πŸ•› Time Series

πŸ•› Time Series/Forecasting

[Paper Review] Are Transformers Effective for Time Series Forecasting?(AAAI 2023)

Are Transformers Effective for Time Series Forecasting? 0. Abstract `Long-term Time Series Forecasting(LTSF)` 문제의 ν•΄κ²°μ±…μœΌλ‘œ `Transformer` 기반의 λͺ¨λΈλ“€μ΄ 급증 TransformersλŠ” 틀림없이 long sequence의 μš”μ†Œλ“€μ˜ `semantic correlations`을 μΆ”μΆœν•˜λŠ”λ° κ°€μž₯ 성곡적인 ν•΄κ²°μ±… κ·ΈλŸ¬λ‚˜ μ‹œκ³„μ—΄ λͺ¨λΈλ§μ—μ„œλŠ” μ—°μ†λœ μ λ“€μ˜ μˆœμ„œν™”λœ μ§‘ν•©μ—μ„œ μ‹œκ°„μ  관계λ₯Ό μΆ”μΆœν•΄μ•Ό 함 TransformersλŠ”ordering information을 λ³΄μ‘΄ν•˜λŠ”λ° μš©μ΄ν•œ `positional encoding`κ³Ό `tokens`을 μ‚¬μš©ν•˜μ—¬ sub-seriesλ₯Ό embedding 이 경우 self-attent..

πŸ•› Time Series/Anomaly Detection

[Paper Review] Deep Learning for Anomaly Detection in Time-Series Data: Review, Analysis, and Guidelines(IEEE 2021)

Deep Learning for Anomaly Detection in Time-Series Data: Review, Analysis, and Guidelines(IEEE 2021) 0. Abstract 산업이 μžλ™ν™”λ˜κ³ , μ—°κ²° 기술이 λ°œμ „ν•¨μ— 따라 λ‹€μ–‘ν•œ μ‹œμŠ€ν…œμ—μ„œ λ°©λŒ€ν•œ μ–‘μ˜ 데이터가 생성 λ°©λŒ€ν•œ λ°μ΄ν„°μ—μ„œ 전체 μ‹œμŠ€ν…œμ˜ μƒνƒœλ₯Ό λ‚˜νƒ€λ‚΄λŠ” μ£Όμš” μ§€ν‘œλ₯Ό μΆ”μΆœν•˜κΈ° μœ„ν•΄ λ§Žμ€ μ ‘κ·Ό 방식이 μ œμ•ˆ μ΄λŸ¬ν•œ μ§€ν‘œλ₯Ό μ‚¬μš©ν•˜μ—¬ 이상 징후λ₯Ό 제 μ‹œκ°„μ— νƒμ§€ν•˜λ©΄, 잠재적인 사고와 경제적 손싀을 방지 λ‹€λ³€λŸ‰ μ‹œκ³„μ—΄ λ°μ΄ν„°μ—μ„œμ˜ `Anomaly Detection`은 μ‹œκ°„μ  쒅속성과 λ³€μˆ˜ κ°„μ˜ 관계λ₯Ό λ™μ‹œμ— κ³ λ €ν•΄μ•Όν•˜κΈ° λ•Œλ¬Έμ— 특히 μ–΄λ €μš΄ 과제 졜근 λ”₯λŸ¬λ‹ 기반 연ꡬ듀이 이 λΆ„μ•Όμ—μ„œ 인상적인 진전을 이룸 이듀은 λŒ€κ·œλͺ¨ μ‹œν€€μŠ€μ˜ ..

