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ยินดีต้อนรับสู่ระดับกลาง Colab สำหรับ TensorFlow ป่าตัดสินใจ (TF-DF) ใน Colab นี้คุณจะได้เรียนรู้เกี่ยวกับความสามารถที่สูงขึ้นบางส่วนของ TF-DF รวมถึงวิธีการจัดการกับคุณลักษณะของภาษาธรรมชาติ
Colab นี้ถือว่าคุณมีความคุ้นเคยกับแนวคิดที่นำเสนอ Colab เริ่มต้น สะดุดตาเกี่ยวกับการติดตั้งเกี่ยวกับ TF-DF
ใน colab นี้ คุณจะ:
ฝึก Random Forest ที่กินคุณสมบัติข้อความโดยกำเนิดเป็นชุดหมวดหมู่
รถไฟป่าสุ่มที่กินคุณลักษณะข้อความโดยใช้ TensorFlow Hub โมดูล ในการตั้งค่านี้ (การเรียนรู้การถ่ายโอน) โมดูลได้รับการฝึกอบรมล่วงหน้าในคลังข้อความขนาดใหญ่แล้ว
ฝึก Gradient Boosted Decision Trees (GBDT) และ Neural Network ร่วมกัน GBDT จะใช้เอาต์พุตของ Neural Network
ติดตั้ง
# Install TensorFlow Dececision Forests
pip install tensorflow_decision_forests
ติดตั้ง Wurlitzer สามารถใช้เพื่อแสดงบันทึกการฝึกโดยละเอียด สิ่งนี้จำเป็นใน colab เท่านั้น
pip install wurlitzer
นำเข้าไลบรารีที่จำเป็น
import tensorflow_decision_forests as tfdf
import os
import numpy as np
import pandas as pd
import tensorflow as tf
import math
try:
from wurlitzer import sys_pipes
except:
from colabtools.googlelog import CaptureLog as sys_pipes
from IPython.core.magic import register_line_magic
from IPython.display import Javascript
WARNING:root:Failure to load the custom c++ tensorflow ops. This error is likely caused the version of TensorFlow and TensorFlow Decision Forests are not compatible. WARNING:root:TF Parameter Server distributed training not available.
เซลล์โค้ดที่ซ่อนอยู่จะจำกัดความสูงของเอาต์พุตใน colab
# Some of the model training logs can cover the full
# screen if not compressed to a smaller viewport.
# This magic allows setting a max height for a cell.
@register_line_magic
def set_cell_height(size):
display(
Javascript("google.colab.output.setIframeHeight(0, true, {maxHeight: " +
str(size) + "})"))
ใช้ข้อความดิบเป็นคุณสมบัติ
TF-DF สามารถใช้ เด็ดขาดชุด มีกำเนิด ชุดตามหมวดหมู่แสดงคุณลักษณะข้อความเป็นถุงคำ (หรือ n-grams)
ตัวอย่างเช่น: "The little blue dog"
→ {"the", "little", "blue", "dog"}
ในตัวอย่างนี้คุณจะจะฝึกให้เป็นป่าสุ่มบน สแตนฟอความเชื่อมั่น Treebank (SST) ชุดข้อมูล วัตถุประสงค์ของชุดนี้คือการจัดเป็นประโยคแบกความเชื่อมั่นบวกหรือลบ คุณจะได้จะใช้รุ่นจำแนกไบนารีของชุดข้อมูล curated ใน TensorFlow ชุดข้อมูล
# Install the nighly TensorFlow Datasets package
# TODO: Remove when the release package is fixed.
pip install tfds-nightly -U --quiet
# Load the dataset
import tensorflow_datasets as tfds
all_ds = tfds.load("glue/sst2")
# Display the first 3 examples of the test fold.
for example in all_ds["test"].take(3):
print({attr_name: attr_tensor.numpy() for attr_name, attr_tensor in example.items()})
{'idx': 163, 'label': -1, 'sentence': b'not even the hanson brothers can save it'} {'idx': 131, 'label': -1, 'sentence': b'strong setup and ambitious goals fade as the film descends into unsophisticated scare tactics and b-film thuggery .'} {'idx': 1579, 'label': -1, 'sentence': b'too timid to bring a sense of closure to an ugly chapter of the twentieth century .'} 2021-11-08 12:12:01.807072: W tensorflow/core/kernels/data/cache_dataset_ops.cc:768] The calling iterator did not fully read the dataset being cached. In order to avoid unexpected truncation of the dataset, the partially cached contents of the dataset will be discarded. This can happen if you have an input pipeline similar to `dataset.cache().take(k).repeat()`. You should use `dataset.take(k).cache().repeat()` instead.
ชุดข้อมูลได้รับการแก้ไขดังนี้:
- ป้ายดิบเป็นจำนวนเต็มใน
{-1, 1}
แต่ขั้นตอนวิธีการเรียนรู้ที่คาดว่าป้ายจำนวนเต็มบวกเช่น{0, 1}
ดังนั้นฉลากจะเปลี่ยนดังนี้new_labels = (original_labels + 1) / 2
- ใช้ขนาดแบทช์ 64 เพื่อให้การอ่านชุดข้อมูลมีประสิทธิภาพมากขึ้น
-
sentence
ความต้องการแอตทริบิวต์ที่จะ tokenized คือ"hello world" -> ["hello", "world"]
รายละเอียด: บางขั้นตอนวิธีการเรียนรู้ป่าตัดสินใจไม่จำเป็นต้องมีการตรวจสอบชุดข้อมูล (เช่นสุ่มป่า) ในขณะที่คนอื่นทำ (เช่นการไล่โทนสีเพิ่มขึ้นต้นไม้ในบางกรณี) เนื่องจากแต่ละอัลกอริธึมการเรียนรู้ภายใต้ TF-DF สามารถใช้ข้อมูลการตรวจสอบที่แตกต่างกัน TF-DF จึงจัดการการแยกการฝึก/การตรวจสอบภายใน ดังนั้น เมื่อคุณมีชุดการฝึกอบรมและการตรวจสอบความถูกต้อง พวกเขาสามารถนำมาต่อกันเป็นอินพุตในอัลกอริธึมการเรียนรู้ได้เสมอ
def prepare_dataset(example):
label = (example["label"] + 1) // 2
return {"sentence" : tf.strings.split(example["sentence"])}, label
train_ds = all_ds["train"].batch(64).map(prepare_dataset)
test_ds = all_ds["validation"].batch(64).map(prepare_dataset)
สุดท้าย ฝึกและประเมินโมเดลตามปกติ TF-DF จะตรวจจับคุณสมบัติการจัดหมวดหมู่ที่มีหลายค่าโดยอัตโนมัติเป็นชุดหมวดหมู่
%set_cell_height 300
# Specify the model.
model_1 = tfdf.keras.RandomForestModel(num_trees=30)
# Optionally, add evaluation metrics.
model_1.compile(metrics=["accuracy"])
