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@@ -25,7 +25,7 @@ object train_recsys_61_xgb_nor_20241209 {
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val featureFile = param.getOrElse("featureFile", "20241209_recsys_nor_name.txt")
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val trainPath = param.getOrElse("trainPath", "/dw/recommend/model/61_recsys_nor_train_data/20241210")
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val testPath = param.getOrElse("testPath", "")
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- val savePath = param.getOrElse("savePath", "/dw/recommend/model/61_recsys_nor_predict_data/")
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+ val savePath = param.getOrElse("savePath", "/dw/recommend/model_yxh/61_recsys_nor_predict_data/")
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val featureFilter = param.getOrElse("featureFilter", "XXXXXX").split(",")
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val labelLogType = param.getOrElse("labelLogType", "0").toInt
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val labelLogBase = param.getOrElse("labelLogBase", "2").toDouble
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@@ -37,7 +37,7 @@ object train_recsys_61_xgb_nor_20241209 {
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val func_object = param.getOrElse("func_object", "reg:squaredlogerror")
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val func_metric = param.getOrElse("func_metric", "rmsle")
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val repartition = param.getOrElse("repartition", "20").toInt
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- val modelPath = param.getOrElse("modelPath", "/dw/recommend/model/61_recsys_nor_model/model_xgb")
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+ val modelPath = param.getOrElse("modelPath", "/dw/recommend/model_yxh/61_recsys_nor_model/model_xgb")
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val modelFile = param.getOrElse("modelFile", "model_xgb_for_recsys_nor.tar.gz")
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val loader = getClass.getClassLoader
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@@ -77,21 +77,22 @@ object train_recsys_61_xgb_nor_20241209 {
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// "max_depth" -> 5,
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// "objective" -> "reg:squaredlogerror")
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val xgbRegressor = new XGBoostRegressor()
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- .setEta(eta)
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- .setGamma(gamma)
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- .setMissing(0.0f)
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- .setMaxDepth(max_depth)
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- .setNumRound(num_round)
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- .setSubsample(0.8)
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- .setColsampleBytree(0.8)
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- .setObjective(func_object)
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- .setEvalMetric(func_metric)
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- .setFeaturesCol("features")
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- .setLabelCol("label")
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- .setNthread(1)
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- .setNumWorkers(num_worker)
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- .setSeed(2024)
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- .setMinChildWeight(1)
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+ .setObjective("count:poisson")
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+ .setEvalMetric("poisson-nloglik")
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+ .setEta(0.05) // Poisson 通常比 squaredlog 要大一点
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+ .setMaxDepth(5)
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+ .setMinChildWeight(1)
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+ .setGamma(0.0)
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+ .setSubsample(0.8)
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+ .setColsampleBytree(0.8)
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+ .setNumRound(num_round)
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+ .setMissing(0.0f)
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+ .setNumWorkers(num_worker)
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+ .setNthread(1)
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+ .setSeed(2024)
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+ .setFeaturesCol("features")
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+ .setLabelCol("label")
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+
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val model = xgbRegressor.fit(xgbInput)
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if (modelPath.nonEmpty && modelFile.nonEmpty) {
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@@ -117,7 +118,7 @@ object train_recsys_61_xgb_nor_20241209 {
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(r.get(0), r.get(1)).productIterator.mkString("\t")
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})
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val hdfsPath = savePath
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- if (hdfsPath.nonEmpty && hdfsPath.startsWith("/dw/recommend/model/")) {
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+ if (hdfsPath.nonEmpty && hdfsPath.startsWith("/dw/recommend/model_yxh/")) {
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println("删除路径并开始数据写入:" + hdfsPath)
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MyHdfsUtils.delete_hdfs_path(hdfsPath)
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saveData.repartition(repartition).saveAsTextFile(hdfsPath, classOf[GzipCodec])
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@@ -127,9 +128,9 @@ object train_recsys_61_xgb_nor_20241209 {
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val evaluator = new RegressionEvaluator()
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.setLabelCol("label")
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.setPredictionCol("prediction")
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- .setMetricName("rmse")
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+ .setMetricName("poisson-nloglik")
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val rmse = evaluator.evaluate(predictions.select("label", "prediction"))
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- println("recsys nor: rmse:" + rmse)
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+ println("recsys nor: poisson-nloglik:" + rmse)
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}
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}
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@@ -151,7 +152,9 @@ object train_recsys_61_xgb_nor_20241209 {
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}
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val v: Array[Any] = new Array[Any](features.length + 1)
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- v(0) = MetricUtils.logScale(label, logType, logBase)
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+ // v(0) = MetricUtils.logScale(label, logType, logBase)
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+ v(0) = Math.max(label, 0.0)
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+
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for (i <- 0 until features.length) {
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v(i + 1) = map.getOrDefault(features(i), 0.0d)
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}
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