能力" "施救" "人员" "慢作为" "不" "相互之间" "推脱" "责任" "令人心寒" "造成" "这种" "状况" "根本原因" "相关" "人员" "责任心" "不强" "责任" "边界" "不" "清晰" "不" "愿意" "危急关头" "承担责任"
"26" "日" "张" "先生" "乘坐" "南航" "CZ6101" "次" "航班" "时" "突发" "肠梗阻" "转院" "过程" "中" "遭到" "急救车" "工作人员" "欺骗" "协和" "三甲" "医院" "挂不上号" "送往" "市" "红十字会" "紧急" "救援" "中心" "质疑" "北京市" "999" "急救中心" "涉嫌" "利益输送" "市" "卫计委" "999" "急救中心" "正在" "调查"
"个人" "认为" "南航" "虽有" "责任" "情节" "较轻" "空乘" "空保" "去" "协助" "抬" "南航" "人" "害怕" "担责任" "民航" "航空公司" "不" "应该" "反思" "一下" "曾经" "遇到" "机场" "监护人员" "帮忙" "抬上" "飞机" "有份" "工作" "不" "容易" "都" "怕" "犯错误" "当事人" "999" "已" "道歉" "表示" "愿意" "赔偿" "财经网"
"看见" "没" "医疗" "部门" "赚俩钱" "老脸" "都" "不要" "北京" "二三线" "无耻" "地步"
"黑十字" "出来" "骗人" "当事人" "999" "已" "道歉" "表示" "愿" "赔偿"
"看来" "最" "恶劣" "999" "首都机场" "急救中心" "再就是" "机场" "BGS" "其实" "南航" "还" "真" "没有" "错误"
"都" "不用说" "告诉" "病人" "送到" "999" "给不给" "回款" "包括" "现结" "月" "结年" "结都算"
"道歉" "有什么用" "反思" "检讨" "改变"
"权力" "牟利" "已" "无所不用其极" "不惜" "草菅人命" "制度" "设计" "漏洞" "势必" "造成" "北京" "999" "急救" "这种" "劣行" "制度" "设计" "应" "充分" "估计" "人性" "弱点" "善加" "防范" "诱导" "现在" "往往" "制度" "设计者" "获利" "人性" "之恶" "设计" "时" "发酵"
"人命关天" "生命" "更" "重要"
"救人" "人" "都" "失去" "良心"
"999" "等于" "救救救" "不是" "实际上" "求求求" "球球球" "久久久"
"看" "完" "心凉" "老百姓" "活"
"这种" "事儿" "人" "一辈子" "基本" "都" "会" "遇到" "转死" "北京" "黑十字会"
"红十字会" "最大" "祸害" "红十字"
"一条" "生命" "都" "值得" "尊重" "后续" "看" "完" "觉得" "真扯" "医德" "何在" "救护车" "双十一" "租来" "送" "快递" "之过" "生命" "通行车" "越来越" "夸张" "扯淡" "路上"
"红十字会" "臭了"
"南航" "责任" "应该" "更多" "太" "没有" "职业道德" "良心" "上" "过得去"
"这种" "单位" "存在" "必要"
"红会" "名声" "臭" "不止" "一天两天"
"话" "说" "红十字会" "事业单位" "不" "卫" "计" "部门" "高" "都" "美国" "中国" "保留" "组织" "吸" "中国" "老百姓" "血吗"
"多少年来" "都" "知道" "涛声" "依旧"
"中间" "利益链" "应该" "挖掘"
"北京" "红十字会" "999" "急救" "应该" "配合" "调查" "公众" "知情权"
"999" "急救中心" "领导" "什么鸟" "领导" "什么鸟" "健康" "生命" "之上" "领导" "算" "生命" "鸟" "尊严" "人格" "之上" "领导" "什么鸟" "金钱" "利益" "面前" "领导" "的确" "只" "鸟" "看" "新闻" "999" "急救" "硬" "伤者" "送到" "很远" "清河" "检查" "后" "判断" "吸毒"
"本人" "声明" "此生" "绝不" "红十字会" "捐" "一分钱"
"话" "说" "记者" "死" "没人会管" "老百姓" "只能" "死"
"呵呵" "杜月笙" "副会长" "时有" "天壤之别"
"事件" "最终" "演变成" "朋友圈" "坚决" "不" "999" "活动"
"红十字会" "领导" "都" "美国" "办公" "住" "美国" "分享" "网易" "新闻"
"11" "月" "26" "日" "乘客" "张" "先生"
