Here is list of complex topics for Projects and Assignment Help
Key concepts Supervised/Unsupervised Learning
Probability Theory, Probabilistic graphical models ,HMM ,MRF
Bayesian Networks ,Inference ,Loss functions and generalization
Linear Modeling, Nonlinear Dimension Reduction, Maximum Entropy
Exponential Family Models, Conditional Random Fields, Graphical Models
Structured Support Vector Machines, Feature Selection, Kernel Selection,
Meta-Learning, Multi-Task Learning, Semi-Supervised Learning,
Graph-Based Semi-Supervised Learning, Approximate Inference, Clustering, and Boosting, Inference and Learning ,Simple Discrete Models
Simple Gaussian Models ,Bayesian Statistics/Linear Regression Linear Classifiers Generalized Linear Models,Directed Graphical Models ,Mixture Models
Dimensionality reduction, Factor Analysis and PCA , Variational Inference,Monte Carlo Basics,Monte Carlo Markov Chain,Advanced MCMCMarkov Chain Monte Carlo,
Spectral Methods,Latent Dirichlet Allocation,Time Series Models,Kernels and Gaussian Processes ,Dirichlet Processes ,Neural Networks, Common off-the-shelf algorithms ,Support vector machines ,K-means fail,Methods for clustering,Classification,Structured prediction,Recommendation ,Inference,Open-ended real-world problems,
Matlab ,Probability theory ,Linear algebra ,Lntro Prob/Stat,Linear Algebra ,Machine Learning,Algorithms and principles involved in machine learning, perception problems arising in computer vision, Natural language processing and robotics
Fundamentals of representing uncertainty, ensemble methods, Unsupervised learning, structured models, learning theory and reinforcement learning, design and analysis of machine perception systems, methods for designing systems ,Supervised learning ,predictive modeling,decision trees, Rule induction,nearest neighbors
Bayesian methods Neural networks, support vector machines,Unsupervised learning ,clustering,
State-of-the-art methods from algebraic geometry ,Sparse and low-rank representations,Statistical learning for modeling.
Clustering high-dimensional data,Methods for modeling data with a single low-dimensional subspace
PCA,Robust PCA,Kernel PCAManifold learning techniques,Methods for modeling data with multiple subspaces
Algebraic ,Statistical,Sparse and low-rank subspace clustering techniques,
Applications of these methods in image processing,Computer vision,Biomedical imaging,
Linear Algebra, Optimization, Exposure to Machine, machine learning
Fundamental concepts and classes of machine learning,
Classification & Regression, Neural model,
Deep representations,Reinforcement Learning,Effective use of machine learning
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