Semantle

Why Semantle is famous now a days?

Semantle is a context-based guessing game where each guess is scored based on how close it is to the
secret word. The goal is to guess the secret word.

Semantle is a popular offshoot of the groundbreaking word game wave that started in late 2021.The best thing about Semantle is that the game is completely free and incredibly fun.

Introduction


Word2beck is a new breakthrough in natural language processing. Tomas Mikolov, a Czech computer
scientist and current researcher at the Czech Institute for Informatics, Robotics and Cybernetics (CIIRC),
is a key player in the research and implementation of Word2beck. Word embeddings are an important
part of solving many problems in natural language processing. Word embeddings describe how humans
make sense of language to machines. You can think of a word embedding as a vectorized representation
of text. Word2Vec, a common method for creating word embeddings, is used for a variety of purposes,
including text similarity, recommender systems, sentiment analysis, and more.

Semantle: Underlying Technology
Introduction


Word2beck is a new breakthrough in natural language processing. Tomas Mikolov, a Czech computer
scientist and current researcher at the Czech Institute for Informatics, Robotics and Cybernetics (CIIRC),
is a key player in the research and implementation of Word2beck. Word embeddings are an important
part of solving many problems in natural language processing. Word embeddings describe how humans
make sense of language to machines. You can think of a word embedding as a vectorized representation
of text. Word2Vec, a common method for creating word embeddings, is used for a variety of purposes,
including text similarity, recommender systems, sentiment analysis, and more.

What are word embeddings?

Word embedding is a technique where individual words are converted into numerical representations
(vectors) of words. The vector tries to capture different features of the word in relation to the text as a
whole. These features can include the word’s semantic relationships, definitions, context and more.

Clearly, these features are important as inputs to various aspects of machine learning. As machines
cannot process text in its raw form, converting text into embeddings allows users to load embeddings
into existing machine learning models. The simplest form of embedding is a simple hot-coding of text
data, where each vector is assigned a category.

Example:

ter = [1, 0, 0, 0, 0, 0, 0, 0, 0, 0, 0, … 0]
a = [0, 1, 0, 0, 0, 0, 0, … 0]
good = [0, 0, 0, 0, 1, 0, 0, 0, 0, 0, 0, 0, … 0]
tag = [0, 0, 0, 0, 0, 0, 1, 0, 0, 0, 0, 0, … 0] …

Word2Vec Architecture


The effectiveness of Word2Vec is based on its ability to cluster vectors of similar words. Given a large
enough dataset, Word2Vec can make robust estimates of word meaning based on the frequency of its
occurrence in the text. These estimates are used to calculate the association of a word with other words
in the corpus. By performing algebraic operations on the word embedding, you can find an approximation of the word similarity. For
example, the two-dimensional embedding vector for “king” – the two-dimensional embedding vector for
“man” + the two-dimensional embedding vector for “woman” produces a vector very close to the
embedding vector for “queen”.

King – man + woman = queen
[5,3] – [2,1] + [3, 2] = [6,4]

You can see that the words king and queen are close to each other (image credit: author).

There are two main architectures that have led to the success of Word2Beck. These are the Skip Gram
and CBOW architectures.;

Continuous Bag of Words (CBOW)


This architecture is very similar to a feed-forward neural network. Architecture
to predict a target word from a list of context words. For the sentence “have a great day”, the target
word will be chosen as “a” and the context words as [“have”, “great”, “day”]. The model uses a
distributed representation of the context words to predict the target word.

Example of training data generation for a skipgram model. Window size is 3. Image courtesy of the
author.
The training data consists of the pairwise matches of this target word and all the other words in
the window. This is the resulting training data for the neural network.

Not all semantic words are the easiest, and sometimes they take us down paths we didn’t expect.

In such cases, it’s a good idea to look at the answer.


Difference Between Semantle and Wordle?


Semantle, created by web developer David Turner, is a word game where you can guess the word of the
day by its meaning.


Can I play multiple times?

For older games, you can access yesterday’s gam. Starting May 31, you can access older puzzles from the
Semantle archive in the Word Search. That’s it. We do not offer other puzzles on Semantle.com, and
there are three reasons for this:

Blatant copying of other word search games.
A game developer friend of mine discovered a website that allowed him to play as many different games
as he wanted. Maybe the words will be
attractive, maybe you’ll have a whole novel through Symantle


Can I play in other languages?


Yes, Swedish, Hebrew, Spanish, Portuguese, French, German (or other German languages), Turkish,
Russian, Dutch and Korean. Credit to enigmatix, the makers of Cemantix, for the collaboration and
authentication features.


Final remark


Line embedding shows machines how humans understand language and plays an important role in
solving many problems in natural language processing. Given a large text corpus, word2vec generates an
embedding vector for each word in the corpus. This embedding is structured in such a way that words
with similar properties are close to each other. the CBOW (continuous bag of words) and skip-gram
models are the two main architectures associated with word2vec, where skip-grams, given an input
missing words by taking different words.