This repo is a collection of AWESOME things about information geometry, including papers, code, etc. Feel free to star and fork.
- awesome-information-geometry
- Contents
- Books
- Papers
- Survey
- Information Geometry for Neural Networks
- Information Geometry for Clustering
- Information Geometry for NMF
- Information Geometry for MCMC
- Information Geometry for HMM
- Information Geometry for Dimension Reduction
- Information Geometry and Optimization
- Fisher Information Matrix
- Fisher Kernels
- Information Diffusion Kernels
- Natural Gradients
- Statistical Manifolds and Hessian Information Geometry
- alpha-Divergence
- Bregman Divergence
- Jensen-Shannon Divergence
- Exponential and Mixture Families
- Inequalities
- Transport Information Geometry
- Computational Information Geometry
- Library
- Lectures and Tutorials
- Journals
- Conferences
- Workshops
- Differential Geometrical Foundations of Information Geometry (WorldScientific, 2022)
- Progress in Information Geometry (Springer, 2021)
- Computational Information Geometry (Springer, 2017)
- Information Geometry (Springer, 2017)
- Information Geometry and Population Genetics (Springer, 2017)
- Information Geometry and Its Applications (Springer, 2016)
- Matrix Information Geometry (Springer, 2013)
- Methods of Information Geometry (American Mathematical Soc., 2000)
- Fields of Application of Information Geometry (Information Geometry, 2017)
- Information geometry in optimization, machine learning and statistical inference (Front. Electr. Electron. Eng. China, 2010)
- A Rate-Distortion View of Uncertainty Quantification (ICML, 2024)
- Riemannian SAM: Sharpness-Aware Minimization on Riemannian Manifolds (NeurIPS, 2023)
- The Geometry of Neural Nets' Parameter Spaces Under Reparametrization (NeurIPS, 2023)
- Group Equivariant Sparse Coding (GSI, 2023)
- Can Generalised Divergences Help for Invariant Neural Networks? ([GSI, 2023](Can Generalised Divergences Help for Invariant Neural Networks?))
- Continuous Kendall Shape Variational Autoencoders (GSI, 2023)
- Functional Properties of PDE-Based Group Equivariant Convolutional Neural Networks (GSI, 2023)
- A Neurogeometric Stereo Model for Individuation of 3D Perceptual Units (GSI, 2023)
- Fisher-Legendre (FishLeg) optimization of deep neural networks (ICLR, 2023)
- The Fisher–Rao loss for learning under label noise (Information Geometry, 2022)
- A Reparametrization-Invariant Sharpness Measure Based on Information Geometry (NeurIPS, 2022)
- The Information Geometry of Unsupervised Reinforcement Learning (ICLR, 2022)
- IGAGCN: Information geometry and attention-based spatiotemporal graph convolutional networks for traffic flow prediction (Neural Networks, 2021)
- Catastrophic Fisher Explosion: Early Phase Fisher Matrix Impacts Generalization (ICML, 2021)
- An Information-Geometric Distance on the Space of Tasks (ICML, 2021)
- Information Geometry of Orthogonal Initializations and Training (ICLR, 2020)
- Fisher-rao metric, geometry, and complexity of neural networks (AISTATS, 2019)
- Principles of Riemannian Geometry in Neural Networks (NeurIPS, 2017)
- f-GANs in an Information Geometric Nutshell (NeurIPS, 2017)
- Principal whitened gradient for information geometry (Neural Networks, 2008)
- Geometrical Singularities in the Neuromanifold of Multilayer Perceptrons (NeurIPS, 2001)
- Algebraic Information Geometry for Learning Machines with Singularities (NeurIPS, 2000)
- Gradient systems in view of information geometry (Physica D: Nonlinear Phenomena, 1995)
- Information geometry of the EM and em algorithms for neural networks (Neural Networks, 1995)
- Information geometry of Boltzmann machines (IEEE Trans. Neural Networks, 1992)
- A novel clustering algorithm based on information geometry for cooperative spectrum sensing (IEEE Systems Journal, 2020)
- On Clustering Histograms with k-Means by Using Mixed α-Divergences (Entropy, 2014)
- Barycentric distribution estimation for texture clustering based on information-geometry tools (ISETC, 2012)
- Non-negative low-rank approximations for multi-dimensional arrays on statistical manifold (Information Geometry, 2023)
- Geometrical formulation of the nonnegative matrix factorization (ICONIP, 2018)
- Generalized alpha-beta divergences and their application to robust nonnegative matrix factorization (Entropy, 2011)