"999" "急救" "电话" "还敢" "打吗" "忽略" "事实"
"这位" "记者" "倒霉" "到家" "两点" "幸运" "第一" "认识" "医生" "朋友" "关键" "逃离" "999" "转院" "做" "手术" "记者" "话语权" "过去" "积累" "人脉" "事后" "引发" "广泛" "关注" "这年头" "资源" "都" "争取" "指望" "别人" "不易"
"话" "说" "明显" "柿子挑软的捏"
"中国红十字会" "厚颜无耻"
"告诉" "红十字会" "真" "不能" "相信" "再" "粉饰" "改变" "不了" "吸血" "畜生" "内在"
"传播" "曝光" "才" "可能" "机构" "人" "压力" "才" "可能" "使" "以后" "突发" "紧急" "病症" "人" "不再" "对待" "耽误"
"这种" "倨傲" "敷衍" "顽固" "态度" "真是" "跃然纸上" "真不知道" "999" "急救中心" "到底" "存在"
"事件" "看" "应该" "999" "关闭" "掉" "只" "保留" "120" "不" "能够" "再" "害人" "999" "存在"
"张" "先生" "外国人" "猜" "会" "咋样"
"事件" "想" "说" "999" "根本" "120" "999" "非常" "坑人"
"南航" "999" "急救门" "事件" "凸显" "国家" "院前" "急救" "存在" "诸多" "问题"
"小屋" "近几天来" "持续" "关注" "这件" "事" "这件" "事情" "暴露" "我国" "紧急" "应急" "机制" "巨大" "漏洞" "当事人" "称" "推上" "手术台" "时" "已" "出现" "大面积" "肠" "坏死" "再" "耽误" "些许" "绝无" "生还" "希望"
"评论" "里" "很多" "人" "骂" "999" "说" "亲身经历" "一贯" "999" "急救中心" "中途" "路过" "三甲" "医院" "不停" "奇怪" "多年" "相信" "不少" "投诉" "屹立" "不倒"
"事件" "现在" "明白" "过去" "120" "急救车" "病人" "直接" "送进" "附近" "医院" "999" "病人" "直接" "拉到" "999" "再" "做" "一通" "检查" "好" "收费" "检查" "完" "有没有" "医疗" "水平" "病人" "折腾" "半死" "后" "收" "费" "再" "转院" "说" "混蛋" "不" "混蛋" "强烈要求" "999" "关掉" "停止" "这种" "害人" "行径" "凡是" "经历" "999" "估计" "都" "同感"
"中国红十字会" "真是" "神" "存在" "999" "急救" "看来" "999" "要人命"
"红十字会"
"分" "分钟" "不认账"
"说" "无耻" "简直" "侮辱" "无耻" "两个" "字"
"都" "不肯" "做" "一点" "新华网"
"近日" "当事人" "张" "先生" "微博" "发表声明" "称" "999" "急救中心" "欺骗" "患者" "强行" "转诊" "已向" "北京市" "卫计委" "投诉" "999" "急救中心" "索赔"
"当事人" "质疑" "999" "调查" "奇葩" "国度" "里面" "奇葩" "事情"
"普通人" "医生" "看病" "不错" "了吗" "是因为" "奴性" "思想" "才" "会" "不公"
"国内" "救护车" "人员" "职责" "不清" "没有" "投诉" "监管" "相应" "制约" "造就" "本该" "救死扶伤" "人" "变成" "路人" "更" "可恨" "之人" "孤寡" "之人" "昏迷" "要求" "病人" "爬行" "车上" "不" "救助" "其实" "更" "可耻" "应为" "渎职" "当事人" "质疑" "999" "调查报告" "没" "问"
"病人" "没人" "抬" "身边" "没有" "家属" "挣扎" "爬" "上" "担架" "原因" "救护车" "没有" "配" "担架" "工" "周围" "没有" "人吗" "周围" "人" "干什么" "去了" "难道" "围观" "冷漠" "北京" "999" "急救中心" "调查" "所有人" "都" "问" "不来" "问问" "生病" "当事人" "随便" "都" "没有" "道理" "都" "咄咄怪事"
"急救车" "不" "配备" "抬架工" "不是" "没个" "病人" "都" "家属" "身边"
"不要脸" "南航" "旅客" "新浪" "新闻"
"老子" "干" "本事" "告" "告" "我呀" "我爸" "红十字会" "李刚" "一副" "嘴脸"