# Train the model.
with sys_pipes():
model_1.fit(x=train_ds)
<IPython.core.display.Javascript object> 1027/1053 [============================>.] - ETA: 0s [INFO kernel.cc:736] Start Yggdrasil model training [INFO kernel.cc:737] Collect training examples [INFO kernel.cc:392] Number of batches: 1053 [INFO kernel.cc:393] Number of examples: 67349 [INFO data_spec_inference.cc:290] 12816 item(s) have been pruned (i.e. they are considered out of dictionary) for the column sentence (2000 item(s) left) because min_value_count=5 and max_number_of_unique_values=2000 [INFO kernel.cc:759] Dataset: Number of records: 67349 Number of columns: 2 Number of columns by type: CATEGORICAL_SET: 1 (50%) CATEGORICAL: 1 (50%) Columns: CATEGORICAL_SET: 1 (50%) 0: "sentence" CATEGORICAL_SET has-dict vocab-size:2001 num-oods:3595 (5.33787%) most-frequent:"the" 27205 (40.3941%) CATEGORICAL: 1 (50%) 1: "__LABEL" CATEGORICAL integerized vocab-size:3 no-ood-item Terminology: nas: Number of non-available (i.e. missing) values. ood: Out of dictionary. manually-defined: Attribute which type is manually defined by the user i.e. the type was not automatically inferred. tokenized: The attribute value is obtained through tokenization. has-dict: The attribute is attached to a string dictionary e.g. a categorical attribute stored as a string. vocab-size: Number of unique values. [INFO kernel.cc:762] Configure learner [INFO kernel.cc:787] Training config: learner: "RANDOM_FOREST" features: "sentence" label: "__LABEL" task: CLASSIFICATION [yggdrasil_decision_forests.model.random_forest.proto.random_forest_config] { num_trees: 30 decision_tree { max_depth: 16 min_examples: 5 in_split_min_examples_check: true missing_value_policy: GLOBAL_IMPUTATION allow_na_conditions: false categorical_set_greedy_forward { sampling: 0.1 max_num_items: -1 min_item_frequency: 1 } growing_strategy_local { } categorical { cart { } } num_candidate_attributes_ratio: -1 axis_aligned_split { } internal { sorting_strategy: PRESORTED } } winner_take_all_inference: true compute_oob_performances: true compute_oob_variable_importances: false adapt_bootstrap_size_ratio_for_maximum_training_duration: false } [INFO kernel.cc:790] Deployment config: num_threads: 6 [INFO kernel.cc:817] Train model [INFO random_forest.cc:315] Training random forest on 67349 example(s) and 1 feature(s). [INFO random_forest.cc:628] Training of tree 1/30 (tree index:1) done accuracy:0.7412 logloss:9.32811 [INFO random_forest.cc:628] Training of tree 4/30 (tree index:2) done accuracy:0.75669 logloss:5.54597 [INFO random_forest.cc:628] Training of tree 7/30 (tree index:7) done accuracy:0.779932 logloss:3.76263 [INFO random_forest.cc:628] Training of tree 9/30 (tree index:8) done accuracy:0.788283 logloss:3.14015 [INFO random_forest.cc:628] Training of tree 13/30 (tree index:13) done accuracy:0.803553 logloss:1.6681 [INFO random_forest.cc:628] Training of tree 15/30 (tree index:18) done accuracy:0.809139 logloss:1.48232 [INFO random_forest.cc:628] Training of tree 21/30 (tree index:20) done accuracy:0.817067 logloss:0.997885 [INFO random_forest.cc:628] Training of tree 23/30 (tree index:23) done accuracy:0.81845 logloss:0.944225 [INFO random_forest.cc:628] Training of tree 27/30 (tree index:26) done accuracy:0.821066 logloss:0.877389 [INFO random_forest.cc:628] Training of tree 29/30 (tree index:29) done accuracy:0.821571 logloss:0.861307 [INFO random_forest.cc:628] Training of tree 30/30 (tree index:28) done accuracy:0.821274 logloss:0.854486 [INFO random_forest.cc:696] Final OOB metrics: accuracy:0.821274 logloss:0.854486 [INFO kernel.cc:828] Export model in log directory: /tmp/tmpab1ap3d5 [INFO kernel.cc:836] Save model in resources [INFO kernel.cc:988] Loading model from path [INFO decision_forest.cc:590] Model loaded with 30 root(s), 43180 node(s), and 1 input feature(s). [INFO abstract_model.cc:993] Engine "RandomForestGeneric" built [INFO kernel.cc:848] Use fast generic engine 1053/1053 [==============================] - 233s 217ms/step
ในบันทึกก่อนหน้านี้ทราบว่า sentence
เป็น CATEGORICAL_SET
คุณลักษณะ
โมเดลได้รับการประเมินตามปกติ:
evaluation = model_1.evaluate(test_ds)
print(f"BinaryCrossentropyloss: {evaluation[0]}")
print(f"Accuracy: {evaluation[1]}")
14/14 [==============================] - 1s 3ms/step - loss: 0.0000e+00 - accuracy: 0.7638 BinaryCrossentropyloss: 0.0 Accuracy: 0.7637614607810974
บันทึกการฝึกอบรมมีลักษณะดังนี้:
import matplotlib.pyplot as plt
logs = model_1.make_inspector().training_logs()
plt.plot([log.num_trees for log in logs], [log.evaluation.accuracy for log in logs])
plt.xlabel("Number of trees")
plt.ylabel("Out-of-bag accuracy")
pass
ต้นไม้มากขึ้นอาจจะเป็นประโยชน์ (ฉันแน่ใจเพราะฉันพยายาม :p)
ใช้การฝังข้อความที่เตรียมไว้ล่วงหน้า
ตัวอย่างก่อนหน้านี้ฝึก Random Forest โดยใช้คุณสมบัติข้อความดิบ ตัวอย่างนี้จะใช้การฝัง TF-Hub ที่ฝึกไว้ล่วงหน้าเพื่อแปลงคุณลักษณะข้อความเป็นการฝังแบบหนาแน่น จากนั้นจึงฝึก Random Forest ที่ด้านบนสุด ในสถานการณ์นี้ Random Forest จะ "เห็น" ผลลัพธ์ที่เป็นตัวเลขของการฝังเท่านั้น (กล่าวคือ จะไม่เห็นข้อความดิบ)
ในการทดลองนี้จะใช้ สากลประโยค-Encoder การฝังไว้ล่วงหน้าที่ต่างกันอาจเหมาะสำหรับข้อความประเภทต่างๆ (เช่น ภาษา งานที่ต่างกัน) แต่สำหรับคุณลักษณะที่มีโครงสร้างประเภทอื่นๆ ด้วย (เช่น รูปภาพ)
โมดูลการฝังสามารถใช้ได้หนึ่งในสองที่:
- ระหว่างการเตรียมชุดข้อมูล
- ในขั้นตอนก่อนการประมวลผลของโมเดล
ตัวเลือกที่สองมักจะดีกว่า: การบรรจุการฝังในแบบจำลองทำให้โมเดลใช้งานง่ายขึ้น (และใช้งานในทางที่ผิดยากขึ้น)
ติดตั้ง TF-Hub ก่อน:
pip install --upgrade tensorflow-hub
คุณไม่จำเป็นต้องแปลงข้อความให้เหมือนเมื่อก่อน
def prepare_dataset(example):
label = (example["label"] + 1) // 2
return {"sentence" : example["sentence"]}, label
train_ds = all_ds["train"].batch(64).map(prepare_dataset)
test_ds = all_ds["validation"].batch(64).map(prepare_dataset)