- Geometric Aspects of Data-Processing of Markov Chains (arxiv, 2022)
- Information Geometry of Reversible Markov Chains (Information Geometry, 2021)
- Geometry of Markov Chains, Finite State Machines, and Tree Models (IEICE Tech. Rep., 2014)
- Information geometry approach to parameter estimation in Markov chains (ISIT, 2014)
- Information geometry and sequential Monte Carlo (arXiv, 2012)
- Information Geometry of Contrastive Divergence (ITSL, 2008)
- Information geometry of Gibbs sampler (NNA, 2004)
- Information geometry approach to parameter estimation in hidden Markov model (Bernoulli, 2022)
- Local equivalence problem in hidden Markov model (Information Geometry, 2019)
- Generalized t-SNE Through the Lens of Information Geometry (IEEE Access, 2021)
- Dimension Reduction for Mixtures of Exponential Families (ICANN, 2008)
- The e-PCA and m-PCA: Dimension reduction of parameters by information geometry (IJCNN, 2004)
- On a Cornerstone of Bare-Simulation Distance/Divergence Optimization (GSI, 2023)
- FIT: A Metric for Model Sensitivity (ICLR, 2023)
- A Statistical Manifold Framework for Point Cloud Data (ICML, 2022)
- On the Variance of the Fisher Information for Deep Learning (NeurIPS, 2021)
- On the Fisher-Rao Information Metric in the Space of Normal Distributions (GSI, 2019)
- The Spectrum of the Fisher Information Matrix of a Single-Hidden-Layer Neural Network (NeurIPS, 2018)
- General Fisher information matrices of a random vector (Adv. Appl. Math., 2017)
- Evaluating neuronal codes for inference using Fisher information (NeurIPS, 2010)
- Invariant Fisher information (Differ Geom Appl., 1994)
- Learning Representation from Neural Fisher Kernel with Low-rank Approximation (ICLR, 2022)
- Deep active learning for biased datasets via fisher kernel self-supervision (CVPR, 2020)
- Persistence fisher kernel: A riemannian manifold kernel for persistence diagrams (NeurIPS, 2018)
- The fisher kernel: a brief review (RN, 2011)
- Improving the fisher kernel for large-scale image classification (ECCV, 2010)
- Indefinite kernel fisher discriminant (ICPR, 2008)
- A Kullback-Leibler divergence based kernel for SVM classification in multimedia applications (NeurIPS, 2003)
- A novel graph-based fisher kernel method for semi-supervised learning (ICPR, 2014)
- Learning the Similarity of Documents: An Information-Geometric Approach to Document Retrieval and Categorization (NeurIPS, 1999)
- Learning parameterized histogram kernels on the simplex manifold for image and action classification (ICCV, 2011)
- Sentiment classification with interpolated information diffusion kernels (ADKDD, 2007)
- Diffusion kernels on statistical manifolds (JMLR, 2005)
- Linear Convergence of Natural Policy Gradient Methods with Log-Linear Policies (ICLR, 2023)
- Invariance properties of the natural gradient in overparametrised systems (Information Geometry, 2022)
- Tractable structured natural-gradient descent using local parameterizations (ICML, 2021)
- Marginalized Stochastic Natural Gradients for Black-Box Variational Inference (ICML, 2021)
- Sinkhorn Natural Gradient for Generative Models (NeurIPS, 2020)
- An Improved Analysis of (Variance-Reduced) Policy Gradient and Natural Policy Gradient Methods (NeurIPS, 2020)
- Natural Policy Gradient Primal-Dual Method for Constrained Markov Decision Processes (NeurIPS, 2020)
- Understanding Approximate Fisher Information for Fast Convergence of Natural Gradient Descent in Wide Neural Networks (NeurIPS, 2020)
- Ngboost: Natural gradient boosting for probabilistic prediction (ICML, 2020)
- A Formalization of the Natural Gradient Method for General Similarity Measures (GSI, 2019)
- Fast Convergence of Natural Gradient Descent for Over-Parameterized Neural Networks (NeurIPS, 2019)
- Limitations of the empirical Fisher approximation for natural gradient descent (NeurIPS, 2019)
- Adaptive Stochastic Natural Gradient Method for One-Shot Neural Architecture Search (ICML, 2019)
- Online natural gradient as a Kalman filter (Electron. J. Stat., 2018)
- Fast yet simple natural-gradient descent for variational inference in complex models (ISITA, 2018)
- Natural gradient via optimal transport (Information Geometry, 2018)
- Fast Approximate Natural Gradient Descent in a Kronecker Factored Eigenbasis (NeurIPS, 2018)
- Exact natural gradient in deep linear networks and its application to the nonlinear case (NeurIPS, 2018)