"之后" "当事人" "再次" "曝光" "北京" "999" "急救中心" "出现" "问题" "努力" "寻求" "好" "机制" "才能" "激励" "出" "人性" "曙光" "人性" "时刻" "架" "利益" "上" "炙烤" "很" "残酷" "病痛" "缠身" "病人" "必须" "跨栏" "高手" "跨过" "一道" "鬼门关" "还要" "再" "跨" "一道" "人为" "关卡" "更" "残酷"
"或许" "更名" "999" "急救门" "发酵" "至今" "超过" "十天" "事件" "热度" "不降反升" "网友" "关注" "焦点" "南航" "转到" "999" "急诊" "抢救" "中心" "下" "称" "999" "急救中心" "上" "当事人" "张" "先生" "指责" "欺骗" "患者" "强行" "送往" "999" "急救中心" "涉嫌" "利益输送"
"999" "急救" "系统" "乱象" "众多" "媒体" "网友" "聚焦" "披露" "下" "事件" "中所" "涉及" "999" "急救" "系统" "乱象" "逐渐" "减" "浮出" "水面" "相关" "人士" "透露" "999" "急救车" "确实" "存在" "急救" "人员" "医院" "协作" "医院" "收取" "提成" "现象" "存在" "医生" "无证" "上岗" "问题"
"医改" "改到" "家"
"说出" "病人" "急须" "抢救" "无奈" "主人公" "记者" "发病" "紧急" "时刻" "都" "好" "两个" "医生" "朋友" "救" "常人" "那不早" "挂了"
"原来" "红十字会"
"北京" "999" "急救中心" "最近" "南航" "旅客" "急救门" "处于" "全国" "公众" "舆论" "漩涡" "中心" "现在" "看来" "999" "急救中心" "红十字" "医院" "存在" "利益输送" "问题" "似乎" "已经" "摆脱" "不了" "事实" "郭美美" "事件" "现在" "999" "急救门" "中国" "红十字会" "需要" "送进" "医院" "医疗" "历史" "时刻"
"国际红十字会" "信誉" "很" "好" "公益" "慈善机构" "成" "事业单位" "成" "懂" "红会" "更" "不" "明白" "北京" "红会" "干" "急救" "系统" "公益" "经营"
"最近" "两个" "新闻" "鹰隼" "判" "十年" "av" "人" "日" "报道" "做" "拿块" "豆腐" "撞死" "还好" "大部分" "人" "不信" "幸好" "急救门" "当事人" "记者" "想" "起来" "拼" "整个儿" "人" "东西" "觉得" "上不来" "气"
"早安" "今天" "已" "变身" "999" "急救门" "当事人" "称" "999" "昨晚" "正式" "道歉" "表态" "会" "努力提高" "医疗" "水平" "接受" "公众" "监督" "仅仅" "道歉" "还远" "不够" "舍近求远" "急救" "路线" "需要" "解释" "疑点重重" "机构" "设置" "有待" "明晰" "需要" "999" "主管机构" "进一步" "回应" "院前" "急救" "人命关天" "当事人" "不是" "孤例" "应该" "成为" "最后" "一例"
"前两天" "999" "急诊" "还" "口气" "强硬" "很" "今天" "先" "公开" "一下" "红十字" "关系" "运营" "方式"
"送" "人" "回扣" "不说" "改正" "拉客" "回扣" "问题" "糊弄人" "虚伪" "道歉"
"红十字会" "真是" "垃圾"
"港" "媒" "关注" "999" "救护车" "送" "病人" "获利" "社会" "黑暗" "利益" "熏心" "人性" "堕落" "都" "金钱" "惹" "祸" "一定" "要说" "这种" "行为" "可悲" "更是" "可耻" "终" "一日" "人心" "会" "贪婪" "侵蚀"
"不" "应该" "道歉" "应该" "追究" "欺诈" "意图" "谋杀" "刑事责任"
"节目" "标题" "看" "标题" "倒不如" "改为" "中国" "急救" "体系" "生死考验" "更为" "合适"
"贵圈" "真乱"
"红会" "金钟罩" "不是" "一天两天" "郭美美" "现在" "屹立" "不倒" "试图" "问责" "民众" "还会" "指责" "政治" "不" "正确"
"光" "道歉" "有什么用" "希望" "部门" "999" "急救" "系统" "彻底" "调查" "彻底" "改善" "这种" "情况" "毕竟" "人命关天" "南航" "道歉" "想" "知道" "以后" "针对" "这种" "情况" "继续" "死板"
