Compare commits

..

2 Commits

Author SHA1 Message Date
b331cdd716 Working on RL project 2026-03-07 08:28:10 +01:00
acd403a14e working 2026-03-06 15:28:31 +01:00
12 changed files with 771 additions and 2255 deletions

File diff suppressed because one or more lines are too long

Binary file not shown.

Binary file not shown.

After

Width:  |  Height:  |  Size: 229 KiB

Binary file not shown.

Before

Width:  |  Height:  |  Size: 43 KiB

After

Width:  |  Height:  |  Size: 136 KiB

Binary file not shown.

Before

Width:  |  Height:  |  Size: 49 KiB

After

Width:  |  Height:  |  Size: 178 KiB

Binary file not shown.

After

Width:  |  Height:  |  Size: 23 KiB

Binary file not shown.

After

Width:  |  Height:  |  Size: 30 KiB

154
M2/Time Series/TD4.qmd Normal file
View File

@@ -0,0 +1,154 @@
# Exercise 1 :
```{r}
set.seed(123)
n <- 100
t <- 1:n
eps <- rnorm(n, mean = 0, sd = 1)
X <- eps
Y <- 3 * t + 2 + 15 * eps
Z <- 3 * t + 2 + 15 * eps + 55 * sin(t * pi / 6)
par(mfrow = c(3, 1))
plot(ts(X), main = "Série X_t : Bruit blanc", ylab = "X_t", col = "blue")
plot(ts(Y), main = "Série Y_t : Tendance + bruit", ylab = "Y_t", col = "red")
plot(
ts(Z),
main = "Série Z_t : Tendance + saisonnalité + bruit",
ylab = "Z_t",
col = "darkgreen"
)
```
```{r}
library(forecast)
alpha_vals <- c(0.1, 0.3, 0.5, 0.7, 0.9)
mse_simple <- function(series) {
mse <- c()
for (a in alpha_vals) {
fit <- ses(series, alpha = a, initial = "simple", h = 1)
fitted_vals <- fitted(fit)
mse <- c(mse, mean((series - fitted_vals)^2, na.rm = TRUE))
}
data.frame(alpha = alpha_vals, MSE = mse)
}
mse_simple(X)
mse_simple(Y)
mse_simple(Z)
```
```{r}
holt_mse <- function(series) {
beta_vals <- seq(0.1, 0.9, 0.2)
alpha_vals <- seq(0.1, 0.9, 0.2)
res <- expand.grid(alpha = alpha_vals, beta = beta_vals)
res$MSE <- NA_real_
for (i in seq_len(nrow(res))) {
fit <- tryCatch(
suppressWarnings(forecast::holt(
series,
alpha = res$alpha[i],
beta = res$beta[i],
h = 1
)),
error = function(e) NULL
)
if (!is.null(fit)) {
fitted_vals <- stats::fitted(fit)
res$MSE[i] <- mean((series - fitted_vals)^2, na.rm = TRUE)
} else {
res$MSE[i] <- NA_real_
}
}
res[order(res$MSE, na.last = TRUE), , drop = FALSE][1:5, ]
}
holt_mse(X)
holt_mse(Y)
holt_mse(Z)
```
```{r}
fit_X <- ses(X)
fit_Y <- ses(Y)
fit_Z <- ses(Z)
accuracy(fit_X)
accuracy(fit_Y)
accuracy(fit_Z)
```
```{r}
fit_X_holt <- holt(X)
fit_Y_holt <- holt(Y)
fit_Z_holt <- holt(Z)
accuracy(fit_X_holt)
accuracy(fit_Y_holt)
accuracy(fit_Z_holt)
```
# Exercise 2
```{r}
library(tseries)
library(forecast)
data("AirPassengers")
log_air <- log(AirPassengers)
n <- length(log_air)
n_test <- 12
train <- window(log_air, end = c(1959, 12))
test <- window(log_air, start = c(1960, 1))
plot(log_air, main = "Série AirPassengers (Log)")
lines(train, col = "blue")
lines(test, col = "red")
legend("topleft", legend = c("Train", "Test"), col = c("blue", "red"), lty = 1)
```
```{r}
library(forecast)
fit_simple <- ses(train, h = n_test)
fit_holt <- holt(train, h = n_test)
plot(log_air)
lines(fit_simple$mean, col = "green", lwd = 2)
lines(fit_holt$mean, col = "orange", lwd = 2)
legend(
"topleft",
legend = c("Série", "Simple", "Holt"),
col = c("black", "green", "orange"),
lty = 1
)
accuracy(fit_simple, test)
accuracy(fit_holt, test)
```
```{r}
fit_hw_add <- hw(train, h = n_test, seasonal = "additive")
fit_hw_mult <- hw(train, h = n_test, seasonal = "multiplicative")
plot(log_air)
lines(fit_hw_add$mean, col = "purple", lwd = 2)
lines(fit_hw_mult$mean, col = "darkgreen", lwd = 2)
legend("topleft", legend = c("Série", "HW Additif", "HW Multiplicatif"), col = c("black", "purple", "darkgreen"), lty = 1)
accuracy(fit_hw_add, test)
accuracy(fit_hw_mult, test)
```

View File

@@ -5,51 +5,27 @@ description = "A curated collection of mathematics and data science projects dev
readme = "README.md"
requires-python = ">= 3.12,<3.14"
dependencies = [
"accelerate>=1.12.0",
"ale-py>=0.11.2",
"catboost>=1.2.10",
"datasets>=4.6.1",
"faiss-cpu>=1.13.2",
"folium>=0.20.0",
"geopandas>=1.1.2",
"google-api-python-client>=2.191.0",
"google-auth-oauthlib>=1.3.0",
"google-generativeai>=0.8.6",
"gymnasium[toy-text]>=1.2.3",
"imblearn>=0.0",
"ipykernel>=7.2.0",
"ipywidgets>=8.1.8",
"langchain>=1.2.10",
"langchain-community>=0.4.1",
"langchain-core>=1.2.17",
"langchain-huggingface>=1.2.1",
"langchain-mistralai>=1.1.1",
"langchain-ollama>=1.0.1",
"langchain-openai>=1.1.10",
"langchain-text-splitters>=1.1.1",
"mapclassify>=2.10.0",
"matplotlib>=3.10.8",
"nbformat>=5.10.4",
"numpy>=2.4.2",
"opencv-python>=4.13.0.92",
"openpyxl>=3.1.5",
"pandas>=3.0.1",
"pandas-stubs>=3.0.0.260204",
"pettingzoo[atari]>=1.24.3",
"plotly>=6.6.0",
"polars>=1.38.1",
"pypdf>=6.7.5",
"rasterio>=1.5.0",
"requests>=2.32.5",
"scikit-learn>=1.8.0",
"scipy>=1.17.1",
"seaborn>=0.13.2",
"sentence-transformers>=5.2.3",
# "sequenzo>=0.1.20",
"shap>=0.50.0",
"spacy>=3.8.11",
"statsmodels>=0.14.6",
"supersuit>=3.10.0",
"tensorflow>=2.20.0",
"tf-keras>=2.20.1",
"tiktoken>=0.12.0",
@@ -57,9 +33,7 @@ dependencies = [
"torch>=2.10.0",
"umap-learn>=0.5.11",
"uv>=0.10.7",
"wbdata>=1.1.0",
"xgboost>=3.2.0",
"yfinance>=1.2.0",
]
[dependency-groups]

1864
uv.lock generated

File diff suppressed because it is too large Load Diff