%set_cell_height 300
import tensorflow_hub as hub
# NNLM (https://tfhub.dev/google/nnlm-en-dim128/2) is also a good choice.
hub_url = "http://tfhub.dev/google/universal-sentence-encoder/4"
embedding = hub.KerasLayer(hub_url)
sentence = tf.keras.layers.Input(shape=(), name="sentence", dtype=tf.string)
embedded_sentence = embedding(sentence)
raw_inputs = {"sentence": sentence}
processed_inputs = {"embedded_sentence": embedded_sentence}
preprocessor = tf.keras.Model(inputs=raw_inputs, outputs=processed_inputs)
model_2 = tfdf.keras.RandomForestModel(
preprocessing=preprocessor,
num_trees=100)
model_2.compile(metrics=["accuracy"])
with sys_pipes():
model_2.fit(x=train_ds)
<IPython.core.display.Javascript object> 1053/1053 [==============================] - ETA: 0s [INFO kernel.cc:736] Start Yggdrasil model training [INFO kernel.cc:737] Collect training examples [INFO kernel.cc:392] Number of batches: 1053 [INFO kernel.cc:393] Number of examples: 67349 [INFO kernel.cc:759] Dataset: Number of records: 67349 Number of columns: 513 Number of columns by type: NUMERICAL: 512 (99.8051%) CATEGORICAL: 1 (0.194932%) Columns: NUMERICAL: 512 (99.8051%) 0: "embedded_sentence.0" NUMERICAL mean:-0.00405803 min:-0.110598 max:0.113378 sd:0.0382544 1: "embedded_sentence.1" NUMERICAL mean:0.0020755 min:-0.120324 max:0.106003 sd:0.0434171 2: "embedded_sentence.10" NUMERICAL mean:0.0143459 min:-0.1118 max:0.118193 sd:0.039633 3: "embedded_sentence.100" NUMERICAL mean:0.003884 min:-0.104019 max:0.127238 sd:0.0431 4: "embedded_sentence.101" NUMERICAL mean:-0.0132592 min:-0.133774 max:0.125128 sd:0.0465773 5: "embedded_sentence.102" NUMERICAL mean:0.00732224 min:-0.114158 max:0.135181 sd:0.0462208 6: "embedded_sentence.103" NUMERICAL mean:-0.00316622 min:-0.115661 max:0.110651 sd:0.0393422 7: "embedded_sentence.104" NUMERICAL mean:-0.000406039 min:-0.115186 max:0.115727 sd:0.0404569 8: "embedded_sentence.105" NUMERICAL mean:0.01286 min:-0.10478 max:0.116059 sd:0.0408527 9: "embedded_sentence.106" NUMERICAL mean:-0.0200857 min:-0.112344 max:0.115696 sd:0.0348447 10: "embedded_sentence.107" NUMERICAL mean:-0.000881199 min:-0.117538 max:0.128118 sd:0.0397207 11: "embedded_sentence.108" NUMERICAL mean:-0.0153816 min:-0.119853 max:0.111478 sd:0.0408014 12: "embedded_sentence.109" NUMERICAL mean:0.0226631 min:-0.115775 max:0.109245 sd:0.0344709 13: "embedded_sentence.11" NUMERICAL mean:7.16192e-05 min:-0.10631 max:0.107239 sd:0.0399338 14: "embedded_sentence.110" NUMERICAL mean:-0.0117186 min:-0.12628 max:0.0972872 sd:0.043443 15: "embedded_sentence.111" NUMERICAL mean:-0.0195 min:-0.138677 max:0.111032 sd:0.0530712 16: "embedded_sentence.112" NUMERICAL mean:-0.00883525 min:-0.125434 max:0.115491 sd:0.039556 17: "embedded_sentence.113" NUMERICAL mean:-0.0004395 min:-0.106039 max:0.1141 sd:0.0441183 18: "embedded_sentence.114" NUMERICAL mean:-0.00404027 min:-0.131798 max:0.106558 sd:0.040391 19: "embedded_sentence.115" NUMERICAL mean:0.0164961 min:-0.137229 max:0.11088 sd:0.0396261 20: "embedded_sentence.116" NUMERICAL mean:-0.0163338 min:-0.109692 max:0.115104 sd:0.0396108 21: "embedded_sentence.117" NUMERICAL mean:-0.000866382 min:-0.111258 max:0.110021 sd:0.0413076 22: "embedded_sentence.118" NUMERICAL mean:0.00925641 min:-0.117275 max:0.109073 sd:0.0392531 23: "embedded_sentence.119" NUMERICAL mean:0.0111224 min:-0.108271 max:0.11018 sd:0.0438516 24: "embedded_sentence.12" NUMERICAL mean:-0.0115011 min:-0.115238 max:0.115996 sd:0.039107 25: "embedded_sentence.120" NUMERICAL mean:-0.0109583 min:-0.117243 max:0.113314 sd:0.03753 26: "embedded_sentence.121" NUMERICAL mean:0.0143342 min:-0.109885 max:0.121471 sd:0.0401907 27: "embedded_sentence.122" NUMERICAL mean:-0.00603129 min:-0.111126 max:0.106422 sd:0.0401383 28: "embedded_sentence.123" NUMERICAL mean:-0.00175511 min:-0.115219 max:0.103571 sd:0.0388962 29: "embedded_sentence.124" NUMERICAL mean:-0.0119755 min:-0.119062 max:0.122632 sd:0.0447561 30: "embedded_sentence.125" NUMERICAL mean:0.00210507 min:-0.116783 max:0.125758 sd:0.0469827 31: "embedded_sentence.126" NUMERICAL mean:-0.0166424 min:-0.109771 max:0.13027 sd:0.0399639 32: "embedded_sentence.127" NUMERICAL mean:-0.0462275 min:-0.137916 max:0.106133 sd:0.0478679 33: "embedded_sentence.128" NUMERICAL mean:0.0101449 min:-0.134851 max:0.118003 sd:0.0415072 34: "embedded_sentence.129" NUMERICAL mean:0.0119622 min:-0.106398 max:0.122529 sd:0.047894 35: "embedded_sentence.13" NUMERICAL mean:-0.0179365 min:-0.133052 max:0.120982 sd:0.0461472 36: "embedded_sentence.130" NUMERICAL mean:-0.0109302 min:-0.127096 max:0.102555 sd:0.0407236 37: "embedded_sentence.131" NUMERICAL mean:-2.30421e-05 min:-0.0958128 max:0.116109 sd:0.0393919 38: "embedded_sentence.132" NUMERICAL mean:0.00622466 min:-0.118524 max:0.171935 sd:0.0435631 39: "embedded_sentence.133" NUMERICAL mean:0.00537511 min:-0.0999398 max:0.143991 sd:0.0431652 40: "embedded_sentence.134" NUMERICAL mean:0.0111946 min:-0.101547 max:0.105716 sd:0.0365295 41: "embedded_sentence.135" NUMERICAL mean:-0.0123165 min:-0.118347 max:0.113619 sd:0.0422525 42: "embedded_sentence.136" NUMERICAL mean:0.00882626 min:-0.118642 max:0.115052 sd:0.0393646 43: "embedded_sentence.137" NUMERICAL mean:0.0106701 min:-0.108036 max:0.109746 sd:0.0405698 44: "embedded_sentence.138" NUMERICAL mean:-0.0130655 min:-0.148064 max:0.118745 sd:0.047092 45: "embedded_sentence.139" NUMERICAL mean:0.00256777 min:-0.108547 max:0.102547 sd:0.0388182 46: "embedded_sentence.14" NUMERICAL mean:0.00090757 min:-0.124092 max:0.111964 sd:0.0393761 47: "embedded_sentence.140" NUMERICAL mean:-0.00255201 min:-0.113298 max:0.120327 sd:0.0469564 48: 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"embedded_sentence.89" NUMERICAL mean:-0.000411177 min:-0.119937 max:0.109877 sd:0.0421414 501: "embedded_sentence.9" NUMERICAL mean:0.0295029 min:-0.128134 max:0.118291 