Java OpenDistro项目中异常分数计算错误
对于以下情况,异常分数计算错误 复制 ->我在本地运行这个项目,两个插件部署在弹性搜索中 ->我创建了与此处所述相同的异常检测器,用于测试和理解: 此外,我的探测器间隔为1分钟,与文档中给出的相同 ->我启动探测器,它正在运行 ->并行使用我自己的测试代码,我在弹性搜索中填充“顺序”索引,每3秒填充一个1到10之间的“值”字段,当它达到100可除时,我更新“顺序”索引中“值”列中的巨大值以检查异常Java OpenDistro项目中异常分数计算错误,java,amazon-web-services,
elasticsearch,anomaly-detection,elasticsearch-opendistro,Java,Amazon Web Services,
elasticsearch,Anomaly Detection,Elasticsearch Opendistro,对于以下情况,异常分数计算错误 复制 ->我在本地运行这个项目,两个插件部署在弹性搜索中 ->我创建了与此处所述相同的异常检测器,用于测试和理解: 此外,我的探测器间隔为1分钟,与文档中给出的相同 ->我启动探测器,它正在运行 ->并行使用我自己的测试代码,我在弹性搜索中填充“顺序”索引,每3秒填充一个1到10之间的“值”字段,当它达到100可除时,我更新“顺序”索引中“值”列中的巨大值以检查异常 Map<String, Object> dataMap
Map<String, Object> dataMap = new HashMap<String, Object>();
dataMap.put("timestamp", DATE_FORMAT.format(new Date()));
dataMap.put("value", random.nextInt(10));
if(atomicValue.get() % 100 == 0) {
dataMap.put("value", atomicValue.get());
}
我们可以看到总订单是每一分钟计算一次的
有人能解释一下异常分数与字段“值”[总顺序]之和的比较吗?
因为
当总订单=75时,异常得分=4.636067976770329
当总订单=94时,异常得分=4.534258135489182
当总订单=401时,异常得分=5.088753089094179
因为据我所知,异常评分没有按预期计算。当字段“值”的总和急剧增加(94到401)时,我预计异常分数会大幅增加,但事实并非如此。
感谢您的帮助
谢谢,哈利
Map<String, Object> dataMap = new HashMap<String, Object>();
dataMap.put("timestamp", DATE_FORMAT.format(new Date()));
dataMap.put("value", random.nextInt(10));
if(atomicValue.get() % 100 == 0) {
dataMap.put("value", atomicValue.get());
}
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