πŸ•› Time Series/Forecasting

[Time Series] ARIMA - Stationarity, Differencing, Backshift, AutoRegressive, Moving Average, ACF, PACF

`μ§€μˆ˜ν‰ν™œ(exponential smoothing)`κ³Ό `ARIMA` λͺ¨λΈμ€ μ‹œκ³„μ—΄μ„ μ˜ˆμΈ‘ν•  λ•Œ κ°€μž₯ 널리 μ‚¬μš©ν•˜λŠ” 두 가지 μ ‘κ·Ό 방식 μ§€μˆ˜ν‰ν™œ λͺ¨λΈμ€ 좔세와 κ³„μ ˆμ„±μ— λŒ€ν•œ μ„€λͺ…에 κΈ°μ΄ˆν•˜κ³ , ARIMA λͺ¨λΈμ€ 데이터에 λ‚˜νƒ€λ‚˜λŠ” `μžκΈ°μƒκ΄€(autocorrelation)`을 ν‘œν˜„ν•˜λŠ” 데 λͺ©μ  정상성(Stationarity)κ³Ό μ°¨λΆ„(Difference) 정상성(Stationarity) `정상성(stationarity)`을 λ‚˜νƒ€λ‚΄λŠ” μ‹œκ³„μ—΄μ€ μ‹œκ³„μ—΄μ˜ νŠΉμ§•μ΄ κ΄€μΈ‘λœ μ‹œκ°„μ— 무관 μΆ”μ„Έλ‚˜ κ³„μ ˆμ„±μ€ μ„œλ‘œ λ‹€λ₯Έ μ‹œκ°„μ— μ‹œκ³„μ—΄μ˜ 값에 영ν–₯을 μ£ΌκΈ° λ•Œλ¬Έμ— μΆ”μ„Έλ‚˜ κ³„μ ˆμ„±μ΄ μžˆλŠ” μ‹œκ³„μ—΄μ€ 정상성을 λ‚˜νƒ€λ‚΄λŠ” μ‹œκ³„μ—΄μ΄ μ•„λ‹˜ μΆ”μ„Έλ‚˜ κ³„μ ˆμ„±μ€ μ—†μ§€λ§Œ μ£ΌκΈ°μ„± 행동을 가지고 μžˆλŠ” μ‹œκ³„μ—΄μ€ 정상성을 λ‚˜νƒ€λ‚΄λŠ” μ‹œκ³„μ—΄ μ£ΌκΈ°κ°€ κ³ μ •λœ 길이λ₯Ό κ°–..

πŸ•› Time Series/Forecasting

[Paper Reveiw] Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting(AAAI 2021)

Informer: Beyond Efficient Transformer for Long Sequence Time-Series Forecasting(AAAI 2021) 0. Abstract μ „λ ₯ μ†ŒλΉ„ κ³„νšκ³Ό 같이 κΈ΄ μ‹œν€€μŠ€ μ‹œκ³„μ—΄μ„ μ˜ˆμΈ‘ν•΄μ•Ό ν•˜λŠ” κ²½μš°κ°€ μ‹€μ œλ‘œ 많음 `Long Sequence Time-series Forecasting(LSTF)`은 outputκ³Ό input κ°„μ˜ μ •ν™•ν•œ `long-range dependency` 관계λ₯Ό 효율적으둜 νŒŒμ•…ν•˜λŠ” λͺ¨λΈμ˜ 높은 예츑 λŠ₯λ ₯을 μš”κ΅¬ 졜근 연ꡬ에 λ”°λ₯΄λ©΄ `Transformer`κ°€ 예츑 λŠ₯λ ₯을 ν–₯μƒμ‹œν‚¬ 수 μžˆλŠ” 잠재λ ₯을 가진 κ²ƒμœΌλ‘œ λ‚˜νƒ€λ‚¨ κ·ΈλŸ¬λ‚˜ Transformerμ—λŠ” `quadratic time complexity`, `high memory usage`, ..