sd:0.0394542 502: "embedded_sentence.90" NUMERICAL mean:-0.00181531 min:-0.117795 max:0.106343 sd:0.0421115 503: "embedded_sentence.91" NUMERICAL mean:-0.00550051 min:-0.127822 max:0.113907 sd:0.0399804 504: "embedded_sentence.92" NUMERICAL mean:-0.00547455 min:-0.126723 max:0.119811 sd:0.0431932 505: "embedded_sentence.93" NUMERICAL mean:0.014195 min:-0.105489 max:0.118567 sd:0.0413103 506: "embedded_sentence.94" NUMERICAL mean:0.0188997 min:-0.104824 max:0.132286 sd:0.0497162 507: "embedded_sentence.95" NUMERICAL mean:0.00497901 min:-0.108731 max:0.124192 sd:0.0414468 508: "embedded_sentence.96" NUMERICAL mean:-0.0179242 min:-0.125507 max:0.10199 sd:0.0383211 509: "embedded_sentence.97" NUMERICAL mean:0.00327183 min:-0.122499 max:0.123037 sd:0.0419092 510: "embedded_sentence.98" NUMERICAL mean:0.0216785 min:-0.10081 max:0.116099 sd:0.0479454 511: "embedded_sentence.99" NUMERICAL mean:0.019005 min:-0.125922 max:0.117505 sd:0.0429193 CATEGORICAL: 1 (0.194932%) 512: "__LABEL" CATEGORICAL integerized vocab-size:3 no-ood-item Terminology: nas: Number of non-available (i.e. missing) values. ood: Out of dictionary. manually-defined: Attribute which type is manually defined by the user i.e. the type was not automatically inferred. tokenized: The attribute value is obtained through tokenization. has-dict: The attribute is attached to a string dictionary e.g. a categorical attribute stored as a string. vocab-size: Number of unique values. [INFO kernel.cc:762] Configure learner [INFO kernel.cc:787] Training config: learner: "RANDOM_FOREST" features: "embedded_sentence\\.0" features: "embedded_sentence\\.1" features: "embedded_sentence\\.10" features: "embedded_sentence\\.100" features: "embedded_sentence\\.101" features: "embedded_sentence\\.102" features: "embedded_sentence\\.103" features: "embedded_sentence\\.104" features: "embedded_sentence\\.105" features: "embedded_sentence\\.106" features: "embedded_sentence\\.107" features: "embedded_sentence\\.108" features: "embedded_sentence\\.109" features: "embedded_sentence\\.11" features: "embedded_sentence\\.110" features: "embedded_sentence\\.111" features: "embedded_sentence\\.112" features: "embedded_sentence\\.113" features: "embedded_sentence\\.114" features: "embedded_sentence\\.115" features: "embedded_sentence\\.116" features: "embedded_sentence\\.117" features: "embedded_sentence\\.118" features: "embedded_sentence\\.119" features: "embedded_sentence\\.12" features: "embedded_sentence\\.120" features: "embedded_sentence\\.121" features: "embedded_sentence\\.122" features: "embedded_sentence\\.123" features: "embedded_sentence\\.124" features: "embedded_sentence\\.125" features: "embedded_sentence\\.126" features: "embedded_sentence\\.127" features: "embedded_sentence\\.128" features: "embedded_sentence\\.129" features: "embedded_sentence\\.13" features: "embedded_sentence\\.130" features: "embedded_sentence\\.131" features: "embedded_sentence\\.132" features: "embedded_sentence\\.133" features: "embedded_sentence\\.134" features: "embedded_sentence\\.135" features: "embedded_sentence\\.136" features: "embedded_sentence\\.137" features: "embedded_sentence\\.138" features: "embedded_sentence\\.139" features: "embedded_sentence\\.14" features: "embedded_sentence\\.140" features: "embedded_sentence\\.141" features: "embedded_sentence\\.142" features: "embedded_sentence\\.143" features: "embedded_sentence\\.144" features: "embedded_sentence\\.145" features: "embedded_sentence\\.146" features: "embedded_sentence\\.147" features: "embedded_sentence\\.148" features: "embedded_sentence\\.149" features: "embedded_sentence\\.15" features: "embedded_sentence\\.150" features: "embedded_sentence\\.151" features: "embedded_sentence\\.152" features: "embedded_sentence\\.153" features: "embedded_sentence\\.154" features: "embedded_sentence\\.155" features: "embedded_sentence\\.156" features: "embedded_sentence\\.157" features: "embedded_sentence\\.158" features: "embedded_sentence\\.159" features: "embedded_sentence\\.16" features: "embedded_sentence\\.160" features: "embedded_sentence\\.161" features: "embedded_sentence\\.162" features: "embedded_sentence\\.163" features: "embedded_sentence\\.164" features: "embedded_sentence\\.165" features: "embedded_sentence\\.166" features: "embedded_sentence\\.167" features: "embedded_sentence\\.168" features: "embedded_sentence\\.169" features: "embedded_sentence\\.17" features: "embedded_sentence\\.170" features: "embedded_sentence\\.171" features: "embedded_sentence\\.172" features: "embedded_sentence\\.173" features: "embedded_sentence\\.174" features: "embedded_sentence\\.175" features: "embedded_sentence\\.176" features: "embedded_sentence\\.177" features: "embedded_sentence\\.178" features: "embedded_sentence\\.179" features: "embedded_sentence\\.18" features: "embedded_sentence\\.180" features: "embedded_sentence\\.181" features: "embedded_sentence\\.182" features: "embedded_sentence\\.183" features: "embedded_sentence\\.184" features: "embedded_sentence\\.185" features: "embedded_sentence\\.186" features: "embedded_sentence\\.187" features: "embedded_sentence\\.188" features: "embedded_sentence\\.189" features: "embedded_sentence\\.19" features: "embedded_sentence\\.190" features: "embedded_sentence\\.191" features: "embedded_sentence\\.192" features: "embedded_sentence\\.193" features: "embedded_sentence\\.194" features: "embedded_sentence\\.195" features: "embedded_sentence\\.196" features: "embedded_sentence\\.197" features: "embedded_sentence\\.198" features: "embedded_sentence\\.199" features: "embedded_sentence\\.2" features: "embedded_sentence\\.20" features: "embedded_sentence\\.200" features: "embedded_sentence\\.201" features: "embedded_sentence\\.202" features: "embedded_sentence\\.203" features: "embedded_sentence\\.204" features: "embedded_sentence\\.205" features: "embedded_sentence\\.206" features: "embedded_sentence\\.207" features: "embedded_sentence\\.208" features: "embedded_sentence\\.209" features: "embedded_sentence\\.21" features: "embedded_sentence\\.210" features: "embedded_sentence\\.211" features: "embedded_sentence\\.212" features: "embedded_sentence\\.213" features: "embedded_sentence\\.214" features: "embedded_sentence\\.215" features: "embedded_sentence\\.216" features: "embedded_sentence\\.217" features: "embedded_sentence\\.218" features: "embedded_sentence\\.219" features: "embedded_sentence\\.22" features: "embedded_sentence\\.220" features: "embedded_sentence\\.221" features: "embedded_sentence\\.222" features: "embedded_sentence\\.223" features: "embedded_sentence\\.224" features: "embedded_sentence\\.225" features: "embedded_sentence\\.226" features: "embedded_sentence\\.227" features: "embedded_sentence\\.228" features: "embedded_sentence\\.229" features: "embedded_sentence\\.23" features: "embedded_sentence\\.230" features: "embedded_sentence\\.231" features: "embedded_sentence\\.232" features: "embedded_sentence\\.233" features: "embedded_sentence\\.234" features: "embedded_sentence\\.235" features: "embedded_sentence\\.236" features: "embedded_sentence\\.237" features: "embedded_sentence\\.238" features: "embedded_sentence\\.239" features: "embedded_sentence\\.24" features: "embedded_sentence\\.240" features: "embedded_sentence\\.241" features: "embedded_sentence\\.242" features: "embedded_sentence\\.243" features: "embedded_sentence\\.244" features: "embedded_sentence\\.245" features: "embedded_sentence\\.246" features: "embedded_sentence\\.247" features: "embedded_sentence\\.248" features: "embedded_sentence\\.249" features: "embedded_sentence\\.25" features: "embedded_sentence\\.250" features: "embedded_sentence\\.251" features: "embedded_sentence\\.252" features: "embedded_sentence\\.253" features: "embedded_sentence\\.254" features: "embedded_sentence\\.255" features: "embedded_sentence\\.256" features: "embedded_sentence\\.257" features: "embedded_sentence\\.258" features: "embedded_sentence\\.259" features: "embedded_sentence\\.26" features: "embedded_sentence\\.260" features: "embedded_sentence\\.261" features: "embedded_sentence\\.262" features: "embedded_sentence\\.263" features: "embedded_sentence\\.264" features: "embedded_sentence\\.265" features: "embedded_sentence\\.266" features: "embedded_sentence\\.267" features: "embedded_sentence\\.268" features: "embedded_sentence\\.269" features: "embedded_sentence\\.27" features: "embedded_sentence\\.270" features: "embedded_sentence\\.271" features: "embedded_sentence\\.272" features: "embedded_sentence\\.273" features: "embedded_sentence\\.274" features: "embedded_sentence\\.275" features: "embedded_sentence\\.276" features: "embedded_sentence\\.277" features: "embedded_sentence\\.278" features: "embedded_sentence\\.279" features: "embedded_sentence\\.28" features: "embedded_sentence\\.280" features: "embedded_sentence\\.281" features: "embedded_sentence\\.282" features: "embedded_sentence\\.283" features: "embedded_sentence\\.284" features: "embedded_sentence\\.285" features: "embedded_sentence\\.286" features: "embedded_sentence\\.287" features: "embedded_sentence\\.288" features: "embedded_sentence\\.289" features: "embedded_sentence\\.29" features: "embedded_sentence\\.290" features: "embedded_sentence\\.291" features: "embedded_sentence\\.292" features: "embedded_sentence\\.293" features: 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"embedded_sentence\\.57" features: "embedded_sentence\\.58" features: "embedded_sentence\\.59" features: "embedded_sentence\\.6" features: "embedded_sentence\\.60" features: "embedded_sentence\\.61" features: "embedded_sentence\\.62" features: "embedded_sentence\\.63" features: "embedded_sentence\\.64" features: "embedded_sentence\\.65" features: "embedded_sentence\\.66" features: "embedded_sentence\\.67" features: "embedded_sentence\\.68" features: "embedded_sentence\\.69" features: "embedded_sentence\\.7" features: "embedded_sentence\\.70" features: "embedded_sentence\\.71" features: "embedded_sentence\\.72" features: "embedded_sentence\\.73" features: "embedded_sentence\\.74" features: "embedded_sentence\\.75" features: "embedded_sentence\\.76" features: "embedded_sentence\\.77" features: "embedded_sentence\\.78" features: "embedded_sentence\\.79" features: "embedded_sentence\\.8" features: "embedded_sentence\\.80" features: "embedded_sentence\\.81" features: "embedded_sentence\\.82" features: "embedded_sentence\\.83" features: "embedded_sentence\\.84" features: "embedded_sentence\\.85" features: "embedded_sentence\\.86" features: "embedded_sentence\\.87" features: "embedded_sentence\\.88" features: "embedded_sentence\\.89" features: "embedded_sentence\\.9" features: "embedded_sentence\\.90" features: "embedded_sentence\\.91" features: "embedded_sentence\\.92" features: "embedded_sentence\\.93" features: "embedded_sentence\\.94" features: "embedded_sentence\\.95" features: "embedded_sentence\\.96" features: "embedded_sentence\\.97" features: "embedded_sentence\\.98" features: "embedded_sentence\\.99" label: "__LABEL" task: CLASSIFICATION [yggdrasil_decision_forests.model.random_forest.proto.random_forest_config] { num_trees: 100 decision_tree { max_depth: 16 min_examples: 5 in_split_min_examples_check: true missing_value_policy: GLOBAL_IMPUTATION allow_na_conditions: false categorical_set_greedy_forward { sampling: 0.1 max_num_items: -1 min_item_frequency: 1 } growing_strategy_local { } categorical { cart { } } num_candidate_attributes_ratio: -1 axis_aligned_split { } internal { sorting_strategy: PRESORTED } } winner_take_all_inference: true compute_oob_performances: true compute_oob_variable_importances: false adapt_bootstrap_size_ratio_for_maximum_training_duration: false } [INFO kernel.cc:790] Deployment config: num_threads: 6 [INFO kernel.cc:817] Train model [INFO random_forest.cc:315] Training random forest on 67349 example(s) and 512 feature(s). [INFO random_forest.cc:628] Training of tree 1/100 (tree index:1) done accuracy:0.743339 logloss:9.25099 [INFO random_forest.cc:628] Training of tree 11/100 (tree index:10) done accuracy:0.788438 logloss:1.97592 [INFO random_forest.cc:628] Training of tree 21/100 (tree index:20) done accuracy:0.82798 logloss:0.687896 [INFO random_forest.cc:628] Training of tree 31/100 (tree index:28) done accuracy:0.8427 logloss:0.466909 [INFO random_forest.cc:628] Training of tree 41/100 (tree index:40) done accuracy:0.851327 logloss:0.403339 [INFO random_forest.cc:628] Training of tree 51/100 (tree index:53) done accuracy:0.856553 logloss:0.379845 [INFO random_forest.cc:628] Training of tree 61/100 (tree index:59) done accuracy:0.859998 logloss:0.369493 [INFO random_forest.cc:628] Training of tree 71/100 (tree index:69) done accuracy:0.862864 logloss:0.365896 [INFO random_forest.cc:628] Training of tree 81/100 (tree index:79) done accuracy:0.864556 logloss:0.363075 [INFO random_forest.cc:628] Training of tree 91/100 (tree index:91) done accuracy:0.865596 logloss:0.361243 [INFO random_forest.cc:628] Training of tree 100/100 (tree index:99) done accuracy:0.866991 logloss:0.360368 [INFO random_forest.cc:696] Final OOB metrics: accuracy:0.866991 logloss:0.360368 [INFO kernel.cc:828] Export model in log directory: /tmp/tmpw2g04fbi [INFO kernel.cc:836] Save model in resources [INFO kernel.cc:988] Loading model from path [INFO decision_forest.cc:590] Model loaded with 100 root(s), 561666 node(s), and 512 input feature(s). [INFO abstract_model.cc:993] Engine "RandomForestOptPred" built [INFO kernel.cc:848] Use fast generic engine 1053/1053 [==============================] - 75s 66ms/step
evaluation = model_2.evaluate(test_ds)
print(f"BinaryCrossentropyloss: {evaluation[0]}")
print(f"Accuracy: {evaluation[1]}")
14/14 [==============================] - 2s 16ms/step - loss: 0.0000e+00 - accuracy: 0.7821 BinaryCrossentropyloss: 0.0 Accuracy: 0.7821100950241089
โปรดทราบว่าชุดการจัดหมวดหมู่แสดงข้อความที่แตกต่างจากการฝังแบบหนาแน่น ดังนั้นอาจเป็นประโยชน์ในการใช้กลยุทธ์ทั้งสองร่วมกัน
ฝึกโครงสร้างการตัดสินใจและโครงข่ายประสาทร่วมกัน
ตัวอย่างก่อนหน้านี้ใช้ Neural Network (NN) ที่ผ่านการฝึกอบรมล่วงหน้าเพื่อประมวลผลคุณลักษณะข้อความก่อนที่จะส่งต่อไปยัง Random Forest ตัวอย่างนี้จะฝึกทั้ง Neural Network และ Random Forest ตั้งแต่เริ่มต้น
TF-DF ของป่าการตัดสินใจทำไล่ระดับสีไม่ได้กลับการเผยแพร่ ( แม้นี่จะเป็นเรื่องของการวิจัยอย่างต่อเนื่อง ) ดังนั้นการฝึกอบรมจึงเกิดขึ้นในสองขั้นตอน:
- ฝึกโครงข่ายประสาทให้เป็นงานการจำแนกมาตรฐาน:
example → [Normalize] → [Neural Network*] → [classification head] → prediction
*: Training.
- แทนที่ส่วนหัวของ Neural Network (เลเยอร์สุดท้ายและ soft-max) ด้วย Random Forest ฝึก Random Forest ตามปกติ:
example → [Normalize] → [Neural Network] → [Random Forest*] → prediction
*: Training.
เตรียมชุดข้อมูล
ตัวอย่างนี้ใช้ เพนกวินพาลเมอร์ ชุดข้อมูล ดู Colab เริ่มต้น สำหรับรายละเอียด
ขั้นแรกให้ดาวน์โหลดข้อมูลดิบ:
wget -q https://storage.googleapis.com/download.tensorflow.org/data/palmer_penguins/penguins.csv -O /tmp/penguins.csv
โหลดชุดข้อมูลลงใน Pandas Dataframe
dataset_df = pd.read_csv("/tmp/penguins.csv")
# Display the first 3 examples.
dataset_df.head(3)
เตรียมชุดข้อมูลสำหรับการฝึกอบรม
label = "species"
# Replaces numerical NaN (representing missing values in Pandas Dataframe) with 0s.
# ...Neural Nets don't work well with numerical NaNs.
for col in dataset_df.columns:
if dataset_df[col].dtype not in [str, object]:
dataset_df[col] = dataset_df[col].fillna(0)
# Split the dataset into a training and testing dataset.
def split_dataset(dataset, test_ratio=0.30):
"""Splits a panda dataframe in two."""
test_indices = np.random.rand(len(dataset)) < test_ratio
return dataset[~test_indices], dataset[test_indices]
train_ds_pd, test_ds_pd = split_dataset(dataset_df)
print("{} examples in training, {} examples for testing.".format(
len(train_ds_pd), len(test_ds_pd)))
# Convert the datasets into tensorflow datasets
train_ds = tfdf.keras.pd_dataframe_to_tf_dataset(train_ds_pd, label=label)
test_ds = tfdf.keras.pd_dataframe_to_tf_dataset(test_ds_pd, label=label)
252 examples in training, 92 examples for testing. /tmpfs/src/tf_docs_env/lib/python3.7/site-packages/tensorflow_decision_forests/keras/core.py:1612: FutureWarning: In a future version of pandas all arguments of DataFrame.drop except for the argument 'labels' will be keyword-only features_dataframe = dataframe.drop(label, 1)
สร้างแบบจำลอง
ถัดไปสร้างรูปแบบเครือข่ายประสาทโดยใช้ รูปแบบการทำงาน Keras'
เพื่อให้ตัวอย่างง่าย โมเดลนี้ใช้เพียงสองอินพุตเท่านั้น
input_1 = tf.keras.Input(shape=(1,), name="bill_length_mm", dtype="float")
input_2 = tf.keras.Input(shape=(1,), name="island", dtype="string")
nn_raw_inputs = [input_1, input_2]
ใช้ preprocessing ชั้น การแปลงปัจจัยการผลิตปัจจัยการผลิตวัตถุดิบเพื่อ apropriate สำหรับ netrwork ประสาท
# Normalization.
Normalization = tf.keras.layers.Normalization
CategoryEncoding = tf.keras.layers.CategoryEncoding
StringLookup = tf.keras.layers.StringLookup
values = train_ds_pd["bill_length_mm"].values[:, tf.newaxis]
input_1_normalizer = Normalization()
input_1_normalizer.adapt(values)
values = train_ds_pd["island"].values
input_2_indexer = StringLookup(max_tokens=32)
input_2_indexer.adapt(values)
input_2_onehot = CategoryEncoding(output_mode="binary", max_tokens=32)
normalized_input_1 = input_1_normalizer(input_1)
normalized_input_2 = input_2_onehot(input_2_indexer(input_2))
nn_processed_inputs = [normalized_input_1, normalized_input_2]
WARNING:tensorflow:max_tokens is deprecated, please use num_tokens instead. WARNING:tensorflow:max_tokens is deprecated, please use num_tokens instead.
