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https://img.shields.io/github/license/eumiro/lumipallo

lumipallo: snowball effect in language learning

lumipallo is the Finnish word for snowball (lumi = snow, pallo = ball). Learning a foreign language is like a snowball. Start with a tiny amount of snow and by rolling add one snowflake after another to get a big snowball.

How it works

The smallest meaningful unit of a language is a sentence consisting of words. If you see a sentence in a foreign language, you understand somewhere between 0 and 100 percent of those words. If you understand nothing, you'll be overwhelmed by all those new words. If you understand all of them, you probably won't learn much. The best learning effect is to get a sentence with one or two words that are new or almost new to you. One unknown word in a familiar context is easier to understand than seeing it isolated in a dictionary.

So where to get the right sentences?

lumipallo uses the extensive sentences database from Tatoeba and keeps track of the words you know. Each time it tries to find a sentence with as few and as frequent words as possible and asks you about those new words. It will provide you with a translation, but feel free to check for the word in a dictionary, compare grammar tables, or just do anything with the sentence. Your brain has to deal with stuff in order to learn something new.

Example

Let's say you speak English and want to learn German. Here comes the first German sentence with an English translation:

Hallo Tom.

Hello Tom.

Then it asks for both words: Hallo and Tom.

Tom is a name and hallo is hello. That was easy.

Ich heiße Tom.

My name is Tom.

We know Tom from the first sentence. Now you have to learn two new words: Ich and heiße. Ich is I and heiße is the first person singular for call themselves. You understand the context and if you see these words often enough, your brain will recognize them.

Ich heiße nicht Tom.

My name is not Tom.

If in the previous two sentences you confirmed that you understand all words, there is only one new word in this sentence: nicht. That's a negating not.

Mein Bruder heißt Tom.

My brother's name is Tom.

There are three new words here. Mein is my, Bruder is brother, heißt looks like heiße, but since you are speaking about a third person, the form is slightly different.

The sentence Mein Bruder heißt nicht Tom. (My brother's name is not Tom.) would not appear now, just because you already know all words from that sentence, but might appear in a future version of lumipallo just in order to show you more content.

That's one important point: knowing a word is not False/True. It's usually somewhere in between, and your brain needs to see a word often and in different contexts to understand it fully.

Prototype

The project is in the alpha stage, features may appear/disappear quickly.

Install it:

pip install lumipallo

Start it with:

lumipallo

In this first prototype there is little you can do, but this is just to show the principle and get in touch with people interested in trying something new.

Your source language is English (eng), your target language is German (deu). It has a list of 13 somehow related sentences with 15 different words (different forms of the same word are different words). Each session starts from zero and there is no load/save functionality.

It shows you a sentence in your target language, then in the source language. Then it asks for every new word in the sentence. Answer y<RETURN> if you know the word, n<ENTER> otherwise. It should show new sentences with minimal number of new words and these words should be the most popular (within the list of course). When you “learn“ all 15 words, it's over.

A save/load functionality is the an essential part of the project, because it is your own database of known words. There should be a possibility to load your own sentences/texts to get even more content.

Contributions

Yes. I'm looking forward to any ideas, questions, shared experiences or code/texts contributions.