Predictions


ID

Lang

Model name

Author

Repository

Predict date Type Model ID

Description

35

Deep learning model using BI-LSTM Layers

2023-09-12 Model 6

Forecast de novos casos para o geocode 2507507 entre 2022-01-01 e 2023-01-01 usando apenas os dados do geocode 2507507

Arima model (3 weeks ahead)

2025-11-10 Model 160

Prediction 3 weeks ahead using data up to epiweek 202542

249

Model 1 - Weekly and yearly (iid) components

2024-08-15 Model 27

The model is founded on a structural decomposition designed for modeling counting series, employing a Poisson distribution. The log intensity is defined by the sum of weekly and yearly components, where the first one is defined as a AR(1) process and the last one is assumed to be iid.

497

LSTM model for Infodengue Sprint

2024-09-02 Model 21

Predictions for 2024 in PB using the baseline architecture

574

Model 1 - Weekly and yearly (iid) components

2024-09-09 Model 27

This upload represents the epidemic prediction for validation test 1 in the state AC.

710

Model 2 - Weekly and yearly (rw1) components

2024-09-11 Model 28

This upload represents the epidemic prediction for validation test 1 in the state AM.

673

Model 1 - Weekly and yearly (iid) components

2024-09-11 Model 27

This upload represents the epidemic prediction for validation test 1 in the state SE.

950

2025 sprint test - Sarima

2025-07-22 Model 108

2025 - Sarima - Preditores da picada

981

2025 sprint test - Sarima

2025-07-22 Model 108

2025 - Sarima - Preditores da picada

519

Model 1 - Weekly and yearly (iid) components

2024-09-02 Model 27

This upload represents the epidemic prediction for unseen data from the period of 2024-06-16 to 2025-10-05 in the state PB.

627

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model

2024-09-09 Model 34

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model Prediction on RJ_info_dengue_test_1

762

LSTM model for Infodengue Sprint

2024-09-12 Model 21

Predictions for 2023 in BA using the baseline architecture

LaCiD/UFRN

2025-07-30 Model 131

Dengue predictions for SE using Validation Test 2

694

Model 1 - Weekly and yearly (iid) components

2024-09-11 Model 27

This upload represents the epidemic prediction for validation test 2 in the state MA.

556

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model

2024-09-09 Model 34

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model Prediction on AM_info_dengue_test_1

687

Model 1 - Weekly and yearly (iid) components

2024-09-11 Model 27

This upload represents the epidemic prediction for validation test 2 in the state PA.

Arima model (3 weeks ahead)

2025-11-10 Model 160

Prediction 3 weeks ahead using data up to epiweek 202515

654

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model

2024-09-09 Model 34

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model Prediction on SC_info_dengue_test_2

125

Temp-SPI Interaction Model

2024-08-14 Model 22

Validation test 1 for three-way interaction model (SE)

624

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model

2024-09-09 Model 34

infodengue_sprint_24_25_hybrid_CNN_LSTM_ensemble_model Prediction on PB_info_dengue_test_1

LaCiD/UFRN

2025-07-30 Model 131

Dengue predictions for SC using Validation Test 2

101

Temp-SPI Interaction Model

2024-08-14 Model 22

Validation test 1 for three-way interaction model (AC)

494

LSTM model for Infodengue Sprint

2024-09-02 Model 21

Predictions for 2024 in DF using the att_3 architecture

703

Model 1 - Weekly and yearly (iid) components

2024-09-11 Model 27

This upload represents the epidemic prediction for validation test 2 in the state DF.

196

Model 2 - Weekly and yearly (rw1) components

2024-08-15 Model 28

The model is founded on a structural decomposition designed for modeling counting series, employing a Poisson distribution. The log intensity is defined by the sum of weekly and yearly components, where the first one is defined as a AR(1) process and the last one is assumed to be iid.

256

Model 1 - Weekly and yearly (iid) components

2024-08-15 Model 27

The model is founded on a structural decomposition designed for modeling counting series, employing a Poisson distribution. The log intensity is defined by the sum of weekly and yearly components, where the first one is defined as a AR(1) process and the last one is assumed to be iid.

121

Temp-SPI Interaction Model

2024-08-14 Model 22

Validation test 1 for three-way interaction model (RO)

248

Model 1 - Weekly and yearly (iid) components

2024-08-15 Model 27

The model is founded on a structural decomposition designed for modeling counting series, employing a Poisson distribution. The log intensity is defined by the sum of weekly and yearly components, where the first one is defined as a AR(1) process and the last one is assumed to be iid.

245

Model 1 - Weekly and yearly (iid) components

2024-08-15 Model 27

The model is founded on a structural decomposition designed for modeling counting series, employing a Poisson distribution. The log intensity is defined by the sum of weekly and yearly components, where the first one is defined as a AR(1) process and the last one is assumed to be iid.

265

Model 2 - Weekly and yearly (rw1) components

2024-08-15 Model 28

The model is founded on a structural decomposition designed for modeling counting series, employing a Poisson distribution. The log intensity is defined by the sum of weekly and yearly components, where the first one is defined as a AR(1) process and the last one follows a RW(1) process.

3054 predictions

https://api.mosqlimate.org/api/registry/predictions/?page=81&per_page=30&


Page 81 of 102

Chat
chatbot