"命" "交" "人" "手里" "红会" "真是" "上上下下" "烂透" "草菅人命" "组织"
"红十字会" "最大" "祸害" "红十字" "深夜里" "不得不" "想起" "郭美美"
"制度" "漏洞" "监管" "缺失" "不" "再" "加上" "唯利是图" "价值观" "导致" "人性" "缺失" "目前" "普遍现象" "看来" "上次" "郭" "某某" "事件" "之后" "红十字会" "糊弄" "过去" "整个" "系统" "问题" "根儿" "上" "问题" "没有" "解决" "要求" "严查" "整顿"
"冒出来" "999" "急救中心" "草菅人命" "必须" "彻查"
"腐败"
"红十字会" "国际性" "组织" "很" "牛逼"
"红十字会" "领导" "巧" "全部" "去" "美国" "去" "多人" "做啥" "捐助" "钱吗" "是不是" "应该" "说明" "一下"
"不想" "说些" "或许" "尽可能" "保持" "健康" "身体" "才能" "避免" "人" "打交道"
"草菅人命" "红十字" "真是太" "渣了"
"999" "真的" "吊" "太" "不可" "思意"
"急救门" "事件" "南航" "机场" "责任" "都" "有限" "真正" "恶劣" "后来" "的事" "红十字会" "系统" "999" "急救" "身为" "院前" "抢救" "系统" "无视" "病人" "紧急" "需求" "强行" "送" "急救中心" "诊断" "错误" "无法" "抢救" "下" "还" "不让" "转院" "幸好" "事主" "朋友" "及时" "施救" "挽回" "一命"
"事件" "持续" "升温" "昨日" "下午" "事件" "当事人" "张" "先生" "新京报" "记者" "表示" "前晚" "接到" "北京" "999" "急救中心" "电话" "对方" "表示" "道歉" "愿意" "赔偿" "急救中心" "再次" "反复" "做" "检查" "赚钱" "急救中心" "出" "馊主意" "以后" "再" "遇到" "这种" "情况" "直接" "人" "搞" "死" "更" "省事" "无非" "一句" "尽力" "管它" "有没有" "医疗" "水平"
"事件" "来看" "今后" "绝对" "不敢" "打电话" "999" "999" "赚钱" "会" "要人命" "的呀" "钱" "还要" "人命" "可恶" "我家" "999" "附近" "当年" "很" "纳闷" "急救" "120" "北京" "冒出来" "999" "原来" "害人" "机构"
"患病" "乘客" "无人" "抬" "爬" "下" "飞机" "国家" "卫计委" "已" "要求" "北京市" "卫计委" "针对" "事件" "调查核实" "情况" "做出" "认真" "处理" "北京市" "卫计委" "表示" "调查" "属实" "依据" "法律法规" "违反" "相关" "规定" "单位" "法律" "予以" "处罚" "京华" "时报"
"999" "急救" "鬼"
"医闹入" "刑" "有益于" "就医" "环境" "然" "后续" "999" "事件" "医患" "关系紧张" "根源" "所在" "被骗" "诸多" "钱财" "无益" "病时" "好" "心情" "不闹" "闹" "入" "刑" "然" "医者" "无罪"
"红十字会" "郭美美" "说不清楚" "拉" "吃回扣" "白痴" "医院" "国家" "一下"
"愤怒" "无奈" "上贼船" "要命" "贼船" "撑腰" "是天"
"看" "一次" "便" "惊出" "一身" "冷汗" "999" "红会" "没有" "存在" "必要" "牵出" "999" "急救中心" "曝" "怪现状" "手机" "财" "新网"
"不能" "999" "游离" "急救" "规范" "之外" "不妨" "120" "999" "进行" "代管" "立生" "近日" "当事人" "张" "先生" "微博" "发表声明" "称" "999" "急救中心" "欺骗" "患者" "强行" "转诊" "已向" "北京市" "卫计委" "投诉" "999" "急救中心" "索赔" "此前" "9..." "不能" "999..."
"急求" "本来" "不" "应该" "民营" "资本" "干" "好好" "查查" "红会"
"医疗" "腐败" "冰山一角"
"红十会" "成" "黑十字会" "999" "更" "摘牌" "审查"
"软件" "出" "问题" "变更" "修改" "医院" "出" "问题" "人死" "都" "没" "道歉" "有什么用" "行业" "不能" "道歉"