- SLANG: Fast Structured Covariance Approximations for Bayesian Deep Learning with Natural Gradient (NeurIPS, 2018)
- Comparison-based natural gradient optimization in high dimension (GECCO, 2014)
- Projected Natural Actor-Critic (NeurIPS, 2013)
- Stochastic Gradient Riemannian Langevin Dynamics on the Probability Simplex (NeurIPS, 2013)
- New Sparse Adaptive Algorithms Based on the Natural Gradient and the
$L_0$ -Norm (IEEE J. Ocean. Eng., 2012) - Natural Policy Gradient Methods with Parameter-based Exploration for Control Tasks (NeurIPS, 2010)
- A Generalized Natural Actor-Critic Algorithm (NeurIPS, 2009)
- Stochastic search using the natural gradient (ICML, 2009)
- Incremental Natural Actor-Critic Algorithms (NeurIPS, 2007)
- Topmoumoute Online Natural Gradient Algorithm (NeurIPS, 2007)
- Natural Actor-Critic for Road Traffic Optimisation (NeurIPS, 2006)
- Rprop using the natural gradient (Trends and Applications in Constructive Approximation, 2005)
- A Natural Policy Gradient (NeurIPS, 2001)
- Natural gradient descent for on-line learning (PRL, 1998)
- Natural gradient works efficiently in learning (Neural Computation, 1998)
- On the Tangent Bundles of Statistical Manifolds (GSI, 2023)
- Geometric Properties of Beta Distributions (GSI, 2023)
- KV Cohomology Group of Some KV Structures on ℝ^2 (GSI, 2023)
- Alpha-parallel Priors on a One-Sided Truncated Exponential Family (GSI, 2023)
- Conformal Submersion with Horizontal Distribution and Geodesics (GSI, 2023)
- Infinite-dimensional gradient-based descent for alpha-divergence minimisation (Ann. Stat., 2021)
- Utilizing amari-alpha divergence to stabilize the training of generative adversarial networks (Entropy, 2020)
- Divergence Functions in Information Geometry (GSI, 2019)
- Log-determinant divergences revisited: Alpha-beta and gamma log-det divergences (Entropy, 2015)
- On the chi square and higher-order chi distances for approximating f-divergences (IEEE Signal Processing Letters, 2013)
- Families of alpha-beta-and gamma-divergences: Flexible and robust measures of similarities (Entropy, 2010)
- Information geometry of divergence functions (Bull. Pol. Acad. Sci. Tech. Sci., 2010)
-
$\alpha $ -Divergence Is Unique, Belonging to Both$f$ -Divergence and Bregman Divergence Classes (IEEE Trans. Information Theory, 2009) - Non-negative matrix factorization with
$\alpha$ -divergence (Pattern Recognit. Lett., 2008) - Integration of Stochastic Models by Minimizing
$\alpha$ -Divergence (Neural Computation, 2007)
- Neural Bregman Divergences for Distance Learning (ICLR, 2023)
- Transport information Bregman divergences (Information Geometry, 2021)
- Target detection within nonhomogeneous clutter via total bregman divergence-based matrix information geometry detectors (IEEE Trans. Signal Processing, 2021)
- The Bregman Chord Divergence (GSI, 2019)
- Logarithmic Divergences: Geometry and Interpretation of Curvature (GSI, 2019)
- Information geometry for radar target detection with total Jensen–Bregman divergence (Entropy, 2018)
- Information geometry for covariance estimation in heterogeneous clutter with total Bregman divergence (Entropy, 2018)
- The information geometry of mirror descent (IEEE Trans. Information Theory, 2015)
- The information geometry of Bregman divergences and some applications in multi-expert reasoning (Entropy, 2014)
- Information geometry of U-Boost and Bregman divergence (Neural Computation, 2004)
- Quasi-arithmetic Centers, Quasi-arithmetic Mixtures, and the Jensen-Shannon ∇-Divergences (GSI, 2023)
- On a variational definition for the Jensen-Shannon symmetrization of distances based on the information radius (Entropy, 2021)
-
$\alpha$ -Geodesical Skew Divergence (Entropy, 2021) - On a generalization of the Jensen–Shannon divergence and the Jensen–Shannon centroid (Entropy, 2020)
- On the Jensen–Shannon Symmetrization of Distances Relying on Abstract Means (Entropy, 2019)
- On partial likelihood and the construction of factorisable transformations (Information Geometry, 2022)
- On a convergence property of a geometrical algorithm for statistical manifolds (ICONIP, 2019)
- Testing the Number and the Nature of the Components in a Mixture Distribution (GSI, 2019)
- Sobolev Statistical Manifolds and Exponential Models (GSI, 2019)
- Minimization of the Kullback-Leibler Divergence over a Log-Normal Exponential Arc (GSI, 2019)