πŸ•› Time Series/Forecasting

[Time Series] μ§€μˆ˜ν‰ν™œ(Exponential Smoothing) - damped trend, innovation state space model, ETS

`μ§€μˆ˜ ν‰ν™œ(exponential smoothing)`을 μ‚¬μš©ν•˜μ—¬ 얻은 μ˜ˆμΈ‘κ°’μ€ κ³Όκ±° κ΄€μΈ‘κ°’μ˜ `가쀑평균(weighted average)` κ³Όκ±° 관츑값은 였래될수둝 μ§€μˆ˜μ μœΌλ‘œ κ°μ†Œν•˜λŠ” κ°€μ€‘μΉ˜λ₯Ό κ°–μœΌλ©°, κ°€μž₯ 졜근 관츑값이 κ°€μž₯ 높은 κ°€μ€‘μΉ˜λ₯Ό κ°–μŒ μ΄λŸ¬ν•œ λ°©μ‹μœΌλ‘œ λ‹€μ–‘ν•œ μ’…λ₯˜μ˜ μ‹œκ³„μ—΄μ„ 가지고 μ‹ λ’°ν• λ§Œν•œ 예츑 μž‘μ—…μ„ λΉ λ₯΄κ²Œ μˆ˜ν–‰ν•  수 있으며, μ΄λŠ” μ‚°μ—… 뢄야에 μ‘μš©ν•  λ•Œ 맀우 μ€‘μš”ν•œ λΆ€λΆ„ λ‹¨μˆœ μ§€μˆ˜ν‰ν™œ(Simple Exponential Smoothing) μ§€μˆ˜μ μœΌλ‘œ ν‰ν™œν•˜λŠ” 기법 μ€‘μ—μ„œ κ°€μž₯ λ‹¨μˆœν•œ 방법을 `λ‹¨μˆœ μ§€μˆ˜ν‰ν™œ(simple exponential smoothing, SES)`라고 함 μΆ”μ„Έλ‚˜ κ³„μ ˆμ„±μ΄ μ—†λŠ” 데이터λ₯Ό μ˜ˆμΈ‘ν•  λ•Œ μ‚¬μš©ν•˜κΈ° μ’‹μŒ λ‹¨μˆœ μ§€μˆ˜ν‰ν™œ κΈ°λ²•μ˜ κΈ°λ³Έ κ°œλ…μ€ 였래된 관츑값보닀 더 졜근..

πŸ•› Time Series/Forecasting

[Time Series] μ‹œκ³„μ—΄ λΆ„ν•΄ - additive decomposition, multiplicative decomposition, moving average, weighted moving average

μ‹œκ³„μ—΄ λ°μ΄ν„°λŠ” λ‹€μ–‘ν•œ νŒ¨ν„΄μœΌλ‘œ λ‚˜νƒ€λ‚  수 있으며, 이λ₯Ό λͺ‡ 가지 μ„±λΆ„μœΌλ‘œ λ‚˜λˆ„λŠ” μž‘μ—…μ€ μ‹œκ³„μ—΄μ„ μ΄ν•΄ν•˜λŠ”λ° 도움이 됨 μ‹œκ³„μ—΄ νŒ¨ν„΄μ—λŠ” `μΆ”μ„Έ(trend)`, `κ³„μ ˆμ„±(seasonality)`, `μ£ΌκΈ°(cycle)` 3가지가 쑴재 μ‹œκ³„μ—΄μ„ μ„±λΆ„μœΌλ‘œ λ‚˜λˆŒ λ•ŒλŠ” μ’…μ’… 좔세와 μ£ΌκΈ°λ₯Ό κ²°ν•©ν•˜μ—¬ μΆ”μ„Έ-μ£ΌκΈ° μ„±λΆ„μœΌλ‘œ λ‹€λ£Έ λ‹¨μˆœνžˆ 좔세라고 λΆ€λ₯΄κΈ°λ„ 함 κ²°κ΅­ μ‹œκ³„μ—΄μ€ `μΆ”μ„Έ-μ£ΌκΈ°` μ„±λΆ„, `κ³„μ ˆμ„±` μ„±λΆ„, μ‹œκ³„μ—΄μ˜ λ‚˜λ¨Έμ§€ μš”μ†Œλ₯Ό ν¬ν•¨ν•˜λŠ” `λ‚˜λ¨Έμ§€(reminder)` μ„±λΆ„μœΌλ‘œ κ΅¬μ„±λœλ‹€ λ³Ό 수 있음 μ‹œκ³„μ—΄ μ„±λΆ„ λ§μ…ˆ λΆ„ν•΄(additive decomposition) y_t : 데이터 S_t : κ³„μ ˆ μ„±λΆ„ T_t : μΆ”μ„Έ-μ£ΌκΈ° μ„±λΆ„ R_t : λ‚˜λ¨Έμ§€ μ„±λΆ„ y_t, S_t, T_t, R_t λͺ¨λ‘ μ‹œμ  tμ—μ„œμ˜ μ–‘μ˜ κ°’ κ³±μ…ˆ λΆ„..

