Time Series Analysis
Analyze temporal data patterns including trends, seasonality, autocorrelation, and forecasting for time series decomposition, trend analysis, and forecasting models
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o time-series-analysis.zip https://jpskill.com/download/21552.zip && unzip -o time-series-analysis.zip && rm time-series-analysis.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/21552.zip -OutFile "$d\time-series-analysis.zip"; Expand-Archive "$d\time-series-analysis.zip" -DestinationPath $d -Force; ri "$d\time-series-analysis.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
time-series-analysis.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
time-series-analysisフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
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🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-18
- 取得日時
- 2026-05-18
- 同梱ファイル
- 2
📖 Claude が読む原文 SKILL.md(中身を展開)
この本文は AI(Claude)が読むための原文(英語または中国語)です。日本語訳は順次追加中。
Time Series Analysis
Overview
Time series analysis examines data points collected over time to identify patterns, trends, and seasonality for forecasting and understanding temporal dynamics.
When to Use
- Forecasting future values based on historical trends
- Detecting seasonality and cyclical patterns in data
- Analyzing trends over time in sales, stock prices, or website traffic
- Understanding autocorrelation and temporal dependencies
- Making time-based predictions with confidence intervals
- Decomposing data into trend, seasonal, and residual components
Core Components
- Trend: Long-term directional movement
- Seasonality: Repeating patterns at fixed intervals
- Cyclicity: Long-term oscillations (non-fixed periods)
- Stationarity: Constant mean, variance over time
- Autocorrelation: Correlation with past values
Key Techniques
- Decomposition: Separating trend, seasonal, residual components
- Differencing: Making data stationary
- ARIMA: AutoRegressive Integrated Moving Average models
- Exponential Smoothing: Weighted average of past values
- SARIMA: Seasonal ARIMA models
Implementation with Python
import pandas as pd
import numpy as np
import matplotlib.pyplot as plt
from statsmodels.tsa.seasonal import seasonal_decompose
from statsmodels.tsa.stattools import adfuller, acf, pacf
from statsmodels.graphics.tsaplots import plot_acf, plot_pacf
from statsmodels.tsa.arima.model import ARIMA
from statsmodels.tsa.holtwinters import ExponentialSmoothing
# Create sample time series data
dates = pd.date_range('2020-01-01', periods=365, freq='D')
values = 100 + np.sin(np.arange(365) * 2*np.pi / 365) * 20 + np.random.normal(0, 5, 365)
ts = pd.Series(values, index=dates)
# Visualize time series
fig, axes = plt.subplots(2, 2, figsize=(14, 8))
axes[0, 0].plot(ts)
axes[0, 0].set_title('Original Time Series')
axes[0, 0].set_ylabel('Value')
# Decomposition
decomposition = seasonal_decompose(ts, model='additive', period=30)
axes[0, 1].plot(decomposition.trend)
axes[0, 1].set_title('Trend Component')
axes[1, 0].plot(decomposition.seasonal)
axes[1, 0].set_title('Seasonal Component')
axes[1, 1].plot(decomposition.resid)
axes[1, 1].set_title('Residual Component')
plt.tight_layout()
plt.show()
# Test for stationarity (Augmented Dickey-Fuller)
result = adfuller(ts)
print(f"ADF Test Statistic: {result[0]:.6f}")
print(f"P-value: {result[1]:.6f}")
print(f"Critical Values: {result[4]}")
if result[1] <= 0.05:
print("Time series is stationary")
else:
print("Time series is non-stationary - differencing needed")
# First differencing for stationarity
ts_diff = ts.diff().dropna()
result_diff = adfuller(ts_diff)
print(f"\nAfter differencing - ADF p-value: {result_diff[1]:.6f}")
# Autocorrelation and Partial Autocorrelation
fig, axes = plt.subplots(1, 2, figsize=(12, 4))
plot_acf(ts_diff, lags=40, ax=axes[0])
axes[0].set_title('ACF')
plot_pacf(ts_diff, lags=40, ax=axes[1])
axes[1].set_title('PACF')
plt.tight_layout()
plt.show()
# ARIMA Model
arima_model = ARIMA(ts, order=(1, 1, 1))
arima_result = arima_model.fit()
print(arima_result.summary())
# Forecast
forecast_steps = 30
forecast = arima_result.get_forecast(steps=forecast_steps)
forecast_df = forecast.conf_int()
forecast_mean = forecast.predicted_mean
# Plot forecast
fig, ax = plt.subplots(figsize=(12, 5))
ax.plot(ts.index[-90:], ts[-90:], label='Historical')
ax.plot(forecast_df.index, forecast_mean, label='Forecast', color='red')
ax.fill_between(
forecast_df.index,
forecast_df.iloc[:, 0],
forecast_df.iloc[:, 1],
color='red', alpha=0.2