- Riemannian Distance and Diameter of the Space of Probability Measures and the Parametrix (GSI, 2019)
- Information geometry of positive measures and positive-definite matrices: decomposable dually flat structure (Entropy, 2014)
- Geometry of deformed exponential families: Invariant, dually-flat and conformal geometries (Physica A, 2012)
- Geometry of q-Exponential Family of Probability Distributions (Entropy, 2011)
- Curvature Inequalities and Simons’ Type Formulas in Statistical Geometry (GSI, 2021)
- Inequalities for Statistical Submanifolds in Hessian Manifolds of Constant Hessian Curvature (GSI, 2019)
- B. Y. Chen Inequalities for Statistical Submanifolds in Sasakian Statistical Manifolds (GSI, 2019)
- Generalized Wintgen Inquality for Legendrian Submanifolds in Sasakian Statistical Manifolds (GSI, 2019)
- Cramér-Rao lower bound and information geometry (Connected at Infinity II., 2013)
- Inequalities for Tsallis relative entropy and generalized skew information (Linear Multilinear Algebra, 2011)
- Riemannian Metric Learning via Optimal Transport (ICLR, 2023)
- Wasserstein information matrix (Information Geometry, 2023)
- Wasserstein Statistics in One-Dimensional Location-Scale Models (GSI, 2021)
- Traditional and Accelerated Gradient Descent for Neural Architecture Search (GSI, 2021)
- Recent Developments on the MTW Tensor (GSI, 2021)
- Wasserstein Proximal of GANs (GSI, 2021)
- Hessian Curvature and Optimal Transport (GSI, 2019)
- Information geometry connecting Wasserstein distance and Kullback–Leibler divergence via the entropy-relaxed transportation problem (Information Geometry, 2018)
- λ-Deformed Evidence Lower Bound (λ-ELBO) Using Rényi and Tsallis Divergence (GSI, 2023)
- On the f-Divergences Between Hyperboloid and Poincaré Distributions (GSI, 2023)
- Geometry of Parametric Binary Choice Models (GSI, 2023)
- A q-Analogue of the Family of Poincaré Distributions on the Upper Half Plane (GSI, 2023)
- Computing Statistical Divergences with Sigma Points (GSI, 2021)
- Remarks on Laplacian of Graphical Models in Various Graphs (GSI, 2021)
- Classification in the Siegel Space for Vectorial Autoregressive Data (GSI, 2021)
- Information Metrics for Phylogenetic Trees via Distributions of Discrete and Continuous Characters (GSI, 2021)
- Wald Space for Phylogenetic Trees (GSI, 2021)
- A Necessary Condition for Semiparametric Efficiency of Experimental Designs (GSI, 2021)
- Parametrisation Independence of the Natural Gradient in Overparametrised Systems (GSI, 2021)
- Properties of Nonlinear Diffusion Equations on Networks and Their Geometric Aspects (GSI, 2021)
- Rényi Relative Entropy from Homogeneous Kullback-Leibler Divergence Lagrangian (GSI, 2021)
- Statistical Bundle of the Transport Model (GSI, 2021)
- Topological Methods for Unsupervised Learning (GSI, 2019)
- Geometry and Fixed-Rate Quantization in Riemannian Metric Spaces Induced by Separable Bregman Divergences (GSI, 2019)
- The Statistical Minkowski Distances: Closed-Form Formula for Gaussian Mixture Models (GSI, 2019)
- Parameter Estimation with Generalized Empirical Localization (GSI, 2019)
- Properties of the Cross Entropy Between ARMA Processes (GSI, 2019)
- Computational information geometry for binary classification of high-dimensional random tensors (Entropy, 2018)
- Computational information geometry in statistics: theory and practice (Entropy, 2014)
- Computational Information Geometry and its Applications (ICNNB, 2005)
- An elementary introduction to information geometry (Entropy, 2022)
- Divergence function, information monotonicity and information geometry (WITMSE, 2009)
- Information Geometry and Its Applications: Survey by Shun-Ichi Amari (YouTube)
- Information Geometry by Microsoft Research (YouTube)
- Nihat Ay : Information Geometric structures in Cognitive Systems Research (YouTube)
- Computational Information Geometry with Frank Nielsen (YouTube)
- Information Geometry and its Application by Melvin Leok (YouTube)
- Information Geometry (Journal home)
- International Conference on Information Geometry for Data Science (IG4DS)
- International Conference on Geometric Science of Information (GSI)
- Symmetry and Geometry in Neural Representations (at NeurIPS 2022)
- TAG in Machine Learning (at ICML 2022)
- Deep Learning through Information Geometry (at NeurIPS 2020)