πŸ•› Time Series/Forecasting

[Paper Review] Time Series Forecasting With Deep Learning: A Survey(Philos Trans R Soc A 2020)

`one-step-ahead`와 `multi-horizon time series` λͺ¨λ‘μ— μ‚¬μš©ν•˜λŠ” ν”ν•œ encoder와 decoder의 섀계λ₯Ό μ‚΄νŽ΄λ³΄κ³ , 각 λͺ¨λΈμ—μ„œ μ‹œκ°„ 정보가 μ˜ˆμΈ‘μ— ν†΅ν•©λ˜λŠ” 방식을 확인 잘 ν•™μŠ΅λœ 톡계 λͺ¨λΈκ³Ό neural network ꡬ성 μš”μ†Œλ₯Ό κ²°ν•©ν•˜μ—¬ 두 λΆ„μ•Ό λͺ¨λ‘μ—μ„œ κΈ°μ‘΄ 방법을 κ°œμ„ ν•˜λŠ” `hybrid deep learning` λͺ¨λΈμ„ 확인 λ”₯λŸ¬λ‹μ΄ μ‹œκ³„μ—΄ λ°μ΄ν„°μ˜ μ˜μ‚¬ 결정을 μ§€μ›ν•˜λŠ” 방법을 촉진할 수 μžˆλŠ” λͺ‡ 가지 방법도 κ°„λž΅νžˆ μ†Œκ°œ 1. Introduction μ‹œκ³„μ—΄ λͺ¨λΈλ§μ€ μ—­μ‚¬μ μœΌλ‘œ climate modeling, biological sciences, medicine, μœ ν†΅ 및 κΈˆμœ΅μ—μ„œμ˜ commercial decision making λ“±μ˜ μ˜μ—­μ—μ„œ μ£Όμš”ν•œ 연ꡬ λΆ„μ•Ό..

πŸ•› Time Series/Forecasting

[Time Series] μ‹œκ³„μ—΄ νšŒκ·€ λͺ¨λΈ - linear regression, least square estimation, fitted value, supurious regression, AIC, BIC, multicollinearity

μ‹œκ³„μ—΄ yλ₯Ό μ˜ˆμΈ‘ν•  λ•Œ 이것이 λ‹€λ₯Έ μ‹œκ³„μ—΄ x와 μ„ ν˜• 관계가 μžˆλ‹€κ³  κ°€μ • `λͺ©ν‘œ μ˜ˆμƒλ³€μˆ˜(forecast variable)` : y(= νšŒκ·€μ„ , 쒅속 λ³€μˆ˜, ν”Όμ„€λͺ… λ³€μˆ˜) `μ˜ˆμΈ‘λ³€μˆ˜(predictor variables)` : x(= νšŒκ·€μž, 독립 λ³€μˆ˜, μ„€λͺ… λ³€μˆ˜) ν•΄λ‹Ή μžλ£Œμ—μ„  항상 yλ₯Ό "λͺ©ν‘œ μ˜ˆμƒ(forecast)" λ³€μˆ˜, xλ₯Ό "예츑(predictor)" λ³€μˆ˜λΌκ³  λͺ…λͺ… μ„ ν˜• λͺ¨λΈ λ‹¨μˆœ μ„ ν˜• νšŒκ·€(Simple Linear Regression) λͺ©ν‘œ μ˜ˆμƒλ³€μˆ˜ y와 ν•˜λ‚˜μ˜ μ˜ˆμΈ‘λ³€μˆ˜ x μ‚¬μ΄μ˜ μ„ ν˜• 관계λ₯Ό λ‹€λ£¨λŠ” νšŒκ·€ λͺ¨λΈ B_0 : μ§μ„ μ˜ 절편으둜, x = 0μ—μ„œ y의 μ˜ˆμΈ‘κ°’ B_1 : μ§μ„ μ˜ 기울기둜, xκ°€ 1만큼 μ¦κ°€ν–ˆμ„ λ•Œ y의 예츑된 λ³€ν™” e_t : λ¬΄μž‘μœ„ 였차(error)둜 관츑값이 κΈ°λ³Έ 직선..

