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feat(baselines) Add Flanders baseline (adap#2620)
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Co-authored-by: jafermarq <[email protected]>
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edogab33 and jafermarq authored Jul 30, 2024
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outputs/*
clients_params/*
flanders/datasets_files/*
*.log
flanders/__pycache__
MNIST
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*/__pycache__
multirun
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157 changes: 157 additions & 0 deletions baselines/flanders/README.md
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---
title: Protecting Federated Learning from Extreme Model Poisoning Attacks via Multidimensional Time Series Anomaly Detection
url: https://arxiv.org/abs/2303.16668
labels: [robustness, model poisoning, anomaly detection, autoregressive model, regression, classification]
dataset: [MNIST, FashionMNIST]
---

**Paper:** [arxiv.org/abs/2303.16668](https://arxiv.org/abs/2303.16668)

**Authors:** Edoardo Gabrielli, Gabriele Tolomei, Dimitri Belli, Vittorio Miori

**Abstract:** Current defense mechanisms against model poisoning attacks in federated learning (FL) systems have proven effective up to a certain threshold of malicious clients. In this work, we introduce FLANDERS, a novel pre-aggregation filter for FL resilient to large-scale model poisoning attacks, i.e., when malicious clients far exceed legitimate participants. FLANDERS treats the sequence of local models sent by clients in each FL round as a matrix-valued time series. Then, it identifies malicious client updates as outliers in this time series by comparing actual observations with estimates generated by a matrix autoregressive forecasting model maintained by the server. Experiments conducted in several non-iid FL setups show that FLANDERS significantly improves robustness across a wide spectrum of attacks when paired with standard and robust existing aggregation methods.

## About this baseline

**What’s implemented:** The code in this directory replicates the results of FLANDERS+\[baseline\] on MNIST and Fashion-MNIST under all attack settings: Gaussian, LIE, OPT, and AGR-MM; with $r=[0.2,0.6,0.8]$ (i.e., the fraction of malicious clients), specifically about tables 1, 3, 10, 11, 15, 17, 19, 20 and Figure 3.

**Datasets:** MNIST, FMNIST

**Hardware Setup:** AMD Ryzen 9, 64 GB RAM, and an NVIDIA 4090 GPU with 24 GB VRAM.

**Estimated time to run:** You can expect to run experiments on the given setup in 2m with *MNIST* and 3m with *Fashion-MNIST*, without attacks. With an Apple M2 Pro, 16gb RAM, each experiment with 10 clients for MNIST runs in about 24 minutes. Note that experiments with OPT (fang) and AGR-MM (minmax) can be up to 5x times slower.

**Contributors:** Edoardo Gabrielli, Sapienza University of Rome ([GitHub](https://github.com/edogab33), [Scholar](https://scholar.google.com/citations?user=b3bePdYAAAAJ))


## Experimental Setup

Please, checkout Appendix F and G of the paper for a comprehensive overview of the hyperparameters setup, however here's a summary.

**Task:** Image classification

**Models:**

MNIST (multilabel classification, fully connected, feed forward NN):
- Multilevel Perceptron (MLP)
- minimizing multiclass cross-entropy loss using Adam optimizer
- input: 784
- hidden layer 1: 128
- hidden layer 2: 256

Fashion-MNIST (multilabel classification, fully connected, feed forward NN):
- Multilevel Perceptron (MLP)
- minimizing multiclass cross-entropy loss using Adam optimizer
- input: 784
- hidden layer 1: 256
- hidden layer 2: 128
- hidden layer 3: 64

**Dataset:** Every dataset is partitioned into two disjoint sets: 80% for training and 20% for testing. The training set is distributed across all clients (100) by using the Dirichlet distribution with $\alpha=0.5$, simulating a high non-i.i.d. scenario, while the testing set is uniform and held by the server to evaluate the global model.

| Description | Default Value |
| ----------- | ----- |
| Partitions | 100 |
| Evaluation | centralized |
| Training set | 80% |
| Testing set | 20% |
| Distribution | Dirichlet |
| $\alpha$ | 0.5 |

**Training Hyperparameters:**

| Dataset | # of clients | Clients per round | # of rounds | Batch size | Learning rate | Optimizer | Dropout | Alpha | Beta | # of clients to keep | Sampling |
| -- | -- | -- | -- | -- | -- | -- | -- | -- | -- | -- | -- |
| MNIST | 100 | 100 | 50 | 32 | $10^{-3}$ | Adam | 0.2 | 0.0 | 0.0 | $m - b$ | 500 |
| FMNIST | 100 | 100 | 50 | 32 | $10^{-3}$ | Adam | 0.2 | 0.0 | 0.0 | $m - b$ | 500 |

Where $m$ is the number of clients partecipating during n-th round and $b$ is the number of malicious clients. The variable $sampling$ identifies how many parameters MAR analyzes.


## Environment Setup

```bash
# Use a version of Python >=3.9 and <3.12.0.
pyenv local 3.10.12
poetry env use 3.10.12

# Install everything from the toml
poetry install

# Activate the env
poetry shell
```


## Running the Experiments
Ensure that the environment is properly set up, then run:

```bash
python -m flanders.main
```

To execute a single experiment with the default values in `conf/base.yaml`.

To run custom experiments, you can override the default values like that:

```bash
python -m flanders.main dataset=mnist server.attack_fn=lie server.num_malicious=1
```

To run multiple custom experiments:

```bash
python -m flanders.main --multirun dataset=mnist,fmnist server.attack_fn=gaussian,lie,fang,minmax server.num_malicious=0,1,2,3,4,5
```

## Expected Results

To run all the experiments of the paper (for MNIST and Fashion-MNIST), I've set up a script:

```bash
sh run.sh
```

This code will produce the output in the file `outputs/all_results.csv`. To generate the plots and tables displayed below, you can use the notebook in the `plotting/` directory.


### Accuracy over multiple rounds
**(left) MNIST, FLANDERS+FedAvg with 80% of malicious clients (b = 80); (right) Vanilla FedAvg in the same setting:**

![acc_over_rounds](_static/screenshot-8.png)

### Precision and Recall of FLANDERS

**b = 20:**

![alt text](_static/screenshot-4.png)
---

**b = 60:**

![alt text](_static/screenshot-5.png)
---
**b = 80:**

![alt text](_static/screenshot-6.png)


### Accuracy w.r.t. number of attackers:
**b = 0:**

![alt text](_static/screenshot.png)

---
**b = 20:**

![alt text](_static/screenshot-1.png)

---
**b = 60:**

![alt text](_static/screenshot-2.png)

---
**b = 80:**

![alt text](_static/screenshot-3.png)
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"""FLANDERS package."""
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