สร้างโครงข่ายประสาทเทียม:
y = tf.keras.layers.Concatenate()(nn_processed_inputs)
y = tf.keras.layers.Dense(16, activation=tf.nn.relu6)(y)
last_layer = tf.keras.layers.Dense(8, activation=tf.nn.relu, name="last")(y)
# "3" for the three label classes. If it were a binary classification, the
# output dim would be 1.
classification_output = tf.keras.layers.Dense(3)(y)
nn_model = tf.keras.models.Model(nn_raw_inputs, classification_output)
นี้ nn_model
โดยตรงผลิต logits การจัดหมวดหมู่
ต่อไปสร้างแบบจำลองการตัดสินใจของฟอเรสต์ สิ่งนี้จะทำงานบนคุณสมบัติระดับสูงที่โครงข่ายประสาทเทียมดึงข้อมูลในเลเยอร์สุดท้ายก่อนส่วนหัวของการจำแนกประเภทนั้น
# To reduce the risk of mistakes, group both the decision forest and the
# neural network in a single keras model.
nn_without_head = tf.keras.models.Model(inputs=nn_model.inputs, outputs=last_layer)
df_and_nn_model = tfdf.keras.RandomForestModel(preprocessing=nn_without_head)
ฝึกและประเมินแบบจำลอง
โมเดลจะได้รับการฝึกในสองขั้นตอน ขั้นแรกให้ฝึกโครงข่ายประสาทเทียมด้วยหัวจำแนกของตัวเอง:
%set_cell_height 300
nn_model.compile(
optimizer=tf.keras.optimizers.Adam(),
loss=tf.keras.losses.SparseCategoricalCrossentropy(from_logits=True),
metrics=["accuracy"])
nn_model.fit(x=train_ds, validation_data=test_ds, epochs=10)
nn_model.summary()
<IPython.core.display.Javascript object> Epoch 1/10 /tmpfs/src/tf_docs_env/lib/python3.7/site-packages/keras/engine/functional.py:559: UserWarning: Input dict contained keys ['bill_depth_mm', 'flipper_length_mm', 'body_mass_g', 'sex', 'year'] which did not match any model input. They will be ignored by the model. inputs = self._flatten_to_reference_inputs(inputs) 4/4 [==============================] - 0s 53ms/step - loss: 1.0232 - accuracy: 0.3730 - val_loss: 1.0186 - val_accuracy: 0.3587 Epoch 2/10 4/4 [==============================] - 0s 7ms/step - loss: 1.0107 - accuracy: 0.3810 - val_loss: 1.0096 - val_accuracy: 0.3587 Epoch 3/10 4/4 [==============================] - 0s 7ms/step - loss: 1.0006 - accuracy: 0.3889 - val_loss: 1.0006 - val_accuracy: 0.3696 Epoch 4/10 4/4 [==============================] - 0s 7ms/step - loss: 0.9909 - accuracy: 0.3968 - val_loss: 0.9915 - val_accuracy: 0.3696 Epoch 5/10 4/4 [==============================] - 0s 7ms/step - loss: 0.9813 - accuracy: 0.3968 - val_loss: 0.9825 - val_accuracy: 0.3696 Epoch 6/10 4/4 [==============================] - 0s 7ms/step - loss: 0.9717 - accuracy: 0.4008 - val_loss: 0.9735 - val_accuracy: 0.3696 Epoch 7/10 4/4 [==============================] - 0s 7ms/step - loss: 0.9621 - accuracy: 0.4048 - val_loss: 0.9645 - val_accuracy: 0.4457 Epoch 8/10 4/4 [==============================] - 0s 7ms/step - loss: 0.9525 - accuracy: 0.6111 - val_loss: 0.9555 - val_accuracy: 0.6522 Epoch 9/10 4/4 [==============================] - 0s 8ms/step - loss: 0.9430 - accuracy: 0.7262 - val_loss: 0.9465 - val_accuracy: 0.6848 Epoch 10/10 4/4 [==============================] - 0s 7ms/step - loss: 0.9335 - accuracy: 0.7460 - val_loss: 0.9374 - val_accuracy: 0.7283 Model: "model_1" __________________________________________________________________________________________________ Layer (type) Output Shape Param # Connected to ================================================================================================== island (InputLayer) [(None, 1)] 0 [] bill_length_mm (InputLayer) [(None, 1)] 0 [] string_lookup (StringLookup) (None, 1) 0 ['island[0][0]'] normalization (Normalization) (None, 1) 3 ['bill_length_mm[0][0]'] category_encoding (CategoryEnc (None, 32) 0 ['string_lookup[0][0]'] oding) concatenate (Concatenate) (None, 33) 0 ['normalization[0][0]', 'category_encoding[0][0]'] dense (Dense) (None, 16) 544 ['concatenate[0][0]'] dense_1 (Dense) (None, 3) 51 ['dense[0][0]'] ================================================================================================== Total params: 598 Trainable params: 595 Non-trainable params: 3 __________________________________________________________________________________________________
เลเยอร์โครงข่ายประสาทเทียมใช้ร่วมกันระหว่างสองรุ่น ดังนั้นตอนนี้ที่โครงข่ายประสาทเทียมได้รับการฝึกอบรมแล้ว แบบจำลองฟอเรสต์การตัดสินใจจะพอดีกับผลลัพธ์ที่ได้รับการฝึกอบรมของเลเยอร์โครงข่ายประสาทเทียม:
%set_cell_height 300
df_and_nn_model.compile(metrics=["accuracy"])
with sys_pipes():
df_and_nn_model.fit(x=train_ds)
<IPython.core.display.Javascript object> 1/4 [======>.......................] - ETA: 0s [INFO kernel.cc:736] Start Yggdrasil model training [INFO kernel.cc:737] Collect training examples [INFO kernel.cc:392] Number of batches: 4 [INFO kernel.cc:393] Number of examples: 252 [INFO kernel.cc:759] Dataset: Number of records: 252 Number of columns: 9 Number of columns by type: NUMERICAL: 8 (88.8889%) CATEGORICAL: 1 (11.1111%) Columns: NUMERICAL: 8 (88.8889%) 0: "model_2/last/Relu:0.0" NUMERICAL mean:0.0612511 min:0 max:1.05271 sd:0.1172 1: "model_2/last/Relu:0.1" NUMERICAL mean:0.145744 min:0 max:0.357441 sd:0.140661 2: "model_2/last/Relu:0.2" NUMERICAL mean:0.114429 min:0 max:0.527097 sd:0.0945893 3: "model_2/last/Relu:0.3" NUMERICAL mean:0.0132481 min:0 max:0.124071 sd:0.0305115 4: "model_2/last/Relu:0.4" NUMERICAL mean:0.0538435 min:0 max:0.446979 sd:0.110693 5: "model_2/last/Relu:0.5" NUMERICAL mean:0.000560531 min:0 max:0.0364899 sd:0.00370266 6: "model_2/last/Relu:0.6" NUMERICAL mean:0.0278776 min:0 max:0.449398 sd:0.0592763 7: "model_2/last/Relu:0.7" NUMERICAL mean:0.0485136 min:0 max:0.319197 sd:0.104035 CATEGORICAL: 1 (11.1111%) 8: "__LABEL" CATEGORICAL integerized vocab-size:4 no-ood-item Terminology: nas: Number of non-available (i.e. missing) values. ood: Out of dictionary. manually-defined: Attribute which type is manually defined by the user i.e. the type was not automatically