You plan to move to the Philippines? Wollen Sie auf den Philippinen leben?

There are REALLY TONS of websites telling us how, why, maybe why not and when you'll be able to move to the Philippines. I only love to tell and explain some things "between the lines". Enjoy reading, be informed, have fun and be entertained too!

Ja, es gibt tonnenweise Webseiten, die Ihnen sagen wie, warum, vielleicht warum nicht und wann Sie am besten auf die Philippinen auswandern könnten. Ich möchte Ihnen in Zukunft "zwischen den Zeilen" einige zusätzlichen Dinge berichten und erzählen. Viel Spass beim Lesen und Gute Unterhaltung!


Visitors of germanexpatinthephilippines/Besucher dieser Webseite.Ich liebe meine Flaggensammlung!

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Showing posts with label LinkedIn. Show all posts
Showing posts with label LinkedIn. Show all posts

Tuesday, February 6, 2018

Does our social media betrays our mood?

My column in MINDANAO DAILY -
the Mindanao-wide published newspaper.

Clues to the state of your mental health may be hiding in plain sight – in the tweets you send and the Facebook updates you post. There it is in your Facebook timeline or Instagram gallery – a digital footprint of your mental health.

I was shocked but - on the other way also very interested checking out more on BBC. This February, BBC Future is exploring social media’s impact on mental health and well-being – and seeking solutions for a happier, healthier experience on these platforms. 

One thing is really clear: it’s not hidden in the obvious parts: the emojis, hashtags and inspirational quotes. Instead, it lurks in subtler signs that, unbeknownst to you, may provide a diagnosis as accurate as a doctor’s blood pressure cuff or heart rate monitor.

For those who see social media mainly as a place to share the latest cat video or travel snap, this may come as a surprise. It also means the platform has important – and potentially life-saving – potential. Following the BBC:  in the US alone, there is one death by suicide every 13 minutes. Despite this, our ability to predict suicidal thoughts and behavior has not materially improved across 50 years of research. Forecasting an episode of psychosis or emerging depression can be equally challenging.

But data mining and machine learning are transforming this landscape by extracting signals from dizzying amounts of granular data on social media. These methods already have tracked and predicted flu outbreaks. Now, it’s the turn of mental health.

Studies have found that if you have depression, your Instagram feed is more likely to feature bluer, greyer, and darker photos with fewer faces. They’ll probably receive fewer likes (but more comments). Chances are you’ll prefer the Inkwell filter which converts colour images to black and white, rather than the Valencia one which lightens them.

Even then, these patterns are hardly robust enough in isolation to diagnose or predict depression. Still, they could be crucial in constructing models that can. This is where machine learning comes in.

While checking out all these details, I try to recall my last posts and reactions in social media. Maybe at this moment, you think about yours too.

Allow me to share more with you, my dear readers: researchers from Harvard University and the University of Vermont used these techniques in their recent analysis of almost 44,000 Instagram posts. Their resulting models correctly identified 70% of all users with depression. compared to a rate of 42% from general practitioners. They also had fewer false positives (although this figure drew from a separate population, so may be an unfair comparison). Depressive signals were evident in users’ feeds even before a formal diagnosis from psychiatrists – making Instagram an early warning system of sorts.

Meanwhile, psychiatrists have long linked language and mental health, listening for the disjointed and tangential speech of schizophrenia or the increased use of first-person singular pronouns of depression. For an updated take, type your Twitter handle into AnalyzeWords. It’s a free text analysis tool which focuses on junk words (pronouns, articles, prepositions) to assess emotional and thinking styles. From my 1017 most recent words on Twitter, I’m apparently average for being angry and worried but below average on being upbeat – I have been pretty pessimistic about the state of the world recently. Enter @realdonaldtrump into AnalzyeWords and you’ll see he scores highly on having an upbeat emotional style, and is less likely than average to be worried, angry, and depressed.

The behaviour we exhibit online can be used to inform diagnostic and screening tools – so the opinion of Chris Danforth, University of Vermont.

But far beyond this quick and sometimes amusing scan of emotional and social styles (AnalyzeWords tells you if you’re more “Spacy/ValleyGirl” than average), researchers are exploring profound questions about mental health.