πŸ•› Time Series/Forecasting

[Time Series] μ‹œκ³„μ—΄ μ‹œκ°ν™” - trend, seasonality, cycle, scatterplot, autocorrelation, white noise

데이터 뢄석 μž‘μ—…μ—μ„œ κ°€μž₯ λ¨Όμ € ν•΄μ•Όν•˜λŠ” 것은 데이터λ₯Ό κ·Έλž˜ν”„λ‘œ λ‚˜νƒ€λ‚΄λŠ” 것 κ·Έλž˜ν”„λŠ” νŒ¨ν„΄, νŠΉμ΄ν•œ κ΄€μΈ‘κ°’, μ‹œκ°„μ— λ”°λ₯Έ λ³€ν™”, λ³€μˆ˜ μ‚¬μ΄μ˜ 관계 λ“±μ˜ λ°μ΄ν„°μ˜ λ§Žμ€ νŠΉμ§•μ„ 눈으둜 λ³Ό 수 있게 ν•΄μ€Œ 데이터λ₯Ό 그림으둜 λ‚˜νƒ€λ‚Έ κ·Έλž˜ν”„μ—μ„œ λ³΄μ΄λŠ” νŠΉμ§•μ€ μ‚¬μš©ν•  예츑 기법에 λ°˜λ“œμ‹œ ν¬ν•¨λ˜μ–΄μ•Ό 함 μ‹œκ³„μ—΄ νŒ¨ν„΄ `μΆ”μ„Έ(trend)` 데이터가 μž₯기적으둜 μ¦κ°€ν•˜κ±°λ‚˜ κ°μ†Œν•  λ•Œ, μΆ”μ„Έκ°€ 쑴재 μ„ ν˜•μ μΌ ν•„μš”λŠ” x `κ³„μ ˆμ„±(seasonality)` ν•΄λ§ˆλ‹€ μ–΄λ–€ νŠΉμ •ν•œ λ•Œλ‚˜ μΌμ£ΌμΌλ§ˆλ‹€ νŠΉμ • μš”μΌμ— λ‚˜νƒ€λ‚˜λŠ” 것 같은 κ³„μ ˆμ„± μš”μΈμ΄ μ‹œκ³„μ—΄μ— 영ν–₯을 μ£ΌλŠ” 경우 κ³„μ ˆμ„±μ€ λΉˆλ„μ˜ ν˜•νƒœλ‘œ λ‚˜νƒ€λ‚˜λŠ”λ°, λΉˆλ„λŠ” 항상 μΌμ •ν•˜λ©° μ•Œλ €μ Έ 있음 λΉˆλ„κ°€ λ³€ν•˜μ§€ μ•Šκ³  연쀑 μ–΄λ–€ μ‹œκΈ°μ™€ μ—°κ΄€λ˜μ–΄ μžˆλŠ” μš”λ™ `λΉˆλ„(frequency)`λŠ” κ³„μ ˆμ„± νŒ¨ν„΄μ΄ ..

Junyeong Son
'πŸ•› Time Series' μΉ΄ν…Œκ³ λ¦¬μ˜ κΈ€ λͺ©λ‘