A fast python implementation of the SimHash algorithm.

Overview

FLoC SimHash

This Python package provides hashing algorithms for computing cohort ids of users based on their browsing history. As such, it may be used to compute cohort ids of users following Google's Federated Learning of Cohorts (FLoC) proposal.

The FLoC proposal is an important part of The Privacy Sandbox, which is Google's replacement for third-party cookies. FLoC will enable interest-based advertising, thus preserving an important source of monetization for today's web.

The main idea, as outlined in the FLoC whitepaper, is to replace user cookie ids, which enable user-targeting across multiple sites, by cohort ids. A cohort would consist of a set of users sharing similar browsing behaviour. By targeting a given cohort, advertisers can ensure that relevant ads are shown while user privacy is preserved by a hiding in the pack mechanism.

The FLoC whitepaper mentions several mechanisms to map users to cohorts, with varying amounts of centralized information. The algorithms currently being implemented in Google Chrome as a POC are methods based on SimHash, which is a type of locality-sensitive hashing initially introduced for detecting near-duplicate documents.

Contents

Installation

The floc-simhash package is available at PyPI. Install using pip as follows.

pip install floc-simhash

The package requires python>=3.7 and will install scikit-learn as a dependency.

Usage

The package provides two main classes.

  • SimHash, applying the SimHash algorithm on the md5 hashes of tokens in the given document.

  • SimHashTransformer, applying the SimHash algorithm to a document vectorization as part of a scikit-learn pipeline

Finally, there is a third class available:

  • SortingSimHash, which performs the SortingLSH algorithm by first applying SimHash and then clipping the resulting hashes to a given precision.

Individual document-based SimHash

The SimHash class provides a way to calculate the SimHash of any given document, without using any information coming from other documents.

In this case, the document hash is computed by looking at md5 hashes of individual tokens. We use:

  • The implementation of the md5 hashing algorithm available in the hashlib module in the Python standard library.

  • Bitwise arithmetic for fast computations of the document hash from the individual hashed tokens.

The program below, for example, will print the following hexadecimal string: cf48b038108e698418650807001800c5.

from floc_simhash import SimHash

document = "Lorem ipsum dolor sit amet consectetur adipiscing elit"
hashed_document = SimHash(n_bits=128).hash(document)

print(hashed_document)

An example more related to computing cohort ids: the following program computes the cohort id of a user by applying SimHash to the document formed by the pipe-separated list of domains in the user browsing history.

from floc_simhash import SimHash

document = "google.com|hybridtheory.com|youtube.com|reddit.com"
hasher = SimHash(n_bits=128, tokenizer=lambda x: x.split("|"))
hashed_document = hasher.hash(document)

print(hashed_document)

The code above will print the hexadecimal string: 14dd1064800880b40025764cd0014715.

Providing your own tokenizer

The SimHash constructor will split the given document according to white space by default. However, it is possible to pass any callable that parses a string into a list of strings in the tokenizer parameter. We have provided an example above where we pass tokenizer=lambda x: x.split("|").

A good example of a more complex tokenization could be passing the word tokenizer in NLTK. This would be a nice choice if we wished to compute hashes of text documents.

Using the SimHashTransformer in scikit-learn pipelines

The approach to SimHash outlined in the FLoC Whitepaper consists of choosing random unit vectors and working on already vectorized data.

The choice of a random unit vector is equivalent to choosing a random hyperplane in feature space. Choosing p random hyperplanes partitions the feature space into 2^p regions. Then, a p-bit SimHash of a vector encodes the region to which it belongs.

It is reasonable to expect similar documents to have the same hash, provided the vectorization respects the given notion of similarity.

Two vectorizations are discussed in the aforementioned whitepaper: one-hot and tf-idf; they are available in scikit-learn.

The SimHashTransformer supplies a transformer (implementing the fit and transform methods) that can be used directly on the output of any of these two vectorizers in order to obtain hashes.

For example, given a 1d-array X containing strings, each of them corresponding to a concatenation of the domains visited by a given user and separated by "|", the following code will store in y the cohort id of each user, using one-hot encoding and a 32-bit SimHash.

from sklearn.feature_extraction.text import CountVectorizer
from sklearn.pipeline import Pipeline

from floc_simhash import SimHashTransformer


X = [
    "google.com|hybridtheory.com|youtube.com|reddit.com",
    "google.com|youtube.com|reddit.com",
    "github.com",
    "google.com|github.com",
]

one_hot_simhash = Pipeline(
    [
        ("vect", CountVectorizer(tokenizer=lambda x: x.split("|"), binary=True)),
        ("simhash", SimHashTransformer(n_bits=32)),
    ]
)

y = one_hot_simhash.fit_transform(X)

After running this code, the value of y would look similar to the following (expect same lengths; actual hash values depend on the choice of random vectors during fit):

['0xd98c7e93' '0xd10b79b3' '0x1085154d' '0x59cd150d']

Caveats

  • The implementation works on the sparse matrices output by CountVectorizer and TfidfTransformer, in order to manage memory efficiently.

  • At the moment, the choice of precision in the numpy arrays results in overflow errors for p >= 64. While we are waiting for implementation details of the FLoC POCs, the first indications hint at choices around p = 50.