)
ax.set_title('ARIMA Forecast with Confidence Interval')
ax.legend()
ax.grid(True, alpha=0.3)
plt.show()
# Exponential Smoothing
exp_smooth = ExponentialSmoothing(
ts, seasonal_periods=30, trend='add', seasonal='add', initialization_method='estimated'
)
exp_result = exp_smooth.fit()
# Model diagnostics
fig = exp_result.plot_diagnostics(figsize=(12, 8))
plt.tight_layout()
plt.show()
# Custom moving average analysis
window_sizes = [7, 30, 90]
fig, ax = plt.subplots(figsize=(12, 5))
ax.plot(ts.index, ts.values, label='Original', alpha=0.7)
for window in window_sizes:
ma = ts.rolling(window=window).mean()
ax.plot(ma.index, ma.values, label=f'MA({window})')
ax.set_title('Moving Averages')
ax.legend()
ax.grid(True, alpha=0.3)
plt.show()
# Seasonal subseries plot
fig, axes = plt.subplots(2, 2, figsize=(12, 8))
for i, month in enumerate(range(1, 5)):
month_data = ts[ts.index.month == month]
axes[i // 2, i % 2].plot(month_data.values)
axes[i // 2, i % 2].set_title(f'Month {month} Pattern')
plt.tight_layout()
plt.show()
# Forecast accuracy metrics
def calculate_forecast_metrics(actual, predicted):
mae = np.mean(np.abs(actual - predicted))
rmse = np.sqrt(np.mean((actual - predicted) ** 2))
mape = np.mean(np.abs((actual - predicted) / actual)) * 100
return {'MAE': mae, 'RMSE': rmse, 'MAPE': mape}
metrics = calculate_forecast_metrics(ts[-30:], forecast_mean[:30])
print(f"\nForecast Metrics:\n{metrics}")
# Additional analysis techniques
# Step 10: Seasonal subseries plots
fig, axes = plt.subplots(2, 2, figsize=(12, 8))
for i, season in enumerate([1, 2, 3, 4]):
seasonal_ts = ts[ts.index.month % 4 == season % 4]
axes[i // 2, i % 2].plot(seasonal_ts.values)
axes[i // 2, i % 2].set_title(f'Season {season}')
plt.tight_layout()
plt.show()
# Step 11: Granger causality (for multiple series)
from statsmodels.tsa.stattools import grangercausalitytests
# Create another series for testing
ts2 = ts.shift(1).fillna(method='bfill')
try:
print("\nGranger Causality Test:")
print(f"Test whether ts2 Granger-causes ts:")
gc_result = grangercausalitytests(np.column_stack([ts.values, ts2.values]), maxlag=3)
except Exception as e:
print(f"Granger causality not performed: {str(e)[:50]}")
# Step 12: Autocorrelation and partial autocorrelation analysis
from statsmodels.graphics.tsaplots import plot_acf, plot_pacf
acf_values = acf(ts.dropna(), nlags=20)
pacf_values = pacf(ts.dropna(), nlags=20)
# Step 13: Seasonal strength
def seasonal_strength(series, seasonal_period=30):
seasonal = seasonal_decompose(series, model='additive', period=seasonal_period)
var_residual = np.var(seasonal.resid.dropna())
var_seasonal = np.var(seasonal.seasonal)
return 1 - (var_residual / (var_residual + var_seasonal)) if (var_residual + var_seasonal) > 0 else 0
ss = seasonal_strength(ts)
print(f"\nSeasonal Strength: {ss:.3f}")
# Step 14: Forecasting with uncertainty
fig, ax = plt.subplots(figsize=(12, 5))
ax.plot(ts.index[-60:], ts.values[-60:], label='Historical', linewidth=2)
# Multiple horizon forecasts
for steps_ahead in [10, 20, 30]:
try:
fc = arima_result.get_forecast(steps=steps_ahead)
fc_mean = fc.predicted_mean
ax.plot(pd.date_range(ts.index[-1], periods=steps_ahead+1)[1:],
fc_mean.values, marker='o', label=f'Forecast (+{steps_ahead})')
except:
pass
ax.set_title('Multi-step Ahead Forecasts')
ax.set_xlabel('Date')
ax.set_ylabel('Value')
ax.legend()
ax.grid(True, alpha=0.3)
plt.tight_layout()
plt.show()
# Step 15: Model comparison summary
print("\nTime Series Analysis Complete!")
print(f"Original series length: {len(ts)}")
print(f"Trend strength: {1 - np.var(decomposition.resid.dropna()) / np.var((ts - ts.mean()).dropna()):.3f}")
print(f"Seasonal strength: {ss:.3f}")
Stationarity
- Stationary: Mean, variance, autocorrelation constant over time
- Non-stationary: Trend or seasonal patterns present
- Solution: Differencing, log transformation, or detrending
Model Selection
- ARIMA: Good for univariate forecasting
- SARIMA: Includes seasonal components
- Exponential Smoothing: Simpler, good for trends
- Prophet: Handles holidays and changepoints
Evaluation Metrics
- MAE: Mean Absolute Error
- RMSE: Root Mean Squared Error
- MAPE: Mean Absolute Percentage Error
Deliverables
- Decomposition analysis charts
- Stationarity test results
- ACF/PACF plots
- Fitted models with diagnostics
- Forecast with confidence intervals
- Accuracy metrics comparison
同梱ファイル
※ ZIPに含まれるファイル一覧。`SKILL.md` 本体に加え、参考資料・サンプル・スクリプトが入っている場合があります。
- 📄 SKILL.md (8,447 bytes)
- 📎 scripts/scaffold-analysis.sh (394 bytes)