转载于:https://www.cnblogs.com/zle1992/p/6675655.html

R语言统计词频 画词云相关推荐

  1. 统计词频-生成词云-数据分析报告(python R语言)

    数据分析 统计洛杉矶旅游地区的词频:景点词和酒店词 数据源:携程 网站的文本 数据分析: 统计词频(python语言) 用词云展示结果(R语言) 先看结果: 旅游景点的词频 旅游酒店的词频 统计酒店名 ...

  2. python统计txt文件中文词频_Python 中文文件统计词频 + 中文词云

    1. 词频统计: 1 importjieba2 txt = open("threekingdoms3.txt", "r", encoding='utf-8'). ...

  3. 用R进行文本挖掘与分析:分词、画词云

    数据分析入门与实战  公众号: weic2c 要分析文本内容,最常见的分析方法是提取文本中的词语,并统计频率.频率能反映词语在文本中的重要性,一般越重要的词语,在文本中出现的次数就会越多.词语提取后, ...

  4. java调用R 画词云

    一直想找个java包画词云,但是网上并没有什么现成方案.在github上用关键词wordcloud搜一下,发现用java开发的没有比较好的开源项目(获得星星都很少,最多也就个位数).但是又想在java ...

  5. Pytorch 文本数据分析方法(标签数量分布、句子长度分布、词频统计、关键词词云)、文本特征处理(n-gram特征、文本长度规范)、文本数据增强(回译数据增强法)

    日萌社 人工智能AI:Keras PyTorch MXNet TensorFlow PaddlePaddle 深度学习实战(不定时更新) 文本数据分析 学习目标: 了解文本数据分析的作用. 掌握常用的 ...

  6. 中英文分词后进行词频统计(包含词云制作)

    文章目录 1.英文词频统计和词云制作 2.中文词频统计和词云制作 2.1 错误发现 2.2 错误改正  在之前的分词学习后,开始处理提取的词语进行词频统计,因为依据词频是进行关键词提取的最简单方法: ...

  7. java怎么画词云_Matplotlib学习---用wordcloud画词云(Word Cloud)

    画词云首先需要安装wordcloud(生成词云)和jieba(中文分词). 先来说说wordcloud的安装吧,真是一波三折.首先用pip install wordcloud出现错误,说需要安装Vis ...

  8. python单词词频字典_用python实现词频分析+词云

    2020.05.13更新:大家点个赞再收藏吧(点赞后观看,养成好习惯)TAT 如你所见.文章标题图是以 周杰伦的百度百科 词条为分析文档,以 周杰伦超话第一的那张图+PPT删除背景底色 为词频背景进行 ...

  9. 考研大纲词汇mysql下载_通过R语言统计考研英语(二)单词出现频率

    通过R语言统计考研英语(二)单词出现频率 大家对英语考试并不陌生,首先是背单词,就是所谓的高频词汇.厚厚的一本单词,真的看的头大.最近结合自己刚学的R语言,为年底的考研做准备,想统计一下最近考研英语( ...

最新文章

  1. C/C++中switch用法的一种替换方式
  2. Java虚拟机对类加载的处理机制
  3. python的编程模式-使用简单工厂模式来进行Python的设计模式编程
  4. Caffe官方教程翻译(6):Learning LeNet
  5. Fabric学习笔记-PBFT算法
  6. 几个不错的自己到的少的游戏站
  7. 杭电2019 数列有序!(STL解法)
  8. full stack on the road
  9. python中、函数定义可以不包括以下_python函数定义精讲
  10. Context Encoding for Semantic Segmentation-CVPR2018【论文理解】
  11. HDFS分布式文件系统知识总结
  12. 10 个学习iOS开发的最佳网站(转)
  13. vc6.0处理wps文字
  14. 医疗器械软件网络安全法规和标准概述(本文末付本文提到的所有标准)
  15. java单点登录解决方案_N多系统单点登录,实现、解决方案。四种解决方案
  16. 浅谈Single-Pass算法
  17. 图像检索系列——利用深度学习实现以图搜图
  18. shell脚本(二)
  19. 微云php解析源码,微云网盘外链php源码 - 兼容并蓄 - 零零星星 - php - 外链 - 微云 - 源码 - HHTjim'S 部落格...
  20. 浅析中国综艺的营销策略

热门文章

  1. java播放正弦音_Java中的正弦波声音生成器
  2. pom.xml文件中的parent标签
  3. 保你看人不走眼的STAR面试法
  4. 微信小程序版本自动更新用户感知提示方案总结
  5. macOS 10.15 Beta Release Notes
  6. ftp服务器打开文件空白,ftp服务器word文件打开是空白
  7. HCIP-7.5交换机RSTP快速生成树协议原理
  8. 实验送样、数据分析样品、组名命名规范
  9. lego-loam代码分析(1)-地面提取和点云类聚
  10. 贪心算法 背包问题 java_贪心算法求解背包问题