Development

This project uses poetry for managing dependencies.

In order to clone the repository and run the unit tests, execute the following steps on an environment with python>=3.7.

git clone https://github.com/hybridtheory/floc-simhash.git
cd floc-simhash
poetry install
pytest

The unit tests are property-based, using the hypothesis library. This allows for algorithm veritication against hundreds or thousands of random generated inputs.

Since running many examples may lengthen the test suite runtime, we also use pytest-xdist in order to parallelize the tests. For example, the following call will run up to 1000 examples for each test with parallelism 4.

pytest -n 4 --hypothesis-profile=ci
Owner
Hybrid Theory
(formerly Affectv)
Hybrid Theory
Supplementary Data for Evolving Reinforcement Learning Algorithms

evolvingrl Supplementary Data for Evolving Reinforcement Learning Algorithms This dataset contains 1000 loss graphs from two experiments: 500 unique g

John Co-Reyes 42 Sep 21, 2022
PICO is an algorithm for exploiting Reinforcement Learning (RL) on Multi-agent Path Finding tasks.

PICO is an algorithm for exploiting Reinforcement Learning (RL) on Multi-agent Path Finding tasks. It is developed by the Multi-Agent Artificial Intel

21 Dec 20, 2022
BCI datasets and algorithms

Brainda Welcome! First and foremost, Welcome! Thank you for visiting the Brainda repository which was initially released at this repo and reorganized

52 Jan 04, 2023
Benchmark for Robustness Tests of Control Alrogithms

A gym-like classical control benchmark for evaluating the robustnesses of control and reinforcement learning algorithms.

Kim Taekyung 4 Jan 18, 2022
marching Squares algorithm in python with clean code.

Marching Squares marching Squares algorithm in python with clean code. Tools Python 3 EasyDraw Creators Mohammad Dori Run the Code Installation Requir

Mohammad Dori 3 Jul 15, 2022
Sorting-Algorithms - All information about sorting algorithm you need and you can visualize the code tracer

Sorting-Algorithms - All information about sorting algorithm you need and you can visualize the code tracer

Ahmed Hossam 15 Oct 16, 2022
An implementation of ordered dithering algorithm in python as multimedia course project

One way of minimizing the size of an image is to simply reduce the number of bits you use to represent each pixel.

7 Dec 02, 2022
Implementation of core NuPIC algorithms in C++

NuPIC Core This repository contains the C++ source code for the Numenta Platform for Intelligent Computing (NuPIC)

Numenta 270 Nov 19, 2022
This project consists of a collaborative filtering algorithm to predict movie reviews ratings from a dataset of Netflix ratings.

Collaborative Filtering - Netflix movie reviews Description This project consists of a collaborative filtering algorithm to predict movie reviews rati

Shashank Kumar 1 Dec 21, 2021
A Python program to easily solve the n-queens problem using min-conflicts algorithm

QueensProblem A program to easily solve the n-queens problem using min-conflicts algorithm Performances estimated with a sample of 1000 different rand

0 Oct 21, 2022
marching rectangles algorithm in python with clean code.

Marching Rectangles marching rectangles algorithm in python with clean code. Tools Python 3 EasyDraw Creators Mohammad Dori Run the Code Installation

Mohammad Dori 3 Jul 15, 2022
CLI Eight Puzzle mini-game featuring BFS, DFS, Greedy and A* searches as solver algorithms.

🕹 Eight Puzzle CLI Jogo do quebra-cabeças de 8 peças em linha de comando desenvolvido para a disciplina de Inteligência Artificial. Escrito em python

Lucas Nakahara 1 Jun 30, 2021
causal-learn: Causal Discovery for Python

causal-learn: Causal Discovery for Python Causal-learn is a python package for causal discovery that implements both classical and state-of-the-art ca

589 Dec 29, 2022
🌟 Python algorithm team note for programming competition or coding test

🌟 Python algorithm team note for programming competition or coding test

Seung Hoon Lee 3 Feb 25, 2022
This repository is not maintained

This repository is no longer maintained, but is being kept around for educational purposes. If you want a more complete algorithms repo check out: htt

Nic Young 2.8k Dec 30, 2022
Python implementation of Aho-Corasick algorithm for string searching

Python implementation of Aho-Corasick algorithm for string searching

Daniel O'Sullivan 1 Dec 31, 2021
Python-Strongest-Encrypter - Transform your text into encrypted symbols using their dictionary

How does the encrypter works? Transform your text into encrypted symbols using t

1 Jul 10, 2022
Exact algorithm for computing two-sided statistical tolerance intervals under a normal distribution assumption using Python.

norm-tol-int Exact algorithm for computing two-sided statistical tolerance intervals under a normal distribution assumption using Python. Methods The

Jed Ludlow 1 Jan 06, 2022
Classic algorithms including Fizz Buzz, Bubble Sort, the Fibonacci Sequence, a Sudoku solver, and more.

Algorithms Classic algorithms including Fizz Buzz, Bubble Sort, the Fibonacci Sequence, a Sudoku solver, and more. Algorithm Complexity Time and Space

1 Jan 14, 2022