inferred. tokenized: The attribute value is obtained through tokenization. has-dict: The attribute is attached to a string dictionary e.g. a categorical attribute stored as a string. vocab-size: Number of unique values. [INFO kernel.cc:762] Configure learner [INFO kernel.cc:787] Training config: learner: "RANDOM_FOREST" features: "model_2/last/Relu:0\\.0" features: "model_2/last/Relu:0\\.1" features: "model_2/last/Relu:0\\.2" features: "model_2/last/Relu:0\\.3" features: "model_2/last/Relu:0\\.4" features: "model_2/last/Relu:0\\.5" features: "model_2/last/Relu:0\\.6" features: "model_2/last/Relu:0\\.7" label: "__LABEL" task: CLASSIFICATION [yggdrasil_decision_forests.model.random_forest.proto.random_forest_config] { num_trees: 300 decision_tree { max_depth: 16 min_examples: 5 in_split_min_examples_check: true missing_value_policy: GLOBAL_IMPUTATION allow_na_conditions: false categorical_set_greedy_forward { sampling: 0.1 max_num_items: -1 min_item_frequency: 1 } growing_strategy_local { } categorical { cart { } } num_candidate_attributes_ratio: -1 axis_aligned_split { } internal { sorting_strategy: PRESORTED } } winner_take_all_inference: true compute_oob_performances: true compute_oob_variable_importances: false adapt_bootstrap_size_ratio_for_maximum_training_duration: false } [INFO kernel.cc:790] Deployment config: num_threads: 6 [INFO kernel.cc:817] Train model [INFO random_forest.cc:315] Training random forest on 252 example(s) and 8 feature(s). [INFO random_forest.cc:628] Training of tree 1/300 (tree index:0) done accuracy:0.944444 logloss:2.00243 [INFO random_forest.cc:628] Training of tree 11/300 (tree index:10) done accuracy:0.948207 logloss:1.04535 [INFO random_forest.cc:628] Training of tree 21/300 (tree index:20) done accuracy:0.956349 logloss:0.763534 [INFO random_forest.cc:628] Training of tree 31/300 (tree index:30) done accuracy:0.952381 logloss:0.633103 [INFO random_forest.cc:628] Training of tree 41/300 (tree index:40) done accuracy:0.952381 logloss:0.634035 [INFO random_forest.cc:628] Training of tree 51/300 (tree index:49) done accuracy:0.952381 logloss:0.63407 [INFO random_forest.cc:628] Training of tree 61/300 (tree index:60) done accuracy:0.952381 logloss:0.632213 [INFO random_forest.cc:628] Training of tree 71/300 (tree index:69) done accuracy:0.952381 logloss:0.634892 [INFO random_forest.cc:628] Training of tree 81/300 (tree index:80) done accuracy:0.948413 logloss:0.634806 [INFO random_forest.cc:628] Training of tree 91/300 (tree index:90) done accuracy:0.948413 logloss:0.634308 [INFO random_forest.cc:628] Training of tree 101/300 (tree index:100) done accuracy:0.944444 logloss:0.63434 [INFO random_forest.cc:628] Training of tree 111/300 (tree index:110) done accuracy:0.944444 logloss:0.63474 [INFO random_forest.cc:628] Training of tree 121/300 (tree index:120) done accuracy:0.944444 logloss:0.634896 [INFO random_forest.cc:628] Training of tree 131/300 (tree index:130) done accuracy:0.948413 logloss:0.634515 [INFO random_forest.cc:628] Training of tree 141/300 (tree index:138) done accuracy:0.944444 logloss:0.635284 [INFO random_forest.cc:628] Training of tree 151/300 (tree index:150) done accuracy:0.944444 logloss:0.634902 [INFO random_forest.cc:628] Training of tree 161/300 (tree index:160) done accuracy:0.944444 logloss:0.633816 [INFO random_forest.cc:628] Training of tree 171/300 (tree index:170) done accuracy:0.944444 logloss:0.632936 [INFO random_forest.cc:628] Training of tree 181/300 (tree index:180) done accuracy:0.944444 logloss:0.632445 [INFO random_forest.cc:628] Training of tree 191/300 (tree index:189) done accuracy:0.944444 logloss:0.632614 [INFO random_forest.cc:628] Training of tree 201/300 (tree index:199) done accuracy:0.944444 logloss:0.632688 [INFO random_forest.cc:628] Training of tree 211/300 (tree index:206) done accuracy:0.944444 logloss:0.633056 [INFO random_forest.cc:628] Training of tree 221/300 (tree index:220) done accuracy:0.944444 logloss:0.633952 [INFO random_forest.cc:628] Training of tree 231/300 (tree index:231) done accuracy:0.944444 logloss:0.634217 [INFO random_forest.cc:628] Training of tree 241/300 (tree index:240) done accuracy:0.944444 logloss:0.634271 [INFO random_forest.cc:628] Training of tree 251/300 (tree index:244) done accuracy:0.944444 logloss:0.634761 [INFO random_forest.cc:628] Training of tree 261/300 (tree index:261) done accuracy:0.944444 logloss:0.634685 [INFO random_forest.cc:628] Training of tree 271/300 (tree index:268) done accuracy:0.944444 logloss:0.634395 [INFO random_forest.cc:628] Training of tree 281/300 (tree index:280) done accuracy:0.944444 logloss:0.633878 [INFO random_forest.cc:628] Training of tree 291/300 (tree index:291) done accuracy:0.944444 logloss:0.633605 [INFO random_forest.cc:628] Training of tree 300/300 (tree index:299) done accuracy:0.944444 logloss:0.633627 [INFO random_forest.cc:696] Final OOB metrics: accuracy:0.944444 logloss:0.633627 [INFO kernel.cc:828] Export model in log directory: /tmp/tmpb92rvbmj [INFO kernel.cc:836] Save model in resources [INFO kernel.cc:988] Loading model from path [INFO decision_forest.cc:590] Model loaded with 300 root(s), 4148 node(s), and 8 input feature(s). [INFO kernel.cc:848] Use fast generic engine 4/4 [==============================] - 0s 18ms/step
ตอนนี้ประเมินโมเดลที่ประกอบ:
print("Evaluation:", df_and_nn_model.evaluate(test_ds))
2/2 [==============================] - 0s 5ms/step - loss: 0.0000e+00 - accuracy: 0.9565 Evaluation: [0.0, 0.95652174949646]
เปรียบเทียบกับ Neural Network เพียงอย่างเดียว:
print("Evaluation :", nn_model.evaluate(test_ds))
2/2 [==============================] - 0s 4ms/step - loss: 0.9374 - accuracy: 0.7283 Evaluation : [0.9373641610145569, 0.72826087474823]