Telling signals of depression include an increase in negative words (“no”, “never”, “prison”, “murder”) and a decrease in positive ones (“happy”, “beach”, and “photo”), but these are hardly definitive. Taking it a step further, researchers at Harvard University, Stanford University and the University of Vermont extracted a wider range of features (mood, language and context) from almost 280,000 tweets. The resulting computational model scored highly on identifying users with depression; it also was correct in about nine of every 10 PTSD predictions.


The ratio of positive to negative words was a key predictor within the model, says Chris Danforth, one of the researchers and Flint professor of mathematical, natural and technical sciences at the University of Vermont. Other strong predictors included increased tweet word count.

What to do with all this information? Empowerment would be a good start. 

Reservations persist more broadly in this field, though, especially around privacy. What if digital traces of your mental health become visible to all? You might be targeted by pharmaceutical companies or face discrimination from employers and insurers. In addition, some of these types of projects aren’t subject to the rigorous ethical oversight of clinical trials. Users are frequently unaware their data has been mined. Yes, include me in. And -maybe- you too!

As privacy and internet ethics scholar Michael Zimmer once explained, “Just because personal information is made available in some fashion on a social network, does not mean it is fair game for capture and release to all”.

BBC news made me very thoughtful: Data mining and machine learning offer the potential for earlier identification of mental health conditions. Currently, the time from onset of depression to contact with a treatment provider is six to eight years; for anxiety, it’s nine to 23 years. In turn, hopefully we’ll see better outcomes. Two billion users engage with social media regularly – these are signals with scalability. As Mark Zuckerberg wrote recently while outlining Facebook’s AI plans, “there have been terribly tragic events – like suicides, some live streamed – that perhaps could have been prevented if someone had realized what was happening and reported them sooner.”

Quoting BBC again - and here, I really strong agree: mental health exists between clinic appointments. It ebbs and flows in real time. It lives in posts and pictures and tweets. Perhaps prediction, diagnosis and healing should live there, too.

See you in Facebook and Twitter. Or email me: doringklaus@gmail.com. And you can also follow me in LinkedIn - or just visit my www.germanexpatinthephilippines.blogspot.com or -my relaxing place- www.klausdoringsclassicalmusic.blogspot.com .

Tuesday, July 4, 2017

Hate Speech


Hate speech


IN MY OPINIONKlaus Doring
Besides fake news, hate speech is the second big problem in social media.
It has been longtime overdue, but finally German lawmakers have approved a controversial law that would impose high fines on social media companies like Facebook, Twitter or YouTube for failing to swiftly delete posts deemed to exhibit hate speech.
Under the new legislation, social media companies have 24 hours to remove posts that obviously violate German law and have been reported by other users. In cases that are more ambiguous, Facebook and other sites have seven days to deal with the offending post. If they don’t comply with the new legislation, the companies could face a fine of up to 50 million Euro ($57.1 million).
The law was passed with votes from the Christian Democratic Union (CDU) – Social Democratic Party (SPD) government coalition. The Left Party in the Bundestag voted against it, while members of the Greens abstained.
The new rules are supposed to drastically reduce the number of posts containing hate speech, fake news and terror propaganda on social media. In January and February 2017, YouTube deleted 90 percent of hate speech videos reported by users – but Twitter only deleted one percent. Facebook did a little better at 39 percent.
Skeptics criticize, however, that under the new rules social media managers are the ones who have to decide whether content complies with German law. They also worry that freedom of speech will suffer since, in their opinion, companies are likely to delete many posts just to be on the safe side and avoid fines.
It’s in-deed a Land-mark legislation in Europe and should be adopted worldwide.
In addition to the strict new rules about deletion, the law forces networks to reveal the identity of those behind the hateful posts and to offer users “an easily recognizable, directly reachable, and constantly available” complaint process for “prosecutable content,” which includes libel, slander, defamation, incitement to commit a crime, hate speech against a particular social group, and threats.
Germany is the first country in Europe to introduce such clear legal guidelines against online hate speech.
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Email: doringklaus@gmail.com or follow me in Facebook, Twitter or LinkedIn or visit www. germanexpatinthephilippines.blogspot.com or www.klausdoringsclassicalmusic.blogspot.com.