Tag: geca
All the articles with the tag "geca".
CSPCC5004. Selected Algorithms in Data Mining
Published: 20 min readA presentation on Selected Algorithms in Data Mining, focusing on Apriori and HITS algorithms.
Mapping of GECA's academic resources
Updated: 5 hours readThis post mean't to index all the links, resources, labs, and notes made for GECA's academics. Here are all the links, categorized subject wise.
CSPCC5004. Social Network Analysis in Data Mining
Published: 20 min readA focused presentation on graph clustering methods, similarity measures, and real-world use cases of social network analysis in advanced data mining.
CS3016/04. Implement approximate algorithms on various variants of Travelling Salesman Problem (TSP).
Updated: 3.5 hours readUnderstand and implement approximation algorithms for classical and metric variants of the Travelling Salesman Problem (TSP), including MST-based and Christofides' heuristic.
CS3016/05. Demonstrate randomness by implementing Quicksort algorithm.
Published: 2 hours readUnderstand the concept of algorithmic randomness through randomized quicksort implementation. Analyze performance, visualize sorting, and compare with deterministic behavior.
CS3016/06. Demonstrate randomness by implementing Min-Cut algorithm.
Published: 2.5 hours readImplement and explore the randomized Min-Cut algorithm to understand the role of randomness in algorithms and graph partitioning.
CS3016/07. Demonstrate with a Program the Markov Property and Stationary Markov Chains
Published: 2.5 hours readUnderstand and simulate the Markov property and stationary distributions in Markov chains using Python. Gain insights into stochastic systems with memoryless transitions.
CS3016/08. Implementing the Viterbi algorithm for Hidden Markov Models (HMMs)
Published: 3 hours readUnderstand and implement the Viterbi algorithm, a dynamic programming method for decoding the most likely state sequence in Hidden Markov Models.
CS3016/09. Implementing the Forward Algorithm
Published: 2.5 hours readUnderstand and implement the Forward Algorithm, a dynamic programming technique used to compute sequence probabilities in Hidden Markov Models (HMMs).
CS3016/10. Implementing algorithms from geometry problems and large data sets
Published: 3.5 hours readExplore and implement classic algorithms from computational geometry and data-intensive problems. Emphasis on real-world applications and scalable solutions.